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Deep learning to convert unstructured CT pulmonary angiography reports into structured reports

机译:深度学习将非结构化CT肺血管造影报告转换为结构化报告

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Abstract BackgroundStructured reports have been shown to improve communication between radiologists and providers. However, some radiologists are concerned about resultant decreased workflow efficiency. We tested a machine learning-based algorithm designed to convert unstructured computed tomography pulmonary angiography (CTPA) reports into structured reports.MethodsA self-supervised convolutional neural network-based algorithm was trained on a dataset of 475 manually structured CTPA reports. Labels for individual statements included “pulmonary arteries,” “lungs and airways,” “pleura,” “mediastinum and lymph nodes,” “cardiovascular,” “soft tissues and bones,” “upper abdomen,” and “lines/tubes.” The algorithm was applied to a test set of 400 unstructured CTPA reports, generating a predicted label for each statement, which was evaluated by two independent observers. Per-statement accuracy was calculated based on strict criteria (algorithm label counted as correct if the statement unequivocally contained content only related to that particular label) and a modified criteria, accounting for problematic statements, including typographical errors, statements that did not fit well into the classification scheme, statements containing content for multiple labels, etc.ResultsOf the 4,157 statements, 3,806 (91.6%) and 3,986 (95.9%) were correctly labeled by the algorithm using strict and modified criteria, respectively, while 274 (6.6%) were problematic for the manual observers to label, the majority of which ( n =?173) were due to more than one section being included in one statement.ConclusionThis algorithm showed high accuracy in converting free-text findings into structured reports, which could improve communication between radiologists and clinicians without loss of productivity and provide more structured data for research/data mining applications.
机译:摘要背景已经显示出结构化的报告可以改善放射科医生与医疗提供者之间的沟通。但是,一些放射科医生担心工作流程效率降低。我们测试了一种基于机器学习的算法,该算法旨在将非结构化计算机断层扫描肺血管造影(CTPA)报告转换为结构化报告。方法在475个手动结构化CTPA报告的数据集上训练了一种基于自监督卷积神经网络的算法。个别陈述的标签包括“肺动脉”,“肺和气道”,“胸膜”,“纵隔和淋巴结”,“心血管”,“软组织和骨骼”,“上腹部”和“管线/管”。将该算法应用于400个非结构化CTPA报告的测试集,为每个语句生成预测的标签,并由两个独立的观察者进行评估。每个陈述的准确性是根据严格的标准(如果语句明确地包含仅与该特定标签相关的内容,则算法标签视为正确)和修改后的标准计算得出的,以解决有问题的语句,包括印刷错误,不太适合的语句结果在4,157条陈述中,算法分别使用严格和修改后的标准正确标注了3,806(91.6%)和3,986(95.9%),而274(6.6%)被正确地标注。该问题对于手动观察者进行标注是有问题的,其中大多数(n =?173)是由于一个语句中包含一个以上的部分。结论该算法在将自由文本结果转换为结构化报告方面显示出很高的准确性,可以改善沟通在放射科医生和临床医生之间进行操作,而不会损失生产力,并为研究/数据挖掘应用程序提供了更结构化的数据。

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