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Natural language processing improves identification of colorectal cancer testing in the electronic medical record

机译:自然语言处理可改善电子病历中大肠癌检测的识别

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Background. Difficulty identifying patients in need of colorectal cancer (CRC) screening contributes to low screening rates. Objective. To use Electronic Health Record (EHR) data to identify patients with prior CRC testing. Design. A clinical natural language processing (NLP) system was modified to identify 4 CRC tests (colonoscopy, flexible sigmoidoscopy, fecal occult blood testing, and double contrast barium enema) within electronic clinical documentation. Text phrases in clinical notes referencing CRC tests were interpreted by the system to determine whether testing was planned or completed and to estimate the date of completed tests. Setting. Large academic medical center. Patients. 200 patients a‰¥ 50 years old who had completed a‰¥ 2 non-acute primary care visits within a 1-year period. Measures. Recall and precision of the NLP system, billing records, and human chart review were compared to a reference standard of human review of all available information sources. Results. For identification of all CRC tests, recall and precision were as follows: NLP system (recall 93%, precision 94%), chart review (74%, 98%), and billing records review (44%, 83%). Recall and precision for identification of patients in need of screening were: NLP system (recall 95%, precision 88%), chart review (99%, 82%), and billing records (99%, 67%). Limitations. Small sample size and requirement for a robust EHR. Conclusions. Applying NLP to EHR records detected more CRC tests than either manual chart review or billing records review alone. NLP had better precision but marginally lower recall to identify patients who were due for CRC screening than billing record review.
机译:背景。难以识别需要大肠癌(CRC)筛查的患者有助于降低筛查率。目的。使用电子健康记录(EHR)数据来识别接受过CRC测试的患者。设计。修改了临床自然语言处理(NLP)系统,以在电子临床文档中识别4种CRC测试(结肠镜检查,柔性乙状结肠镜检查,粪便潜血测试和双对比钡灌肠)。系统会解释参考CRC测试的临床笔记中的文字短语,以确定测试是计划中的还是完成的,并估计完成测试的日期。设置。大型学术医疗中心。耐心。 200名患者(年龄50岁)在1年内完成了2次非急性初级保健就诊。措施。将NLP系统,帐单记录和人工图表审查的召回率和准确性与所有可用信息源的人工审查参考标准进行了比较。结果。为了识别所有CRC测试,召回率和精确度如下:NLP系统(召回93%,精确度94%),图表审查(74%,98%)和计费记录审查(44%,83%)。用于识别需要筛查患者的召回率和准确度为:NLP系统(召回率95%,准确度88%),图表审查(99%,82%)和计费记录(99%,67%)。局限性。样本量小,需要强大的EHR。结论。将NLP应用于EHR记录所检测到的CRC测试比单独进行手动图表查看或计费记录查看要多。与开具帐单记录相比,NLP具有更高的精确度,但在识别应进行CRC筛查的患者时的召回率略低。

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