Suitability of machine learning models for prediction of clinically defined Stage III/IV periodontitis from questionnaires and demographic data in Danish cohorts

Journal of Clinical Periodontology(2023)

引用 0|浏览4
暂无评分
摘要
Abstract Aim To evaluate if, and to what extent, machine learning models can capture clinically defined Stage III/IV periodontitis from self‐report questionnaires and demographic data. Materials and Methods Self‐reported measures of periodontitis, demographic data and clinically established Stage III/IV periodontitis status were extracted from two Danish population‐based cohorts (The Copenhagen Aging and Midlife Biobank [CAMB] and The Danish Health Examination Survey [DANHES]) and used to develop cross‐validated machine learning models for the prediction of clinically established Stage III/IV periodontitis. Models were trained using 10‐fold cross‐validations repeated three times on the CAMB dataset ( n = 1476), and the resulting models were validated in the DANHES dataset ( n = 3585). Results The prevalence of Stage III/IV periodontitis was 23.2% ( n = 342) in the CAMB dataset and 9.3% ( n = 335) in the DANHES dataset. For the prediction of clinically established Stage III/IV periodontitis in the CAMB cohort, models reached area under the receiver operating characteristics (AUROCs) of 0.67–0.69, sensitivities of 0.58–0.64 and specificities of 0.71–0.80. In the DANHES cohort, models derived from the CAMB cohort achieved AUROCs of 0.64–0.70, sensitivities of 0.44–0.63 and specificities of 0.75–0.84. Conclusions Applying cross‐validated machine learning algorithms to demographic data and self‐reported measures of periodontitis resulted in models with modest capabilities for the prediction of Stage III/IV periodontitis in two Danish cohorts.
更多
查看译文
关键词
periodontitis,machine learning models,machine learning,prediction
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要