Isma'eel Hussain A, Cremer Paul C, Khalaf Shaden, Almedawar Mohamad M, Elhajj Imad H, Sakr George E, Jaber Wael A
Division of Cardiology, Department of Internal Medicine, American University of Beirut, Beirut, Lebanon.
Vascular Medicine Program, American University of Beirut Medical Center, Riad el Solh, PO Box 11-023, Beirut, 11072020, Lebanon.
Int J Cardiovasc Imaging. 2016 Apr;32(4):687-96. doi: 10.1007/s10554-015-0821-9. Epub 2015 Dec 1.
Despite uncertain yield, guidelines endorse routine stress myocardial perfusion imaging (MPI) for patients with suspected acute coronary syndromes, unremarkable serial electrocardiograms, and negative troponin measurements. In these patients, outcome prediction and risk stratification models could spare unnecessary testing. This study therefore investigated the use of artificial neural networks (ANN) to improve risk stratification and prediction of MPI and angiographic results. We retrospectively identified 5354 consecutive patients referred from the emergency department for rest-stress MPI after serial negative troponins and normal ECGs. Patients were risk stratified according to thrombolysis in myocardial infarction (TIMI) scores, ischemia was defined as >5 % reversible perfusion defect, and obstructive coronary artery disease was defined as >50 % angiographic obstruction. For ANN, the network architecture employed a systematic method where the number of neurons is changed incrementally, and bootstrapping was performed to evaluate the accuracy of the models. Compared to TIMI scores, ANN models provided improved discriminatory power. With regards to MPI, an ANN model could reduce testing by 59 % and maintain a 96 % negative predictive value (NPV) for ruling out ischemia. Application of an ANN model could also avoid 73 % of invasive coronary angiograms while maintaining a 98 % NPV for detecting obstructive CAD. An online calculator for clinical use was created using these models. The ANN models improved risk stratification when compared to the TIMI score. Our calculator could also reduce downstream testing while maintaining an excellent NPV, though further study is needed before the calculator can be used clinically.
尽管获益不确定,但指南仍支持对疑似急性冠脉综合征、系列心电图无异常且肌钙蛋白测量结果为阴性的患者进行常规负荷心肌灌注成像(MPI)检查。对于这些患者,结局预测和风险分层模型可以避免不必要的检查。因此,本研究探讨了使用人工神经网络(ANN)来改善MPI和血管造影结果的风险分层及预测。我们回顾性纳入了5354例连续从急诊科转诊来的患者,这些患者在系列肌钙蛋白阴性且心电图正常后接受静息-负荷MPI检查。根据心肌梗死溶栓(TIMI)评分对患者进行风险分层,缺血定义为可逆性灌注缺损>5%,阻塞性冠状动脉疾病定义为血管造影阻塞>50%。对于ANN,网络架构采用一种系统方法,即神经元数量逐步变化,并进行自抽样以评估模型的准确性。与TIMI评分相比,ANN模型具有更好的鉴别能力。对于MPI,ANN模型可减少59%的检查,并保持96%的排除缺血的阴性预测值(NPV)。应用ANN模型还可避免73%的有创冠状动脉造影,同时保持98%的检测阻塞性CAD的NPV。利用这些模型创建了一个供临床使用的在线计算器。与TIMI评分相比,ANN模型改善了风险分层。我们的计算器也可减少下游检查,同时保持出色的NPV,不过在该计算器可用于临床之前还需要进一步研究。