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Development of non-invasive diabetes risk prediction models as decision support tools designed for application in the dental clinical environment

机译:非侵入性糖尿病风险预测模型的发展作为设计用于牙科临床环境中的应用的决策支持工具

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The objective was to develop a predictive model using medical-dental data from an integrated electronic health record (iEHR) to identify individuals with undiagnosed diabetes mellitus (DM) in dental settings. Retrospective data retrieved from Marshfield Clinic Health System's data-warehouse was pre-processed prior to conducting analysis. A subset was extracted from the preprocessed dataset for external evaluation (Nvalidation) of derived predictive models. Further, subsets of 30%–70%, 40%–60% and 50%–50% case-to-control ratios were created for training/testing. Feature selection was performed on all datasets. Four machine learning (ML) classifiers were evaluated: logistic regression (LR), multilayer perceptron (MLP), support vector machines (SVM) and random forests (RF). Model performance was evaluated on Nvalidation. We retrieved a total of 5319 cases and 36,224 controls. From the initial 116 medical and dental features, 107 were used after performing feature selection. RF applied to the 50%–50% case-control ratio outperformed other predictive models over Nvalidation achieving a total accuracy (94.14%), sensitivity (0.941), specificity (0.943), F-measure (0.941), Mathews-correlation-coefficient (0.885) and area under the receiver operating curve (0.972). Future directions include incorporation of this predictive model into iEHR as a clinical decision support tool to screen and detect patients at risk for DM triggering follow-ups and referrals for integrated care delivery between dentists and physicians.
机译:目的是使用来自集成电子健康记录(IEHR)的医疗牙科数据来开发一种预测模型,以识别牙科环境中未确诊糖尿病(DM)的个体。从Marshfield诊所卫生系统的数据仓库中检索的回顾性数据在进行分析之前预处理。从派生预测模型的外部评估(nValidation)的预处理数据集中提取子集。此外,为培训/测试产生30%-70%,40%-60%和50%-50%-50%-50%-50%-50%-50%的子集。在所有数据集上执行功能选择。评估了四种机器学习(ML)分类器:Logistic回归(LR),多层感知(MLP),支持载体机(SVM)和随机森林(RF)。模型性能在NValidation上进行了评估。我们共检测到5319例和36,224个控制。从初始116初始的116次医疗和牙科功能,在执行特征选择后使用107。射频施加到50%-50%的病例控制比率优于其他预测模型,通过NValidation实现总精度(94.14%),灵敏度(0.941),特异性(0.943),F测量(0.941),Mathews-Collelitation系数(0.885)和接收器运行曲线下的区域(0.972)。未来的方向包括将此预测模型纳入IEHR作为临床决策支持工具,以筛选和检测牙科医生和医生之间的综合护理交付的DM触发后续跟踪和转介的患者。

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