Diabetes mellitus (DM) is a chronic metabolic and vascular disorder affecting various organs and systems. Many studies have shown impairment of pulmonary functions in diabetics subjects, whereas some studies did not show any changes in pulmonary functions. Therefore, objective of the present study is to find out alterations in the pulmonary functions. Methods Design, Setting, and Participants: This cross-sectional study was conducted in a tertiary care hospital among patients attending medicine department. The sample size was 200. A total of 100 known cases of DM without any acute or chronic lung disease and 100 healthy controls were included in the age group of 40–50 years. History of smoking was excluded in both groups. The diabetic subjects had at least 1 year of duration of disease. Intervention: Pulmonary function test (spirometry) was performed with NND TrueFlow Easy One™ diagnostic spirometer. Main Outcome Measures: The forced vital capacity (FVC) and forced expiratory volume in the first second (FEV1) were the primary outcome measures to assess the pulmonary functions. Results: In Phase 1 analysis, diabetic subjects did not show any changes in both FVC and FEV1 when compared with controls. In Pearson correlation test, a significant negative correlation between duration of disease and pulmonary functions, FVC at the level of 0.05 and FEV1 at the level of 0.01 were observed. However, in Phase 2 analysis, a significant reduction in FVC and FEV1 was observed in diabetic subjects with duration of diabetes more than 5 years. Conclusion: The decline in FVC and FEV1 in diabetic subjects is more likely to be the effect of DM. The decline is more pronounced with the duration of the disease.
Ochsner Sherren regimen Vs Appendectomy in Adults with Acute Appendicitis.QUESTJOURNAL
ABSTRACT: The main Objective of this study is to examine whether Ochsner Sherren regimen in adult patients with acute appendicitis is safe by correlating the interval from onset of symptoms to operation (total interval) with the degree of pathology and incidence of postoperative complications. Prompt appendectomy has long been the standard of care for acute appendicitis because of the risk of progression to advanced pathology. This time-honored practice has been recently challenged by studies in pediatric patients, which suggested that acute appendicitis can be managed in an elective manner once antibiotic therapy is initiated. No such data are available in adult patients with acute appendicitis. A retrospective review of 480 patients who underwent an appendectomy for acute appendicitis between November2012 and October 2015 was conducted. The following parameters were monitored and correlated: demographics, time from onset of symptoms to arrival at the emergency room (patient interval) and from arrival to the emergency room to the operating room (hospital interval), physical, computed tomography (CT scan) and pathologic findings, complications, length of stay, and length of antibiotic treatment. Pathologic state was graded 1 (G1) for acute appendicitis, 2 (G2) for gangrenous acute appendicitis, 3 (G3) for perforation or phlegmon, and 4 (G4) for a periappendicular abscess. The risk of advanced pathology, defined as a higher pathology grade, increased with the total interval. When this interval was <12>71 hours group compared with total interval<12 hours. Although both prolonged patient and hospital intervals were associated with advanced pathology, prehospital delays were more profoundly related to worsening pathology compared with in-hospital delays . Advanced pathology was associated with tenderness to palpation beyond the right lower quadrant , guarding , rebound , and CT scan findings of peritoneal fluid , fecalith , dilation of the appendix , and perforation . Increased length of hospital stay and antibiotic treatment as well as postoperative complications also correlated with progressive pathology. In adult patients with acute appendicitis, the risk of developing advanced pathology and postoperative complications increases with time; therefore, delayed appendectomy is unsafe. As delays in seeking medical help are difficult to control, prompt appendectomy is mandatory. Because these conclusions are derived from retrospective data, a prospective study is required to confirm their validity
Các xoang có nhiệm vụ làm ấm không khí, là một bộ phận quan trọng tham gia vào hoạt động hô hấp của cơ thể. Nếu bạn để xoang bị tắc nghẽn, viêm nhiễm trong thời gian dài sẽ dẫn đến tình trạng xuất hiện mủ. Điều này cho thấy bệnh viêm xoang của bạn đang ở mức báo động. Vậy viêm xoang có mủ thực sự nguy hiểm như thế nào? Bài viết này sẽ giúp bạn hiểu rõ hơn về căn bệnh viêm xoang phiền toái này.
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Napcon 2014 presentation abstract Page 14 - Presentation28
High Dose Rate Endobronchial Brachytherapy for Palliative Treatment of Lung Cancer – A Case Report Muhammed Aslam N K , Rajeev Ram , Achuthan V , Manoj D K ,Rajani M Pariyaram medical colleg , kannur
Diabetes mellitus (DM) is a chronic metabolic and vascular disorder affecting various organs and systems. Many studies have shown impairment of pulmonary functions in diabetics subjects, whereas some studies did not show any changes in pulmonary functions. Therefore, objective of the present study is to find out alterations in the pulmonary functions. Methods Design, Setting, and Participants: This cross-sectional study was conducted in a tertiary care hospital among patients attending medicine department. The sample size was 200. A total of 100 known cases of DM without any acute or chronic lung disease and 100 healthy controls were included in the age group of 40–50 years. History of smoking was excluded in both groups. The diabetic subjects had at least 1 year of duration of disease. Intervention: Pulmonary function test (spirometry) was performed with NND TrueFlow Easy One™ diagnostic spirometer. Main Outcome Measures: The forced vital capacity (FVC) and forced expiratory volume in the first second (FEV1) were the primary outcome measures to assess the pulmonary functions. Results: In Phase 1 analysis, diabetic subjects did not show any changes in both FVC and FEV1 when compared with controls. In Pearson correlation test, a significant negative correlation between duration of disease and pulmonary functions, FVC at the level of 0.05 and FEV1 at the level of 0.01 were observed. However, in Phase 2 analysis, a significant reduction in FVC and FEV1 was observed in diabetic subjects with duration of diabetes more than 5 years. Conclusion: The decline in FVC and FEV1 in diabetic subjects is more likely to be the effect of DM. The decline is more pronounced with the duration of the disease.
Ochsner Sherren regimen Vs Appendectomy in Adults with Acute Appendicitis.QUESTJOURNAL
ABSTRACT: The main Objective of this study is to examine whether Ochsner Sherren regimen in adult patients with acute appendicitis is safe by correlating the interval from onset of symptoms to operation (total interval) with the degree of pathology and incidence of postoperative complications. Prompt appendectomy has long been the standard of care for acute appendicitis because of the risk of progression to advanced pathology. This time-honored practice has been recently challenged by studies in pediatric patients, which suggested that acute appendicitis can be managed in an elective manner once antibiotic therapy is initiated. No such data are available in adult patients with acute appendicitis. A retrospective review of 480 patients who underwent an appendectomy for acute appendicitis between November2012 and October 2015 was conducted. The following parameters were monitored and correlated: demographics, time from onset of symptoms to arrival at the emergency room (patient interval) and from arrival to the emergency room to the operating room (hospital interval), physical, computed tomography (CT scan) and pathologic findings, complications, length of stay, and length of antibiotic treatment. Pathologic state was graded 1 (G1) for acute appendicitis, 2 (G2) for gangrenous acute appendicitis, 3 (G3) for perforation or phlegmon, and 4 (G4) for a periappendicular abscess. The risk of advanced pathology, defined as a higher pathology grade, increased with the total interval. When this interval was <12>71 hours group compared with total interval<12 hours. Although both prolonged patient and hospital intervals were associated with advanced pathology, prehospital delays were more profoundly related to worsening pathology compared with in-hospital delays . Advanced pathology was associated with tenderness to palpation beyond the right lower quadrant , guarding , rebound , and CT scan findings of peritoneal fluid , fecalith , dilation of the appendix , and perforation . Increased length of hospital stay and antibiotic treatment as well as postoperative complications also correlated with progressive pathology. In adult patients with acute appendicitis, the risk of developing advanced pathology and postoperative complications increases with time; therefore, delayed appendectomy is unsafe. As delays in seeking medical help are difficult to control, prompt appendectomy is mandatory. Because these conclusions are derived from retrospective data, a prospective study is required to confirm their validity
Các xoang có nhiệm vụ làm ấm không khí, là một bộ phận quan trọng tham gia vào hoạt động hô hấp của cơ thể. Nếu bạn để xoang bị tắc nghẽn, viêm nhiễm trong thời gian dài sẽ dẫn đến tình trạng xuất hiện mủ. Điều này cho thấy bệnh viêm xoang của bạn đang ở mức báo động. Vậy viêm xoang có mủ thực sự nguy hiểm như thế nào? Bài viết này sẽ giúp bạn hiểu rõ hơn về căn bệnh viêm xoang phiền toái này.
Nguồn: Trích https://venusglobal.com.vn/viem-xoang-cap-mu/
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#viêm_xoang_cấp_mủ
#viêm_xoang_hốc_mủ
#viêm_xoang_mủ_cấp
Napcon 2014 presentation abstract Page 14 - Presentation28
High Dose Rate Endobronchial Brachytherapy for Palliative Treatment of Lung Cancer – A Case Report Muhammed Aslam N K , Rajeev Ram , Achuthan V , Manoj D K ,Rajani M Pariyaram medical colleg , kannur
A presentation by Jon Henrik Laake at the 2017 meeting of the Scandinavian Society of Anaestesiology and Intensive Care Medicine.
All available content from SSAI2017: https://scanfoam.org/ssai2017/
Delivered in collaboration between scanFOAM, SSAI & SFAI.
"ABSTRACT
Background. Asthma is a chronic airway inflammation. There is increasing evidence confirming in severe or persistent asthma systemic inflammation can occur. Spillover of inflammatory mediators into the circulation is generally considered to be the source of this systemic inflammation. Obesity is well known to be associated with systemic inflammation too. Both asthma and obesity often occur in the same individual. We examined the independent and synergistic associations of asthma uncontrolled and obesity with systemic inflammation using high-sensitivity C-reactive protein (hs-CRP).
Methods. This was an observational study with cross-sectional approach in 48 asthma subjects with aged 18 – 55 years old without diabetes, cardiovascular disease, hypertension and non smoker. The study was performed in the Hasanuddin Teaching Hospital South Sulawesi Indonesia. Asthma control was assessed using asthma control test (ACT).
Results : Mean of hs-CRP levels were significantly higher in uncontrolled asthma than controlled asthma (4.23 + 3.11 vs 0.92 + 0.61 ; p=0.001). The high hs-CRP levels were most found in uncontrolled asthma patients than controlled asthma. Obese Subject with uncontrolled asthma have higher hs-CRP levels compared to obese subject with controlled asthma (p=0.026). In non obese subject with uncontrolled asthma have also siginificant higher hs-CRP compared to non obese controlled asthma (p=0.005). Hs-CRP level significantly higher in uncontrolled asthma both in obese and non-obese subject. Hs-CRP levels in asthma subject were not influenced by age (p=1.000), gender (p=0.822), family history of asthma (p=0.117), long duration of asthma (p=0.117) and used of steroid. (p=0.358).
Conclusion : Uncontrolled Asthma associated with systemic inflammation both in obese and non obese subject. These findings underline a potensial CVD risk in asthma especially with uncontrolled status.
"
Epidemiological studies that can be conducted in respiratory research?Pubrica
The purpose of this theme is to give suggestions for the conduct of general population studies on COPD in order to promote comparative and credible estimations of COPD prevalence by various risk variables. Diagnostic criteria in epidemiological contexts, as well as standardized procedures for examining the disease and its associated risk factors, are reviewed. This blog also provides practical guidance for organizing and carrying out epidemiological research on COPD.
Read more @ https://pubrica.com/academy/systematic-review/different-epidemiological-studies-in-respiratory-research/
Visit us @ https://pubrica.com/
#Medical data collection
#Scientific communication services
#Data analytics and machine learning
#Epidemiological studies
#respiratory research
#case-control studies epidemiology
#clinical epidemiology and biostatistics
#cohort epidemiological study
#cross-sectional study in epidemiology
#respiratory epidemiology
#research design
#cohort studies
#biostatistics
Remote Sensing and Computational, Evolutionary, Supercomputing, and Intellige...University of Maribor
Slides from talk:
Aleš Zamuda: Remote Sensing and Computational, Evolutionary, Supercomputing, and Intelligent Systems.
11th International Conference on Electrical, Electronics and Computer Engineering (IcETRAN), Niš, 3-6 June 2024
Inter-Society Networking Panel GRSS/MTT-S/CIS Panel Session: Promoting Connection and Cooperation
https://www.etran.rs/2024/en/home-english/
ANAMOLOUS SECONDARY GROWTH IN DICOT ROOTS.pptxRASHMI M G
Abnormal or anomalous secondary growth in plants. It defines secondary growth as an increase in plant girth due to vascular cambium or cork cambium. Anomalous secondary growth does not follow the normal pattern of a single vascular cambium producing xylem internally and phloem externally.
Salas, V. (2024) "John of St. Thomas (Poinsot) on the Science of Sacred Theol...Studia Poinsotiana
I Introduction
II Subalternation and Theology
III Theology and Dogmatic Declarations
IV The Mixed Principles of Theology
V Virtual Revelation: The Unity of Theology
VI Theology as a Natural Science
VII Theology’s Certitude
VIII Conclusion
Notes
Bibliography
All the contents are fully attributable to the author, Doctor Victor Salas. Should you wish to get this text republished, get in touch with the author or the editorial committee of the Studia Poinsotiana. Insofar as possible, we will be happy to broker your contact.
Professional air quality monitoring systems provide immediate, on-site data for analysis, compliance, and decision-making.
Monitor common gases, weather parameters, particulates.
What is greenhouse gasses and how many gasses are there to affect the Earth.moosaasad1975
What are greenhouse gasses how they affect the earth and its environment what is the future of the environment and earth how the weather and the climate effects.
Comparing Evolved Extractive Text Summary Scores of Bidirectional Encoder Rep...University of Maribor
Slides from:
11th International Conference on Electrical, Electronics and Computer Engineering (IcETRAN), Niš, 3-6 June 2024
Track: Artificial Intelligence
https://www.etran.rs/2024/en/home-english/
Travis Hills' Endeavors in Minnesota: Fostering Environmental and Economic Pr...Travis Hills MN
Travis Hills of Minnesota developed a method to convert waste into high-value dry fertilizer, significantly enriching soil quality. By providing farmers with a valuable resource derived from waste, Travis Hills helps enhance farm profitability while promoting environmental stewardship. Travis Hills' sustainable practices lead to cost savings and increased revenue for farmers by improving resource efficiency and reducing waste.
Phenomics assisted breeding in crop improvementIshaGoswami9
As the population is increasing and will reach about 9 billion upto 2050. Also due to climate change, it is difficult to meet the food requirement of such a large population. Facing the challenges presented by resource shortages, climate
change, and increasing global population, crop yield and quality need to be improved in a sustainable way over the coming decades. Genetic improvement by breeding is the best way to increase crop productivity. With the rapid progression of functional
genomics, an increasing number of crop genomes have been sequenced and dozens of genes influencing key agronomic traits have been identified. However, current genome sequence information has not been adequately exploited for understanding
the complex characteristics of multiple gene, owing to a lack of crop phenotypic data. Efficient, automatic, and accurate technologies and platforms that can capture phenotypic data that can
be linked to genomics information for crop improvement at all growth stages have become as important as genotyping. Thus,
high-throughput phenotyping has become the major bottleneck restricting crop breeding. Plant phenomics has been defined as the high-throughput, accurate acquisition and analysis of multi-dimensional phenotypes
during crop growing stages at the organism level, including the cell, tissue, organ, individual plant, plot, and field levels. With the rapid development of novel sensors, imaging technology,
and analysis methods, numerous infrastructure platforms have been developed for phenotyping.
DERIVATION OF MODIFIED BERNOULLI EQUATION WITH VISCOUS EFFECTS AND TERMINAL V...Wasswaderrick3
In this book, we use conservation of energy techniques on a fluid element to derive the Modified Bernoulli equation of flow with viscous or friction effects. We derive the general equation of flow/ velocity and then from this we derive the Pouiselle flow equation, the transition flow equation and the turbulent flow equation. In the situations where there are no viscous effects , the equation reduces to the Bernoulli equation. From experimental results, we are able to include other terms in the Bernoulli equation. We also look at cases where pressure gradients exist. We use the Modified Bernoulli equation to derive equations of flow rate for pipes of different cross sectional areas connected together. We also extend our techniques of energy conservation to a sphere falling in a viscous medium under the effect of gravity. We demonstrate Stokes equation of terminal velocity and turbulent flow equation. We look at a way of calculating the time taken for a body to fall in a viscous medium. We also look at the general equation of terminal velocity.
The ability to recreate computational results with minimal effort and actionable metrics provides a solid foundation for scientific research and software development. When people can replicate an analysis at the touch of a button using open-source software, open data, and methods to assess and compare proposals, it significantly eases verification of results, engagement with a diverse range of contributors, and progress. However, we have yet to fully achieve this; there are still many sociotechnical frictions.
Inspired by David Donoho's vision, this talk aims to revisit the three crucial pillars of frictionless reproducibility (data sharing, code sharing, and competitive challenges) with the perspective of deep software variability.
Our observation is that multiple layers — hardware, operating systems, third-party libraries, software versions, input data, compile-time options, and parameters — are subject to variability that exacerbates frictions but is also essential for achieving robust, generalizable results and fostering innovation. I will first review the literature, providing evidence of how the complex variability interactions across these layers affect qualitative and quantitative software properties, thereby complicating the reproduction and replication of scientific studies in various fields.
I will then present some software engineering and AI techniques that can support the strategic exploration of variability spaces. These include the use of abstractions and models (e.g., feature models), sampling strategies (e.g., uniform, random), cost-effective measurements (e.g., incremental build of software configurations), and dimensionality reduction methods (e.g., transfer learning, feature selection, software debloating).
I will finally argue that deep variability is both the problem and solution of frictionless reproducibility, calling the software science community to develop new methods and tools to manage variability and foster reproducibility in software systems.
Exposé invité Journées Nationales du GDR GPL 2024
Earliest Galaxies in the JADES Origins Field: Luminosity Function and Cosmic ...Sérgio Sacani
We characterize the earliest galaxy population in the JADES Origins Field (JOF), the deepest
imaging field observed with JWST. We make use of the ancillary Hubble optical images (5 filters
spanning 0.4−0.9µm) and novel JWST images with 14 filters spanning 0.8−5µm, including 7 mediumband filters, and reaching total exposure times of up to 46 hours per filter. We combine all our data
at > 2.3µm to construct an ultradeep image, reaching as deep as ≈ 31.4 AB mag in the stack and
30.3-31.0 AB mag (5σ, r = 0.1” circular aperture) in individual filters. We measure photometric
redshifts and use robust selection criteria to identify a sample of eight galaxy candidates at redshifts
z = 11.5 − 15. These objects show compact half-light radii of R1/2 ∼ 50 − 200pc, stellar masses of
M⋆ ∼ 107−108M⊙, and star-formation rates of SFR ∼ 0.1−1 M⊙ yr−1
. Our search finds no candidates
at 15 < z < 20, placing upper limits at these redshifts. We develop a forward modeling approach to
infer the properties of the evolving luminosity function without binning in redshift or luminosity that
marginalizes over the photometric redshift uncertainty of our candidate galaxies and incorporates the
impact of non-detections. We find a z = 12 luminosity function in good agreement with prior results,
and that the luminosity function normalization and UV luminosity density decline by a factor of ∼ 2.5
from z = 12 to z = 14. We discuss the possible implications of our results in the context of theoretical
models for evolution of the dark matter halo mass function.
hematic appreciation test is a psychological assessment tool used to measure an individual's appreciation and understanding of specific themes or topics. This test helps to evaluate an individual's ability to connect different ideas and concepts within a given theme, as well as their overall comprehension and interpretation skills. The results of the test can provide valuable insights into an individual's cognitive abilities, creativity, and critical thinking skills
1. Asthma Is a Risk Factor for Respiratory
Exacerbations Without Increased Rate of
Lung Function Decline
Five-Year Follow-up in Adult Smokers From the COPDGene Study
Lystra P. Hayden, MD, MMSc; Megan E. Hardin, MD, MPH; Weiliang Qiu, PhD; David A. Lynch, MD;
Matthew J. Strand, PhD; Edwin J. van Beek, MD, PhD; James D. Crapo, MD; Edwin K. Silverman, MD, PhD;
Craig P. Hersh, MD, MPH; on behalf of the COPDGene Investigators*
BACKGROUND: Previous investigations in adult smokers from the COPDGene Study have
shown that early-life respiratory disease is associated with reduced lung function, COPD, and
airway thickening. Using 5-year follow-up data, we assessed disease progression in subjects
who had experienced early-life respiratory disease. We hypothesized that there are alternative
pathways to reaching reduced FEV1 and that subjects who had childhood pneumonia,
childhood asthma, or asthma-COPD overlap (ACO) would have less lung function decline
than subjects without these conditions.
METHODS: Subjects returning for 5-year follow-up were assessed. Childhood pneumonia was
defined by self-reported pneumonia at < 16 years. Childhood asthma was defined as self-
reported asthma diagnosed by a health professional at < 16 years. ACO was defined as
subjects with COPD who self-reported asthma diagnosed by a health-professional at # 40
years. Smokers with and those without these early-life respiratory diseases were compared on
measures of disease progression.
RESULTS: Follow-up data from 4,915 subjects were examined, including 407 subjects who had
childhood pneumonia, 323 subjects who had childhood asthma, and 242 subjects with ACO.
History of childhood asthma or ACO was associated with an increased exacerbation fre-
quency (childhood asthma, P < .001; ACO, P ¼ .006) and odds of severe exacerbations
(childhood asthma, OR, 1.41; ACO, OR, 1.42). History of childhood pneumonia was asso-
ciated with increased exacerbations in subjects with COPD (absolute difference [b], 0.17;
P ¼ .04). None of these early-life respiratory diseases were associated with an increased rate
of lung function decline or progression on CT scans.
CONCLUSIONS: Subjects who had early-life asthma are at increased risk of developing COPD
and of having more active disease with more frequent and severe respiratory exacerbations
without an increased rate of lung function decline over a 5-year period.
TRIAL REGISTRY: ClinicalTrials.gov; No. NCT00608764; https://clinicaltrials.gov.
CHEST 2018; 153(2):368-377
KEY WORDS: asthma-COPD overlap; childhood asthma; childhood pneumonia; COPD;
respiratory exacerbations
ABBREVIATIONS: ACO = asthma-COPD overlap; b = absolute dif-
ference; GOLD = Global Initiative for Chronic Obstructive Lung
Disease; HU = Hounsfield units; PRM = parametric response mapping;
SGRQ = St. George’s Respiratory Questionnaire; SRWA-Pi10 = square
root of the wall area of a hypothetical airway with 10-mm internal
perimeter
AFFILIATIONS: From the Division of Respiratory Diseases (Dr
Hayden), Boston Children’s Hospital, Boston, MA; the Channing
[ Original Research Asthma ]
368 Original Research [ 1 5 3 # 2 C H E S T F E B R U A R Y 2 0 1 8 ]
2. Early-life respiratory conditions, including pneumonia
and asthma, increase the risk for the development of
COPD.1-5
Classically, COPD is thought of as a disease of
adult smokers and is characterized by rapid lung
function decline.3,6
An emerging subtype of COPD is
being defined in a subset of subjects who, due to
childhood respiratory disease, never achieve the
expected maximal FEV1 in young adulthood.1,5,7
These
patients are more likely reach the diagnostic threshold
for COPD even with normal age-related lung function
decline.3
Understanding the progression of COPD in
this population will be an important factor in
personalizing management and treatment plans.
We previously examined subjects who reported a history
of childhood pneumonia, childhood asthma, and
asthma-COPD overlap (ACO) in phase 1 of
COPDGene, a multicenter observational cohort of adult
smokers.1,8-10
Childhood pneumonia was associated
with reduced lung function, COPD, and increased
airway disease on chest CT scans.1
Childhood asthma
was associated with smaller segmental airways.9
Subjects
with ACO were younger with a lower lifetime smoking
intensity but had FEV1 reductions similar to those of
patients with COPD but without ACO, implying an
additional mechanism for their reduced lung function.
The current study used 5-year follow-up data from
phase 2 of COPDGene to examine disease progression in
three independent subject groups of current and former
smokers: childhood pneumonia, childhood asthma, and
ACO. We hypothesized that these early-life respiratory
diseases will identify subjects with less lung function
decline at the time of 5-year follow-up. To assess this, we
independently compared subjects from this cohort in
three separate analyses: (1) subjects who experienced
childhood pneumonia vs those who did not, (2) subjects
who experienced childhood asthma vs those who did
not, and (3) subjects with ACO vs those with COPD
alone (e-Fig 1).
Methods
Study Subjects
COPDGene enrolled 10,199 current and former smokers with and
without COPD in phase 1 from 2008 to 2011. This investigation
evaluates the first 4,915 subjects returning for 5-year follow-up in
phase 2 (September 24, 2016 data set) (e-Fig 1). This study was
approved by the institutional review boards (e-Appendix 1) at each
of the 21 clinical sites, and all participants provided written
informed consent.10
At enrollment, subjects were 45 to 80 years of
age and non-Hispanic white or African American and had at least a
10-pack-year smoking history. Subjects were excluded if they had a
history of lung disease other than COPD or asthma, if they were
nonsmokers, or if they had undergone lung transplantation or lung
volume reduction surgery. Study protocol, enrollment criteria, and
data collection forms were previously described and are available at
http://www.copdgene.org.10,11
Participants completed a modified American Thoracic Society
Respiratory Epidemiology Questionnaire, Modified Medical Research
Council dyspnea scale, and questionnaires related to demographics
and medical history.11-13
Quality of life was assessed using the St.
George’s Respiratory Questionnaire (SGRQ) with permissions
obtained for instrument use.14
Subjects completed a standardized
spirometry protocol (ndd EasyOne Spirometer) before and after
administration of albuterol. Quantitative image analysis used Thirona
software (http://www.thirona.eu). Inspiratory and expiratory chest
CT scans were available for 72% and 62% of phase 2 participants,
respectively. Emphysema was quantified by inspiratory scan low-
attenuation areas < –950 Hounsfield units (HU) and by the adjusted
density of lung HU at which < 15% of the voxels had the lowest
attenuation numbers at full inspiration. Gas trapping was quantified
on expiratory scan at < –856 HU. Parametric response mapping
(PRM) paired inspiratory and expiratory CT images to define
emphysema and to assess functional small airways disease as a
measure of nonemphysematous air trapping.15
Airway measurements
assessed the square root of the wall area of a hypothetical airway
with 10-mm internal perimeter (SRWA-Pi10) and were available for
20% of participants.16,17
Statistical Analysis
Childhood pneumonia was defined by a self-report of first pneumonia
at < 16 years or during childhood.1
Childhood asthma was defined as a
self-report of asthma diagnosed by a health professional with age of
onset at < 16 years or during childhood.1
ACO was defined as
Division of Network Medicine (Drs Hayden, Qiu, Silverman, and
Hersh), and the Division of Pulmonary and Critical Care Medicine
(Drs Silverman and Hersh), Brigham and Women’s Hospital, Boston,
MA; the Clinical Discovery Unit, Early Clinical Discovery (Dr Hardin),
AstraZeneca, Waltham, MA; the Department of Radiology (Dr Lynch),
the Division of Biostatistics and Bioinformatics (Dr Strand), and the
Division of Pulmonary, Critical Care, and Sleep Medicine (Dr Crapo),
National Jewish Health, Denver, CO; and the Department of Radiology
(Dr van Beek), University of Edinburgh, Edinburgh, Scotland.
Part of this article has been presented at the American Thoracic Society
International Conference, Washington, DC, May 19-24, 2017.
FUNDING/SUPPORT: This work was supported by National Institutes
of Health (NIH) [Grants K12HL120004 (E. K. S.), R01HL130512 (C. P.
H.), R01HL125583 (C. P. H.), P01HL105339 (E. K. S.), R01HL089897
(J. D. C.), and R01HL089856 (E. K. S.)]. The COPDGene project is also
supported by the COPD Foundation through contributions made to an
industry advisory board composed of AstraZeneca, Boehringer Ingel-
heim, GlaxoSmithKline, Novartis, Pfizer, Siemens, and Sunovion.
Neither the NIH nor the Industry Advisory Board had a role in the
study design, data collection, data analysis, interpretation of the data,
writing of the report, or the decision to submit the paper for publi-
cation. The content is solely the responsibility of the authors and does
not necessarily represent the official views of the National Heart, Lung,
and Blood Institute or the NIH.
CORRESPONDENCE TO: Lystra P. Hayden, MD, MMSc, Channing
Division of Network Medicine, Brigham and Women’s Hospital, 181
Longwood Ave, Boston, MA 02115; e-mail: lystra.hayden@childrens.
harvard.edu
Copyright Ó 2017 American College of Chest Physicians. Published by
Elsevier Inc. All rights reserved.
DOI: https://doi.org/10.1016/j.chest.2017.11.038
chestjournal.org 369
3. subjects with COPD who self-reported asthma diagnosed by a health
professional with age of onset at # 40 years or during
childhood.1,8,18,19
COPD was defined as Global Initiative for Chronic
Obstructive Lung Disease (GOLD) 2007 spirometry grades 2 to 4,
corresponding to a postbronchodilator FEV1/ FVC ratio < 0.7 with
FEV1 < 80% predicted.20
Mortality data were compiled using the Social Security Death Index
through the COPDGene Longitudinal Follow-up Program
(September 2016 data set). Interval development of COPD
diagnosis was defined as a subject without GOLD grade 2 to 4
COPD at visit 1 but with it at visit 2. Chronic bronchitis was
defined by cough and phlegm production lasting at least 3 months
per year for at least 2 years. Respiratory exacerbations were
defined by the use of antibiotics or systemic steroids, or both, for
an acute respiratory illness. Severe exacerbations required an ED
visit or hospitalization.
We performed three independent comparisons: (1) subjects who had
childhood pneumonia vs those who did not, (2) subjects who had
childhood asthma vs those who did not, and (3) subjects with ACO
vs COPD alone (e-Fig 1). Demographics, respiratory symptoms/
diseases, lung function, and chest CT scan measurements were
assessed using R, version 3.1.1 (R Project for Statistical Computing).
Tests used and covariates adjusted for are detailed in Tables 1 to 4
and e-Tables 1 and 2. Multivariable analyses used logistic regression,
linear regression, or linear mixed models. Linear mixed models
assessed two measures per subject, comparing visits 1 and 2, with
intercept computed at the level of the subject, the only variable
considered as a random effect. Subjects with missing or unclassifiable
responses were removed from specific analyses.
To assess an association with COPD exacerbations, a sensitivity
analysis was performed in only the subset of subjects who had
GOLD stage 2 to 4 COPD at the time of initial enrollment.
Exacerbation severity, frequency, and rate of lung function decline
were compared independently in subjects with COPD who had
childhood pneumonia and those who did not, as well as those who
had childhood asthma and those who had not.
Results
Subject Classification and Characteristics
Of 10,199 enrolled adult smokers, 857 had childhood
pneumonia (8.4%), 730 had childhood asthma (7.2%),
and 569 had ACO (5.6%) (Table 1, e-Table 1). Five-year
follow-up data on 4,915 subjects were examined; 19
subjects who had undergone interval lung
transplantation or lung volume reduction surgery were
excluded. Disease progression analysis in phase 2
included 407 subjects who had childhood pneumonia
(47%), 323 subjects who had childhood asthma (44%),
and 242 subjects with ACO (43%). Overlap between
subject classifications can be seen in Figure 1. Subjects
who had childhood pneumonia were older, more likely
to be non-Hispanic white, and had a longer smoking
history compared with subjects without childhood
pneumonia. Subjects who had childhood asthma were
younger and more likely to be African American than
were those without childhood asthma. Subjects with
TABLE1]COPDGenePhase2SubjectCharacteristics
Characteristic
ChildhoodPneumonia
N¼857
NoChildhood
Pneumonia
N¼9,306PValue
ChildhoodAsthma
N¼730
NoChildhood
Asthma
N¼9,417PValue
Asthma-COPDOverlap
N¼569
COPD
N¼3,110PValuePhase1subjects
Phase2subjects,No.(%)407(47)4,491(48).69323(44)4,563(48).03242(43)1,359(44).64
Malesex,No.(%)a,d
202(50)2,269(51).77157(49)2312(51).51107(44)760(56).001
Meanage,(SD),c
y67(8)65(9)<.00164(8)66(9)<.00165(8)69(8)<.001
Non-Hispanicwhite,No.(%)a,d
350(86)3,165(70)<.001200(62)3305(72)<.001157(65)1,099(81)<.001
AfricanAmerican,No.(%)a,d
57(14)1,326(30)123(38)1258(28)85(35)260(19)
Pack-yearsofsmoking(SD)b
50(27)44(24)<.00143(23)44(24).2146(24)53(26)<.001
Currentsmoking,No.(%)a,d
134(33)1,698(38).06125(39)1,707(37).6982(34)390(29).12
COPDatenrollment,No.(%)a,d
175(54)1,429(41)<.001152(61)1,446(40)<.001242(100)1,359(100)NA
NA¼notavailable.
a
Univariateanalysiswithc2
test.
b
UnivariateanalysiswithWilcoxonranksumtest.
c
Univariateanalysiswithttest.
d
Percentagesarerelativetototalnumberofphase2subjects.
370 Original Research [ 1 5 3 # 2 C H E S T F E B R U A R Y 2 0 1 8 ]
4. TABLE 2 ] Disease Progression in Childhood Pneumonia
Variable
Childhood Pneumonia
N ¼ 407
No Childhood
Pneumonia
N ¼ 4,491
Impact of Childhood Pneumoniaa
OR 95% CI P Value
Development of COPD, No. (%)b,e,f
30 (7) 313 (7) 1.04 0.69-1.52 .84
Development of oxygen
requirement, No. (%)b,e,f
32 (8) 286 (6) 1.09 0.73-1.59 .66
Development of chronic bronchitis,
No. (%)b,e,f,h
31 (8) 359 (8) 0.92 0.61-1.33 .66
Had a severe COPD exacerbation in
prior y, No. (%)b,e,f,g,h
48 (12) 411 (9) 1.23 0.87-1.71 .23
b SE P Value
No. of COPD exacerbations in prior
y, mean (SD)c,e,f,g,h
0.42 (0.86) 0.30 (0.79) 0.06 0.04 .10
FEV1 postbronchodilator,
% predicted, mean D (SD)d,e
–1.64 (11) –1.98 (11) 0.33 0.55 .54
FEV1 postbronchodilator, mL,
mean D (SD)d,e,f,i
–196 (279) –202 (287) 8.32 15.03 .58
FVC postbronchodilator,
% predicted, mean D (SD)d,e
–1.83 (12) –2.11 (12) 0.30 0.62 .63
FVC postbronchodilator, mL, mean
D (SD)d,e,f,i
–250 (417) –248 (424) 3.56 22.52 .87
St. George’s Respiratory
Questionnaire score, mean D
(SD)d,e,f,g
–0.57 (17) 0.29 (15) Model does not converge
Modified Medical Research Council
dyspnea scale, mean D
(SD)d,e,f,g
–0.05 (1.13) 0.07 (1.24) –0.11 0.06 .09
6-min walk distance in feet, mean
D (SD)d,e,f,g
–154 (333) –129 (363) –23.90 18.85 .21
CT scan measuresk
Emphysema progression
PRM emphysema, % at –950
HU, mean D (SD)d,e,f,h,j
0.45 (4) 0.71 (3) –0.03 0.20 .86
Adjusted density, mean D
(SD)d,e,f,h,j
–0.05 (12) –0.83 (11) –0.33 0.50 .51
Air trapping progression
Gas trapping %, expiratory
scan at –856 HU, mean D
(SD)d,e,f,h,j
1.14 (9) 1.21 (9) 0.48 0.51 .34
PRM functional small airway
disease, mean D (SD)d,e,f,h,j
1.09 (7) 0.92 (7) 0.56 0.43 .19
Airway thickening progression
SRWA-Pi10 (SD), mean D
(SD)d,e,f,h,j
0.06 (0.29) 0.04 (0.30) 0.02 0.03 .57
HU ¼ Hounsfield units; PRM ¼ parametric response mapping; SRWA-Pi10 ¼ square root wall area of a hypothetical airway with 10-mm internal perimeter.
a
Each row is a separate model.
b
Logistic regression with OR, 95% CI.
c
Linear regression.
d
Linear mixed model with beta coefficient (b), SE.
e
Adjusted for pack-years of smoking.
f
Adjusted for sex, age, race.
g
Adjusted for FEV1 % predicted.
h
Adjusted for current smoking.
i
Adjusted for height.
j
Adjusted for scanner model, BMI.
k
Data available for only a portion of the population.
chestjournal.org 371
5. TABLE 3 ] Disease Progression in Childhood Asthma
Variable
Childhood Asthma
N ¼ 323
No Childhood Asthma
N ¼ 4,563
Impact of Childhood Asthmaa
OR 95% CI P Value
Development of COPD, No. (%)b,e,f
27 (8) 317 (7) 1.22 0.80-1.81 .34
Development of oxygen
requirement, No. (%)b.e.f
23 (7) 295 (6) 1.26 0.78-1.92 .31
Development of chronic bronchitis,
No. (%)b,e,f,h
28 (9) 359 (8) 1.26 0.82-1.87 .27
Had a severe COPD exacerbation in
prior y, No. (%)b,e,f,g,h
52 (16) 406 (9) 1.41 1.00-1.96 .04
b SE P Value
No. of COPD exacerbations in prior
y, mean (SD)c,e,f,g,h
0.59 (1.08) 0.29 (0.77) 0.22 0.04 < .001
FEV1 postbronchodilator,
% predicted, mean D (SD)d,e
–1.48 (12) –1.98 (10) 0.47 0.60 .44
FEV1 postbronchodilator, mL, mean
D (SD)d,e,f,i
–168 (303) –204 (284) 32.10 16.61 .05
FVC postbronchodilator,
% predicted, mean D (SD)d,e
–0.73 (13) –2.15 (12) Model does not converge
FVC postbronchodilator, mL, mean
D (SD)d,e,f,i
–188 (432) –252 (421) 58.44 24.84 .02
St. George’s Respiratory
Questionnaire score, mean D
(SD)d,e,f,g
–2.22 (18) 0.39 (15) –2.40 0.88 .01
Modified Medical Research Council
dyspnea scale, mean D
(SD)d,e,f,g
–0.02 (1.26) 0.07 (1.23) –0.08 0.07 .25
6-min walk distance in feet, mean D
(SD)d,e,f,g
–151 (385) –130 (360) –27.21 20.93 .19
CT scan measuresk
Emphysema progression
PRM emphysema % at –950
HU, mean D (SD)d,e,f,h,j
0.61 (4) 0.68 (3) –0.29 0.23 .20
Adjusted density, mean D
(SD)d,e,f,h,j
–1.33 (12) –0.72 (11) 0.17 0.58 .77
Air trapping progression
Gas trapping %, expiratory
scan at –856 HU, mean D
(SD)d,e,f,h,j
1.19 (9) 1.19 (9) –0.78 0.60 .20
PRM functional small airway
disease, mean D (SD)d,e,f,h,j
0.97 (8) 0.93 (7) –0.41 0.51 .42
Airway thickening progression
SRWA-Pi10 (SD), mean D
(SD)d,e,f,h,j
0.07 (0.33) 0.04 (0.30) 0.03 0.04 .41
See Table 2 legend for expansion of abbreviations.
a
Each row is a separate model.
b
Logistic regression with OR, 95% CI.
c
Linear regression.
d
Linear mixed model with b, SE.
e
Adjusted for pack-years of smoking.
f
Adjusted for sex age, race.
g
Adjusted for FEV1 % predicted.
h
Adjusted for current smoking.
i
Adjusted for height.
j
Adjusted for scanner model, BMI.
k
Data available for only a portion of the population.
372 Original Research [ 1 5 3 # 2 C H E S T F E B R U A R Y 2 0 1 8 ]
6. TABLE 4 ] Disease Progression in ACO
Variable
ACO
N ¼ 242
COPD
N ¼ 1,359
Impact of ACOa
OR 95% CI P Value
Development of oxygen
requirement, No. (%)b,e,f
33 (14) 207 (15) 0.97 0.64-1.45 .90
Development of chronic bronchitis,
No. (%)b,e,f,h
24 (10) 155 (11) 0.90 0.55-1.42 .67
Had a severe COPD exacerbation in
prior y, No. (%)b,e,f,g,h
60 (25) 237 (17) 1.42 1.00-2.00 .05
b SE P Value
No. of COPD exacerbations in prior
y, mean (SD)c,e,f,g,h
0.81 (1.23) 0.56 (1.03) 0.20 0.07 .006
FEV1 postbronchodilator,
% predicted, mean D (SD)d,e
–2.53 (11) –2.64 (11) 0.10 0.76 .89
FEV1 postbronchodilator, mL, mean
D (SD)d,e,f,i
–160 (313) –188 (306) 22.70 21.73 .30
FVC postbronchodilator,
% predicted, mean D (SD)d,e
–2.81 (14) –3.69 (14) 0.84 0.97 .39
FVC postbronchodilator, mL, mean
D (SD)d,e,f,i
–239 (466) –314 (506) 65.68 35.85 .07
St. George’s Respiratory
Questionnaire score, mean D
(SD)d,e,f,g
–1.09 (17) 1.84 (15) –2.89 1.06 .007
Modified Medical Research Council
dyspnea scale, mean D
(SD)d,e,f,g
0.09 (1.26) 0.22 (1.29) –0.13 0.09 .16
6-min walk distance in feet, mean D
(SD)d,e,f,g
–156 (356) –189 (370) 23.60 25.94 .36
CT scan measuresk
Emphysema progression
PRM emphysema % at –950
HU, mean D (SD)d,e,f,h,j
1.14 (5) 2.14 (5) –0.97 0.41 .02
Adjusted density, mean D
(SD)d,e,f,h,j
–2.05 (11) –3.32 (11) 1.27 0.67 .06
Air trapping progression
Gas trapping %, expiratory
scan at –856 HU, mean D
(SD)d,e,f,h,j
1.57 (11) 3.72 (10) –2.19 0.89 .01
PRM functional small airway
disease, mean D (SD)d,e,f,h,j
0.96 (9) 2.12 (8) –1.20 0.77 .12
Airway thickening progression
SRWA-Pi10 (SD), mean D
(SD)d,e,f,h,j
0.08 (0.36) 0.03 (0.34) 0.04 0.06 .54
ACO ¼ asthma-COPD overlap. See Table 2 legend for expansion of other abbreviations.
a
Each row is a separate model.
b
Logistic regression with OR, 95% CI.
c
Linear regression.
d
Linear mixed model with b, SE.
e
Adjusted for pack-years of smoking.
f
Adjusted for sex, age, race.
g
Adjusted for FEV1 % predicted.
h
Adjusted for current smoking.
i
Adjusted for height.
j
Adjusted for scanner model, BMI.
k
Data available for only a portion of the population.
chestjournal.org 373
7. ACO were more likely to be younger, female, and
African American and have fewer pack-years of smoking
than subjects with COPD but without ACO.
Mortality
Of 10,199 adult smokers enrolled in phase 1, mortality
data were available for 8,901 (87%). Deceased subjects
included 116 subjects who had childhood pneumonia
(14%), 84 subjects who had childhood asthma (12%),
and 103 subjects with ACO (18%) (e-Fig 1). There were
no statistically significant differences in mortality among
subjects with childhood pneumonia, childhood asthma,
or ACO in the analysis adjusted for sex, age, race, FEV1,
pack-years of smoking, and current smoking (P > 0.5
for all analyses).
Disease Progression
e-Table 1 shows univariate associations with childhood
pneumonia, childhood asthma, and ACO. In
multivariable models, childhood pneumonia was not
associated with disease progression by lung function,
clinical symptoms including severity and frequency of
respiratory exacerbations, or chest CT scan
measurements of emphysema and airway disease
(Table 2).
Compared with those who did not have childhood
asthma, subjects who had childhood asthma had an
increased frequency of respiratory exacerbations
(b ¼ 0.22 exacerbations/y; P < .001) and increased odds
of having had a severe exacerbation in the prior year
(OR, 1.41; 95% CI, 1.00-1.96) (Table 3). Subjects who
had childhood asthma showed less FVC decline (b ¼
58.44 mL; P ¼ .02) and borderline significance for less
FEV1 decline (b ¼ 32.10 mL; P ¼ .053). Subjects who
had childhood asthma had a statistically significant but
not clinically significant improvement in quality of life
based on improvement in the SGRQ total score (b ¼
–2.40 points; P ¼ .01).21
On chest CT imaging, there
were no differences in progression of emphysema and
airway disease.
Compared with subjects with COPD only, subjects who
had ACO had an increased frequency of exacerbations
(b ¼ 0.20 exacerbations/y; P ¼ .006) and increased odds
of a severe exacerbation (OR, 1.42; 95% CI, 1.00-2.00)
(Table 4). They had a statistically but not clinically
significant improvement in the SGRQ total score (b ¼
–2.89 points; P ¼ .007). There was no difference in the
rate of decline in FEV1 or FVC. On chest CT images,
subjects with ACO had less progression of emphysema
and air trapping compared with subjects with COPD but
no difference in the progression of airway wall
thickening.
Sensitivity Analysis
There were 1,613 subjects with GOLD stage 2 to 4
COPD at enrollment who returned for 5-year follow-up.
Among subjects with COPD, a history of childhood
pneumonia was associated with increased frequency of
respiratory exacerbations (b ¼ 0.17; P ¼ .04) when
compared with subjects without a history of childhood
pneumonia (e-Table 2); there was no significant increase
in severe exacerbations or the rate of lung function
decline. Subjects with COPD who had childhood asthma
did not have increased frequency or severity of
respiratory exacerbations when compared with those
who did not have childhood asthma; there was an
association with a slower rate of decline in FVC
(b ¼ 91.64 mL; P ¼ .04).
Discussion
This investigation used 5-year follow-up data from 4,915
adult smokers to examine disease activity and
progression independently in those who had childhood
pneumonia or childhood asthma and those with ACO.
Childhood asthma and ACO were associated with
increased disease activity, with more frequent and severe
exacerbations, but not with disease progression defined
by lung function decline and chest CT changes. Subjects
who had childhood asthma had less lung function
decline, and subjects with ACO had less progression of
CT emphysema and air trapping. Childhood pneumonia
Childhood
Pneumonia
330
Childhood
Asthma
144
Asthma-COPD
Overlap
79
27
39
11311
Figure 1 – Overlapping numbers of subjects as categorized for this study
by history of childhood pneumonia, childhood asthma, or asthma-
COPD overlap.
374 Original Research [ 1 5 3 # 2 C H E S T F E B R U A R Y 2 0 1 8 ]
8. was associated with increased respiratory exacerbations
among COPD subjects, with no increase in the rate of
lung function decline.
We have previously established that in adult smokers
from the COPDGene Study, early-life respiratory
diseases are associated with reduced lung function and
COPD.1,8,9,18
Childhood pneumonia was associated with
increased odds of COPD developing (OR, 1.40; 95% CI,
1.17-1.66), with the greatest risk among those who had
asthma and pneumonia in childhood (OR, 1.85; 95% CI,
1.10-3.18).1
Childhood asthma was associated with
smaller segmental airways, which was a risk for
decreased FEV1 and chronic airflow obstruction.9
Subjects with ACO, compared with those with COPD
alone, were younger, with lower lifetime smoking
intensity and increased exacerbation frequency.8,18
Other cohorts have shown that asthma and wheezy
bronchitis are associated with COPD risk.22
In the
Childhood Asthma Management Program, 11% of 1,041
participants met spirometric criteria for COPD by age
30 years, and analysis of lung growth trajectories showed
a subset with reduced lung growth.5
The Aberdeen
WHEASE cohort followed 330 subjects to age 61 years,
showing that childhood asthma and wheeze were
associated with COPD development.23
The Melbourne
Asthma Cohort found that childhood asthma conferred
a 32-fold adjusted odds of COPD developing. In 45-year
follow-up among 1,389 Tasmanian children, low
childhood lung function was associated with COPD and
ACO.24
These associations are likely due to reduced lung
growth in patients with childhood respiratory disease
causing a decrease in maximally attained lifetime FEV1
and an increasing probability that natural decline in lung
function will lead to diagnostic levels of COPD. This
concept is supported by prior descriptions of lung
function trajectories, which showed that current and
former smokers with low FEV1 in early adulthood can
acquire COPD based only on natural lung function
decline.7
In this study, subjects who had childhood asthma and
subjects with ACO were “frequent exacerbators” yet did
not have a significantly increased rate of lung function
decline or emphysema progression at 5-year follow-up.
This is contrary to previous descriptions of frequent
exacerbators in COPDGene in which there was an
association between frequent exacerbations and excess
FEV1 decline.25
This difference is likely due to the fact
that in our current study we examined frequent
exacerbators who had asthma in early life. Subjects with
asthma may have different drivers of exacerbations than
those in usual subjects with COPD, as well as a slower
rate of lung function decline. Our current investigation
of disease progression in patients with asthma supports
work from the European Community Respiratory
Health survey examining 218 subjects with ACO and
showing that they had less FEV1 decline than did
subjects with COPD at 4- to 12-year follow-up but that
they had higher hospitalization rates.26
Similarly, in 55
subjects from an Australian cohort, ACO was not
associated with longitudinal lung function decline over 4
years.27
This study expands our understanding of the natural
history of COPD in smokers who had childhood
respiratory disease and highlights the significance of
asthma in early life, which is a known risk factor for the
development of COPD. Our study reveals that disease
progression is distinctly different for these subjects, who
experience more frequent and severe exacerbations but
without a significantly increased rate of lung function
decline. In fact, these subjects appeared to be protected
from a decline in lung function (in those who had
childhood asthma) or progression of emphysema (in
those with ACO). In a sensitivity analysis looking only at
subjects with COPD, childhood pneumonia was
associated with more frequent exacerbations without
any difference in rate of lung function decline, and
childhood asthma was associated with less FVC decline.
This study is limited by the use of a self-reported history
of pneumonia and asthma. Ideally, medical records of
diagnoses would be available; however, in this large
study of adult subjects, this would have required
childhood records, which was not feasible. Self-reported
diagnosis has been shown to be effective at revealing
meaningful subsets of subjects with early-life respiratory
disease in our prior investigations in this cohort, which
have included sensitivity analysis for recall bias.1,8,9,28
It
would be optimal to examine disease progression in
nonsmokers; however, this COPDGene investigation did
not include data on nonsmokers. This is an important
area for future investigation.
This study examines disease progression at 5-year
follow-up in approximately half of the original cohort. A
limitation in this population with significant morbidity
is a concern about selection bias. Ideally, we would
include all original subjects in longitudinal analysis. Of
the original 10,199 subjects enrolled, 6,056 have been
accounted for (59%), including 1,141 deaths and 4,915
subjects with phase 2 data. Additional efforts are
chestjournal.org 375
9. ongoing to bring back more subjects. The CT analysis is
limited by data being available only for a subset of phase
2 subjects, which particularly affected SRWA-Pi10 data.
Conclusions
We demonstrate that among a population of adult
smokers, asthma in early life results in more active
respiratory disease, with increased frequency and
severity of exacerbations but without an increased rate
of lung function decline or disease progression on chest
CT scans.22
Early-life respiratory diseases are known
risk factors for the development of COPD.1-5
COPD in
these populations is likely due to lung development
progressing along a reduced lung growth trajectory,
with maximal expected FEV1 never being achieved.
Thus, these subjects are at risk for reaching a level of
COPD even with only typical lung function decline
associated with aging. This investigation elucidates the
expected course of COPD in at-risk populations,
showing that early-life respiratory diseases are risk
factors for active disease without lung function decline.
This supports the idea that there is an alternative
pathway to reach COPD in smokers with early-life
respiratory disease, suggesting a subtype of COPD with
a different mechanism of reduced FEV1. These subjects
with asthma additionally may have different drivers of
respiratory exacerbations, and a better understanding of
this relationship could promote different therapeutic
considerations, allowing increased precision in COPD
treatment.
Acknowledgments
Author contributions: C. P. H. is the
guarantor of the paper and is responsible for
the data and study design and confirms that
the study objectives and procedures are
honestly disclosed. Moreover, he has
reviewed study execution data and confirms
that procedures were followed to an extent
that convinces all authors that the results are
valid and generalizable to a population
similar to that enrolled in this study. L. P. H.,
M. E. H., W. Q., D. A. L., M. J. S., E. J. v. B., J.
D. C., E. K. S., and C. P. H. contributed to
data analysis and interpretation, critical
revision of the article, and final approval of
the version to be published; they all agree to
be accountable for all aspects of the work. L.
P. H., M. E. H., D. A. L., M. J .S ., J. D .C., E.
K. S., and C. P. H. contributed to the study
conception and design. J. D. C., E. K. S., and
C. P. H. contributed to the acquisition of
data. L. P. H. and C. P. H. contributed to
drafting of the submitted article.
Financial/nonfinancial disclosures: The
authors have reported to CHEST the
following: C. P. H. reports personal fees from
AstraZeneca, grants from Boehringer
Ingelheim, personal fees from Mylan, and
personal fees from Concert Pharmaceuticals
outside the submitted work. D. A. L. reports
personal fees from Parexel, research support
from Veracyte, personal fees from Boehringer
Ingelheim, and personal fees from
Genentech/Roche. E. J. v. B. receives research
support unrelated to this manuscript from
Siemens Healthineers, GE Healthcare; he is a
founder/owner of QCTS, Ltd. and a
consultant for Holoxica, Ltd., Imbio, Inc., and
Mentholatum, Ltd. In the past 3 years, E. K.
S. has received honoraria from Novartis for
Continuing Medical Education Seminars and
grant and travel support from
GlaxoSmithKline unrelated to this
manuscript. M. E. H. works in the Clinical
Discovery Unit at AstraZeneca. None
declared (J. D. C., L. P. H., M. J. S., W. Q.).
Role of sponsors: The sponsor had no role in
the design of the study, the collection and
analysis of the data, or the preparation of the
manuscript. The content is solely the
responsibility of the authors and does not
necessarily represent the official views of the
National Heart, Lung, And Blood Institute or
the National Institutes of Health.
*
Collaborating investigators for the
COPDGene Study: Administrative Center:
James D. Crapo, MD (principle
investigator]); Barry J. Make, MD; Elizabeth
A. Regan, MD, PhD; Edwin K. Silverman,
MD, PhD (principle investigator). Genetic
Analysis Center: Terri Beaty, PhD; Ferdouse
Begum, PhD; Adel R. Boueiz, MD; Robert
Busch, MD; Peter J. Castaldi, MD, MSc;
Michael Cho, MD; Dawn L. DeMeo, MD,
MPH; Marilyn G. Foreman, MD, MS; Eitan
Halper-Stromberg; Nadia N. Hansel, MD,
MPH; Megan E. Hardin, MD; Lystra P.
Hayden, MD, MMSc; Craig P. Hersh, MD,
MPH; Jacqueline Hetmanski, MS, MPH;
Brian D. Hobbs, MD; John E. Hokanson,
MPH, PhD; Nan Laird, PhD; Christoph
Lange, PhD; Sharon M. Lutz, PhD; Merry-
Lynn McDonald, PhD; Margaret M. Parker,
PhD; Dandi Qiao, PhD; Elizabeth A. Regan,
MD, PhD; Stephanie Santorico, PhD; Edwin
K. Silverman, MD, PhD; Emily S. Wan, MD.
Sungho Won Imaging Center: Mustafa Al
Qaisi, MD; Harvey O. Coxson, PhD; Teresa
Gray; MeiLan K. Han, MD, MS; Eric A.
Hoffman, PhD; Stephen Humphries, PhD;
Francine L. Jacobson, MD, MPH; Philip F.
Judy, PhD; Ella A. Kazerooni, MD; Alex
Kluiber; David A. Lynch, MB; John D.
Newell, Jr, MD; Elizabeth A. Regan, MD,
PhD; James C. Ross, PhD; Raul San Jose
Estepar, PhD; Joyce Schroeder, MD; Jered
Sieren; Douglas Stinson; Berend C. Stoel,
PhD; Juerg Tschirren, PhD; Edwin Van Beek,
MD, PhD; Bram van Ginneken, PhD; Eva
van Rikxoort, PhD; George Washko, MD;
Carla G. Wilson, MS. PFT QA Center, Salt
Lake City, UT: Robert Jensen, PhD. Data
Coordinating Center and Biostatistics,
National Jewish Health, Denver, CO: Jim
Crooks, PhD; Douglas Everett, PhD; Camille
Moore, PhD; Matt Strand, PhD; Carla G.
Wilson, MS. Epidemiology Core, University
of Colorado Anschutz Medical Campus,
Aurora, CO: John E. Hokanson, MPH, PhD;
John Hughes, PhD; Gregory Kinney, MPH,
PhD; Sharon M. Lutz, PhD; Katherine Pratte,
MSPH; Kendra A. Young, PhD.
COPDGene Study Clinical Centers: Ann
Arbor VA: Jeffrey L. Curtis, MD; Carlos H.
Martinez, MD, MPH; Perry G. Pernicano,
MD. Baylor College of Medicine, Houston,
TX: Philip Alapat, MD; Mustafa Atik, MD;
Venkata Bandi, MD; Aladin Boriek, PhD;
Kalpatha Guntupalli, MD; Elizabeth Guy,
MD; Nicola Hanania, MD, MS; Arun
Nachiappan, MD; Amit Parulekar, MD.
Brigham and Women’s Hospital, Boston,
MA: Dawn L. DeMeo, MD, MPH; Craig
Hersh, MD, MPH; Francine L. Jacobson,
MD, MPH; George Washko, MD. Columbia
University, New York, NY: John Austin, MD;
R. Graham Barr, MD, DrPH; Belinda
D’Souza, MD; Gregory D.N. Pearson, MD;
Anna Rozenshtein, MD, MPH; Byron
Thomashow, MD. Duke University Medical
Center, Durham, NC: Neil MacIntyre, Jr.,
MD; H. Page McAdams, MD; Lacey
Washington, MD. HealthPartners Research
Institute, Minneapolis, MN: Charlene
McEvoy, MD, MPH; Joseph Tashjian, MD.
Johns Hopkins University, Baltimore, MD:
Robert Brown, MD; Nadia N. Hansel, MD,
MPH; Karen Horton, MD; Allison Lambert,
MD, MHS; Nirupama Putcha, MD, MHS;
Robert Wise, MD. Los Angeles Biomedical
Research Institute at Harbor UCLA Medical
Center, Torrance, CA: Alessandra Adami,
PhD; Matthew Budoff, MD; Richard
Casaburi, PhD, MD; Hans Fischer, MD;
Janos Porszasz, MD, PhD; Harry Rossiter,
PhD; William Stringer, MD. Michael E.
DeBakey VAMC, Houston, TX: Charlie Lan,
DO Amir Sharafkhaneh, MD, PhD.
Minneapolis VA: Brian Bell, MD; Christine
Wendt, MD. Morehouse School of Medicine,
376 Original Research [ 1 5 3 # 2 C H E S T F E B R U A R Y 2 0 1 8 ]
10. Atlanta, GA: Eugene Berkowitz, MD, PhD;
Marilyn G. Foreman, MD, MS; Gloria
Westney, MD, MS. National Jewish Health,
Denver, CO: Russell Bowler, MD, PhD;
David A. Lynch, MB. Reliant Medical Group,
Worcester, MA: David Pace; MD Richard
Rosiello, MD. Temple University,
Philadelphia, PA: David Ciccolella, MD;
Francis Cordova, MD; Gerard Criner, MD;
Chandra Dass, MD; Gilbert D’Alonzo, DO;
Parag Desai, MD; Michael Jacobs, PharmD;
Steven Kelsen, MD, PhD; Victor Kim, MD;
A. James Mamary, MD; Nathaniel Marchetti,
DO; Aditi Satti, MD; Kartik Shenoy, MD;
Robert M. Steiner, MD; Alex Swift, MD;
Irene Swift, MD; Maria Elena Vega-Sanchez,
MD. University of Alabama, Birmingham,
AL: William Bailey, MD; Surya Bhatt, MD;
Mark Dransfield, MD; Anand Iyer, MD;
Hrudaya Nath, MD; J. Michael Wells, MD.
University of California, San Diego, CA: Paul
Friedman, MD; Joe Ramsdell, MD; Xavier
Soler, MD, PhD; Andrew Yen, MD.
University of Iowa, Iowa City, IA: Alejandro
P. Comellas, MD; John Newell, Jr, MD; Brad
Thompson, MD. University of Michigan,
Ann Arbor, MI: MeiLan K. Han, MD, MS;
Ella Kazerooni, MD; Carlos H. Martinez,
MD, MPH. University of Minnesota,
Minneapolis, MN: Tadashi Allen, MD; Abbie
Begnaud, MD; Joanne Billings, MD.
University of Pittsburgh, Pittsburgh, PA:
Jessica Bon, MD; Divay Chandra, MD, MSc;
Carl Fuhrman, MD; Frank Sciurba, MD; Joel
Weissfeld, MD, MPH. University of Texas
Health Science Center at San Antonio, San
Antonio, TX: Sandra Adams, MD; Antonio
Anzueto, MD; Diego Maselli-Caceres, MD;
Mario E. Ruiz, MD.
Additional information: The e-Figures,
e-Tables, and e-Appendix can be found in the
Supplemental Materials section of the online
article.
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