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Extraction of recommendation features in radiology with natural language processing: exploratory study.

机译:自然语言处理放射学中推荐特征的提取:探索性研究。

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OBJECTIVE: The purposes of this study were to validate a natural language processing program for extraction of recommendation features, such as recommended time frames and imaging technique, from electronic radiology reports and to assess patterns of recommendation features in a large database of radiology reports. MATERIALS AND METHODS: This study was performed on a radiology reports database covering the years 1995-2004. From this database, 120 reports with and without recommendations were selected and randomized. Two radiologists independently classified these reports according to presence of recommendations, time frame, and imaging technique suggested for follow-up or repeated examinations. The natural language processing program then was used to classify the reports according to the same criteria used by the radiologists. The accuracy of classification of recommendation features was determined. The program then was used to determine the patterns of recommendation features for different patients and imaging features in the entire database of 4,211,503 reports. RESULTS: The natural language processing program had an accuracy of 93.2% (82/88) for identifying the imaging technique recommended by the radiologists for further evaluation. Categorization of recommended time frames in the reports with the 88 recommendations obtained with the program resulted in 83 (94.3%) accurate classifications and five (5.7%) inaccurate classifications. Recommendations of CT were most common (27.9%, 105,076 of 376,918 reports) followed by those for MRI (17.8%). In most (85.4%, 322,074/376,918) of the reports with imaging recommendations, however, radiologists did not specify the time frame. CONCLUSION: Accurate determination of recommended imaging techniques and time frames in a large database of radiology reports is possible with a natural language processing program. Most imaging recommendations are for high-cost but more accurate radiologic studies.
机译:目的:本研究的目的是验证一种自然语言处理程序,以从电子放射报告中提取推荐特征,例如推荐时间范围和成像技术,并评估大型放射报告数据库中推荐特征的模式。材料与方法:本研究是在涵盖1995-2004年的放射学报告数据库上进行的。从该数据库中,选择并随机化了120份有或没有建议的报告。两名放射科医生根据建议的存在,时限和建议进行随访或重复检查的成像技术对这些报告进行独立分类。然后,使用自然语言处理程序根据放射科医生使用的相同标准对报告进行分类。确定推荐特征分类的准确性。然后,该程序用于确定针对不同患者的推荐特征的模式以及4,211,503个报告的整个数据库中的成像特征。结果:自然语言处理程序具有93.2%(82/88)的准确度,可以识别放射线医师推荐的成像技术以进行进一步评估。报告中建议时间框架的分类以及该程序获得的88条建议导致了83(94.3%)个准确的分类和5个(5.7%)不正确的分类。 CT的建议最常见(27.9%,376,918份报告中的105,076份),其次是MRI的建议(17.8%)。在大多数(85.4%,322,074 / 376,918)份包含影像学建议的报告中,放射科医生未指定时间范围。结论:使用自然语言处理程序可以在大型放射报告数据库中准确确定推荐的成像技术和时间范围。大多数影像学建议均用于高成本但更准确的放射学研究。

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