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Toward leveraging publicly accessible clinical
trials data- sharing, dissemination, and
repurposing
Sanchita Bhattacharya
Bioinformatics Project Leader
Bakar Institute of Computational Health Sciences
University of California, San Francisco
2
v Clinical trials generate vast amounts of data, a large portion is
never published or made available to other researchers.
v Data sharing could advance scientific discovery and improve
clinical care by maximizing the knowledge gained from data
collected in trials, stimulating new ideas for research, and
avoiding unnecessarily duplicative trials.
Motivation
Clinical Trial Life Cycle: When to Share Data
3
2
.
C L I N I C A L
T R I A L M I L E S T
O N E
K E Y
:
M E TA D ATA INDIVIDU AL
PARTICIPANT D A T A
SUMMAR Y D A T A
At t r i a l
re g i st rat i o n
1 2 m o n t h s
a f te r st u d y
co m p l e t i o n
1 8 m o n t h s a f t e r
p ro d u c t a b a n d o n m e n t
O R 3 0 d a y s a f t e r
re g u l a t o r y a p p r o v al**
6 M o n t h s
a f te r
p u b l i c at i o n *
DA T A
S H A R I N G
P L A N
R E G I ST R AT I O N
E L E M E N TS
F U L L DA TA
P A CKA GE
P OST- R E G U L ATO RY
DA TA P AC KAG E
1 8 m o n t h s
a f te r st u d y
co m p l e t i o n
S U M M A RY-
L E V E L
R E S U LTS
LAY
S U M M A R I E S
P A R T I C I PA N T
E N R O L L M E N T
N O
5
B
T R I A L D E S I G N
& R E G I S T R AT I O N1
ST U DY CO M P L E T I O N
O R T E R M I N AT I O N 3
Y E S
5
A
R E G U L ATO R Y
A P P L I C AT I O N ?
2
P OST- P U B L I C A T I O N
DA TA P AC KAG E
P U B L I C AT I O N
4
Sharing Clinical Trial Data: Maximizing Benefits, Minimizing Risk.
http://www.iom.edu/Reports/2015/
Institute of Medicine Report on
Sharing Clinical Trial Data: Maximizing Benefits, Minimizing Risk
http://www.iom.edu/Reports/2015/Sharing-Clinical-Trial-Data.aspx
• Benefits of Data sharing
ü confirm published results,
ü generate better evidence,
ü facilitate additional findings,
ü prevent duplicate trials, and
ü ultimately improve public health.
4
• Risks of Data Sharing
ü privacy of clinical trial participants
ü legitimate economic interests of sponsors
ü invalid secondary analyses
ü appropriate recognition of the researchers for their
intellectual contributions
ü fear of research institutions that data sharing will be
unfunded mandates.
Institute of Medicine Report on
Sharing Clinical Trial Data: Maximizing Benefits, Minimizing Risk
http://www.iom.edu/Reports/2015/Sharing-Clinical-Trial-Data.aspx
5
Non-Profit
Organizations
Government Health
Agencies
Pharmaceutical
Companies
6
Market and Regulatory forces are driving initiatives to publicly
share patient-level data from clinical trials
Non-Profit
Organizations
Government Health
Agencies
Pharmaceutical
Companies
7
Electronic portals for requesting, sharing and analyzing clinical
trial data
8
Yu et al., Current Opinion in Systems Biology, 2019
Molecular Portraits of Immune System
ImmPort.org
ImmPort data portal was developed to collect and share research
and clinical trials data from NIAID/DAIT* funded researchers
*National Institute of Allergy and Infectious Diseases, Division of
Allergy, Immunology and Transplantation (NIAID-DAIT)
10
ImmPort redistributes data from
major NIAID-funded programs and more
Data from 300+ trials and studies already released, involving:
• Human Immunology Project Consortium (HIPC)
• Accelerating Medicines Partnership (AMP) in Rheumatoid
Arthritis and Lupus (AMP)
§ National Cancer Institute, Oncology Models Forum
§ March of Dimes: Preterm Birth Research
• Immune Tolerance Network (ITN)
• Atopic Dermatitis Research Network (ADRN)
• Clinical Trials in Organ Transplantation (CTOT) and in Children
(CTOT-C)
• Population Genetics Analysis Program
• Protective Immunity for Special Populations
• HLA Region Genomics in Immune-mediated Diseases
• Modeling Immunity for Biodefense
• Reagent Development for Innate Immune Receptors
• Adjuvant Development Program
• Immunity in Neonates and InfantsAsthma and Allergic Diseases
Cooperative Research CentersHLA and KIR Region Genomics in
Immune-Mediated Diseases
§ Cooperative Study Group for Autoimmune Disease Prevention
§ Immunobiology of Xenotransplantation
§ Centers for Medical Countermeasures against Radiation
Consortium
§ Inner City Asthma Consortium
§ Systems Approach to Immunity and Inflammation
§ Innate Immune Receptors and Adjuvant Discovery Program
§ Maintenance of Macaque Specific Pathogen-Free Breeding
Colonies
§ Non-human Primate Transplantation Tolerance Cooperative
Study Group
§ Consortium for Food Allergy Research
§ Development of Sample Sparing Assays for Monitoring Immune
Responses (U24)
Data Flow
Standards
De-Identification
Standardization
Semantic Harmonization
Private Data
Data Analysis
Flow Cytometry
Data Analysis
ImmPort Galaxy
immuneXpresso
Gene Lists
Cell Ontology Browser
Shared Data
ImmPort APIs
Data Catalogs
Database
Format
Flat Files
Resources
Templates
Validation Service
Ontologies
Tutorials
ImmPort Ecosystem
Data providers
Research Community
Shared Data Repositories
dbGAP, SRA, ...
NIAID ImmPort Data
ReUse Initiative
Indexing
DOIs
ImmuneSpace
Data Re-Analysis
RImmPort
10K Immunomes
MetaCyto
Trajectory-based Visualization
Repurposing
Research Community, Citizens
and Data Enthusiasts
Data Model Schematic
Focus Areas and Data Types
Total Human Subjects (46937)
Total Studies (413) Total Experiments (1638)
Immunology Research Studies- 291
Clinical Trials- 122
Influenza Vaccination Studies in ImmPort
Reproducibility
Re-Analyze
Repurpose
Reanalysis of the Rituximab in ANCA-Associated Vasculitis trial
identifies granulocyte subsets as a novel early marker of
successful treatment.
Nasrallah, M., Pouliot, Y., Hartmann, B. et al. Arthritis Res Ther 17, 262
(2015)
RAVE Trial: Rituximab in ANCA-Associated Vasculitis
COMPLETE REMISSION
● Randomized, double-blind, active-
controlled, non-inferiority, phase II/III
trial comparing Rituximab to
Cyclophosphamide for induction of
remission
● 63 of the 99 patients in the rituximab
group (64%) reached the primary end
point, as compared with 52 of 98 in the
cyclophosphomide group (53%).
197 participants Multi-center
Stone et al., NEJM (2010)
Primary Endpoint
● 35% of patients treated with rituximab and 47% of patients
treated with cyclophosphamide failed to achieve remission.
● In retrospect, do any measured factors
predict response to therapies?
Proposed personalized treatment option based on
cellular profiling
Nasrallah et al., Arthritis Res.Ther (2015)
C
R
20
Targeted_therapy_graph
ANCA-
associated
Vasculitis
Profiled
Therapy
~ 54% of patients
Non-profiled
Therapy
~46% of patients
Treat with
Rituximab
~ 30% of patients
Remission Rate ~ 83%
Treat with
Cyclophosphamide
~24% of patients
Remission Rate ~ 66%
Do not treat with
Cyclophosphamide
Failure rate ~ 67%
Do not treat with
Rituximab
Failure rate ~ 70%
GI ≤ -9.25%
OR
GI ≥ 47.6%
GI ≤ -9.25% GI ≥ 47.6%
Treat with either Rituximab or
Cyclophosphamide
according to best clinical judgement
Average Remission Rate ~ 60%
Non-profiled
Therapy
100% of patients
NO
Proposed
Method
Current
Method
Measure the Granularity Index
(GI)
YES
Proposed Personalized Treatment on the Basis of Granularity Index
The 10,000 Immunomes project
• Large, diverse, cleaned reference dataset
for human immunology
• Interactive data visualization
• Custom control cohorts and standardized
data download
85 Studies
10,344 Subjects
42,000+ Samples
Manual curation of studies, arms, and planned
visits to filter for normal human subjects
Data available in the
10,000 Immunomes Project
Total Samples 42117
Total Distinct Subjects 10344
MEASUREMENT
Secreted Proteins
SUBJECTS
4835
ELISA 4035
Multiplex ELISA 1286
Virus Titer 3609
Virus Neutralization Titer 2265
HAI Titer 1344
Clinical Lab Tests 2639
Complete Blood Count 1684
Comprehensive Metabolic Panel 664
Fasting Lipid Profile 664
Questionnaire 1422
Cytometry 1415
Flow Cytometry (PBMC) 907
CyTOF (PBMC) 583
Flow Cytometry (Whole Blood) 164
HLA Type 1093
Gene Expression Array 476
Whole Blood 311
PBMC 165
10kimmunomes.org
Journal of the American Medical Informatics Association, Volume 23, Issue 3, 1 May 2016
Extracting PubMed record-associated MeSH
descriptors
The Knowledge model
ImmPort
Cytokines
Therapeutic
target
Diagnostic
marker
Clinical data
Expression data
Text mining
ArrayExpress GEO
Open Source
Clinical trials
Nophar Geifman
The Knowledge model
DiseaseCell types Cytokines
Clinical data
(ELISA, Elispot)
Clinical data
(Blood tests, Flow cytometry)
Curated knowledge Expression data
Text miningGender
Ethnicity
Age
Diagnostics and
Therapeutics
26
Different Clusters are Characterized By Different Cytokine Patterns
IL-6
TNF-a
4
Different Clusters are Characterized By Different Cytokine Patterns
IL-4
IL-5
IL-8
IFNg
IL-
10
IL-
13
CCL11
15
TNF-a
Different Clusters are Characterized By Different Cytokine Patterns
TNF-aIFNg
23
30
TherapeuticsDiagnostics
immGrakn: Vaccine Knowledgebase
31
Influenza Vaccination Studies in ImmPort
33
Challenges and Opportunities
• Crowd-sourced
• Data silos
• Interoperability- federated repositories
• Lack of data standards
§ Effect of age, gender, race on vaccination
§ Immune response in vaccinated individuals with disease conditions
(e.g., acute, chronic)
§ Effect of medications on vaccination response
§ Improving standard of care
v Better understanding of Vaccination Response
34
Ø limit complexity and organize information into data and knowledge.
Ø compilation of facts and figures that can be used to provide contextual
meaning to searches.
Knowledge Graphs: Connecting the dots
Sub Types:
*Categories (e.g., cardiac,
autoimmune etc.)
*Condition (e.g., Asymptomatic,
Acute, Chronic)
Sub Type:
* Condition
(e.g.,
Pregnant
Subject
age
gender
race
zygosity
has
has
has
has
Clinical
Phenotype
disease
health
type
Vaccine
year
strain
outcome
Interventionreceives
patient
has
has
has
ImmGRAKN
knowledgebase
Drug
Molecular (DNA, mRNA,
protein, cell,)
Microbiome
has
preventiontherapeutic
Biosample
assessment
36
ImmGRAKN
knowledgebase model
Take Home Messages
• Holistic approach to analyzing clinical trials data
• Open-access clinical trials are a valuable resource to evaluate new
hypotheses, gain novel insights, and inform a better trial design
• 10Kimmunomes- reference dataset generated by integrating individual
level data from publicly available immunology studies.
• Knowledge Graphs can be used as a semantic search engine sparking
new ideas and finding unexpected connections in research and knowledge
discovery applications.
Embrace open-access clinical trials!
Acknowledgements
Atul Butte
Northrop Grumman
Health Solutions
Elizabeth Thomson
Patrick Dunn
Henry Schaefer
John Campbell
Morgan Crafts
Zicheng Hu
Kelly Zalocusky
Matthew Elliott
Daniel Wu
Data Providers
@ImmPortDB bit.ly/10kimmu
Funding Support
National Institute of Allergy and Infectious
Diseases (NIAID)
National Institutes of Health (NIH)
Health and Human Services (HHS)
Contract #: HHSN316201200036W
Priscilla Chan and Mark Zuckerberg
Distinguished Professor.
Director, Bakar Computational
Health Sciences Institute, UCSF
Tomas Sabat
Soroush Saffari
Daniel Crowe
Nophar Geifman
University of Manchester
THANKS
Sanchita.Bhattacharya@ucsf.edu
@sanchitab
39
Bakar Institute of Computational Health Sciences
University of California, San Francisco

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Leveraging Publicly Accessible Clinical Trails Data Sharing, Dissemination and Repurposing

  • 1. Toward leveraging publicly accessible clinical trials data- sharing, dissemination, and repurposing Sanchita Bhattacharya Bioinformatics Project Leader Bakar Institute of Computational Health Sciences University of California, San Francisco
  • 2. 2 v Clinical trials generate vast amounts of data, a large portion is never published or made available to other researchers. v Data sharing could advance scientific discovery and improve clinical care by maximizing the knowledge gained from data collected in trials, stimulating new ideas for research, and avoiding unnecessarily duplicative trials. Motivation
  • 3. Clinical Trial Life Cycle: When to Share Data 3 2 . C L I N I C A L T R I A L M I L E S T O N E K E Y : M E TA D ATA INDIVIDU AL PARTICIPANT D A T A SUMMAR Y D A T A At t r i a l re g i st rat i o n 1 2 m o n t h s a f te r st u d y co m p l e t i o n 1 8 m o n t h s a f t e r p ro d u c t a b a n d o n m e n t O R 3 0 d a y s a f t e r re g u l a t o r y a p p r o v al** 6 M o n t h s a f te r p u b l i c at i o n * DA T A S H A R I N G P L A N R E G I ST R AT I O N E L E M E N TS F U L L DA TA P A CKA GE P OST- R E G U L ATO RY DA TA P AC KAG E 1 8 m o n t h s a f te r st u d y co m p l e t i o n S U M M A RY- L E V E L R E S U LTS LAY S U M M A R I E S P A R T I C I PA N T E N R O L L M E N T N O 5 B T R I A L D E S I G N & R E G I S T R AT I O N1 ST U DY CO M P L E T I O N O R T E R M I N AT I O N 3 Y E S 5 A R E G U L ATO R Y A P P L I C AT I O N ? 2 P OST- P U B L I C A T I O N DA TA P AC KAG E P U B L I C AT I O N 4 Sharing Clinical Trial Data: Maximizing Benefits, Minimizing Risk. http://www.iom.edu/Reports/2015/
  • 4. Institute of Medicine Report on Sharing Clinical Trial Data: Maximizing Benefits, Minimizing Risk http://www.iom.edu/Reports/2015/Sharing-Clinical-Trial-Data.aspx • Benefits of Data sharing ü confirm published results, ü generate better evidence, ü facilitate additional findings, ü prevent duplicate trials, and ü ultimately improve public health. 4
  • 5. • Risks of Data Sharing ü privacy of clinical trial participants ü legitimate economic interests of sponsors ü invalid secondary analyses ü appropriate recognition of the researchers for their intellectual contributions ü fear of research institutions that data sharing will be unfunded mandates. Institute of Medicine Report on Sharing Clinical Trial Data: Maximizing Benefits, Minimizing Risk http://www.iom.edu/Reports/2015/Sharing-Clinical-Trial-Data.aspx 5
  • 6. Non-Profit Organizations Government Health Agencies Pharmaceutical Companies 6 Market and Regulatory forces are driving initiatives to publicly share patient-level data from clinical trials
  • 8. 8 Yu et al., Current Opinion in Systems Biology, 2019 Molecular Portraits of Immune System
  • 9. ImmPort.org ImmPort data portal was developed to collect and share research and clinical trials data from NIAID/DAIT* funded researchers *National Institute of Allergy and Infectious Diseases, Division of Allergy, Immunology and Transplantation (NIAID-DAIT)
  • 10. 10 ImmPort redistributes data from major NIAID-funded programs and more Data from 300+ trials and studies already released, involving: • Human Immunology Project Consortium (HIPC) • Accelerating Medicines Partnership (AMP) in Rheumatoid Arthritis and Lupus (AMP) § National Cancer Institute, Oncology Models Forum § March of Dimes: Preterm Birth Research • Immune Tolerance Network (ITN) • Atopic Dermatitis Research Network (ADRN) • Clinical Trials in Organ Transplantation (CTOT) and in Children (CTOT-C) • Population Genetics Analysis Program • Protective Immunity for Special Populations • HLA Region Genomics in Immune-mediated Diseases • Modeling Immunity for Biodefense • Reagent Development for Innate Immune Receptors • Adjuvant Development Program • Immunity in Neonates and InfantsAsthma and Allergic Diseases Cooperative Research CentersHLA and KIR Region Genomics in Immune-Mediated Diseases § Cooperative Study Group for Autoimmune Disease Prevention § Immunobiology of Xenotransplantation § Centers for Medical Countermeasures against Radiation Consortium § Inner City Asthma Consortium § Systems Approach to Immunity and Inflammation § Innate Immune Receptors and Adjuvant Discovery Program § Maintenance of Macaque Specific Pathogen-Free Breeding Colonies § Non-human Primate Transplantation Tolerance Cooperative Study Group § Consortium for Food Allergy Research § Development of Sample Sparing Assays for Monitoring Immune Responses (U24)
  • 11. Data Flow Standards De-Identification Standardization Semantic Harmonization Private Data Data Analysis Flow Cytometry Data Analysis ImmPort Galaxy immuneXpresso Gene Lists Cell Ontology Browser Shared Data ImmPort APIs Data Catalogs Database Format Flat Files Resources Templates Validation Service Ontologies Tutorials ImmPort Ecosystem Data providers Research Community Shared Data Repositories dbGAP, SRA, ... NIAID ImmPort Data ReUse Initiative Indexing DOIs ImmuneSpace Data Re-Analysis RImmPort 10K Immunomes MetaCyto Trajectory-based Visualization Repurposing Research Community, Citizens and Data Enthusiasts
  • 13. Focus Areas and Data Types Total Human Subjects (46937) Total Studies (413) Total Experiments (1638) Immunology Research Studies- 291 Clinical Trials- 122
  • 16. Reanalysis of the Rituximab in ANCA-Associated Vasculitis trial identifies granulocyte subsets as a novel early marker of successful treatment. Nasrallah, M., Pouliot, Y., Hartmann, B. et al. Arthritis Res Ther 17, 262 (2015)
  • 17. RAVE Trial: Rituximab in ANCA-Associated Vasculitis COMPLETE REMISSION ● Randomized, double-blind, active- controlled, non-inferiority, phase II/III trial comparing Rituximab to Cyclophosphamide for induction of remission ● 63 of the 99 patients in the rituximab group (64%) reached the primary end point, as compared with 52 of 98 in the cyclophosphomide group (53%). 197 participants Multi-center Stone et al., NEJM (2010) Primary Endpoint ● 35% of patients treated with rituximab and 47% of patients treated with cyclophosphamide failed to achieve remission. ● In retrospect, do any measured factors predict response to therapies?
  • 18. Proposed personalized treatment option based on cellular profiling Nasrallah et al., Arthritis Res.Ther (2015) C R
  • 19. 20 Targeted_therapy_graph ANCA- associated Vasculitis Profiled Therapy ~ 54% of patients Non-profiled Therapy ~46% of patients Treat with Rituximab ~ 30% of patients Remission Rate ~ 83% Treat with Cyclophosphamide ~24% of patients Remission Rate ~ 66% Do not treat with Cyclophosphamide Failure rate ~ 67% Do not treat with Rituximab Failure rate ~ 70% GI ≤ -9.25% OR GI ≥ 47.6% GI ≤ -9.25% GI ≥ 47.6% Treat with either Rituximab or Cyclophosphamide according to best clinical judgement Average Remission Rate ~ 60% Non-profiled Therapy 100% of patients NO Proposed Method Current Method Measure the Granularity Index (GI) YES Proposed Personalized Treatment on the Basis of Granularity Index
  • 20. The 10,000 Immunomes project • Large, diverse, cleaned reference dataset for human immunology • Interactive data visualization • Custom control cohorts and standardized data download
  • 21. 85 Studies 10,344 Subjects 42,000+ Samples Manual curation of studies, arms, and planned visits to filter for normal human subjects Data available in the 10,000 Immunomes Project Total Samples 42117 Total Distinct Subjects 10344 MEASUREMENT Secreted Proteins SUBJECTS 4835 ELISA 4035 Multiplex ELISA 1286 Virus Titer 3609 Virus Neutralization Titer 2265 HAI Titer 1344 Clinical Lab Tests 2639 Complete Blood Count 1684 Comprehensive Metabolic Panel 664 Fasting Lipid Profile 664 Questionnaire 1422 Cytometry 1415 Flow Cytometry (PBMC) 907 CyTOF (PBMC) 583 Flow Cytometry (Whole Blood) 164 HLA Type 1093 Gene Expression Array 476 Whole Blood 311 PBMC 165 10kimmunomes.org
  • 22. Journal of the American Medical Informatics Association, Volume 23, Issue 3, 1 May 2016 Extracting PubMed record-associated MeSH descriptors
  • 23. The Knowledge model ImmPort Cytokines Therapeutic target Diagnostic marker Clinical data Expression data Text mining ArrayExpress GEO Open Source Clinical trials Nophar Geifman
  • 24. The Knowledge model DiseaseCell types Cytokines Clinical data (ELISA, Elispot) Clinical data (Blood tests, Flow cytometry) Curated knowledge Expression data Text miningGender Ethnicity Age Diagnostics and Therapeutics
  • 25. 26
  • 26. Different Clusters are Characterized By Different Cytokine Patterns IL-6 TNF-a 4
  • 27. Different Clusters are Characterized By Different Cytokine Patterns IL-4 IL-5 IL-8 IFNg IL- 10 IL- 13 CCL11 15 TNF-a
  • 28. Different Clusters are Characterized By Different Cytokine Patterns TNF-aIFNg 23
  • 32. 33 Challenges and Opportunities • Crowd-sourced • Data silos • Interoperability- federated repositories • Lack of data standards § Effect of age, gender, race on vaccination § Immune response in vaccinated individuals with disease conditions (e.g., acute, chronic) § Effect of medications on vaccination response § Improving standard of care v Better understanding of Vaccination Response
  • 33. 34 Ø limit complexity and organize information into data and knowledge. Ø compilation of facts and figures that can be used to provide contextual meaning to searches. Knowledge Graphs: Connecting the dots
  • 34. Sub Types: *Categories (e.g., cardiac, autoimmune etc.) *Condition (e.g., Asymptomatic, Acute, Chronic) Sub Type: * Condition (e.g., Pregnant Subject age gender race zygosity has has has has Clinical Phenotype disease health type Vaccine year strain outcome Interventionreceives patient has has has ImmGRAKN knowledgebase Drug Molecular (DNA, mRNA, protein, cell,) Microbiome has preventiontherapeutic Biosample assessment
  • 36. Take Home Messages • Holistic approach to analyzing clinical trials data • Open-access clinical trials are a valuable resource to evaluate new hypotheses, gain novel insights, and inform a better trial design • 10Kimmunomes- reference dataset generated by integrating individual level data from publicly available immunology studies. • Knowledge Graphs can be used as a semantic search engine sparking new ideas and finding unexpected connections in research and knowledge discovery applications. Embrace open-access clinical trials!
  • 37. Acknowledgements Atul Butte Northrop Grumman Health Solutions Elizabeth Thomson Patrick Dunn Henry Schaefer John Campbell Morgan Crafts Zicheng Hu Kelly Zalocusky Matthew Elliott Daniel Wu Data Providers @ImmPortDB bit.ly/10kimmu Funding Support National Institute of Allergy and Infectious Diseases (NIAID) National Institutes of Health (NIH) Health and Human Services (HHS) Contract #: HHSN316201200036W Priscilla Chan and Mark Zuckerberg Distinguished Professor. Director, Bakar Computational Health Sciences Institute, UCSF Tomas Sabat Soroush Saffari Daniel Crowe Nophar Geifman University of Manchester
  • 38. THANKS Sanchita.Bhattacharya@ucsf.edu @sanchitab 39 Bakar Institute of Computational Health Sciences University of California, San Francisco