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首页> 外文期刊>Epilepsy & behavior: E&B >Validating a natural language processing tool to exclude psychogenic nonepileptic seizures in electronic medical record-based epilepsy research
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Validating a natural language processing tool to exclude psychogenic nonepileptic seizures in electronic medical record-based epilepsy research

机译:在基于电子病历的癫痫研究中验证一种自然语言处理工具以排除心理性非癫痫性发作

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Rationale: As electronic health record (EHR) systems become more available, they will serve as an important resource for collecting epidemiologic data in epilepsy research. However, since clinicians do not have a systematic method for coding psychogenic nonepileptic seizures (PNES), patients with PNES are often misclassified as having epilepsy, leading to sampling error. This study validates a natural language processing (NLP) tool that uses linguistic information to help identify patients with PNES. Methods: Using the VA national clinical database, 2200 notes of Iraq and Afghanistan veterans who completed video electroencephalograph (VEEG) monitoring were reviewed manually, and the veterans were identified as having documented PNES or not. Reviewers identified PNES-related vocabulary to inform a NLP tool called Yale cTakes Extension (YTEX). Using NLP techniques, YTEX annotates syntactic constructs, named entities, and their negation context in the EHR. These annotations are passed to a classifier to detect patients without PNES. The classifier was evaluated by calculating positive predictive values (PPVs), sensitivity, and F-score. Results: Of the 742 Iraq and Afghanistan veterans who received a diagnosis of epilepsy or seizure disorder by VEEG, 44 had documented events on VEEG: 22 veterans (3.0%) had definite PNES only, 20 (2.7%) had probable PNES, and 2 (0.3%) had both PNES and epilepsy documented. The remaining 698 veterans did not have events captured during the VEEG admission and/or did not have a definitive diagnosis. Our classifier achieved a PPV of 93%, a sensitivity of 99%, and a F-score of 96%. Conclusion: Our study demonstrates that the YTEX NLP tool and classifier is highly accurate in excluding PNES, diagnosed with VEEG, in EHR systems. The tool may be very valuable in preventing false positive identification of patients with epilepsy in EHR-based epidemiologic research.
机译:理由:随着电子病历(EHR)系统的日益普及,它们将成为癫痫研究中收集流行病学数据的重要资源。但是,由于临床医生没有用于编码心理性非癫痫性癫痫发作(PNES)的系统方法,因此PNES患者经常被误分类为患有癫痫病,从而导致抽样错误。这项研究验证了使用语言信息来帮助识别PNES患者的自然语言处理(NLP)工具。方法:使用VA国家临床数据库,手动检查完成视频脑电图(VEEG)监测的2200名伊拉克和阿富汗退伍军人笔记,并确定退伍军人是否已记录PNES。审稿人确定了与PNES有关的词汇,以告知称为Yale cTakes Extension(YTEX)的NLP工具。使用NLP技术,YTEX在EHR中注释了语法构造,命名实体及其否定上下文。这些注释将传递到分类器以检测没有PNES的患者。通过计算阳性预测值(PPV),敏感性和F分数评估分类器。结果:在742名通过VEEG诊断为癫痫或癫痫发作的伊拉克和阿富汗退伍军人中,有44例记录了关于VEEG的事件:22名退伍军人(3.0%)仅具有明确的PNES,20退伍军人(2.7%)可能患有PNES,2 (0.3%)记录了PNES和癫痫病。其余698名退伍军人在VEEG入院期间未发生任何事件和/或没有明确的诊断。我们的分类器的PPV为93%,灵敏度为99%,F得分为96%。结论:我们的研究表明,YTEX NLP工具和分类器在排除EHR系统中经VEEG诊断的PNES方面非常准确。在基于EHR的流行病学研究中,该工具对于防止癫痫患者的假阳性识别可能非常有价值。

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