2017
DOI: 10.1002/lrh2.10046
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Leveraging the learning health care model to improve equity in the age of genomic medicine

Abstract: To fully achieve the goals of a genomics-enabled learning health care system, purposeful efforts to understand and reduce health disparities and improve equity of care are essential. This paper highlights 3 major challenges facing genomics-enabled learning health care systems, as they pertain to ancestrally diverse populations: inequality in the utility of genomic medicine; lack of access to pharmacogenomics in clinical care; and inadequate incorporation of social and environmental data into the electronic hea… Show more

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Cited by 18 publications
(14 citation statements)
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“…This is clearly an important step forward[15] although the limited scope of required race and ethnicity measures has been criticized for not allowing sufficient granularity to self-report and distinguish among racial or ethnic groups with different health outcomes[16]. The lack of required environmental and social measures is another limitation[17]. With an eye toward incentivizing the inclusion of specific social and behavioral domains in electronic health records, the National Academy of Sciences Board of Population Health and Public Health Practice convened a committee in 2013 to recommend essential data elements for a robust LHS[18,19].…”
Section: Introductionmentioning
confidence: 99%
“…This is clearly an important step forward[15] although the limited scope of required race and ethnicity measures has been criticized for not allowing sufficient granularity to self-report and distinguish among racial or ethnic groups with different health outcomes[16]. The lack of required environmental and social measures is another limitation[17]. With an eye toward incentivizing the inclusion of specific social and behavioral domains in electronic health records, the National Academy of Sciences Board of Population Health and Public Health Practice convened a committee in 2013 to recommend essential data elements for a robust LHS[18,19].…”
Section: Introductionmentioning
confidence: 99%
“…In genomics-guided precision medicine, this means that data collection ideally comprises entire exome or genome sequences (if available) [38,39]. Subsequently, genomic data need to be linked with broad and granular data encompassing entire clinical trajectories, from patient characteristics via diagnostics and treatment decisions to outcomes [21,40]. All of these factors render precision medicine data more difficult to de-identify and also easier to re-identify, increasing the risk of privacy violations.…”
Section: Changing the Handling Of Data That Link Variability And Treatment To Outcomesmentioning
confidence: 99%
“…Furthermore Blizinsky et al developed a framework to take into account the variability of population, in particular the ancestral, social and environmental factors that must be included in the genomic-enabled learning health system. They highlight the potentiality of learning health system to improve equity of care in the age of precision medicine 113 .…”
Section: Toward a Learning Health Systemmentioning
confidence: 99%