Enhancing Type 2 Diabetes Treatment Decisions With Interpretable Machine Learning Models for Predicting Hemoglobin A1c Changes: Machine Learning Model Development
Type 2 diabetes (T2D) is a significant global health challenge. Physicians need to assess whether future glycemic control will be poor on the current trajectory of usual care and usual-care treatment intensifications so that they can consider taking extra treatment measures to prevent poor outcomes....
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Veröffentlicht in: | JMIR AI 2024-07, Vol.3, p.e56700 |
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Sprache: | eng |
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Zusammenfassung: | Type 2 diabetes (T2D) is a significant global health challenge. Physicians need to assess whether future glycemic control will be poor on the current trajectory of usual care and usual-care treatment intensifications so that they can consider taking extra treatment measures to prevent poor outcomes. Predicting poor glycemic control from trends in hemoglobin A
(HbA
) levels is difficult due to the influence of seasonal fluctuations and other factors.
We sought to develop a model that accurately predicts poor glycemic control among patients with T2D receiving usual care.
Our machine learning model predicts poor glycemic control (HbA
≥8%) using the transformer architecture, incorporating an attention mechanism to process irregularly spaced HbA
time series and quantify temporal relationships of past HbA
levels at each time point. We assessed the model using HbA
levels from 7787 patients with T2D seeing specialist physicians at the University of Tokyo Hospital. The training data include instances of poor glycemic control occurring during usual care with usual-care treatment intensifications. We compared prediction accuracy, assessed with the area under the receiver operating characteristic curve, the area under the precision-recall curve, and the accuracy rate, to that of LightGBM.
The area under the receiver operating characteristic curve, the area under the precision-recall curve, and the accuracy rate (95% confidence limits) of the proposed model were 0.925 (95% CI 0.923-0.928), 0.864 (95% CI 0.852-0.875), and 0.864 (95% CI 0.86-0.869), respectively. The proposed model achieved high prediction accuracy comparable to or surpassing LightGBM's performance. The model prioritized the most recent HbA
levels for predictions. Older HbA
levels in patients with poor glycemic control were slightly more influential in predictions compared to patients with good glycemic control.
The proposed model accurately predicts poor glycemic control for patients with T2D receiving usual care, including patients receiving usual-care treatment intensifications, allowing physicians to identify cases warranting extraordinary treatment intensifications. If used by a nonspecialist, the model's indication of likely future poor glycemic control may warrant a referral to a specialist. Future efforts could incorporate diverse and large-scale clinical data for improved accuracy. |
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ISSN: | 2817-1705 2817-1705 |
DOI: | 10.2196/56700 |