Li Mingqi, Zeng Dewen, Zhou Yanxiang, Chen Jinling, Cao Sheng, Song Hongning, Hu Bo, Yuan Wenyue, Chen Jing, Yang Yuanting, Wang Hao, Fei Hongwen, Shi Yiyu, Zhou Qing
Department of Ultrasound Imaging, Renmin Hospital of Wuhan University, Wuhan, China.
Department of Computer Science and Engineering, University of Notre Dame, South Bend, IN, United States.
Front Cardiovasc Med. 2023 Apr 27;10:1140025. doi: 10.3389/fcvm.2023.1140025. eCollection 2023.
In ST-segment elevation myocardial infarction (STEMI) with the restoration of TIMI 3 flow by percutaneous coronary intervention (PCI), visually defined microvascular obstruction (MVO) was shown to be the predictor of poor prognosis, but not an ideal risk stratification method. We intend to introduce deep neural network (DNN) assisted myocardial contrast echocardiography (MCE) quantitative analysis and propose a better risk stratification model.
194 STEMI patients with successful primary PCI with at least 6 months follow-up were included. MCE was performed within 48 h after PCI. The major adverse cardiovascular events (MACE) were defined as cardiac death, congestive heart failure, reinfarction, stroke, and recurrent angina. The perfusion parameters were derived from a DNN-based myocardial segmentation framework. Three patterns of visual microvascular perfusion (MVP) qualitative analysis: normal, delay, and MVO. Clinical markers and imaging features, including global longitudinal strain (GLS) were analyzed. A calculator for risk was constructed and validated with bootstrap resampling.
The time-cost for processing 7,403 MCE frames is 773 s. The correlation coefficients of microvascular blood flow (MBF) were 0.99 to 0.97 for intra-observer and inter-observer variability. 38 patients met MACE in 6-month follow-up. We proposed A risk prediction model based on MBF [HR: 0.93 (0.91-0.95)] in culprit lesion areas and GLS [HR: 0.80 (0.73-0.88)]. At the best risk threshold of 40%, the AUC was 0.95 (sensitivity: 0.84, specificity: 0.94), better than visual MVP method (AUC: 0.70, Sensitivity: 0.89, Specificity: 0.40, IDI: -0.49). The Kaplan-Meier curves showed that the proposed risk prediction model allowed for better risk stratification.
The MBF + GLS model allowed more accurate risk stratification of STEMI after PCI than visual qualitative analysis. The DNN-assisted MCE quantitative analysis is an objective, efficient and reproducible method to evaluate microvascular perfusion.
在经皮冠状动脉介入治疗(PCI)使ST段抬高型心肌梗死(STEMI)患者恢复TIMI 3级血流的情况下,视觉定义的微血管阻塞(MVO)被证明是预后不良的预测指标,但并非理想的风险分层方法。我们打算引入深度神经网络(DNN)辅助的心肌对比超声心动图(MCE)定量分析,并提出一种更好的风险分层模型。
纳入194例成功进行直接PCI且至少随访6个月的STEMI患者。在PCI术后48小时内进行MCE检查。主要不良心血管事件(MACE)定义为心源性死亡、充血性心力衰竭、再梗死、中风和复发性心绞痛。灌注参数来自基于DNN的心肌分割框架。对视觉微血管灌注(MVP)进行三种定性分析模式:正常、延迟和MVO。分析临床指标和影像学特征,包括整体纵向应变(GLS)。构建风险计算器并通过自助重采样进行验证。
处理7403帧MCE图像的时间成本为773秒。微血管血流(MBF)的观察者内和观察者间变异的相关系数分别为0.99至0.97。38例患者在6个月随访中发生MACE。我们提出了基于罪犯病变区域MBF[风险比:0.93(0.91 - 0.95)]和GLS[风险比:0.80(0.73 - 0.88)]的风险预测模型。在最佳风险阈值为40%时,曲线下面积(AUC)为0.95(敏感性:0.