Misumi Yusuke, Miyagawa Shigeru, Yoshioka Daisuke, Kainuma Satoshi, Kawamura Takuji, Kawamura Ai, Maruyama Yuichi, Ueno Takayoshi, Toda Koichi, Asanoi Hidetsugu, Sawa Yoshiki
Department of Cardiovascular Surgery, Osaka University Graduate School of Medicine, 2-2-E1, Yamadaoka, Suita City, Osaka, 565-0871, Japan.
Department of Medical Engineering, Osaka University Hospital, Osaka, Japan.
J Artif Organs. 2021 Jun;24(2):164-172. doi: 10.1007/s10047-020-01243-3. Epub 2021 Feb 4.
Significant aortic regurgitation (AR) is a common complication after continuous-flow left ventricular assist device (LVAD) implantation. Using machine-learning algorithms, this study was designed to examine valuable predictors obtained from LVAD sound and to provide models for identifying AR. During a 2-year follow-up period of 13 patients with Jarvik2000 LVAD, sound signals were serially obtained from the chest wall above the LVAD using an electronic stethoscope for 1 min at 40,000 Hz, and echocardiography was simultaneously performed to confirm the presence of AR. Among the 245 echocardiographic and acoustic data collected, we found 26 episodes of significant AR, which we categorized as "present"; the other 219 episodes were characterized as "none". Wavelet (time-frequency) analysis was applied to the LVAD sound and 19 feature vectors of instantaneous spectral components were extracted. Important variables for predicting AR were searched using an iterative forward selection method. Seventy-five percent of 245 episodes were randomly assigned as training data and the remaining as test data. Supervised machine learning for predicting concomitant AR involved an ensemble classifier and tenfold stratified cross-validation. Of the 19 features, the most useful variables for predicting concomitant AR were the amplitude of the first harmonic, LVAD rotational speed during intermittent low speed (ILS), and the variation in the amplitude during normal rotation and ILS. The predictive accuracy and area under the curve were 91% and 0.73, respectively. Machine learning, trained on the time-frequency acoustic spectra, provides a novel modality for detecting concomitant AR during follow-up after LVAD.
严重主动脉瓣反流(AR)是连续流左心室辅助装置(LVAD)植入术后的常见并发症。本研究旨在利用机器学习算法,检查从LVAD声音中获得的有价值的预测指标,并提供识别AR的模型。在对13例植入Jarvik2000 LVAD的患者进行的2年随访期间,使用电子听诊器在LVAD上方的胸壁上以40000Hz的频率连续采集1分钟的声音信号,并同时进行超声心动图检查以确认AR的存在。在收集的245份超声心动图和声学数据中,我们发现26例严重AR发作,将其归类为“存在”;其他219例发作的特征为“无”。对LVAD声音应用小波(时频)分析,并提取瞬时频谱分量的19个特征向量。使用迭代向前选择法搜索预测AR的重要变量。将245例发作中的75%随机分配为训练数据,其余作为测试数据。用于预测合并AR的监督机器学习涉及一个集成分类器和十折分层交叉验证。在这19个特征中,预测合并AR最有用的变量是一次谐波的幅度、间歇性低速(ILS)期间的LVAD转速以及正常旋转和ILS期间幅度的变化。预测准确率和曲线下面积分别为91%和0.73。基于时频声谱训练得出的机器学习为LVAD术后随访期间检测合并AR提供了一种新方法。