| Literature DB >> 35974162 |
Zachary A Vesoulis1, Ameena N Husain1, F Sessions Cole2.
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 developmental phenotype trajectories. While child health has improved in the United States and globally over the past 30 years, continued improvement requires access to data that fully represent the complexity of these interactions and to new analytic methods. Big Data and innovative data science methods provide tools to integrate multiple data dimensions for description of best clinical, predictive, and preventive practices, for reducing racial disparities in child health outcomes, for inclusion of patient and family input in medical assessments, and for defining individual disease risk, mechanisms, and therapies. However, leveraging these resources will require new strategies that intentionally address institutional, ethical, regulatory, cultural, technical, and systemic barriers as well as developing partnerships with children and families from diverse backgrounds that acknowledge historical sources of mistrust. We highlight existing pediatric Big Data initiatives and identify areas of future research. IMPACT: Big Data and data science can improve child health. This review highlights the importance for child health of child-specific and life course-based Big Data and data science strategies. This review provides recommendations for future pediatric-specific Big Data and data science research.Entities:
Year: 2022 PMID: 35974162 PMCID: PMC9380977 DOI: 10.1038/s41390-022-02264-9
Source DB: PubMed Journal: Pediatr Res ISSN: 0031-3998 Impact factor: 3.953
Fig. 1Big Data features defined by the 6V model.
Big Data features defined by the 6V model. Descriptions of each Big Data feature.
Fig. 2Quantitative properties represent the complexity of healthcare data.
Descriptions of the 7 axes of health data. Adapted from Shilo et al.[5].
Pediatric Big Data networks.
| Name | Focus | Data sources |
|---|---|---|
| Children’s Data Network | Linkage and analysis of administrative records across agencies to inform programs and policies | Healthcare data, Social Services, Education |
| Children’s Hospitals Neonatal Database (CHND) | Large valid dataset for level IV NICU patients for comparative clinical outcomes and resource utilization | Periodic EHR extraction into common data model, Children’s Hospital Association administrative dataset |
| Collaborative Pediatric Critical Care Research Network (CPCCRN) | Multi-institutional network for research in pediatric critical care medicine | Research protocols and study results |
| Genomic Information Commons (GIC) | Linkage of genomic data, phenotypic data, and biospecimen metadata to accelerate discovery and collaboration | EHR, Genomic laboratory results, Research surveys |
| ImproveCareNow Registry | Centralized data repository of clinical data for children with inflammatory bowel disease (IBD) | Medical record data at time of diagnosis and every outpatient clinic visit for IBD |
| National COVID Cohort Collaborative (N3C) | Centralized data repository of clinical data for suspected and confirmed COVID-19 patients (all ages) | Periodic EHR extraction into common data model |
| PCORnet | Partnership of 8 large Clinical Research Networks via a coordinating hub creating a large comprehensive data network to advance research and public health | Periodic EHR extraction into common data model, patient- reported data, and payor data |
| Pediatric Emergency Care Applied Research Network (PECARN) | Multi-institutional network for research in pediatric emergency medicine | Research protocols and study results |
| PEDSnet | Pediatric observational research and clinical trials using large comprehensive multi-specialty network (member of PCORnet) | Periodic EHR extraction into common data model |
| PhysioNet | Free access to large collections of physiological and clinical data and related open-source software | Standardized data repositories |
| TriNetX | Large international network and data repository with web-based platform to explore data for research, protocol design, cohort identification, and real-world data analysis | Direct links to health care organizations with specific data repositories, and periodic EHR extraction into common data model |
| Vermont Oxford Network (VON) | Data repository for very low birth weight infants and all NICU admissions to advance quality improvement, research, and education | Periodic EHR extraction into common data model |