2022
DOI: 10.1038/s41390-022-02264-9
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Improving child health through Big Data and data science

Abstract: Child health is defined by a complex, dynamic network of genetic, cultural, nutritional, infectious, and environmental determinants at distinct, developmentally determined epochs from preconception to adolescence. This network shapes the future of children, susceptibilities to adult diseases, and individual child health outcomes. Evolution selects characteristics during fetal life, infancy, childhood, and adolescence that adapt to predictable and unpredictable exposures/stresses by creating alternative develop… Show more

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Cited by 11 publications
(4 citation statements)
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“…18 Lastly, the use of TriNetX's platform to answer nuanced questions in both adults and pediatrics has been advocated for in The Journal of the American Medical Informatics Association and the Pediatric Research Journal. 19,20…”
Section: Study Design and Data Sourcementioning
confidence: 99%
“…18 Lastly, the use of TriNetX's platform to answer nuanced questions in both adults and pediatrics has been advocated for in The Journal of the American Medical Informatics Association and the Pediatric Research Journal. 19,20…”
Section: Study Design and Data Sourcementioning
confidence: 99%
“…Although precision medicine has had a biomedical focus so far, it is promised (or at least has the goal) to incorporate psychosocial data [28]. Integrating the multimodal data that make up the psychosocial environmental context of the patient will be extremely challenging, a task being taken up in the fields of “big data” and “artificial intelligence” [29, 30]. In a sense, these challenges are technical.…”
Section: Precision Medicine: a More Complicated Modelmentioning
confidence: 99%
“…Perhaps the most pervasive barrier to the inclusion of children in AI is the lack of pediatric data available for model development and evaluation 1 . The reasons for this limited data are multifactorial; only 22% of the US population is younger than 18 years, 26 children are less likely to be hospitalized than adults (where most actionable clinical data are collected), 27 and many pediatric diseases are rarer and distinct from adult diseases 28 . Further, few public databases exist for children, and clinical data are often buried within institutional medical records, making access to a sufficient volume of high quality multi‐institutional data challenging 28 .…”
Section: Problem 3: Lack Of Datamentioning
confidence: 99%