SlideShare une entreprise Scribd logo
1  sur  17
Télécharger pour lire hors ligne
Background
ž “Just    Correlation”    and  predictive  
analytics  in  the  medical  and  other  
contexts:  
—The  Age  of  Big  Data
—Data  Driven  Processes  and  Results
—Putting  the  information  to  use
—Reliance  on  “mere”  correlations
Roadmap
ž The  rise  of  “Big  Health  Data”
ž What  does  mere  reliance  on  correlation  
mean  (examples)
— Possible  options,  alternatives  and  outcomes
ž Pros  and  Cons  of  “Just  Causation”
— Reliance  on  other  disciplines.  
ž Law  and  Policy  implications  and  “hooks”
“Big Health Data”
ž Health  and  Medical  data  held  by  new  
players,  because  of:  
— Definition  change  
— New  practices,  sources  and  business  models.
○ At  times,  these  are  startups.  
ž Change  reflected  in  some  new  legislation  
[GDPR  in  the  EU].
— Regulating  health  data  calls  for  unique  
balancing;;  
○ Strong  privacy  preference  vs.  public  benefits  
Example (1): Credit Data
ž “all  data  is  credit  data,  we  just  don’t  
know  how  to  use  it  yet”.
ž ZestFinance and  others  – provide  
methods  for  credit  ranking  of  the  
“underbanked”.  
ž Most  likely  rely  on  correlations  between  
attributes,  factors  and  behaviors  – and  
rates  of  payment  or  default.  
ž These  insights  are  used  for  prospective  
credit  applicants.  
Example (2) Health Data & IoT
ž Wearables -­ gadgets  affixed  to  the  body  
which  collect  biometric  and  behavioral  data.  
— Fitbit products  provided  to  employees  (for  free!).  
ž Possible  future  uses  – calculating  insurance  
premiums.  
— Similar  processes  carried  out  by  smartphone
applications.  
ž Again,  firms  rely  on  “mere”  correlations  
found  in  the  data  when  making  health-­
related  recommendation  and  judgments.  
What Do We Mean by “Just
Correlation”
ž Five  possible  variations  of  Big  Data  uses  – relying  upon:  
1. Mere  Correlations
2. Correlation  +  Statistical  proof  of  causation.  
3. Correlation  +  Experimental  evidence  of  causation  
(natural  or  artificial  manipulation).  
4. Correlation  +  reasonable  mechanism  hypothesis
5. Correlation  +  scientifically  proven  mechanism  found.  
“Mechanism”  – term  of  art;;  an  explanation  of  a  phenomenon.  
• Provides  additional  proof  as  to  the  existence  of  a  
causal  relationship
• Provides  scientific  knowledge.    
“Just Correlation” – What Can Go
Wrong?
ž Possible  outcomes  when  a  Correlation  
between  Factor  “A”  and  “B”  was  found:  
(i) A  (indeed)  causes  B
(ii) A  does  not cause  B.  The  data  is  wrong.  
(iii) A  does  not cause  B.  The  correlation  is  
spurious.  
(iv) A  does  not  cause  B.  B  causes  A.
(v) A  does  not cause  B.  C  causes  both  A  and  B.  
The Benefits of “Just Correlation”
1. The  need  for  speed.
2. Low  costs.
3. Does  not  compromise  precision.  
4. Does  not  steer  science  towards  existing  
knowledge  and  theory
-­ Limited  bias  against  unexplainable  findings.  
Just Correlation: Problems (1)
ž Causation  as  a  “Quality  Check”:
— Assists  in  the  removal  of  noise.  
— Protects  us  from  “over-­fitting”
○ Do  we  need  a  “mechanism”,  or  does  statistical  
causation  suffice?  
— Mechanisms  assist  in  revealing  confounders.
ž Having  a  theory  enables  generalization  
of  findings.  
Just Correlation: Problems (2)
ž Understanding  mechanisms  alerts  us  of  
possible  side  effects.  
— Important  factor  in  the  health  context.  
ž Seeking  mechanisms  leads  to  positive  
externalities  – knowledge  about  nature  and  
society.  
ž In  Conclusion:   Causation  provides  important  
benefits  and  is  essential    in  the  health  context.
— A  context-­specific  analysis  is  required  to  establish  
whether  mechanisms  are  always  mandated.
Legal Hooks and Responses
ž Law  should  not  intervene,  because:  
— Market  still  self-­correct  if  mere  correlation  is  error-­ridden  
(but…).
— Intervention  might  undermine  innovation.  
— Law  should  not  meddle  with  science  – it  might  serve  self  
interests,  or  get  things  wrong.
ž But…
— Different  rules  should  be  applied  when  government  is  
the  source  of  data  – could  require  or  restrict  uses.  
— Specific  interventions  might  be  called  for  to  protect  the  
interests  of  investors,  data  subjects and  those  affected  
by  the  process.  
Investors
ž Protect  investors  from  the  executive’s  
reckless  conduct  – mere  reliance  on  
correlation.  
ž But,
— Investors  should  look  after  their  own  
interests.
○ Assure  disclosure  pertaining  to  this  specific  
matter.  
Data Subjects
ž Prediction  often  involves  personal  data
— Compromises  privacy  rights  and  involves  
balancing.  
— Possible  questions:  
○ Was  the  data  de-­identified?
○ Was  consent  provided?
○ Should  processing  be  allowed  even  without  
consent?  
ž The privacy balance should consider
overall benefits – and these require
causation.
— This balance will impact the legal findings as to
whether data usage should be permitted.
Impacted Individuals (1)
ž Correlations  lead,  at  times,  to  negative  
treatment.  
— With  health  data,  secondary  effects  might  also  follow  
(such  as  stigma).
ž Can  those  negatively  impacted  by  a  “mere”  
correlation  bring  action  against  a  firm?  Are  
such  actions  and  outcomes  “unfair”?  
○ If  a  prediction  proves  wrong,  equality  is  compromised.  
— Equals  are  not  treated  equally  (FTC  report).
— However,  private  firms  are  not  necessarily  subjected  
to  such  a  fairness  requirement.
○ Protected  groups  might  not  be  implicated.  
○ Mitigation  via  competition  (over  time).
Impacted Individuals (2)
ž When  might  the  fear  of  unfair  outcomes  
render  “just  correlation”  – unjust?  
— Government  (higher  fairness  standard)
○ And  also  highly  regulated  industries…
○ “Socially  meaningful”  industries  
— Health-­care,  insurance,  credit.  
— Monopoly  (no  mitigating  competition)
— In  sum:  the  higher  standard  would  often  
apply  in  the  health  and  medical  context.  
Thank  you!
Comments  are  welcome:  
tzarsky@law.haifa.ac.il

Contenu connexe

Tendances

Dialogue on HIPAA/HITECH Compliance
Dialogue on HIPAA/HITECH  ComplianceDialogue on HIPAA/HITECH  Compliance
Dialogue on HIPAA/HITECH ComplianceBrian Ahier
 
Risks of Open Payments and Medicare Part D Data
Risks of Open Payments and Medicare Part D DataRisks of Open Payments and Medicare Part D Data
Risks of Open Payments and Medicare Part D Dataqordata
 
Managing The Risk of Open Payments - Validate Spend Report Before CMS Submission
Managing The Risk of Open Payments - Validate Spend Report Before CMS SubmissionManaging The Risk of Open Payments - Validate Spend Report Before CMS Submission
Managing The Risk of Open Payments - Validate Spend Report Before CMS Submissionqordata
 
Addressing Privacy and Security Concerns to Unlock Insights in Big Data in He...
Addressing Privacy and Security Concerns to Unlock Insights in Big Data in He...Addressing Privacy and Security Concerns to Unlock Insights in Big Data in He...
Addressing Privacy and Security Concerns to Unlock Insights in Big Data in He...Health Data Consortium
 
Direct 2.0 Boot Camp: Deep Dive Into the Direct Trusted Agent Accreditation P...
Direct 2.0 Boot Camp: Deep Dive Into the Direct Trusted Agent Accreditation P...Direct 2.0 Boot Camp: Deep Dive Into the Direct Trusted Agent Accreditation P...
Direct 2.0 Boot Camp: Deep Dive Into the Direct Trusted Agent Accreditation P...Brian Ahier
 
Direct Boot Camp 2.0 - Tennesse Directories
Direct Boot Camp 2.0 - Tennesse DirectoriesDirect Boot Camp 2.0 - Tennesse Directories
Direct Boot Camp 2.0 - Tennesse DirectoriesBrian Ahier
 
HIMSS15: Trust in Regional Exchange Supports Patient-Centered Research
HIMSS15: Trust in Regional Exchange Supports Patient-Centered ResearchHIMSS15: Trust in Regional Exchange Supports Patient-Centered Research
HIMSS15: Trust in Regional Exchange Supports Patient-Centered ResearchIBM Analytics
 
ey-getting-from-big-data-to-analytics
ey-getting-from-big-data-to-analyticsey-getting-from-big-data-to-analytics
ey-getting-from-big-data-to-analyticsGautam Jaggi
 
pc15257_brochure original
pc15257_brochure originalpc15257_brochure original
pc15257_brochure originalDaria Binder
 
Ibara Michael Aster Ppt Show
Ibara Michael Aster Ppt ShowIbara Michael Aster Ppt Show
Ibara Michael Aster Ppt ShowMichael Ibara
 
HIPAA Violations and Penalties power point
HIPAA Violations and Penalties power pointHIPAA Violations and Penalties power point
HIPAA Violations and Penalties power pointDeena Fetrow
 
Misadventures in Interoperability
Misadventures in InteroperabilityMisadventures in Interoperability
Misadventures in InteroperabilityCedric Dark
 
DATA PRIVACY IN AN AGE OF INCREASINGLY SPECIFIC AND PUBLICLY AVAILABLE DATA: ...
DATA PRIVACY IN AN AGE OF INCREASINGLY SPECIFIC AND PUBLICLY AVAILABLE DATA: ...DATA PRIVACY IN AN AGE OF INCREASINGLY SPECIFIC AND PUBLICLY AVAILABLE DATA: ...
DATA PRIVACY IN AN AGE OF INCREASINGLY SPECIFIC AND PUBLICLY AVAILABLE DATA: ...Ted Myerson
 
Healthcare Interoperability and Standards
Healthcare Interoperability and StandardsHealthcare Interoperability and Standards
Healthcare Interoperability and StandardsArjei Balandra
 
Ready or Not? Compliance in a World of New Models
Ready or Not? Compliance in a World of New ModelsReady or Not? Compliance in a World of New Models
Ready or Not? Compliance in a World of New ModelsPYA, P.C.
 
Direct Boot Camp 2 0 Federal Agency requirements for exchange via direct
Direct Boot Camp 2 0 Federal Agency requirements for exchange via directDirect Boot Camp 2 0 Federal Agency requirements for exchange via direct
Direct Boot Camp 2 0 Federal Agency requirements for exchange via directBrian Ahier
 
We Need to Prioritize Cybersecurity in 2020
We Need to Prioritize Cybersecurity in 2020We Need to Prioritize Cybersecurity in 2020
We Need to Prioritize Cybersecurity in 2020Matthew Doyle
 

Tendances (20)

Sharona Hoffman, "Big Data and the Americans with Disabilities Act: Amending ...
Sharona Hoffman, "Big Data and the Americans with Disabilities Act: Amending ...Sharona Hoffman, "Big Data and the Americans with Disabilities Act: Amending ...
Sharona Hoffman, "Big Data and the Americans with Disabilities Act: Amending ...
 
Dialogue on HIPAA/HITECH Compliance
Dialogue on HIPAA/HITECH  ComplianceDialogue on HIPAA/HITECH  Compliance
Dialogue on HIPAA/HITECH Compliance
 
Risks of Open Payments and Medicare Part D Data
Risks of Open Payments and Medicare Part D DataRisks of Open Payments and Medicare Part D Data
Risks of Open Payments and Medicare Part D Data
 
WK11HIT
WK11HITWK11HIT
WK11HIT
 
Managing The Risk of Open Payments - Validate Spend Report Before CMS Submission
Managing The Risk of Open Payments - Validate Spend Report Before CMS SubmissionManaging The Risk of Open Payments - Validate Spend Report Before CMS Submission
Managing The Risk of Open Payments - Validate Spend Report Before CMS Submission
 
Addressing Privacy and Security Concerns to Unlock Insights in Big Data in He...
Addressing Privacy and Security Concerns to Unlock Insights in Big Data in He...Addressing Privacy and Security Concerns to Unlock Insights in Big Data in He...
Addressing Privacy and Security Concerns to Unlock Insights in Big Data in He...
 
Direct 2.0 Boot Camp: Deep Dive Into the Direct Trusted Agent Accreditation P...
Direct 2.0 Boot Camp: Deep Dive Into the Direct Trusted Agent Accreditation P...Direct 2.0 Boot Camp: Deep Dive Into the Direct Trusted Agent Accreditation P...
Direct 2.0 Boot Camp: Deep Dive Into the Direct Trusted Agent Accreditation P...
 
Direct Boot Camp 2.0 - Tennesse Directories
Direct Boot Camp 2.0 - Tennesse DirectoriesDirect Boot Camp 2.0 - Tennesse Directories
Direct Boot Camp 2.0 - Tennesse Directories
 
HIMSS15: Trust in Regional Exchange Supports Patient-Centered Research
HIMSS15: Trust in Regional Exchange Supports Patient-Centered ResearchHIMSS15: Trust in Regional Exchange Supports Patient-Centered Research
HIMSS15: Trust in Regional Exchange Supports Patient-Centered Research
 
ey-getting-from-big-data-to-analytics
ey-getting-from-big-data-to-analyticsey-getting-from-big-data-to-analytics
ey-getting-from-big-data-to-analytics
 
pc15257_brochure original
pc15257_brochure originalpc15257_brochure original
pc15257_brochure original
 
Ibara Michael Aster Ppt Show
Ibara Michael Aster Ppt ShowIbara Michael Aster Ppt Show
Ibara Michael Aster Ppt Show
 
HIPAA Violations and Penalties power point
HIPAA Violations and Penalties power pointHIPAA Violations and Penalties power point
HIPAA Violations and Penalties power point
 
Misadventures in Interoperability
Misadventures in InteroperabilityMisadventures in Interoperability
Misadventures in Interoperability
 
DATA PRIVACY IN AN AGE OF INCREASINGLY SPECIFIC AND PUBLICLY AVAILABLE DATA: ...
DATA PRIVACY IN AN AGE OF INCREASINGLY SPECIFIC AND PUBLICLY AVAILABLE DATA: ...DATA PRIVACY IN AN AGE OF INCREASINGLY SPECIFIC AND PUBLICLY AVAILABLE DATA: ...
DATA PRIVACY IN AN AGE OF INCREASINGLY SPECIFIC AND PUBLICLY AVAILABLE DATA: ...
 
Healthcare Interoperability and Standards
Healthcare Interoperability and StandardsHealthcare Interoperability and Standards
Healthcare Interoperability and Standards
 
Ready or Not? Compliance in a World of New Models
Ready or Not? Compliance in a World of New ModelsReady or Not? Compliance in a World of New Models
Ready or Not? Compliance in a World of New Models
 
Direct Boot Camp 2 0 Federal Agency requirements for exchange via direct
Direct Boot Camp 2 0 Federal Agency requirements for exchange via directDirect Boot Camp 2 0 Federal Agency requirements for exchange via direct
Direct Boot Camp 2 0 Federal Agency requirements for exchange via direct
 
Actionable Data for an Intelligent Health Delivery System
Actionable Data for an Intelligent Health Delivery SystemActionable Data for an Intelligent Health Delivery System
Actionable Data for an Intelligent Health Delivery System
 
We Need to Prioritize Cybersecurity in 2020
We Need to Prioritize Cybersecurity in 2020We Need to Prioritize Cybersecurity in 2020
We Need to Prioritize Cybersecurity in 2020
 

En vedette (8)

Brenda M. Simon, "The Pathologies of Biomedical ‘Data-Generating’ Patents: Le...
Brenda M. Simon, "The Pathologies of Biomedical ‘Data-Generating’ Patents: Le...Brenda M. Simon, "The Pathologies of Biomedical ‘Data-Generating’ Patents: Le...
Brenda M. Simon, "The Pathologies of Biomedical ‘Data-Generating’ Patents: Le...
 
Timo Minssen, "Big Data and Intellectual Property Rights in the Health and Li...
Timo Minssen, "Big Data and Intellectual Property Rights in the Health and Li...Timo Minssen, "Big Data and Intellectual Property Rights in the Health and Li...
Timo Minssen, "Big Data and Intellectual Property Rights in the Health and Li...
 
Beräkningsvetenskap inom sjukvården möjliggjord genom artificiell intelligens...
Beräkningsvetenskap inom sjukvården möjliggjord genom artificiell intelligens...Beräkningsvetenskap inom sjukvården möjliggjord genom artificiell intelligens...
Beräkningsvetenskap inom sjukvården möjliggjord genom artificiell intelligens...
 
Introduction to ph 11.01.2016
Introduction to ph  11.01.2016Introduction to ph  11.01.2016
Introduction to ph 11.01.2016
 
Catherine M. Hammack, "Thought Leader Perspectives on Risks and Protections i...
Catherine M. Hammack, "Thought Leader Perspectives on Risks and Protections i...Catherine M. Hammack, "Thought Leader Perspectives on Risks and Protections i...
Catherine M. Hammack, "Thought Leader Perspectives on Risks and Protections i...
 
Isaac Kohane, "A Data Perspective on Autonomy, Human Rights, and the End of N...
Isaac Kohane, "A Data Perspective on Autonomy, Human Rights, and the End of N...Isaac Kohane, "A Data Perspective on Autonomy, Human Rights, and the End of N...
Isaac Kohane, "A Data Perspective on Autonomy, Human Rights, and the End of N...
 
The Changing Role of Healthcare Data Analysts
The Changing Role of Healthcare Data AnalystsThe Changing Role of Healthcare Data Analysts
The Changing Role of Healthcare Data Analysts
 
4 Best Practices for Analyzing Healthcare Data
4 Best Practices for Analyzing Healthcare Data4 Best Practices for Analyzing Healthcare Data
4 Best Practices for Analyzing Healthcare Data
 

Similaire à Tal Zarsky, "Correlation v. Causation in Health-Related Big Data Analysis: The Role of Reason and Regulation"

New Access Models for Healthcare
New Access Models for HealthcareNew Access Models for Healthcare
New Access Models for HealthcareTyrone Grandison
 
Social Media in Pharma Summit 2011: Drug Safety
Social Media in Pharma Summit 2011: Drug SafetySocial Media in Pharma Summit 2011: Drug Safety
Social Media in Pharma Summit 2011: Drug SafetyMichael Ibara
 
Ethics and sharing health data
Ethics and sharing health dataEthics and sharing health data
Ethics and sharing health dataT.J. Kasperbauer
 
Healthcare Cybersecurity Whitepaper FINAL
Healthcare Cybersecurity Whitepaper FINALHealthcare Cybersecurity Whitepaper FINAL
Healthcare Cybersecurity Whitepaper FINALSteve Knapp
 
Article 1 currently, smartphone, web, and social networking techno
Article 1 currently, smartphone, web, and social networking technoArticle 1 currently, smartphone, web, and social networking techno
Article 1 currently, smartphone, web, and social networking technohoney690131
 
Ethical issues and social issues related to systems upload
Ethical issues and social issues related to systems uploadEthical issues and social issues related to systems upload
Ethical issues and social issues related to systems uploadwaiforchi Wagiteerhh
 
wp-analyzing-breaches-by-industry
wp-analyzing-breaches-by-industrywp-analyzing-breaches-by-industry
wp-analyzing-breaches-by-industryNumaan Huq
 
It's time for open source design in healthcare
It's time for open source design in healthcareIt's time for open source design in healthcare
It's time for open source design in healthcareUXDXConf
 
Commercial access to health data
Commercial access to health dataCommercial access to health data
Commercial access to health dataIpsos UK
 
Detecting health insurance fraud using analytics
Detecting health insurance fraud using analytics Detecting health insurance fraud using analytics
Detecting health insurance fraud using analytics Nitin Verma
 
Healthcare Issue Assignment Sample
Healthcare Issue Assignment SampleHealthcare Issue Assignment Sample
Healthcare Issue Assignment SampleAssignment Prime
 
Healthcare Analytics: Right-Brain Advice in a Left-Brain World
Healthcare Analytics: Right-Brain Advice in a Left-Brain WorldHealthcare Analytics: Right-Brain Advice in a Left-Brain World
Healthcare Analytics: Right-Brain Advice in a Left-Brain WorldHealth Catalyst
 
Enhance Healthcare Analytics with Consumer Data
Enhance Healthcare Analytics with Consumer DataEnhance Healthcare Analytics with Consumer Data
Enhance Healthcare Analytics with Consumer DataRay Pun
 
eHI privacy and security DC roundtable_April 2014
eHI privacy and security DC roundtable_April 2014eHI privacy and security DC roundtable_April 2014
eHI privacy and security DC roundtable_April 2014Barbara Gabriel
 
2020 Roadmap Report_Final Draft_10-21-2014
2020 Roadmap Report_Final Draft_10-21-20142020 Roadmap Report_Final Draft_10-21-2014
2020 Roadmap Report_Final Draft_10-21-2014Barbara Gabriel
 
wp-follow-the-data
wp-follow-the-datawp-follow-the-data
wp-follow-the-dataNumaan Huq
 
Please ignore the health care reform in two states. That has nothi.docx
Please ignore the health care reform in two states. That has nothi.docxPlease ignore the health care reform in two states. That has nothi.docx
Please ignore the health care reform in two states. That has nothi.docxstilliegeorgiana
 
Running head U.S. HEALTH CARE SYSTEM AND GOVERNANCE1U.S. HEA.docx
Running head U.S. HEALTH CARE SYSTEM AND GOVERNANCE1U.S. HEA.docxRunning head U.S. HEALTH CARE SYSTEM AND GOVERNANCE1U.S. HEA.docx
Running head U.S. HEALTH CARE SYSTEM AND GOVERNANCE1U.S. HEA.docxtoltonkendal
 

Similaire à Tal Zarsky, "Correlation v. Causation in Health-Related Big Data Analysis: The Role of Reason and Regulation" (20)

New Access Models for Healthcare
New Access Models for HealthcareNew Access Models for Healthcare
New Access Models for Healthcare
 
Review questions
Review questionsReview questions
Review questions
 
Social Media in Pharma Summit 2011: Drug Safety
Social Media in Pharma Summit 2011: Drug SafetySocial Media in Pharma Summit 2011: Drug Safety
Social Media in Pharma Summit 2011: Drug Safety
 
Ethics and sharing health data
Ethics and sharing health dataEthics and sharing health data
Ethics and sharing health data
 
Healthcare Cybersecurity Whitepaper FINAL
Healthcare Cybersecurity Whitepaper FINALHealthcare Cybersecurity Whitepaper FINAL
Healthcare Cybersecurity Whitepaper FINAL
 
Article 1 currently, smartphone, web, and social networking techno
Article 1 currently, smartphone, web, and social networking technoArticle 1 currently, smartphone, web, and social networking techno
Article 1 currently, smartphone, web, and social networking techno
 
Ethical issues and social issues related to systems upload
Ethical issues and social issues related to systems uploadEthical issues and social issues related to systems upload
Ethical issues and social issues related to systems upload
 
wp-analyzing-breaches-by-industry
wp-analyzing-breaches-by-industrywp-analyzing-breaches-by-industry
wp-analyzing-breaches-by-industry
 
It's time for open source design in healthcare
It's time for open source design in healthcareIt's time for open source design in healthcare
It's time for open source design in healthcare
 
Chapter # 7
Chapter # 7Chapter # 7
Chapter # 7
 
Commercial access to health data
Commercial access to health dataCommercial access to health data
Commercial access to health data
 
Detecting health insurance fraud using analytics
Detecting health insurance fraud using analytics Detecting health insurance fraud using analytics
Detecting health insurance fraud using analytics
 
Healthcare Issue Assignment Sample
Healthcare Issue Assignment SampleHealthcare Issue Assignment Sample
Healthcare Issue Assignment Sample
 
Healthcare Analytics: Right-Brain Advice in a Left-Brain World
Healthcare Analytics: Right-Brain Advice in a Left-Brain WorldHealthcare Analytics: Right-Brain Advice in a Left-Brain World
Healthcare Analytics: Right-Brain Advice in a Left-Brain World
 
Enhance Healthcare Analytics with Consumer Data
Enhance Healthcare Analytics with Consumer DataEnhance Healthcare Analytics with Consumer Data
Enhance Healthcare Analytics with Consumer Data
 
eHI privacy and security DC roundtable_April 2014
eHI privacy and security DC roundtable_April 2014eHI privacy and security DC roundtable_April 2014
eHI privacy and security DC roundtable_April 2014
 
2020 Roadmap Report_Final Draft_10-21-2014
2020 Roadmap Report_Final Draft_10-21-20142020 Roadmap Report_Final Draft_10-21-2014
2020 Roadmap Report_Final Draft_10-21-2014
 
wp-follow-the-data
wp-follow-the-datawp-follow-the-data
wp-follow-the-data
 
Please ignore the health care reform in two states. That has nothi.docx
Please ignore the health care reform in two states. That has nothi.docxPlease ignore the health care reform in two states. That has nothi.docx
Please ignore the health care reform in two states. That has nothi.docx
 
Running head U.S. HEALTH CARE SYSTEM AND GOVERNANCE1U.S. HEA.docx
Running head U.S. HEALTH CARE SYSTEM AND GOVERNANCE1U.S. HEA.docxRunning head U.S. HEALTH CARE SYSTEM AND GOVERNANCE1U.S. HEA.docx
Running head U.S. HEALTH CARE SYSTEM AND GOVERNANCE1U.S. HEA.docx
 

Plus de The Petrie-Flom Center for Health Law Policy, Biotechnology, and Bioethics

Plus de The Petrie-Flom Center for Health Law Policy, Biotechnology, and Bioethics (20)

Christine Mitchell, Ethical Dilemmas in Mask and Equipment Shortages: Health ...
Christine Mitchell, Ethical Dilemmas in Mask and Equipment Shortages: Health ...Christine Mitchell, Ethical Dilemmas in Mask and Equipment Shortages: Health ...
Christine Mitchell, Ethical Dilemmas in Mask and Equipment Shortages: Health ...
 
Robert Yates, "Hospital Detentions For Non-Payment of Fees A Denial of Rights...
Robert Yates, "Hospital Detentions For Non-Payment of Fees A Denial of Rights...Robert Yates, "Hospital Detentions For Non-Payment of Fees A Denial of Rights...
Robert Yates, "Hospital Detentions For Non-Payment of Fees A Denial of Rights...
 
Ranak Trivedi, "Bridging the Gap Between Artificial Intelligence and Natural ...
Ranak Trivedi, "Bridging the Gap Between Artificial Intelligence and Natural ...Ranak Trivedi, "Bridging the Gap Between Artificial Intelligence and Natural ...
Ranak Trivedi, "Bridging the Gap Between Artificial Intelligence and Natural ...
 
Noll Campbell,"Artificial Intelligence & Disabilities: Cognitive Impairment a...
Noll Campbell,"Artificial Intelligence & Disabilities: Cognitive Impairment a...Noll Campbell,"Artificial Intelligence & Disabilities: Cognitive Impairment a...
Noll Campbell,"Artificial Intelligence & Disabilities: Cognitive Impairment a...
 
Emily M. Broad Leib, Policies to Reduce Sugar Consumption: The Battleground
Emily M. Broad Leib, Policies to Reduce Sugar Consumption: The BattlegroundEmily M. Broad Leib, Policies to Reduce Sugar Consumption: The Battleground
Emily M. Broad Leib, Policies to Reduce Sugar Consumption: The Battleground
 
Steven Gortmaker, Sugar Sweetened Beverage Taxes: Impact on Health, Health Ca...
Steven Gortmaker, Sugar Sweetened Beverage Taxes: Impact on Health, Health Ca...Steven Gortmaker, Sugar Sweetened Beverage Taxes: Impact on Health, Health Ca...
Steven Gortmaker, Sugar Sweetened Beverage Taxes: Impact on Health, Health Ca...
 
Justin T. Baker, Into the Deep
Justin T. Baker, Into the DeepJustin T. Baker, Into the Deep
Justin T. Baker, Into the Deep
 
Nzovu Ulenga, Tanzania HIV/AIDS Progress: Successes, Challenges, and Lessons ...
Nzovu Ulenga, Tanzania HIV/AIDS Progress: Successes, Challenges, and Lessons ...Nzovu Ulenga, Tanzania HIV/AIDS Progress: Successes, Challenges, and Lessons ...
Nzovu Ulenga, Tanzania HIV/AIDS Progress: Successes, Challenges, and Lessons ...
 
Prosper Okonkwo, 15+ Years of PEPFAR - The Nigeria Experience
Prosper Okonkwo, 15+ Years of PEPFAR - The Nigeria ExperienceProsper Okonkwo, 15+ Years of PEPFAR - The Nigeria Experience
Prosper Okonkwo, 15+ Years of PEPFAR - The Nigeria Experience
 
Maureen Luba Milambe, A 15 Year Review of PEPFAR Support to Malawi: How Has i...
Maureen Luba Milambe, A 15 Year Review of PEPFAR Support to Malawi: How Has i...Maureen Luba Milambe, A 15 Year Review of PEPFAR Support to Malawi: How Has i...
Maureen Luba Milambe, A 15 Year Review of PEPFAR Support to Malawi: How Has i...
 
Phyllis J. Kanki, 15+ Years of PEPFAR: Getting to Zero
Phyllis J. Kanki, 15+ Years of PEPFAR: Getting to ZeroPhyllis J. Kanki, 15+ Years of PEPFAR: Getting to Zero
Phyllis J. Kanki, 15+ Years of PEPFAR: Getting to Zero
 
Shahin Lockman, Botswana: Arc of and Response to the HIV Epidemic
Shahin Lockman, Botswana: Arc of and Response to the HIV EpidemicShahin Lockman, Botswana: Arc of and Response to the HIV Epidemic
Shahin Lockman, Botswana: Arc of and Response to the HIV Epidemic
 
Charles Holmes, 2009-2013 From an Emergency Response to Local Ownership and S...
Charles Holmes, 2009-2013 From an Emergency Response to Local Ownership and S...Charles Holmes, 2009-2013 From an Emergency Response to Local Ownership and S...
Charles Holmes, 2009-2013 From an Emergency Response to Local Ownership and S...
 
Anthony S. Fauci, The Birth of PEPFAR
Anthony S. Fauci, The Birth of PEPFARAnthony S. Fauci, The Birth of PEPFAR
Anthony S. Fauci, The Birth of PEPFAR
 
Dov Fox, "Birth Rights & Wrongs: How Medicine and Technology Are Remaking Rep...
Dov Fox, "Birth Rights & Wrongs: How Medicine and Technology Are Remaking Rep...Dov Fox, "Birth Rights & Wrongs: How Medicine and Technology Are Remaking Rep...
Dov Fox, "Birth Rights & Wrongs: How Medicine and Technology Are Remaking Rep...
 
Katherine L. Kraschel, "What Doesn't Kill Your Tort Only Makes It Stronger --...
Katherine L. Kraschel, "What Doesn't Kill Your Tort Only Makes It Stronger --...Katherine L. Kraschel, "What Doesn't Kill Your Tort Only Makes It Stronger --...
Katherine L. Kraschel, "What Doesn't Kill Your Tort Only Makes It Stronger --...
 
Vardit Ravitsky, "Prenatal Genome Sequencing: Ethical and Regulatory Implicat...
Vardit Ravitsky, "Prenatal Genome Sequencing: Ethical and Regulatory Implicat...Vardit Ravitsky, "Prenatal Genome Sequencing: Ethical and Regulatory Implicat...
Vardit Ravitsky, "Prenatal Genome Sequencing: Ethical and Regulatory Implicat...
 
Liza Vertinsky, "Genetic Paparazzi vs. Genetic Privacy"
Liza Vertinsky, "Genetic Paparazzi vs. Genetic Privacy"Liza Vertinsky, "Genetic Paparazzi vs. Genetic Privacy"
Liza Vertinsky, "Genetic Paparazzi vs. Genetic Privacy"
 
Scott Schweikart, "Human Genome Editing: An Ethical Analysis and Arguments fo...
Scott Schweikart, "Human Genome Editing: An Ethical Analysis and Arguments fo...Scott Schweikart, "Human Genome Editing: An Ethical Analysis and Arguments fo...
Scott Schweikart, "Human Genome Editing: An Ethical Analysis and Arguments fo...
 
Emily Qian, "Physician-Mediated Elective Whole Genome Sequencing Tests"
Emily Qian, "Physician-Mediated Elective Whole Genome Sequencing Tests"Emily Qian, "Physician-Mediated Elective Whole Genome Sequencing Tests"
Emily Qian, "Physician-Mediated Elective Whole Genome Sequencing Tests"
 

Dernier

Call Girl Chandigarh Mallika ❤️🍑 9907093804 👄🫦 Independent Escort Service Cha...
Call Girl Chandigarh Mallika ❤️🍑 9907093804 👄🫦 Independent Escort Service Cha...Call Girl Chandigarh Mallika ❤️🍑 9907093804 👄🫦 Independent Escort Service Cha...
Call Girl Chandigarh Mallika ❤️🍑 9907093804 👄🫦 Independent Escort Service Cha...High Profile Call Girls Chandigarh Aarushi
 
Russian Call Girls in Chandigarh Ojaswi ❤️🍑 9907093804 👄🫦 Independent Escort ...
Russian Call Girls in Chandigarh Ojaswi ❤️🍑 9907093804 👄🫦 Independent Escort ...Russian Call Girls in Chandigarh Ojaswi ❤️🍑 9907093804 👄🫦 Independent Escort ...
Russian Call Girls in Chandigarh Ojaswi ❤️🍑 9907093804 👄🫦 Independent Escort ...High Profile Call Girls Chandigarh Aarushi
 
Russian Call Girls in Raipur 9873940964 Book Hot And Sexy Girls
Russian Call Girls in Raipur 9873940964 Book Hot And Sexy GirlsRussian Call Girls in Raipur 9873940964 Book Hot And Sexy Girls
Russian Call Girls in Raipur 9873940964 Book Hot And Sexy Girlsddev2574
 
Experience learning - lessons from 25 years of ATACC - Mark Forrest and Halde...
Experience learning - lessons from 25 years of ATACC - Mark Forrest and Halde...Experience learning - lessons from 25 years of ATACC - Mark Forrest and Halde...
Experience learning - lessons from 25 years of ATACC - Mark Forrest and Halde...scanFOAM
 
EMS and Extrication: Coordinating Critical Care
EMS and Extrication: Coordinating Critical CareEMS and Extrication: Coordinating Critical Care
EMS and Extrication: Coordinating Critical CareRommie Duckworth
 
Call Girls Gurgaon Vani 9999965857 Independent Escort Service Gurgaon
Call Girls Gurgaon Vani 9999965857 Independent Escort Service GurgaonCall Girls Gurgaon Vani 9999965857 Independent Escort Service Gurgaon
Call Girls Gurgaon Vani 9999965857 Independent Escort Service Gurgaonnitachopra
 
Call Girl Gurgaon Saloni 9711199012 Independent Escort Service Gurgaon
Call Girl Gurgaon Saloni 9711199012 Independent Escort Service GurgaonCall Girl Gurgaon Saloni 9711199012 Independent Escort Service Gurgaon
Call Girl Gurgaon Saloni 9711199012 Independent Escort Service GurgaonCall Girls Service Gurgaon
 
Hi,Fi Call Girl In Marathahalli - 7001305949 with real photos and phone numbers
Hi,Fi Call Girl In Marathahalli - 7001305949 with real photos and phone numbersHi,Fi Call Girl In Marathahalli - 7001305949 with real photos and phone numbers
Hi,Fi Call Girl In Marathahalli - 7001305949 with real photos and phone numbersnarwatsonia7
 
Russian Call Girl Chandapura Dommasandra Road - 7001305949 Escorts Service 50...
Russian Call Girl Chandapura Dommasandra Road - 7001305949 Escorts Service 50...Russian Call Girl Chandapura Dommasandra Road - 7001305949 Escorts Service 50...
Russian Call Girl Chandapura Dommasandra Road - 7001305949 Escorts Service 50...narwatsonia7
 
Pregnancy and Breastfeeding Dental Considerations.pptx
Pregnancy and Breastfeeding Dental Considerations.pptxPregnancy and Breastfeeding Dental Considerations.pptx
Pregnancy and Breastfeeding Dental Considerations.pptxcrosalofton
 
Gurgaon Sector 68 Call Girls ( 9873940964 ) Book Hot And Sexy Girls In A Few ...
Gurgaon Sector 68 Call Girls ( 9873940964 ) Book Hot And Sexy Girls In A Few ...Gurgaon Sector 68 Call Girls ( 9873940964 ) Book Hot And Sexy Girls In A Few ...
Gurgaon Sector 68 Call Girls ( 9873940964 ) Book Hot And Sexy Girls In A Few ...ggsonu500
 
Russian Call Girls in Goa Samaira 7001305949 Independent Escort Service Goa
Russian Call Girls in Goa Samaira 7001305949 Independent Escort Service GoaRussian Call Girls in Goa Samaira 7001305949 Independent Escort Service Goa
Russian Call Girls in Goa Samaira 7001305949 Independent Escort Service Goanarwatsonia7
 
Single Assessment Framework - What We Know So Far
Single Assessment Framework - What We Know So FarSingle Assessment Framework - What We Know So Far
Single Assessment Framework - What We Know So FarCareLineLive
 
Call Girl Service ITPL - [ Cash on Delivery ] Contact 7001305949 Escorts Service
Call Girl Service ITPL - [ Cash on Delivery ] Contact 7001305949 Escorts ServiceCall Girl Service ITPL - [ Cash on Delivery ] Contact 7001305949 Escorts Service
Call Girl Service ITPL - [ Cash on Delivery ] Contact 7001305949 Escorts Servicenarwatsonia7
 
Call Girls Uppal 7001305949 all area service COD available Any Time
Call Girls Uppal 7001305949 all area service COD available Any TimeCall Girls Uppal 7001305949 all area service COD available Any Time
Call Girls Uppal 7001305949 all area service COD available Any Timedelhimodelshub1
 
Globalny raport: „Prawdziwe piękno 2024" od Dove
Globalny raport: „Prawdziwe piękno 2024" od DoveGlobalny raport: „Prawdziwe piękno 2024" od Dove
Globalny raport: „Prawdziwe piękno 2024" od Doveagatadrynko
 
Book Call Girls in Noida Pick Up Drop With Cash Payment 9711199171 Call Girls
Book Call Girls in Noida Pick Up Drop With Cash Payment 9711199171 Call GirlsBook Call Girls in Noida Pick Up Drop With Cash Payment 9711199171 Call Girls
Book Call Girls in Noida Pick Up Drop With Cash Payment 9711199171 Call GirlsCall Girls Noida
 
Call Girls Kukatpally 7001305949 all area service COD available Any Time
Call Girls Kukatpally 7001305949 all area service COD available Any TimeCall Girls Kukatpally 7001305949 all area service COD available Any Time
Call Girls Kukatpally 7001305949 all area service COD available Any Timedelhimodelshub1
 
College Call Girls Mumbai Alia 9910780858 Independent Escort Service Mumbai
College Call Girls Mumbai Alia 9910780858 Independent Escort Service MumbaiCollege Call Girls Mumbai Alia 9910780858 Independent Escort Service Mumbai
College Call Girls Mumbai Alia 9910780858 Independent Escort Service Mumbaisonalikaur4
 

Dernier (20)

Call Girl Chandigarh Mallika ❤️🍑 9907093804 👄🫦 Independent Escort Service Cha...
Call Girl Chandigarh Mallika ❤️🍑 9907093804 👄🫦 Independent Escort Service Cha...Call Girl Chandigarh Mallika ❤️🍑 9907093804 👄🫦 Independent Escort Service Cha...
Call Girl Chandigarh Mallika ❤️🍑 9907093804 👄🫦 Independent Escort Service Cha...
 
Russian Call Girls in Chandigarh Ojaswi ❤️🍑 9907093804 👄🫦 Independent Escort ...
Russian Call Girls in Chandigarh Ojaswi ❤️🍑 9907093804 👄🫦 Independent Escort ...Russian Call Girls in Chandigarh Ojaswi ❤️🍑 9907093804 👄🫦 Independent Escort ...
Russian Call Girls in Chandigarh Ojaswi ❤️🍑 9907093804 👄🫦 Independent Escort ...
 
Russian Call Girls in Raipur 9873940964 Book Hot And Sexy Girls
Russian Call Girls in Raipur 9873940964 Book Hot And Sexy GirlsRussian Call Girls in Raipur 9873940964 Book Hot And Sexy Girls
Russian Call Girls in Raipur 9873940964 Book Hot And Sexy Girls
 
Experience learning - lessons from 25 years of ATACC - Mark Forrest and Halde...
Experience learning - lessons from 25 years of ATACC - Mark Forrest and Halde...Experience learning - lessons from 25 years of ATACC - Mark Forrest and Halde...
Experience learning - lessons from 25 years of ATACC - Mark Forrest and Halde...
 
EMS and Extrication: Coordinating Critical Care
EMS and Extrication: Coordinating Critical CareEMS and Extrication: Coordinating Critical Care
EMS and Extrication: Coordinating Critical Care
 
Call Girls Gurgaon Vani 9999965857 Independent Escort Service Gurgaon
Call Girls Gurgaon Vani 9999965857 Independent Escort Service GurgaonCall Girls Gurgaon Vani 9999965857 Independent Escort Service Gurgaon
Call Girls Gurgaon Vani 9999965857 Independent Escort Service Gurgaon
 
Call Girl Gurgaon Saloni 9711199012 Independent Escort Service Gurgaon
Call Girl Gurgaon Saloni 9711199012 Independent Escort Service GurgaonCall Girl Gurgaon Saloni 9711199012 Independent Escort Service Gurgaon
Call Girl Gurgaon Saloni 9711199012 Independent Escort Service Gurgaon
 
Hi,Fi Call Girl In Marathahalli - 7001305949 with real photos and phone numbers
Hi,Fi Call Girl In Marathahalli - 7001305949 with real photos and phone numbersHi,Fi Call Girl In Marathahalli - 7001305949 with real photos and phone numbers
Hi,Fi Call Girl In Marathahalli - 7001305949 with real photos and phone numbers
 
Russian Call Girl Chandapura Dommasandra Road - 7001305949 Escorts Service 50...
Russian Call Girl Chandapura Dommasandra Road - 7001305949 Escorts Service 50...Russian Call Girl Chandapura Dommasandra Road - 7001305949 Escorts Service 50...
Russian Call Girl Chandapura Dommasandra Road - 7001305949 Escorts Service 50...
 
Pregnancy and Breastfeeding Dental Considerations.pptx
Pregnancy and Breastfeeding Dental Considerations.pptxPregnancy and Breastfeeding Dental Considerations.pptx
Pregnancy and Breastfeeding Dental Considerations.pptx
 
Model Call Girl in Subhash Nagar Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Subhash Nagar Delhi reach out to us at 🔝9953056974🔝Model Call Girl in Subhash Nagar Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Subhash Nagar Delhi reach out to us at 🔝9953056974🔝
 
Gurgaon Sector 68 Call Girls ( 9873940964 ) Book Hot And Sexy Girls In A Few ...
Gurgaon Sector 68 Call Girls ( 9873940964 ) Book Hot And Sexy Girls In A Few ...Gurgaon Sector 68 Call Girls ( 9873940964 ) Book Hot And Sexy Girls In A Few ...
Gurgaon Sector 68 Call Girls ( 9873940964 ) Book Hot And Sexy Girls In A Few ...
 
Russian Call Girls in Goa Samaira 7001305949 Independent Escort Service Goa
Russian Call Girls in Goa Samaira 7001305949 Independent Escort Service GoaRussian Call Girls in Goa Samaira 7001305949 Independent Escort Service Goa
Russian Call Girls in Goa Samaira 7001305949 Independent Escort Service Goa
 
Single Assessment Framework - What We Know So Far
Single Assessment Framework - What We Know So FarSingle Assessment Framework - What We Know So Far
Single Assessment Framework - What We Know So Far
 
Call Girl Service ITPL - [ Cash on Delivery ] Contact 7001305949 Escorts Service
Call Girl Service ITPL - [ Cash on Delivery ] Contact 7001305949 Escorts ServiceCall Girl Service ITPL - [ Cash on Delivery ] Contact 7001305949 Escorts Service
Call Girl Service ITPL - [ Cash on Delivery ] Contact 7001305949 Escorts Service
 
Call Girls Uppal 7001305949 all area service COD available Any Time
Call Girls Uppal 7001305949 all area service COD available Any TimeCall Girls Uppal 7001305949 all area service COD available Any Time
Call Girls Uppal 7001305949 all area service COD available Any Time
 
Globalny raport: „Prawdziwe piękno 2024" od Dove
Globalny raport: „Prawdziwe piękno 2024" od DoveGlobalny raport: „Prawdziwe piękno 2024" od Dove
Globalny raport: „Prawdziwe piękno 2024" od Dove
 
Book Call Girls in Noida Pick Up Drop With Cash Payment 9711199171 Call Girls
Book Call Girls in Noida Pick Up Drop With Cash Payment 9711199171 Call GirlsBook Call Girls in Noida Pick Up Drop With Cash Payment 9711199171 Call Girls
Book Call Girls in Noida Pick Up Drop With Cash Payment 9711199171 Call Girls
 
Call Girls Kukatpally 7001305949 all area service COD available Any Time
Call Girls Kukatpally 7001305949 all area service COD available Any TimeCall Girls Kukatpally 7001305949 all area service COD available Any Time
Call Girls Kukatpally 7001305949 all area service COD available Any Time
 
College Call Girls Mumbai Alia 9910780858 Independent Escort Service Mumbai
College Call Girls Mumbai Alia 9910780858 Independent Escort Service MumbaiCollege Call Girls Mumbai Alia 9910780858 Independent Escort Service Mumbai
College Call Girls Mumbai Alia 9910780858 Independent Escort Service Mumbai
 

Tal Zarsky, "Correlation v. Causation in Health-Related Big Data Analysis: The Role of Reason and Regulation"

  • 1.
  • 2. Background ž “Just    Correlation”    and  predictive   analytics  in  the  medical  and  other   contexts:   —The  Age  of  Big  Data —Data  Driven  Processes  and  Results —Putting  the  information  to  use —Reliance  on  “mere”  correlations
  • 3. Roadmap ž The  rise  of  “Big  Health  Data” ž What  does  mere  reliance  on  correlation   mean  (examples) — Possible  options,  alternatives  and  outcomes ž Pros  and  Cons  of  “Just  Causation” — Reliance  on  other  disciplines.   ž Law  and  Policy  implications  and  “hooks”
  • 4. “Big Health Data” ž Health  and  Medical  data  held  by  new   players,  because  of:   — Definition  change   — New  practices,  sources  and  business  models. ○ At  times,  these  are  startups.   ž Change  reflected  in  some  new  legislation   [GDPR  in  the  EU]. — Regulating  health  data  calls  for  unique   balancing;;   ○ Strong  privacy  preference  vs.  public  benefits  
  • 5. Example (1): Credit Data ž “all  data  is  credit  data,  we  just  don’t   know  how  to  use  it  yet”. ž ZestFinance and  others  – provide   methods  for  credit  ranking  of  the   “underbanked”.   ž Most  likely  rely  on  correlations  between   attributes,  factors  and  behaviors  – and   rates  of  payment  or  default.   ž These  insights  are  used  for  prospective   credit  applicants.  
  • 6. Example (2) Health Data & IoT ž Wearables -­ gadgets  affixed  to  the  body   which  collect  biometric  and  behavioral  data.   — Fitbit products  provided  to  employees  (for  free!).   ž Possible  future  uses  – calculating  insurance   premiums.   — Similar  processes  carried  out  by  smartphone applications.   ž Again,  firms  rely  on  “mere”  correlations   found  in  the  data  when  making  health-­ related  recommendation  and  judgments.  
  • 7. What Do We Mean by “Just Correlation” ž Five  possible  variations  of  Big  Data  uses  – relying  upon:   1. Mere  Correlations 2. Correlation  +  Statistical  proof  of  causation.   3. Correlation  +  Experimental  evidence  of  causation   (natural  or  artificial  manipulation).   4. Correlation  +  reasonable  mechanism  hypothesis 5. Correlation  +  scientifically  proven  mechanism  found.   “Mechanism”  – term  of  art;;  an  explanation  of  a  phenomenon.   • Provides  additional  proof  as  to  the  existence  of  a   causal  relationship • Provides  scientific  knowledge.    
  • 8. “Just Correlation” – What Can Go Wrong? ž Possible  outcomes  when  a  Correlation   between  Factor  “A”  and  “B”  was  found:   (i) A  (indeed)  causes  B (ii) A  does  not cause  B.  The  data  is  wrong.   (iii) A  does  not cause  B.  The  correlation  is   spurious.   (iv) A  does  not  cause  B.  B  causes  A. (v) A  does  not cause  B.  C  causes  both  A  and  B.  
  • 9. The Benefits of “Just Correlation” 1. The  need  for  speed. 2. Low  costs. 3. Does  not  compromise  precision.   4. Does  not  steer  science  towards  existing   knowledge  and  theory -­ Limited  bias  against  unexplainable  findings.  
  • 10. Just Correlation: Problems (1) ž Causation  as  a  “Quality  Check”: — Assists  in  the  removal  of  noise.   — Protects  us  from  “over-­fitting” ○ Do  we  need  a  “mechanism”,  or  does  statistical   causation  suffice?   — Mechanisms  assist  in  revealing  confounders. ž Having  a  theory  enables  generalization   of  findings.  
  • 11. Just Correlation: Problems (2) ž Understanding  mechanisms  alerts  us  of   possible  side  effects.   — Important  factor  in  the  health  context.   ž Seeking  mechanisms  leads  to  positive   externalities  – knowledge  about  nature  and   society.   ž In  Conclusion:   Causation  provides  important   benefits  and  is  essential    in  the  health  context. — A  context-­specific  analysis  is  required  to  establish   whether  mechanisms  are  always  mandated.
  • 12. Legal Hooks and Responses ž Law  should  not  intervene,  because:   — Market  still  self-­correct  if  mere  correlation  is  error-­ridden   (but…). — Intervention  might  undermine  innovation.   — Law  should  not  meddle  with  science  – it  might  serve  self   interests,  or  get  things  wrong. ž But… — Different  rules  should  be  applied  when  government  is   the  source  of  data  – could  require  or  restrict  uses.   — Specific  interventions  might  be  called  for  to  protect  the   interests  of  investors,  data  subjects and  those  affected   by  the  process.  
  • 13. Investors ž Protect  investors  from  the  executive’s   reckless  conduct  – mere  reliance  on   correlation.   ž But, — Investors  should  look  after  their  own   interests. ○ Assure  disclosure  pertaining  to  this  specific   matter.  
  • 14. Data Subjects ž Prediction  often  involves  personal  data — Compromises  privacy  rights  and  involves   balancing.   — Possible  questions:   ○ Was  the  data  de-­identified? ○ Was  consent  provided? ○ Should  processing  be  allowed  even  without   consent?   ž The privacy balance should consider overall benefits – and these require causation. — This balance will impact the legal findings as to whether data usage should be permitted.
  • 15. Impacted Individuals (1) ž Correlations  lead,  at  times,  to  negative   treatment.   — With  health  data,  secondary  effects  might  also  follow   (such  as  stigma). ž Can  those  negatively  impacted  by  a  “mere”   correlation  bring  action  against  a  firm?  Are   such  actions  and  outcomes  “unfair”?   ○ If  a  prediction  proves  wrong,  equality  is  compromised.   — Equals  are  not  treated  equally  (FTC  report). — However,  private  firms  are  not  necessarily  subjected   to  such  a  fairness  requirement. ○ Protected  groups  might  not  be  implicated.   ○ Mitigation  via  competition  (over  time).
  • 16. Impacted Individuals (2) ž When  might  the  fear  of  unfair  outcomes   render  “just  correlation”  – unjust?   — Government  (higher  fairness  standard) ○ And  also  highly  regulated  industries… ○ “Socially  meaningful”  industries   — Health-­care,  insurance,  credit.   — Monopoly  (no  mitigating  competition) — In  sum:  the  higher  standard  would  often   apply  in  the  health  and  medical  context.  
  • 17. Thank  you! Comments  are  welcome:   tzarsky@law.haifa.ac.il