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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Aug 12, 2022
Date Accepted: May 27, 2023

The final, peer-reviewed published version of this preprint can be found here:

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

Huang ST, Tsai TH, Chen PJ, Peng LN, Hsiao FY, Chen LK

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

J Med Internet Res 2023;25:e41858

DOI: 10.2196/41858

PMID: 37494081

PMCID: 10413246

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

Using Hypothesis-led Machine Learning and Hierarchical Cluster Analysis to Predict Incident Dementia Based on Patterns of Disease in Longitudinal Health Records

  • Shih-Tsung Huang; 
  • Tsung-Hsien Tsai; 
  • Pei-Jung Chen; 
  • Li-Ning Peng; 
  • Fei-Yuan Hsiao; 
  • Liang-Kung Chen

ABSTRACT

Background:

Dementia development is a complex process in which the occurrence and sequential relationships of different diseases or conditions may construct specific patterns leading to incident dementia.

Objective:

This study aimed to identify patterns of disease or symptom clusters and their sequences prior to incident dementia using a novel approach incorporating machine learning methods to identify at-risk patterns of disease or symptom clusters and their sequences for preventive intervention activities.

Methods:

Using Taiwan’s National Health Insurance Research Database (NHIRD), data from 15,700 older people with dementia and 15,700 nondementia controls matched on age, sex, and index year (training dataset [67%] and the testing dataset [33%]) were retrieved for analysis. Using machine learning methods to capture specific hierarchical disease triplet clusters prior to dementia, we designed a study algorithm with four steps: (1) data preprocessing, (2) disease pathway selection, (3) model construction and optimization, and (4) data visualization.

Results:

Among 15,700 identified older people with dementia, 10,466 and 5,234 subjects were randomly assigned to the training and testing datasets, and 6,215 hierarchical disease triplet clusters with positive correlations with dementia onset were identified. We subsequently generated 19,438 features to construct prediction models, and the model with the best performance was support vector machine (SVM) with the by-group Lasso regression method (total corresponding features=2,513; accuracy=0.615; sensitivity=0.607; specificity=0.622; positive prediction value [PPV]=0.612; negative prediction value [NPV]=0.619; area under the curve [AUC]=0.639). In total, the current study captured 49 hierarchical disease triplet clusters related to dementia development, and the most characteristic patterns leading to incident dementia started with cardiovascular conditions (mainly hypertension), cerebrovascular disease, mobility disorders, or infections, followed by neuropsychiatric conditions.

Conclusions:

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.


 Citation

Please cite as:

Huang ST, Tsai TH, Chen PJ, Peng LN, Hsiao FY, Chen LK

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

J Med Internet Res 2023;25:e41858

DOI: 10.2196/41858

PMID: 37494081

PMCID: 10413246

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