This document provides a bibliography or list of references for the topic of "Identification and Validation of Drug Targets". It includes over 150 references in APA citation format from various sources like published papers, patents, books and reports. The references are grouped alphabetically and provide information to support further research on drug target identification and validation methods.
Oxygen therapy
Definition:
Oxygen is a colorless, odorless, tasteless gas that is essential for the body to function properly and to survive.
Oxygen therapy is a treatment that delivers oxygen gas to breathe. The oxygen therapy is received from tubes resting in nose, a face mask, or a tube placed n your trachea, or windpipe. This treatment increases the amount of oxygen in lungs to receive and deliver to blood.
What is meaning of O2 therapy
Oxygen therapy is the administration of oxygen at a concentration of pressure greater than that found in the environmental atmosphere
The air that we breathe contain approximately 21% oxygen
the heart relies on oxygen to pump blood.
Purpose
Oxygen therapy is a key treatment in respiratory care.
The purpose is to increase oxygen saturation in tissues where the saturation levels are too low due to illness or injury.
What are the signs that a person needs oxygen
shortness of breath.
headache.
restlessness.
dizziness.
rapid breathing.
chest pain.
confusion.
high blood pressure.
Contd…..
Pulmonary hypertension
Acute myocardial infarction (heart attack)
Short-term therapy, such as post-anesthesia recovery
Oxygen may also be used to treat chronic lung disease patients during exercise .
Methods of oxygen administration:
1- Nasal cannula
Face mask
The simple Oxygen mask
The partial rebreather mask:
The non rebreather mask:
The venturi mask:
The partial rebreather mask:
The mask is have with a reservoir bag must romaine inflated during both inspiration & expiration
It collection of the first parts of the patients' exhaled air.
It is used to deliver oxygen concentrations up to 80%.
The non rebreather mask
This mask provides the highest concentration of
oxygen (95-100%) at a flow rate6-15 L/min.
It is similar to the partial rebreather mask
except two one-way valves prevent conservation of exhaled air.
The bag is an oxygen reservoir
Venturi mask
It is high flow concentration of oxygen.
Oxygen from 40 - 50%
At liters flow of 4 to 15 L/min.
T-piece
Used on end of ET tube when weaning from ventilator
Provides accurate FIO2
Provides good humidity
Documentation:
Date and time oxygen started.
Method of delivery.
Oxygen concentration and flow rate.
Patient observation.
Add oronasal care to the nursing care plan
O2 DELIVERY DEVICES
Infection occurring in a patient in a hospital or other health care facility in whom the infection was not present or incubating at the time of admission.
Oxygen therapy
Definition:
Oxygen is a colorless, odorless, tasteless gas that is essential for the body to function properly and to survive.
Oxygen therapy is a treatment that delivers oxygen gas to breathe. The oxygen therapy is received from tubes resting in nose, a face mask, or a tube placed n your trachea, or windpipe. This treatment increases the amount of oxygen in lungs to receive and deliver to blood.
What is meaning of O2 therapy
Oxygen therapy is the administration of oxygen at a concentration of pressure greater than that found in the environmental atmosphere
The air that we breathe contain approximately 21% oxygen
the heart relies on oxygen to pump blood.
Purpose
Oxygen therapy is a key treatment in respiratory care.
The purpose is to increase oxygen saturation in tissues where the saturation levels are too low due to illness or injury.
What are the signs that a person needs oxygen
shortness of breath.
headache.
restlessness.
dizziness.
rapid breathing.
chest pain.
confusion.
high blood pressure.
Contd…..
Pulmonary hypertension
Acute myocardial infarction (heart attack)
Short-term therapy, such as post-anesthesia recovery
Oxygen may also be used to treat chronic lung disease patients during exercise .
Methods of oxygen administration:
1- Nasal cannula
Face mask
The simple Oxygen mask
The partial rebreather mask:
The non rebreather mask:
The venturi mask:
The partial rebreather mask:
The mask is have with a reservoir bag must romaine inflated during both inspiration & expiration
It collection of the first parts of the patients' exhaled air.
It is used to deliver oxygen concentrations up to 80%.
The non rebreather mask
This mask provides the highest concentration of
oxygen (95-100%) at a flow rate6-15 L/min.
It is similar to the partial rebreather mask
except two one-way valves prevent conservation of exhaled air.
The bag is an oxygen reservoir
Venturi mask
It is high flow concentration of oxygen.
Oxygen from 40 - 50%
At liters flow of 4 to 15 L/min.
T-piece
Used on end of ET tube when weaning from ventilator
Provides accurate FIO2
Provides good humidity
Documentation:
Date and time oxygen started.
Method of delivery.
Oxygen concentration and flow rate.
Patient observation.
Add oronasal care to the nursing care plan
O2 DELIVERY DEVICES
Infection occurring in a patient in a hospital or other health care facility in whom the infection was not present or incubating at the time of admission.
“Patient Education is an individualized, systematic, structured process to assess and impart knowledge or develop a skill in order to effect a change in behavior. The goal is to increase comprehension and participation in the self-management of health care needs.”
it includes the nursing care plan examples related to the respiratory system and their intervention in ideal format. check this for your reference. it help us to know the planning. its given according to NANDA nursing diagnosis.
This PPT is for the all the nursing staff and student working at clinical sided to control infection, maintain aseptic technique while doing procedure and compulsory use the PPE.
“Patient Education is an individualized, systematic, structured process to assess and impart knowledge or develop a skill in order to effect a change in behavior. The goal is to increase comprehension and participation in the self-management of health care needs.”
it includes the nursing care plan examples related to the respiratory system and their intervention in ideal format. check this for your reference. it help us to know the planning. its given according to NANDA nursing diagnosis.
This PPT is for the all the nursing staff and student working at clinical sided to control infection, maintain aseptic technique while doing procedure and compulsory use the PPE.
Drug Development Life Cycle - Costs and RevenueRobert Sturm
Presentation explains the Drug Development Process in terms of time/costs from initial research to final manufacturing. It presents strategies for increasing profits/decreasing costs, shows the impact of generics and details how Information Technology fits into this equation. It uses research from DiMasi and Grabowski to identify drug costs and product revenue.
Article critiques ( Min 1500 words) Styles of leadership. .docxdavezstarr61655
Article critiques :( Min 1500 words)
Styles of leadership.
Note :-( Rules for submission) The structure includes:
• Title – informs us it is a review
• Informative Abstract – informs us this is a meta-analysis (novel analysis in a novel context of previously published data)
• Introduction
• Body – Material & Methods, Results (including the use of tables and figures to display novel findings), Discussion
• Conclusion – a listing of novel findings of the meta-analysis
• References – organized alphabetically
1. Abstract On your abstract page, center the word “Abstract” at the top of the page without any additional formatting.
On the next line, write a concise summary of your critique. This should be a brief summary about the article and your critique. Examples of points to make in this paragraph include objectively analyzing the article and evaluating its contributions to learning. This paragraph should be between 150 to 250 words.
2. Main Body Type your title at the top of the page without any additional formatting. Following a double space, begin writing your critique. Journal critiques analyze a variety of topics. Examples of issues you may want to include in this section include whether you found any errors of fact or interpretation, the author was objective.
Choose one of the following subjects:
1-Bureaucratic Leadership
2-Charismatic Leadership
3-Servant Leadership
4-Transactional Leadership
References
Bacco, Alessandra Di, and Grace Gill. "The Secreted Glycoprotein CREG Inhibits Cell Growth Dependent on the Mannose-6-phosphate|[sol]|insulin-like Growth Factor II Receptor." Nature News. Nature Publishing Group, 21 Aug. 2003.
Bauer, Matthias, Anne C. Hamm, Melanie Bonaus, Andrea Jacob, Jens Jaekel, Hubert Schorle, Michael J. Pankratz, and Joerg D. Katzenberger. "Starvation Response in Mouse Liver Shows Strong Correlation with Life-span-prolonging Processes." Physiological Genomics. American Physiological Society, 13 Apr. 2004.
Briers, Demarcus. "Liver: Cell Types Found in Liver Simplified." DBrierscom. N.p., 20 Sept. 2012.
Bulla, Gary A. "Selective Loss of the Hepatic Phenotype Due to the Absence of a Transcriptional Activation Pathway." Somatic Cell and Molecular Genetics, 7 Mar. 1997.
Bulla, Gary. "Extinction of Alpha1-antitrypsin Expression in Cell Hybrids Is Independent of HNF1alpha and HNF4 and Involves Both Promoter and Internal DNA Sequences." Nucleic Acids Research 27 April. 1999. 1190-197.
Bulla, Gary A., Caitlin M. Aylmer, Adele L. Dust, Jeffrey L. Kurkewich, Leon K. Mire, and Arnold B. Estanda. "Genome-wide Analysis of Hepatic Gene Silencing in Hepatoma Cell Variants." Genomics 100.3 (2012): 176-83.
Bustin, Stephens. “Absolute Quantification of mRNA Using Real-Time Reverse Transcription Polymerase Chain Reaction Assays.” Journal of Molecular Endocrinology 25 (2000): 169–193.
Castell James and Gomez-Lechon John. “Liver Cell Culture Techniques.” Methods in Molecular Biology 481 (2009): 36-46.
.
The IOSR Journal of Pharmacy (IOSRPHR) is an open access online & offline peer reviewed international journal, which publishes innovative research papers, reviews, mini-reviews, short communications and notes dealing with Pharmaceutical Sciences( Pharmaceutical Technology, Pharmaceutics, Biopharmaceutics, Pharmacokinetics, Pharmaceutical/Medicinal Chemistry, Computational Chemistry and Molecular Drug Design, Pharmacognosy & Phytochemistry, Pharmacology, Pharmaceutical Analysis, Pharmacy Practice, Clinical and Hospital Pharmacy, Cell Biology, Genomics and Proteomics, Pharmacogenomics, Bioinformatics and Biotechnology of Pharmaceutical Interest........more details on Aim & Scope).
All manuscripts are subject to rapid peer review. Those of high quality (not previously published and not under consideration for publication in another journal) will be published without delay.
This is a presentation by Dada Robert in a Your Skill Boost masterclass organised by the Excellence Foundation for South Sudan (EFSS) on Saturday, the 25th and Sunday, the 26th of May 2024.
He discussed the concept of quality improvement, emphasizing its applicability to various aspects of life, including personal, project, and program improvements. He defined quality as doing the right thing at the right time in the right way to achieve the best possible results and discussed the concept of the "gap" between what we know and what we do, and how this gap represents the areas we need to improve. He explained the scientific approach to quality improvement, which involves systematic performance analysis, testing and learning, and implementing change ideas. He also highlighted the importance of client focus and a team approach to quality improvement.
Synthetic Fiber Construction in lab .pptxPavel ( NSTU)
Synthetic fiber production is a fascinating and complex field that blends chemistry, engineering, and environmental science. By understanding these aspects, students can gain a comprehensive view of synthetic fiber production, its impact on society and the environment, and the potential for future innovations. Synthetic fibers play a crucial role in modern society, impacting various aspects of daily life, industry, and the environment. ynthetic fibers are integral to modern life, offering a range of benefits from cost-effectiveness and versatility to innovative applications and performance characteristics. While they pose environmental challenges, ongoing research and development aim to create more sustainable and eco-friendly alternatives. Understanding the importance of synthetic fibers helps in appreciating their role in the economy, industry, and daily life, while also emphasizing the need for sustainable practices and innovation.
How to Create Map Views in the Odoo 17 ERPCeline George
The map views are useful for providing a geographical representation of data. They allow users to visualize and analyze the data in a more intuitive manner.
Palestine last event orientationfvgnh .pptxRaedMohamed3
An EFL lesson about the current events in Palestine. It is intended to be for intermediate students who wish to increase their listening skills through a short lesson in power point.
The Indian economy is classified into different sectors to simplify the analysis and understanding of economic activities. For Class 10, it's essential to grasp the sectors of the Indian economy, understand their characteristics, and recognize their importance. This guide will provide detailed notes on the Sectors of the Indian Economy Class 10, using specific long-tail keywords to enhance comprehension.
For more information, visit-www.vavaclasses.com
Operation “Blue Star” is the only event in the history of Independent India where the state went into war with its own people. Even after about 40 years it is not clear if it was culmination of states anger over people of the region, a political game of power or start of dictatorial chapter in the democratic setup.
The people of Punjab felt alienated from main stream due to denial of their just demands during a long democratic struggle since independence. As it happen all over the word, it led to militant struggle with great loss of lives of military, police and civilian personnel. Killing of Indira Gandhi and massacre of innocent Sikhs in Delhi and other India cities was also associated with this movement.
Welcome to TechSoup New Member Orientation and Q&A (May 2024).pdfTechSoup
In this webinar you will learn how your organization can access TechSoup's wide variety of product discount and donation programs. From hardware to software, we'll give you a tour of the tools available to help your nonprofit with productivity, collaboration, financial management, donor tracking, security, and more.
How to Split Bills in the Odoo 17 POS ModuleCeline George
Bills have a main role in point of sale procedure. It will help to track sales, handling payments and giving receipts to customers. Bill splitting also has an important role in POS. For example, If some friends come together for dinner and if they want to divide the bill then it is possible by POS bill splitting. This slide will show how to split bills in odoo 17 POS.
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