A Machine Learning–Based Predictive Model to Identify Patients Who Failed to Attend a Follow-up Visit for Diabetes Care After Recommendations From a National Screening Program

Author:

Okada Akira1,Hashimoto Yohei23,Goto Tadahiro24,Yamaguchi Satoko1,Ono Sachiko5,Ikeda Kurakawa Kayo1,Nangaku Masaomi6,Yamauchi Toshimasa7,Yasunaga Hideo2,Kadowaki Takashi178ORCID

Affiliation:

1. 1Department of Prevention of Diabetes and Lifestyle-Related Diseases, Graduate School of Medicine, The University of Tokyo, Tokyo, Japan

2. 2Department of Clinical Epidemiology and Health Economics, The University of Tokyo, Tokyo, Japan

3. 3Department of Ophthalmology, Graduate School of Medicine, The University of Tokyo, Tokyo, Japan

4. 4TXP Medical Co. Ltd, Tokyo, Japan

5. 5Department of Eat-loss Medicine, Graduate School of Medicine, The University of Tokyo, Tokyo, Japan

6. 6Division of Nephrology and Endocrinology, Graduate School of Medicine, The University of Tokyo, Tokyo, Japan

7. 7Department of Diabetes and Metabolism, Graduate School of Medicine, The University of Tokyo, Tokyo, Japan

8. 8Toranomon Hospital, Tokyo, Japan

Abstract

OBJECTIVE Reportedly, two-thirds of the patients who were positive for diabetes during screening failed to attend a follow-up visit for diabetes care in Japan. We aimed to develop a machine-learning model for predicting people’s failure to attend a follow-up visit. RESEARCH DESIGN AND METHODS We conducted a retrospective cohort study of adults with newly screened diabetes at a national screening program using a large Japanese insurance claims database (JMDC, Tokyo, Japan). We defined failure to attend a follow-up visit for diabetes care as no physician consultation during the 6 months after the screening. The candidate predictors were patient demographics, comorbidities, and medication history. In the training set (randomly selected 80% of the sample), we developed two models (previously reported logistic regression model and Lasso regression model). In the test set (remaining 20%), prediction performance was examined. RESULTS We identified 10,645 patients, including 5,450 patients who failed to attend follow-up visits for diabetes care. The Lasso regression model using four predictors had a better discrimination ability than the previously reported logistic regression model using 13 predictors (C-statistic: 0.71 [95% CI 0.69–0.73] vs. 0.67 [0.65–0.69]; P < 0.001). The four selected predictors in the Lasso regression model were lower frequency of physician visits in the previous year, lower HbA1c levels, and negative history of antidyslipidemic or antihypertensive treatment. CONCLUSIONS The developed machine-learning model using four predictors had a good predictive ability to identify patients who failed to attend a follow-up visit for diabetes care after a screening program.

Publisher

American Diabetes Association

Subject

Advanced and Specialized Nursing,Endocrinology, Diabetes and Metabolism,Internal Medicine

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