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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Jan 31, 2024
Date Accepted: Jul 26, 2024

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

Machine Learning–Based Prediction of Neurodegenerative Disease in Patients With Type 2 Diabetes by Derivation and Validation in 2 Independent Korean Cohorts: Model Development and Validation Study

Sang H, Lee H, Park J, Kim S, Woo HG, Koyanagi A, Smith L, Lee S, Hwang YC, Park TS, Lim H, Yon DK, Rhee SY

Machine Learning–Based Prediction of Neurodegenerative Disease in Patients With Type 2 Diabetes by Derivation and Validation in 2 Independent Korean Cohorts: Model Development and Validation Study

J Med Internet Res 2024;26:e56922

DOI: 10.2196/56922

PMID: 39361401

PMCID: 11487204

Machine learning-based prediction model for neurodegenerative disease in patients with type 2 diabetes: derivation and validation in two independent Korean cohorts

  • Hyunji Sang; 
  • Hojae Lee; 
  • Jaeyu Park; 
  • Sunyoung Kim; 
  • Ho Geol Woo; 
  • Ai Koyanagi; 
  • Lee Smith; 
  • Sihoon Lee; 
  • You-Cheol Hwang; 
  • Tae Sun Park; 
  • Hyunjung Lim; 
  • Dong Keon Yon; 
  • Sang Youl Rhee

ABSTRACT

Background:

Several machine learning (ML) prediction models for neurodegenerative diseases (ND) in type 2 diabetes mellitus (T2DM) have recently been developed. However, the predictive power of these models is limited by the lack of multiple risk factors.

Objective:

This study aimed to assess the validity and utility of an ML model for predicting the three year incidence of ND in patients with T2DM.

Methods:

We used data from two independent cohorts, the discovery cohort (one hospital; n=22,311) and the validation cohort (two hospitals; n=2,915), to predict ND. The outcome of interest was the presence or absence of ND at three years. We selected different ML-based models with hyperparameter tuning in the discovery cohort and conducted an area under the receiver operating characteristic curve (AUROC) analysis in the validation cohort.

Results:

The study dataset included 22,311 (discovery) and 2,915 (validation) patients with T2DM recruited between 2008 and 2022. ND was observed in 133 (0.6%) and 15 patients (0.5%) in the discovery and validation cohorts, respectively. The AdaBoost model had a mean AUROC of 0.82 (95% CI, 0.79-0.85) in the discovery dataset. When this result was applied to the validation dataset, the AdaBoost model exhibited the best performance among the models, with an AUROC of 0.83 (accuracy of 78.6%, sensitivity of 78.6%, specificity of 78.6%, and balanced accuracy of 78.6%). The most influential factors in the AdaBoost model were age and cardiovascular disease.

Conclusions:

This study shows the utility and feasibility of ML for assessing the incidence of ND in patients with T2DM and suggests its potential for use in screening patients. Further international studies are required to validate these findings.


 Citation

Please cite as:

Sang H, Lee H, Park J, Kim S, Woo HG, Koyanagi A, Smith L, Lee S, Hwang YC, Park TS, Lim H, Yon DK, Rhee SY

Machine Learning–Based Prediction of Neurodegenerative Disease in Patients With Type 2 Diabetes by Derivation and Validation in 2 Independent Korean Cohorts: Model Development and Validation Study

J Med Internet Res 2024;26:e56922

DOI: 10.2196/56922

PMID: 39361401

PMCID: 11487204

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