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Measurement and application of patient similarity in personalized predictive modeling based on electronic medical records

机译:基于电子病历的个性化预测模型中患者相似度的测量和应用

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Conventional risk prediction techniques may not be the most suitable approach for personalized prediction for individual patients. Therefore, individualized predictive modeling based on similar patients has emerged. This study aimed to propose a comprehensive measurement of patient similarity using real-world electronic medical records data, and evaluate the effectiveness of the individualized prediction of a patient’s diabetes status based on the patient similarity. When using no more than 30% of the whole training sample, the personalized predictive models outperformed corresponding traditional models built on randomly selected training samples of the same size as the personalized models (P??0.001 for all). With only the top 1000 (10%), 700 (7%) and 1400 (14%) similar samples, personalized random forest, k-nearest neighbor and logistic regression models reached the globally optimal performance with the area under the?receiver-operating characteristic (ROC) curve of 0.90, 0.82 and 0.89, respectively. The proposed patient similarity measurement was effective when developing personalized predictive models. The successful application of patient similarity in predicting a patient’s diabetes status provided useful references for diagnostic decision-making support by investigating the evidence on similar patients.
机译:传统的风险预测技术可能不是针对个别患者进行个性化预测的最合适方法。因此,出现了基于相似患者的个性化预测模型。这项研究旨在提出使用现实世界的电子病历数据对患者相似性进行全面测量的方法,并基于患者相似性评估评估患者糖尿病状况的个性化预测的有效性。当使用不超过整个训练样本的30%时,个性化的预测模型要优于基于随机选择的训练样本构建的相应传统模型,该样本与个性化模型的大小相同(所有P均<0.001)。仅靠前1000个(10%),700个(7%)和1400个(14%)相似样本,个性化随机森林,k近邻和logistic回归模型在接收者操作区域下达到了全局最佳性能。特性(ROC)曲线分别为0.90、0.82和0.89。当开发个性化的预测模型时,建议的患者相似性测量是有效的。通过对相似患者的证据进行调查,成功地将患者相似性用于预测患者的糖尿病状况,为诊断决策支持提供了有用的参考。

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