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胸部 CT 偶然发现的甲状腺结节的管理:使用自然语言处理评估白皮书的依从性并跟踪患者的结局。

Management of Incidental Thyroid Nodules on Chest CT: Using Natural Language Processing to Assess White Paper Adherence and Track Patient Outcomes.

机构信息

Mallinckrodt Institute of Radiology, Washington University School of Medicine in Saint Louis, 510 South Kingshighway Blvd., Saint Louis, MO 63110.

Department of Radiology, Duke University, Durham, North Carolina.

出版信息

Acad Radiol. 2022 Mar;29(3):e18-e24. doi: 10.1016/j.acra.2021.02.019. Epub 2021 Mar 20.

Abstract

OBJECTIVE

The purpose of this study was to develop a natural language processing (NLP) pipeline to identify incidental thyroid nodules (ITNs) meeting criteria for sonographic follow-up and to assess both adherence rates to white paper recommendations and downstream outcomes related to these incidental findings.

METHODS

21583 non-contrast chest CT reports from 2017 and 2018 were retrospectively evaluated to identify reports which included either an explicit recommendation for thyroid ultrasound, a description of a nodule ≥ 1.5 cm, or description of a nodule with suspicious features. Reports from 2018 were used to train an NLP algorithm called fastText for automated identification of such reports. Algorithm performance was then evaluated on the 2017 reports. Next, any patient from 2017 with a report meeting criteria for ultrasound follow-up was further evaluated with manual chart review to determine follow-up adherence rates and nodule-related outcomes.

RESULTS

NLP identified reports with ITNs meeting criteria for sonographic follow-up with an accuracy of 96.5% (95% CI 96.2-96.7) and sensitivity of 92.1% (95% CI 89.8-94.3). In 10006 chest CTs from 2017, ITN follow-up ultrasound was indicated according to white paper criteria in 81 patients (0.8%), explicitly recommended in 46.9% (38/81) of patients, and obtained in less than half of patients in which it was appropriately recommended (17/35, 48.6%).

DISCUSSION

NLP accurately identified chest CT reports meeting criteria for ITN ultrasound follow-up. Radiologist adherence to white paper guidelines and subsequent referrer adherence to radiologist recommendations showed room for improvement.

摘要

目的

本研究旨在开发一种自然语言处理(NLP)管道,以识别符合超声随访标准的偶然甲状腺结节(ITN),并评估这些偶然发现相关的建议遵循率和下游结果。

方法

回顾性评估了 2017 年和 2018 年的 21583 份非对比胸部 CT 报告,以确定报告中是否包含明确的甲状腺超声建议、≥1.5cm 结节的描述或具有可疑特征的结节描述。2018 年的报告用于训练一种名为 fastText 的 NLP 算法,以自动识别此类报告。然后,在 2017 年的报告上评估算法性能。接下来,任何 2017 年报告符合超声随访标准的患者,都将通过手动图表审查进行进一步评估,以确定随访遵循率和结节相关结局。

结果

NLP 以 96.5%(95%CI 96.2-96.7)的准确率和 92.1%(95%CI 89.8-94.3)的灵敏度识别出符合超声随访标准的 ITN 报告。在 2017 年的 10006 次胸部 CT 中,根据白皮书标准,81 例(0.8%)患者需要进行 ITN 随访超声检查,其中 46.9%(38/81)的患者明确建议进行超声检查,而在适当建议的患者中,不到一半(17/35,48.6%)进行了超声检查。

讨论

NLP 准确识别了符合 ITN 超声随访标准的胸部 CT 报告。放射科医生对白皮书指南的遵循以及随后的转诊医生对放射科医生建议的遵循都有改进的空间。

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