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Counting trees in Random Forests: Predicting symptom severity in psychiatric intake reports

机译:计数随机森林中的树木:在精神病学报告中预测症状严重程度

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摘要

The CEGS N-GRID 2016 Shared Task (Filannino, Stubbs, Uzuner (2017)) in Clinical Natural Language Processing introduces the assignment of a severity score to a psychiatric symptom, based on a psychiatric intake report. We present a method that employs the inherent interview-like structure of the report to extract relevant information from the report and generate a representation. The representation consists of a restricted set of psychiatric concepts (and the context they occur in), identified using medical concepts defined in UMLS that are directly related to the psychiatric diagnoses present in the Diagnostic and Statistical Manual of Mental Disorders, 4th Edition (DSM-IV) ontology. Random Forests provides a generalization of the extracted, case-specific features in our representation. The best variant presented here scored an inverse mean absolute error (MAE) of 80.64%. A concise concept-based representation, paired with identification of concept certainty and scope (family, patient), shows a robust performance on the task.
机译:临床自然语言处理中的CEGS N-GRID 2016共享任务(Filannino,Stubbs,Uzuner(2017))根据精神病学摄入量报告,为精神病症状分配了严重程度评分。我们提出了一种方法,该方法采用了报告固有的类似访谈的结构,以从报告中提取相关信息并生成表示形式。该表示由一组受限制的精神病学概念(及其发生的上下文)组成,这些概念是使用UMLS中定义的医学概念进行识别的,这些概念与《精神疾病诊断和统计手册》第4版(DSM- IV)本体。随机森林在我们的表示中提供了提取的,针对特定案例的特征的概括。此处呈现的最佳变体的平均反向绝对误差(MAE)为80.64%。简洁的基于概念的表示形式,与对概念确定性和范围(家庭,患者)的识别相结合,显示了该任务的强大性能。

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