Heart Institute (InCor) do Hospital das Clínicas da Faculdade de Medicina da Universidade de São Paulo, Av. Dr. Enéas de Carvalho Aguiar, 44, São Paulo, 05403-000, Brazil.
Department of Cardiovascular Sciences, University of Leuven, Leuven, Belgium.
ESC Heart Fail. 2020 Oct;7(5):2431-2439. doi: 10.1002/ehf2.12795. Epub 2020 Jun 30.
Left ventricular non-compaction cardiomyopathy (LVNC) is a genetic heart disease, with heart failure, arrhythmias, and embolic events as main clinical manifestations. The goal of this study was to analyse a large set of echocardiographic (echo) and cardiac magnetic resonance imaging (CMRI) parameters using machine learning (ML) techniques to find imaging predictors of clinical outcomes in a long-term follow-up of LVNC patients.
Patients with echo and/or CMRI criteria of LVNC, followed from January 2011 to December 2017 in the heart failure section of a tertiary referral cardiologic hospital, were enrolled in a retrospective study. Two-dimensional colour Doppler echocardiography and subsequent CMRI were carried out. Twenty-four hour Holter monitoring was also performed in all patients. Death, cardiac transplantation, heart failure hospitalization, aborted sudden cardiac death, complex ventricular arrhythmias (sustained and non-sustained ventricular tachycardia), and embolisms (i.e. stroke, pulmonary thromboembolism and/or peripheral arterial embolism) were registered and were referred to as major adverse cardiovascular events (MACEs) in this study. Recruited for the study were 108 LVNC patients, aged 38.3 ± 15.5 years, 48.1% men, diagnosed by echo and CMRI criteria. They were followed for 5.8 ± 3.9 years, and MACEs were registered. CMRI and echo parameters were analysed via a supervised ML methodology. Forty-seven (43.5%) patients had at least one MACE. The best performance of imaging variables was achieved by combining four parameters: left ventricular (LV) ejection fraction (by CMRI), right ventricular (RV) end-systolic volume (by CMRI), RV systolic dysfunction (by echo), and RV lower diameter (by CMRI) with accuracy, sensitivity, and specificity rates of 75.5%, 77%, 75%, respectively.
Our findings show the importance of biventricular assessment to detect the severity of this cardiomyopathy and to plan for early clinical intervention. In addition, this study shows that even patients with normal LV function and negative late gadolinium enhancement had MACE. ML is a promising tool for analysing a large set of parameters to stratify and predict prognosis in LVNC patients.
左心室心肌致密化不全(LVNC)是一种遗传性心脏病,以心力衰竭、心律失常和栓塞事件为主要临床表现。本研究的目的是使用机器学习(ML)技术分析大量超声心动图(echo)和心脏磁共振成像(CMRI)参数,以找到 LVNC 患者长期随访中临床结局的影像学预测指标。
本研究回顾性纳入了 2011 年 1 月至 2017 年 12 月在三级转诊心脏病医院心力衰竭科接受 echo 和/或 CMRI 标准 LVNC 检查的患者。进行二维彩色多普勒超声心动图检查,并随后进行 CMRI。所有患者均进行 24 小时动态心电图监测。本研究将死亡、心脏移植、心力衰竭住院、心源性猝死、复杂室性心律失常(持续性和非持续性室性心动过速)和栓塞(即中风、肺血栓栓塞和/或外周动脉栓塞)登记为主要不良心血管事件(MACE)。本研究共纳入 108 例 LVNC 患者,年龄 38.3±15.5 岁,48.1%为男性,经 echo 和 CMRI 标准诊断。患者随访 5.8±3.9 年,登记 MACE。通过有监督的 ML 方法分析 CMRI 和 echo 参数。47(43.5%)例患者至少发生一次 MACE。将四个参数(CMRI 测量的左心室射血分数、CMRI 测量的右心室收缩末期容积、echo 测量的右心室收缩功能障碍、CMRI 测量的右心室下径)相结合,可获得最佳的影像学变量表现,其准确率、灵敏度和特异度分别为 75.5%、77%和 75%。
我们的研究结果表明,双心室评估对于检测这种心肌病的严重程度和规划早期临床干预非常重要。此外,本研究表明,即使 LV 功能正常且无晚期钆增强的患者也会发生 MACE。ML 是一种很有前途的工具,可用于分析大量参数,以对 LVNC 患者进行分层并预测预后。