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Natural language processing of radiology reports for identification of skeletal site-specific fractures

机译:放射学报告的自然语言处理,可识别骨骼部位特定的骨折

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Osteoporosis has become an important public health issue. Most of the population, particularly elderly people, are at some degree of risk of osteoporosis-related fractures. Accurate identification and surveillance of patient populations with fractures has a significant impact on reduction of cost of care by preventing future fractures and its corresponding complications. In this study, we developed a rule-based natural language processing (NLP) algorithm for identification of twenty skeletal site-specific fractures from radiology reports. The rule-based NLP algorithm was based on regular expressions developed using MedTagger, an NLP tool of the Apache Unstructured Information Management Architecture (UIMA) pipeline to facilitate information extraction from clinical narratives. Radiology notes were retrieved from the Mayo Clinic electronic health records data warehouse. We developed rules for identifying each fracture type according to physicians’ knowledge and experience, and refined these rules via verification with physicians. This study was approved by the institutional review board (IRB) for human subject research. We validated the NLP algorithm using the radiology reports of a community-based cohort at Mayo Clinic with the gold standard constructed by medical experts. The micro-averaged results of sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), and F1-score of the proposed NLP algorithm are 0.930, 1.0, 1.0, 0.941, 0.961, respectively. The F1-score is 1.0 for 8 fractures, and above 0.9 for a total of 17 out of 20 fractures (85%). The results verified the effectiveness of the proposed rule-based NLP algorithm in automatic identification of osteoporosis-related skeletal site-specific fractures from radiology reports. The NLP algorithm could be utilized to accurately identify the patients with fractures and those who are also at high risk of future fractures due to osteoporosis. Appropriate care interventions to those patients, not only the most at-risk patients but also those with emerging risk, would significantly reduce future fractures.
机译:骨质疏松症已成为重要的公共卫生问题。大多数人口,特别是老年人,都处于与骨质疏松症相关的骨折的一定风险中。通过预防将来的骨折及其相应的并发症,对骨折患者人群的准确识别和监视对降低医疗成本具有重大影响。在这项研究中,我们开发了基于规则的自然语言处理(NLP)算法,用于从放射学报告中识别20处特定于骨骼的骨折。基于规则的NLP算法基于使用MedTagger开发的正则表达式,MedTagger是Apache非结构化信息管理架构(UIMA)管道的NLP工具,用于促进从临床叙述中提取信息。从Mayo Clinic电子健康记录数据仓库中检索了放射学注释。我们根据医师的知识和经验制定了识别每种骨折类型的规则,并通过与医师进行验证来完善这些规则。这项研究已由机构审查委员会(IRB)批准进行人体研究。我们使用医学专家构建的金标准,使用Mayo Clinic的一个社区队列的放射学报告验证了NLP算法。所提出的NLP算法的敏感性,特异性,阳性预测值(PPV),阴性预测值(NPV)和F1分数的微观平均结果分别为0.930、1.0、1.0、0.941、0.961。 F1评分为8处骨折的1.0,高于0.9的20处骨折中的17处(85%)。结果证实了所提出的基于规则的NLP算法在放射学报告中自动识别骨质疏松症相关骨骼部位特异性骨折中的有效性。 NLP算法可用于准确识别患有骨质疏松症的骨折患者和未来骨折风险高的患者。对这些患者采取适当的护理干预措施,不仅是最危险的患者,还有那些有新风险的患者,都将显着减少将来的骨折。

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