通过自然语言处理和机器学习预测小儿癫痫手术候选者的方法问题。

Biomedical informatics insights Pub Date : 2016-05-22 eCollection Date: 2016-01-01 DOI:10.4137/BII.S38308
Kevin Bretonnel Cohen, Benjamin Glass, Hansel M Greiner, Katherine Holland-Bouley, Shannon Standridge, Ravindra Arya, Robert Faist, Diego Morita, Francesco Mangano, Brian Connolly, Tracy Glauser, John Pestian
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引用次数: 0

摘要

目的:我们介绍了一个系统的开发和评估情况,该系统利用机器学习和自然语言处理技术来识别潜在的耐药性小儿癫痫手术干预候选者。数据由从电子健康记录(EHR)中提取的自由文本临床笔记组成。电子病历中的已知临床结果和人工图表注释为患者的状况提供了黄金标准。然后对以下假设进行测试:1)机器学习方法能像医生一样识别癫痫手术候选者;2)机器学习方法能比医生更早地识别候选者。通过系统评估数据源、训练数据量、类别平衡、分类算法和特征集对分类器性能的影响,对这些假设进行了检验。结果支持这两个假设,F 值范围在 0.71 到 0.82 之间。特征集、分类算法、训练数据量、类平衡和金标准都对分类性能有显著影响。进一步观察还发现,即使在手术转诊前一年,分类性能也优于两个注释者之间的最高一致性。结果表明,这种机器学习方法有助于预测小儿癫痫手术候选者,减少手术转诊的滞后时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Methodological Issues in Predicting Pediatric Epilepsy Surgery Candidates Through Natural Language Processing and Machine Learning.

Methodological Issues in Predicting Pediatric Epilepsy Surgery Candidates Through Natural Language Processing and Machine Learning.

Methodological Issues in Predicting Pediatric Epilepsy Surgery Candidates Through Natural Language Processing and Machine Learning.

Methodological Issues in Predicting Pediatric Epilepsy Surgery Candidates Through Natural Language Processing and Machine Learning.

Objective: We describe the development and evaluation of a system that uses machine learning and natural language processing techniques to identify potential candidates for surgical intervention for drug-resistant pediatric epilepsy. The data are comprised of free-text clinical notes extracted from the electronic health record (EHR). Both known clinical outcomes from the EHR and manual chart annotations provide gold standards for the patient's status. The following hypotheses are then tested: 1) machine learning methods can identify epilepsy surgery candidates as well as physicians do and 2) machine learning methods can identify candidates earlier than physicians do. These hypotheses are tested by systematically evaluating the effects of the data source, amount of training data, class balance, classification algorithm, and feature set on classifier performance. The results support both hypotheses, with F-measures ranging from 0.71 to 0.82. The feature set, classification algorithm, amount of training data, class balance, and gold standard all significantly affected classification performance. It was further observed that classification performance was better than the highest agreement between two annotators, even at one year before documented surgery referral. The results demonstrate that such machine learning methods can contribute to predicting pediatric epilepsy surgery candidates and reducing lag time to surgery referral.

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