Department of Cardiology, University Medical Center Groningen, University of Groningen, 9700 RB, Groningen, The Netherlands.
Department of Cardiology, Division of Heart & Lungs, University Medical Center Utrecht, University of Utrecht, Heidelberglaan 1, Box 30.001, 9700RB, Utrecht, The Netherlands.
J Nucl Cardiol. 2022 Dec;29(6):3300-3310. doi: 10.1007/s12350-022-02920-x. Epub 2022 Mar 10.
Advanced cardiac imaging with positron emission tomography (PET) is a powerful tool for the evaluation of known or suspected cardiovascular disease. Deep learning (DL) offers the possibility to abstract highly complex patterns to optimize classification and prediction tasks.
We utilized DL models with a multi-task learning approach to identify an impaired myocardial flow reserve (MFR <2.0 ml/g/min) as well as to classify cardiovascular risk traits (factors), namely sex, diabetes, arterial hypertension, dyslipidemia and smoking at the individual-patient level from PET myocardial perfusion polar maps using transfer learning. Performance was assessed on a hold-out test set through the area under receiver operating curve (AUC). DL achieved the highest AUC of 0.94 [0.87-0.98] in classifying an impaired MFR in reserve perfusion polar maps. Fine-tuned DL for the classification of cardiovascular risk factors yielded the highest performance in the identification of sex from stress polar maps (AUC = 0.81 [0.73, 0.88]). Identification of smoking achieved an AUC = 0.71 [0.58, 0.85] from the analysis of rest polar maps. The identification of dyslipidemia and arterial hypertension showed poor performance and was not statistically significant.
Multi-task DL for the evaluation of quantitative PET myocardial perfusion polar maps is able to identify an impaired MFR as well as cardiovascular risk traits such as sex, smoking and possibly diabetes at the individual-patient level.
正电子发射断层扫描(PET)的高级心脏成像技术是评估已知或疑似心血管疾病的有力工具。深度学习(DL)提供了抽象高度复杂模式的可能性,以优化分类和预测任务。
我们利用具有多任务学习方法的 DL 模型,从 PET 心肌灌注极图中以转移学习的方式识别个体患者的心肌血流储备受损(MFR<2.0ml/g/min)以及分类心血管风险特征(因素),即性别、糖尿病、动脉高血压、血脂异常和吸烟。通过接受者操作特征曲线下面积(AUC)评估保留灌注极图中受损 MFR 分类的性能。针对心血管危险因素分类进行微调的 DL 在应激极图中识别性别方面的表现最佳(AUC=0.81[0.73,0.88])。从静息极图分析中,吸烟的识别达到 AUC=0.71[0.58,0.85]。脂代谢异常和动脉高血压的识别表现不佳,且无统计学意义。
用于评估定量 PET 心肌灌注极图的多任务 DL 能够识别受损的 MFR 以及心血管风险特征,如性别、吸烟,可能还有糖尿病。