Potočnik Jaka, Thomas Edel, Killeen Ronan, Foley Shane, Lawlor Aonghus, Stowe John
University College Dublin School of Medicine, Dublin, Ireland.
University College Dublin School of Computer Science, Dublin, Ireland.
Insights Imaging. 2022 Aug 4;13(1):127. doi: 10.1186/s13244-022-01267-8.
With a significant increase in utilisation of computed tomography (CT), inappropriate imaging is a significant concern. Manual justification audits of radiology referrals are time-consuming and require financial resources. We aimed to retrospectively audit justification of brain CT referrals by applying natural language processing and traditional machine learning (ML) techniques to predict their justification based on the audit outcomes.
Two human experts retrospectively analysed justification of 375 adult brain CT referrals performed in a tertiary referral hospital during the 2019 calendar year, using a cloud-based platform for structured referring. Cohen's kappa was computed to measure inter-rater reliability. Referrals were represented as bag-of-words (BOW) and term frequency-inverse document frequency models. Text preprocessing techniques, including custom stop words (CSW) and spell correction (SC), were applied to the referral text. Logistic regression, random forest, and support vector machines (SVM) were used to predict the justification of referrals. A test set (300/75) was used to compute weighted accuracy, sensitivity, specificity, and the area under the curve (AUC).
In total, 253 (67.5%) examinations were deemed justified, 75 (20.0%) as unjustified, and 47 (12.5%) as maybe justified. The agreement between the annotators was strong (κ = 0.835). The BOW + CSW + SC + SVM outperformed other binary models with a weighted accuracy of 92%, a sensitivity of 91%, a specificity of 93%, and an AUC of 0.948.
Traditional ML models can accurately predict justification of unstructured brain CT referrals. This offers potential for automated justification analysis of CT referrals in clinical departments.
随着计算机断层扫描(CT)使用率的显著增加,不适当的成像成为一个重大问题。对放射学转诊进行人工合理性审核既耗时又需要财政资源。我们旨在通过应用自然语言处理和传统机器学习(ML)技术,根据审核结果预测脑CT转诊的合理性,从而对其进行回顾性审核。
两名人类专家使用基于云的结构化转诊平台,对2019年在一家三级转诊医院进行的375例成人大脑CT转诊的合理性进行回顾性分析。计算科恩kappa系数以衡量评分者间的可靠性。转诊被表示为词袋(BOW)和词频 - 逆文档频率模型。将包括自定义停用词(CSW)和拼写校正(SC)在内的文本预处理技术应用于转诊文本。使用逻辑回归、随机森林和支持向量机(SVM)来预测转诊的合理性。使用测试集(300/75)计算加权准确率、敏感性、特异性和曲线下面积(AUC)。
总共253例(67.5%)检查被认为是合理的,75例(20.0%)不合理,47例(12.5%)可能合理。注释者之间的一致性很强(κ = 0.835)。BOW + CSW + SC + SVM优于其他二元模型,加权准确率为92%,敏感性为91%,特异性为93%,AUC为0.948。
传统ML模型可以准确预测非结构化脑CT转诊的合理性。这为临床科室CT转诊的自动合理性分析提供了可能性。