Identifying predictors of tooth loss using a rule‐based machine learning approach: A retrospective study at university‐setting clinics

Author:

Lee Chun‐Teh1,Zhang Kai2,Li Wen34,Tang Kaichen2,Ling Yaobin2,Walji Muhammad F.5,Jiang Xiaoqian2

Affiliation:

1. Department of Periodontics and Dental Hygiene The University of Texas Health Science Center at Houston School of Dentistry Houston Texas USA

2. The University of Texas Health Science Center at Houston, McWilliams School of Biomedical Informatics Houston Texas USA

3. Division of Clinical and Translational Sciences Department of Internal Medicine The University of Texas McGovern Medical School at Houston Houston Texas USA

4. Biostatistics/Epidemiology/Research Design (BERD) Component Center for Clinical and Translational Sciences (CCTS) The University of Texas Health Science Center at Houston Houston Texas USA

5. Department of Diagnostic and Biomedical Sciences The University of Texas Health Science Center at Houston School of Dentistry Houston Texas USA

Abstract

AbstractBackgroundThis study aimed to identify predictors associated with tooth loss in a large periodontitis patient cohort in the university setting using the machine learning approach.MethodsInformation on periodontitis patients and 18 factors identified at the initial visit was extracted from electronic health records. A two‐step machine learning pipeline was proposed to develop the tooth loss prediction model. The primary outcome is tooth loss count. The prediction model was built on significant factors (single or combination) selected by the RuleFit algorithm, and these factors were further adopted by the count regression model. Model performance was evaluated by root‐mean‐squared error (RMSE). Associations between predictors and tooth loss were also assessed by a classical statistical approach to validate the performance of the machine learning model.ResultsIn total, 7840 patients were included. The machine learning model predicting tooth loss count achieved RMSE of 2.71. Age, smoking, frequency of brushing, frequency of flossing, periodontal diagnosis, bleeding on probing percentage, number of missing teeth at baseline, and tooth mobility were associated with tooth loss in both machine learning and classical statistical models.ConclusionThe two‐step machine learning pipeline is feasible to predict tooth loss in periodontitis patients. Compared to classical statistical methods, this rule‐based machine learning approach improves model explainability. However, the model's generalizability needs to be further validated by external datasets.

Publisher

Wiley

Subject

Periodontics,General Medicine

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