SlideShare a Scribd company logo
AN OVERVIEW OF
CLINICAL DATA
REPOSITORY (CDR)
A presentation by
Netrah L
What is CDR?
 A Clinical Data Repository (CDR) is a
real time database that consolidates data
from a variety of clinical sources to
present a unified view of a single patient.
It is optimized to allow clinicians to
retrieve data for a single patient or to
facilitate the management of a specific
clinical trial.
 Typical data types which are often
found within a CDR include: laboratory
results, patient demographics, pharmacy
information, radiology reports, hospital
admission, transfer dates, ICD-9 codes,
discharge summaries & progress notes.
Need of CDR……
Key issues faced by the industry today in the clinical trial and
clinical safety space include:
• Non-uniform sets of data from EDC, CRO, Purchased Trial.
(Patient Data, Metadata, Financial Data)
• Data not integrated between Clinical Trial & Clinical Safety
• Performance Metrics – delay in getting
• Safety Signal Detection not effective on insufficient & poor
quality of data.
• Double Data Entry
• Reporting is mostly manual, time consuming & costly.
• Manual reconciliation of data
• High down time & maintenance window.
CDR Implementation- Challenges
Faced :
 Storage capacity
 Computing power
Reliability
Accessibility of the data
Electronic interface between all
the ancillary data sources and the
CDR
Network connection
Semantic mapping
User interface
Key features required of the CDR
architecture
 Provision for a standard format for information
collation and representation.
 The data coming from various internal and external
source systems need to be verified before
consolidation and aggregation.
 There is a definite need for storing history data. This
requirement will warrant the need for establishing a
Data Warehouse that can store time-varied data. Time
dimension would need to be implemented or a history
needs to be maintained in the staging area.
Key features required of the CDR
architecture – continued
 There is a need for generating reports of an analytical
nature. This will warrant the use of a best-of-breed OLAP
tool running against a dimensionally modeled Data
Repository.
 There is a need to provide accelerated response times
for the reports. Report using a dimensionally modeled
system in which case the data access would be a simple
query against the star schema can accelerate responses.
Clinical Data Repository
Framework
Data Sources
The CDR system extracts data from both the structured and
unstructured datasets.
Structured data sources - CRO Data, EDC Data, Safety data,
AERS data, Prescription Data, Patient Data, Purchased Trial
data, Dictionary Data and Coding Systems.
Unstructured datasets - the documents such as IVRS.
The Source System Interface Architecture Component
manages the extraction, verification and integration of
“changed data” from the Source System into the “Interface
Design Framework” and facilitates its transfer to the Data
Staging Subcomponent.
Data
Sources
Staging Layer
The key functionalities of this layer are:
1. Discard any unwanted data
2. Convert to common data names and definition
3. Calculate summaries, aggregation and derived data
4. Establish defaults for missing data
5. Accommodate source data definition changes
Data Warehouse Layer
Data
Warehouse
Layer
Reporting Layer
Reporting Layer - Any standard OLAP tool
Entire CDR Framework
SAS Tools for Clinical Data Repository
CDR Framework with SAS Components
Oracle Life Sciences Data Hub
CDR Framework with Oracle Life Sciences
Data Hub
Benefits of CDR
Ability to pool data across phases
Review safety data across products
Analyze data trends using a review tool
Use data mining for targeted populations
Allow project teams to oversee and manage clinical trials
through a single user interface with role-based access
Get rapid, near real-time access to data on clinicians' desktops
Respond to regulatory authority questions quickly and
confidently
Use data to make go/no-go decisions in product development
Look for data trends on marketed products for best practices in
patient care
Provide access to investors and clinical development partners
to make business decisions
An overview of clinical data repository

More Related Content

What's hot

Hmis in blood banks
Hmis in blood banksHmis in blood banks
Hmis in blood banks
Dr.Priyanka Phonde
 
Electronic Data Capture (EDC) Systems: Streamlining Data Collection
Electronic Data Capture (EDC) Systems: Streamlining Data CollectionElectronic Data Capture (EDC) Systems: Streamlining Data Collection
Electronic Data Capture (EDC) Systems: Streamlining Data Collection
ClinosolIndia
 
Literature search techniques
Literature search techniquesLiterature search techniques
Literature search techniques
Ahmed Elfaitury
 
Clinical data management
Clinical data managementClinical data management
Clinical data management
Gaurav Sharma
 
Informed consent and vulnerable populations
Informed consent and vulnerable populationsInformed consent and vulnerable populations
Informed consent and vulnerable populations
eliweber1980
 
Literature Searching Techniques by Nadeem Sohail
Literature Searching Techniques by Nadeem SohailLiterature Searching Techniques by Nadeem Sohail
Literature Searching Techniques by Nadeem Sohail
Nadeem Sohail
 
SAS - Statistical Analysis System
SAS - Statistical Analysis SystemSAS - Statistical Analysis System
SAS - Statistical Analysis System
Dr-Jitendra Patel
 
Laboratory Information Management System
Laboratory Information Management SystemLaboratory Information Management System
Laboratory Information Management System
Dr. Rajesh Bendre
 
Data management plan (important components and best practices) final v 1.0
Data management plan (important components and best practices) final v 1.0Data management plan (important components and best practices) final v 1.0
Data management plan (important components and best practices) final v 1.0
Amiit Keshav Naik
 
Patient recruitment
Patient recruitmentPatient recruitment
Patient recruitment
swati2084
 
Overview of ORCID for researchers
Overview of ORCID for researchersOverview of ORCID for researchers
Overview of ORCID for researchers
ORCID, Inc
 
Careers In Clinical Research
Careers In Clinical ResearchCareers In Clinical Research
Careers In Clinical Research
Khyati Dholakia
 
SAE REPORTING TIMELINE AND COMPENSATION 2019
SAE REPORTING TIMELINE AND COMPENSATION 2019SAE REPORTING TIMELINE AND COMPENSATION 2019
SAE REPORTING TIMELINE AND COMPENSATION 2019
Shweta Lal
 
Med dra Basics
Med dra  BasicsMed dra  Basics
Med dra Basics
Somnath Mondal
 
Ethics in clinical research
Ethics in clinical researchEthics in clinical research
Ethics in clinical research
Laxmikant Deshmukh
 
Introduction to sas
Introduction to sasIntroduction to sas
Introduction to sas
Ajay Ohri
 
Literature search
Literature searchLiterature search
Literature search
Chai-Eng Tan
 
Protocol Understanding_ Clinical Data Management_KatalystHLS
Protocol Understanding_ Clinical Data Management_KatalystHLSProtocol Understanding_ Clinical Data Management_KatalystHLS
Protocol Understanding_ Clinical Data Management_KatalystHLS
Katalyst HLS
 
Study setup_Clinical Data Management_Katalyst HLS
Study setup_Clinical Data Management_Katalyst HLSStudy setup_Clinical Data Management_Katalyst HLS
Study setup_Clinical Data Management_Katalyst HLS
Katalyst HLS
 
Icmr ethical guidelines for biomedical research on human subject
Icmr  ethical guidelines for biomedical research on human subjectIcmr  ethical guidelines for biomedical research on human subject
Icmr ethical guidelines for biomedical research on human subject
Suraj Pamadi
 

What's hot (20)

Hmis in blood banks
Hmis in blood banksHmis in blood banks
Hmis in blood banks
 
Electronic Data Capture (EDC) Systems: Streamlining Data Collection
Electronic Data Capture (EDC) Systems: Streamlining Data CollectionElectronic Data Capture (EDC) Systems: Streamlining Data Collection
Electronic Data Capture (EDC) Systems: Streamlining Data Collection
 
Literature search techniques
Literature search techniquesLiterature search techniques
Literature search techniques
 
Clinical data management
Clinical data managementClinical data management
Clinical data management
 
Informed consent and vulnerable populations
Informed consent and vulnerable populationsInformed consent and vulnerable populations
Informed consent and vulnerable populations
 
Literature Searching Techniques by Nadeem Sohail
Literature Searching Techniques by Nadeem SohailLiterature Searching Techniques by Nadeem Sohail
Literature Searching Techniques by Nadeem Sohail
 
SAS - Statistical Analysis System
SAS - Statistical Analysis SystemSAS - Statistical Analysis System
SAS - Statistical Analysis System
 
Laboratory Information Management System
Laboratory Information Management SystemLaboratory Information Management System
Laboratory Information Management System
 
Data management plan (important components and best practices) final v 1.0
Data management plan (important components and best practices) final v 1.0Data management plan (important components and best practices) final v 1.0
Data management plan (important components and best practices) final v 1.0
 
Patient recruitment
Patient recruitmentPatient recruitment
Patient recruitment
 
Overview of ORCID for researchers
Overview of ORCID for researchersOverview of ORCID for researchers
Overview of ORCID for researchers
 
Careers In Clinical Research
Careers In Clinical ResearchCareers In Clinical Research
Careers In Clinical Research
 
SAE REPORTING TIMELINE AND COMPENSATION 2019
SAE REPORTING TIMELINE AND COMPENSATION 2019SAE REPORTING TIMELINE AND COMPENSATION 2019
SAE REPORTING TIMELINE AND COMPENSATION 2019
 
Med dra Basics
Med dra  BasicsMed dra  Basics
Med dra Basics
 
Ethics in clinical research
Ethics in clinical researchEthics in clinical research
Ethics in clinical research
 
Introduction to sas
Introduction to sasIntroduction to sas
Introduction to sas
 
Literature search
Literature searchLiterature search
Literature search
 
Protocol Understanding_ Clinical Data Management_KatalystHLS
Protocol Understanding_ Clinical Data Management_KatalystHLSProtocol Understanding_ Clinical Data Management_KatalystHLS
Protocol Understanding_ Clinical Data Management_KatalystHLS
 
Study setup_Clinical Data Management_Katalyst HLS
Study setup_Clinical Data Management_Katalyst HLSStudy setup_Clinical Data Management_Katalyst HLS
Study setup_Clinical Data Management_Katalyst HLS
 
Icmr ethical guidelines for biomedical research on human subject
Icmr  ethical guidelines for biomedical research on human subjectIcmr  ethical guidelines for biomedical research on human subject
Icmr ethical guidelines for biomedical research on human subject
 

Similar to An overview of clinical data repository

Data mining and data warehousing
Data mining and data warehousingData mining and data warehousing
Data mining and data warehousing
JuliaWilson68
 
Clinicaldatamanagementindiaasahub 130313225150-phpapp01
Clinicaldatamanagementindiaasahub 130313225150-phpapp01Clinicaldatamanagementindiaasahub 130313225150-phpapp01
Clinicaldatamanagementindiaasahub 130313225150-phpapp01
Upendra Agarwal
 
BCS DMSG Healthcare Data Management : Transformation through Migration 26-1...
BCS DMSG Healthcare Data Management : Transformation through Migration   26-1...BCS DMSG Healthcare Data Management : Transformation through Migration   26-1...
BCS DMSG Healthcare Data Management : Transformation through Migration 26-1...
BCS Data Management Specialist Group
 
Clinical data-management-overview
Clinical data-management-overviewClinical data-management-overview
Clinical data-management-overview
Acri India
 
Qa what is_clinical_data_management
Qa what is_clinical_data_managementQa what is_clinical_data_management
Qa what is_clinical_data_management
Hitesh Kadam
 
Clinical data management
Clinical data management Clinical data management
Clinical data management
MadhukarSureshThagna
 
Clinical Data Management
Clinical Data ManagementClinical Data Management
Clinical Data Management
Mahesh Koppula
 
Data Mining
Data MiningData Mining
Data Mining
ksanthosh
 
Data Management in Clinical Research
Data Management in Clinical ResearchData Management in Clinical Research
Data Management in Clinical Research
ijtsrd
 
Bridging Health Care and Clinical Trial Data through Technology
Bridging Health Care and Clinical Trial Data through TechnologyBridging Health Care and Clinical Trial Data through Technology
Bridging Health Care and Clinical Trial Data through Technology
Saama
 
Reveal - An Enterprise Clinical Data Search Solution
Reveal - An Enterprise Clinical Data Search SolutionReveal - An Enterprise Clinical Data Search Solution
Reveal - An Enterprise Clinical Data Search Solution
d-Wise Technologies
 
Understanding clinical data management
Understanding clinical data managementUnderstanding clinical data management
Understanding clinical data management
finenessinstitute
 
FDA News Webinar - Inspection Intelligence
FDA News Webinar - Inspection IntelligenceFDA News Webinar - Inspection Intelligence
FDA News Webinar - Inspection Intelligence
Armin Torres
 
FDA News Webinar - Inspection Intelligence
FDA News Webinar - Inspection IntelligenceFDA News Webinar - Inspection Intelligence
FDA News Webinar - Inspection Intelligence
Armin Torres
 
Regulatory Intelligence
Regulatory IntelligenceRegulatory Intelligence
Regulatory Intelligence
Armin Torres
 
Chapter 12 Page 209Discussion Questions 2. How does a d.docx
Chapter 12 Page 209Discussion Questions    2. How does a d.docxChapter 12 Page 209Discussion Questions    2. How does a d.docx
Chapter 12 Page 209Discussion Questions 2. How does a d.docx
cravennichole326
 
Clinical Data Management
Clinical Data ManagementClinical Data Management
Clinical Data Management
biinoida
 
Clinical data management basics
Clinical data management basicsClinical data management basics
Clinical data management basics
Surabhi Jain
 
Flattening the Curve with Kafka (Rishi Tarar, Northrop Grumman Corp.) Kafka S...
Flattening the Curve with Kafka (Rishi Tarar, Northrop Grumman Corp.) Kafka S...Flattening the Curve with Kafka (Rishi Tarar, Northrop Grumman Corp.) Kafka S...
Flattening the Curve with Kafka (Rishi Tarar, Northrop Grumman Corp.) Kafka S...
confluent
 
City of hope research informatics common data elements
City of hope research informatics common data elementsCity of hope research informatics common data elements
City of hope research informatics common data elements
Abdul-Malik Shakir
 

Similar to An overview of clinical data repository (20)

Data mining and data warehousing
Data mining and data warehousingData mining and data warehousing
Data mining and data warehousing
 
Clinicaldatamanagementindiaasahub 130313225150-phpapp01
Clinicaldatamanagementindiaasahub 130313225150-phpapp01Clinicaldatamanagementindiaasahub 130313225150-phpapp01
Clinicaldatamanagementindiaasahub 130313225150-phpapp01
 
BCS DMSG Healthcare Data Management : Transformation through Migration 26-1...
BCS DMSG Healthcare Data Management : Transformation through Migration   26-1...BCS DMSG Healthcare Data Management : Transformation through Migration   26-1...
BCS DMSG Healthcare Data Management : Transformation through Migration 26-1...
 
Clinical data-management-overview
Clinical data-management-overviewClinical data-management-overview
Clinical data-management-overview
 
Qa what is_clinical_data_management
Qa what is_clinical_data_managementQa what is_clinical_data_management
Qa what is_clinical_data_management
 
Clinical data management
Clinical data management Clinical data management
Clinical data management
 
Clinical Data Management
Clinical Data ManagementClinical Data Management
Clinical Data Management
 
Data Mining
Data MiningData Mining
Data Mining
 
Data Management in Clinical Research
Data Management in Clinical ResearchData Management in Clinical Research
Data Management in Clinical Research
 
Bridging Health Care and Clinical Trial Data through Technology
Bridging Health Care and Clinical Trial Data through TechnologyBridging Health Care and Clinical Trial Data through Technology
Bridging Health Care and Clinical Trial Data through Technology
 
Reveal - An Enterprise Clinical Data Search Solution
Reveal - An Enterprise Clinical Data Search SolutionReveal - An Enterprise Clinical Data Search Solution
Reveal - An Enterprise Clinical Data Search Solution
 
Understanding clinical data management
Understanding clinical data managementUnderstanding clinical data management
Understanding clinical data management
 
FDA News Webinar - Inspection Intelligence
FDA News Webinar - Inspection IntelligenceFDA News Webinar - Inspection Intelligence
FDA News Webinar - Inspection Intelligence
 
FDA News Webinar - Inspection Intelligence
FDA News Webinar - Inspection IntelligenceFDA News Webinar - Inspection Intelligence
FDA News Webinar - Inspection Intelligence
 
Regulatory Intelligence
Regulatory IntelligenceRegulatory Intelligence
Regulatory Intelligence
 
Chapter 12 Page 209Discussion Questions 2. How does a d.docx
Chapter 12 Page 209Discussion Questions    2. How does a d.docxChapter 12 Page 209Discussion Questions    2. How does a d.docx
Chapter 12 Page 209Discussion Questions 2. How does a d.docx
 
Clinical Data Management
Clinical Data ManagementClinical Data Management
Clinical Data Management
 
Clinical data management basics
Clinical data management basicsClinical data management basics
Clinical data management basics
 
Flattening the Curve with Kafka (Rishi Tarar, Northrop Grumman Corp.) Kafka S...
Flattening the Curve with Kafka (Rishi Tarar, Northrop Grumman Corp.) Kafka S...Flattening the Curve with Kafka (Rishi Tarar, Northrop Grumman Corp.) Kafka S...
Flattening the Curve with Kafka (Rishi Tarar, Northrop Grumman Corp.) Kafka S...
 
City of hope research informatics common data elements
City of hope research informatics common data elementsCity of hope research informatics common data elements
City of hope research informatics common data elements
 

Recently uploaded

TrustArc Webinar - 2024 Global Privacy Survey
TrustArc Webinar - 2024 Global Privacy SurveyTrustArc Webinar - 2024 Global Privacy Survey
TrustArc Webinar - 2024 Global Privacy Survey
TrustArc
 
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with SlackLet's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
shyamraj55
 
GraphRAG for Life Science to increase LLM accuracy
GraphRAG for Life Science to increase LLM accuracyGraphRAG for Life Science to increase LLM accuracy
GraphRAG for Life Science to increase LLM accuracy
Tomaz Bratanic
 
20240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 202420240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 2024
Matthew Sinclair
 
UI5 Controls simplified - UI5con2024 presentation
UI5 Controls simplified - UI5con2024 presentationUI5 Controls simplified - UI5con2024 presentation
UI5 Controls simplified - UI5con2024 presentation
Wouter Lemaire
 
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Speck&Tech
 
Presentation of the OECD Artificial Intelligence Review of Germany
Presentation of the OECD Artificial Intelligence Review of GermanyPresentation of the OECD Artificial Intelligence Review of Germany
Presentation of the OECD Artificial Intelligence Review of Germany
innovationoecd
 
Removing Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software FuzzingRemoving Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software Fuzzing
Aftab Hussain
 
Climate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing DaysClimate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing Days
Kari Kakkonen
 
Your One-Stop Shop for Python Success: Top 10 US Python Development Providers
Your One-Stop Shop for Python Success: Top 10 US Python Development ProvidersYour One-Stop Shop for Python Success: Top 10 US Python Development Providers
Your One-Stop Shop for Python Success: Top 10 US Python Development Providers
akankshawande
 
Serial Arm Control in Real Time Presentation
Serial Arm Control in Real Time PresentationSerial Arm Control in Real Time Presentation
Serial Arm Control in Real Time Presentation
tolgahangng
 
Essentials of Automations: The Art of Triggers and Actions in FME
Essentials of Automations: The Art of Triggers and Actions in FMEEssentials of Automations: The Art of Triggers and Actions in FME
Essentials of Automations: The Art of Triggers and Actions in FME
Safe Software
 
National Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practicesNational Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practices
Quotidiano Piemontese
 
Choosing The Best AWS Service For Your Website + API.pptx
Choosing The Best AWS Service For Your Website + API.pptxChoosing The Best AWS Service For Your Website + API.pptx
Choosing The Best AWS Service For Your Website + API.pptx
Brandon Minnick, MBA
 
Fueling AI with Great Data with Airbyte Webinar
Fueling AI with Great Data with Airbyte WebinarFueling AI with Great Data with Airbyte Webinar
Fueling AI with Great Data with Airbyte Webinar
Zilliz
 
Generating privacy-protected synthetic data using Secludy and Milvus
Generating privacy-protected synthetic data using Secludy and MilvusGenerating privacy-protected synthetic data using Secludy and Milvus
Generating privacy-protected synthetic data using Secludy and Milvus
Zilliz
 
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success StoryDriving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Safe Software
 
CAKE: Sharing Slices of Confidential Data on Blockchain
CAKE: Sharing Slices of Confidential Data on BlockchainCAKE: Sharing Slices of Confidential Data on Blockchain
CAKE: Sharing Slices of Confidential Data on Blockchain
Claudio Di Ciccio
 
Video Streaming: Then, Now, and in the Future
Video Streaming: Then, Now, and in the FutureVideo Streaming: Then, Now, and in the Future
Video Streaming: Then, Now, and in the Future
Alpen-Adria-Universität
 
Monitoring and Managing Anomaly Detection on OpenShift.pdf
Monitoring and Managing Anomaly Detection on OpenShift.pdfMonitoring and Managing Anomaly Detection on OpenShift.pdf
Monitoring and Managing Anomaly Detection on OpenShift.pdf
Tosin Akinosho
 

Recently uploaded (20)

TrustArc Webinar - 2024 Global Privacy Survey
TrustArc Webinar - 2024 Global Privacy SurveyTrustArc Webinar - 2024 Global Privacy Survey
TrustArc Webinar - 2024 Global Privacy Survey
 
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with SlackLet's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
 
GraphRAG for Life Science to increase LLM accuracy
GraphRAG for Life Science to increase LLM accuracyGraphRAG for Life Science to increase LLM accuracy
GraphRAG for Life Science to increase LLM accuracy
 
20240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 202420240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 2024
 
UI5 Controls simplified - UI5con2024 presentation
UI5 Controls simplified - UI5con2024 presentationUI5 Controls simplified - UI5con2024 presentation
UI5 Controls simplified - UI5con2024 presentation
 
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
 
Presentation of the OECD Artificial Intelligence Review of Germany
Presentation of the OECD Artificial Intelligence Review of GermanyPresentation of the OECD Artificial Intelligence Review of Germany
Presentation of the OECD Artificial Intelligence Review of Germany
 
Removing Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software FuzzingRemoving Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software Fuzzing
 
Climate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing DaysClimate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing Days
 
Your One-Stop Shop for Python Success: Top 10 US Python Development Providers
Your One-Stop Shop for Python Success: Top 10 US Python Development ProvidersYour One-Stop Shop for Python Success: Top 10 US Python Development Providers
Your One-Stop Shop for Python Success: Top 10 US Python Development Providers
 
Serial Arm Control in Real Time Presentation
Serial Arm Control in Real Time PresentationSerial Arm Control in Real Time Presentation
Serial Arm Control in Real Time Presentation
 
Essentials of Automations: The Art of Triggers and Actions in FME
Essentials of Automations: The Art of Triggers and Actions in FMEEssentials of Automations: The Art of Triggers and Actions in FME
Essentials of Automations: The Art of Triggers and Actions in FME
 
National Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practicesNational Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practices
 
Choosing The Best AWS Service For Your Website + API.pptx
Choosing The Best AWS Service For Your Website + API.pptxChoosing The Best AWS Service For Your Website + API.pptx
Choosing The Best AWS Service For Your Website + API.pptx
 
Fueling AI with Great Data with Airbyte Webinar
Fueling AI with Great Data with Airbyte WebinarFueling AI with Great Data with Airbyte Webinar
Fueling AI with Great Data with Airbyte Webinar
 
Generating privacy-protected synthetic data using Secludy and Milvus
Generating privacy-protected synthetic data using Secludy and MilvusGenerating privacy-protected synthetic data using Secludy and Milvus
Generating privacy-protected synthetic data using Secludy and Milvus
 
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success StoryDriving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success Story
 
CAKE: Sharing Slices of Confidential Data on Blockchain
CAKE: Sharing Slices of Confidential Data on BlockchainCAKE: Sharing Slices of Confidential Data on Blockchain
CAKE: Sharing Slices of Confidential Data on Blockchain
 
Video Streaming: Then, Now, and in the Future
Video Streaming: Then, Now, and in the FutureVideo Streaming: Then, Now, and in the Future
Video Streaming: Then, Now, and in the Future
 
Monitoring and Managing Anomaly Detection on OpenShift.pdf
Monitoring and Managing Anomaly Detection on OpenShift.pdfMonitoring and Managing Anomaly Detection on OpenShift.pdf
Monitoring and Managing Anomaly Detection on OpenShift.pdf
 

An overview of clinical data repository

  • 1. AN OVERVIEW OF CLINICAL DATA REPOSITORY (CDR) A presentation by Netrah L
  • 2. What is CDR?  A Clinical Data Repository (CDR) is a real time database that consolidates data from a variety of clinical sources to present a unified view of a single patient. It is optimized to allow clinicians to retrieve data for a single patient or to facilitate the management of a specific clinical trial.  Typical data types which are often found within a CDR include: laboratory results, patient demographics, pharmacy information, radiology reports, hospital admission, transfer dates, ICD-9 codes, discharge summaries & progress notes.
  • 3. Need of CDR…… Key issues faced by the industry today in the clinical trial and clinical safety space include: • Non-uniform sets of data from EDC, CRO, Purchased Trial. (Patient Data, Metadata, Financial Data) • Data not integrated between Clinical Trial & Clinical Safety • Performance Metrics – delay in getting • Safety Signal Detection not effective on insufficient & poor quality of data. • Double Data Entry • Reporting is mostly manual, time consuming & costly. • Manual reconciliation of data • High down time & maintenance window.
  • 4. CDR Implementation- Challenges Faced :  Storage capacity  Computing power Reliability Accessibility of the data Electronic interface between all the ancillary data sources and the CDR Network connection Semantic mapping User interface
  • 5. Key features required of the CDR architecture  Provision for a standard format for information collation and representation.  The data coming from various internal and external source systems need to be verified before consolidation and aggregation.  There is a definite need for storing history data. This requirement will warrant the need for establishing a Data Warehouse that can store time-varied data. Time dimension would need to be implemented or a history needs to be maintained in the staging area.
  • 6. Key features required of the CDR architecture – continued  There is a need for generating reports of an analytical nature. This will warrant the use of a best-of-breed OLAP tool running against a dimensionally modeled Data Repository.  There is a need to provide accelerated response times for the reports. Report using a dimensionally modeled system in which case the data access would be a simple query against the star schema can accelerate responses.
  • 8. Data Sources The CDR system extracts data from both the structured and unstructured datasets. Structured data sources - CRO Data, EDC Data, Safety data, AERS data, Prescription Data, Patient Data, Purchased Trial data, Dictionary Data and Coding Systems. Unstructured datasets - the documents such as IVRS. The Source System Interface Architecture Component manages the extraction, verification and integration of “changed data” from the Source System into the “Interface Design Framework” and facilitates its transfer to the Data Staging Subcomponent.
  • 11. The key functionalities of this layer are: 1. Discard any unwanted data 2. Convert to common data names and definition 3. Calculate summaries, aggregation and derived data 4. Establish defaults for missing data 5. Accommodate source data definition changes
  • 12.
  • 16. Reporting Layer - Any standard OLAP tool
  • 18. SAS Tools for Clinical Data Repository
  • 19. CDR Framework with SAS Components
  • 21. CDR Framework with Oracle Life Sciences Data Hub
  • 22. Benefits of CDR Ability to pool data across phases Review safety data across products Analyze data trends using a review tool Use data mining for targeted populations Allow project teams to oversee and manage clinical trials through a single user interface with role-based access Get rapid, near real-time access to data on clinicians' desktops Respond to regulatory authority questions quickly and confidently Use data to make go/no-go decisions in product development Look for data trends on marketed products for best practices in patient care Provide access to investors and clinical development partners to make business decisions