Ramtin Hakimjavadi, Juan Lu, Yeung Yam, Girish Dwivedi, Gary R Small, Benjamin J W Chow
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引用次数: 0
摘要
【摘要】目的冠状动脉ct血管造影(CCTA)对疑似冠状动脉疾病的不加区分的转诊可能导致更高比例的模棱两可和非诊断性研究,导致下游资源利用不当或延误诊断时间。我们试图开发一种简单的临床工具来预测非诊断性CCTA的可能性,以帮助确定可能更适合使用其他测试的患者。方法和结果我们从2006年2月至2021年5月期间连续接受CCTA的21492名患者中开发了一个临床评分系统。冠状动脉ct血管造影研究结果分为正常、异常和非诊断性。进行多变量逻辑回归分析,以产生预测非诊断测试可能性的模型。使用机器学习(ML)模型来验证预测器的选择和预测性能。logistic回归和ML模型均获得了公平的区分能力,曲线下面积分别为0.630[95%置信区间(CI) 0.618-0.641]和0.634 (95% CI 0.612-0.656)。在非诊断性研究中,心脏植入物的存在和体重100公斤是最具影响力的预测因素。我们开发了一个可以在“调度点”实施的模型,以确定哪些患者最适合进行另一种非侵入性诊断测试。
Pre-screening for Non-Diagnostic Coronary CT Angiography
Abstract Aims Indiscriminate coronary computed tomography angiography (CCTA) referrals for suspected coronary artery disease could result in a higher rate of equivocal and non-diagnostic studies, leading to inappropriate downstream resource utilization or delayed time to diagnosis. We sought to develop a simple clinical tool for predicting the likelihood of a non-diagnostic CCTA to help identify patients who might be better served with a different test. Methods and results We developed a clinical scoring system from a cohort of 21 492 consecutive patients who underwent CCTA between February 2006 and May 2021. Coronary computed tomography angiography study results were categorized as normal, abnormal, or non-diagnostic. Multivariable logistic regression analysis was conducted to produce a model that predicted the likelihood of a non-diagnostic test. Machine learning (ML) models were utilized to validate the predictor selection and prediction performance. Both logistic regression and ML models achieved fair discriminate ability with an area under the curve of 0.630 [95% confidence interval (CI) 0.618–0.641] and 0.634 (95% CI 0.612–0.656), respectively. The presence of a cardiac implant and weight >100 kg were among the most influential predictors of a non-diagnostic study. Conclusion We developed a model that could be implemented at the ‘point-of-scheduling’ to identify patients who would be best served by another non-invasive diagnostic test.