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Clinical Tagging with Joint Probabilistic Models

机译:具有联合概率模型的临床标记

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We describe a method for parameter estimation in bipartite probabilistic graphical models for joint prediction of clinical conditions from the electronic medical record. The method does not rely on the availability of gold-standard labels, but rather uses noisy labels, called anchors, for learning. We provide a likelihood-based objective and a moments-based initialization that are effective at learning the model parameters. The learned model is evaluated in a task of assigning a heldout clinical condition to patients based on retrospective analysis of the records, and outperforms baselines which do not account for the noisiness in the labels or do not model the conditions jointly.
机译:我们描述了一种用于从电子病历中联合预测临床状况的二部概率图形模型中参数估计的方法。该方法不依赖于黄金标准标签的可用性,而是使用称为主播的嘈杂标签进行学习。我们提供了基于似然的目标和基于矩的初始化,可有效地学习模型参数。在对记录进行回顾性分析的基础上,将分配的临床条件分配给患者的任务是对学习模型进行评估,该模型的性能优于不考虑标签中噪声或无法共同模拟条件的基线。

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