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A Predictive Model for Patient Similarity: Classes Based on Secondary Data and Simple Measurements as Predictors

机译:患者相似性的预测模型:基于辅助数据的类和简单测量作为预测因子

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Predictive models optimized for average cases might work not perfect for cases deviating from average because they are based on a cohort of all patients. Models could be more personalized if they were built on a sub-cohort of patients similar to a current one and to train models on data collected from those similar patients. In this paper, we consider patient similarity as a classification task, We suppose that data such as diagnoses and treatment obtained by physicians (secondary data) are more relevant for similarity than tests and measurements (primary data). We defined several classes based on diagnoses and outcomes and apply a predictive model for classification. We used five commonly used and easy to obtain measurements as predictors for the model. All measurements were collected during the first 24 hours after admission. We have shown that classes of similar patients can be defined on the basis of a previous patient's secondary data and new patients can be classified into these classes.
机译:针对平均案例优化的预测模型可能不适合偏离平均值的情况,因为它们是基于所有患者的队列。如果基于类似于当前的患者的患者和从这些类似患者收集的数据的模型建立在类似患者的患者上,模型可能更为个性化。在本文中,我们认为患者的相似性作为分类任务,我们假设诸如医生(二级数据)获得的诊断和治疗的数据与比测试和测量更相关(主要数据)。我们根据诊断和结果定义了几个类,并应用了分类的预测模型。我们使用了五个常用且易于获得的测量作为模型的预测因素。在入院后的前24小时内收集所有测量。我们已经表明,类似患者的类别可以根据先前的患者的二级数据和新患者分类为这些课程。

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