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Using Hypothesis-Led Machine Learning and Hierarchical Cluster Analysis to Identify Disease Pathways Prior to Dementia: Longitudinal Cohort Study.

Shih-Tsung HuangFei-Yuan HsiaoTsung-Hsien TsaiPei-Jung ChenLi-Ning PengLiang-Kung Chen
Published in: Journal of medical Internet research (2023)
Dementia development in the real world is an intricate process involving various diseases or conditions, their co-occurrence, and sequential relationships. Using a machine learning approach, we identified 49 hierarchical disease triplet clusters with leading roles (cardio- or cerebrovascular disease) and supporting roles (mental conditions, locomotion difficulties, infections, and nonspecific neurological conditions) in dementia development. Further studies using data from other countries are needed to validate the prediction algorithms for dementia development, allowing the development of comprehensive strategies to prevent or care for dementia in the real world.
Keyphrases
  • machine learning
  • mild cognitive impairment
  • cognitive impairment
  • healthcare
  • big data
  • palliative care
  • cross sectional