Evaluating Automatic Methods to Extract Patients' Supplement Use from Clinical Reports.

Yadan Fan, Lu He, Rui Zhang
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引用次数: 4

Abstract

The widespread prevalence of dietary supplements has drawn extensive attention due to the safety and efficacy issue. Clinical notes document a great amount of detailed information on dietary supplement usage, thus providing a rich source for clinical research on supplement safety surveillance. Identification the use status of dietary supplements is one of the initial steps for the ultimate goal of the supplement safety surveillance. In this study, we built rule-based and machine learning-based classifiers to automatically classify the use status of supplements into four categories: Continuing (C), Discontinued (D), Started (S), and Unclassified (U). In comparison to the machine learning classifier trained on the same datasets, the rule-based classifier showed a better performance with F-measure in the C, D, S, U status of 0.93, 0.98, 0.95, and 0.83, respectively. We further analyzed the errors generated by the rule-based classifier. The classifier can be potentially applied to extract supplement information from clinical notes for supporting research and clinical practice related to patient safety on supplement usage.

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评估从临床报告中提取患者补品使用情况的自动方法。
膳食补充剂的广泛流行引起了人们的广泛关注,其安全性和有效性问题。临床记录记录了大量关于膳食补充剂使用的详细信息,为补充剂安全监测的临床研究提供了丰富的资料来源。确定膳食补充剂的使用状况是补充剂安全监测的最终目标的最初步骤之一。在本研究中,我们构建了基于规则和基于机器学习的分类器,将补充剂的使用状态自动分为四类:继续(C),停止(D),开始(S)和未分类(U)。与在相同数据集上训练的机器学习分类器相比,基于规则的分类器在C, D, S, U状态下的F-measure分别为0.93,0.98,0.95和0.83,显示出更好的性能。我们进一步分析了基于规则的分类器产生的错误。分类器可以潜在地应用于从临床记录中提取补充剂信息,以支持与患者使用补充剂安全相关的研究和临床实践。
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