Publication | Open Access
Causal relations of health indices inferred statistically using the DirectLiNGAM algorithm from big data of Osaka prefecture health checkups
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Citations
9
References
2020
Year
Health IndicesDirectlingam AlgorithmDisease MappingDiagnosisComputational EpidemiologySocial Determinants Of HealthHealth StudiesDisease ClassificationCausal InferenceData MiningSocial HealthCausal RelationsEpidemiologic MethodPublic HealthStatisticsMedical StatisticCausal ModelEpidemiological TrendOsaka PrefectureMarginal Structural ModelsEpidemiologyCross-sectional StudyInternational HealthTime-varying ConfoundingMedicineHealth InformaticsBig Data
Causal relations among many statistical variables have been assessed using a Linear non-Gaussian Acyclic Model (LiNGAM). Using access to large amounts of health checkup data from Osaka prefecture obtained during the six fiscal years of years 2012-2017, we applied the DirectLiNGAM algorithm as a trial to extract causal relations among health indices for age groups and genders. Results show that LiNGAM yields interesting and reasonable results, suggesting causal relations and correlation among the statistical indices used for these analyses.
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