Department of Medical Ultrasonics, First Affiliated Hospital of Guangxi Medical University, No.6 Shuangyong Road, Qingxiu District, Nanning, 530021, People's Republic of China.
Int J Cardiovasc Imaging. 2023 May;39(5):955-965. doi: 10.1007/s10554-023-02806-0. Epub 2023 Feb 10.
Myocardial amyloidosis (CA) differs from other etiological pathologies of left ventricular hypertrophy in that transthoracic echocardiography is challenging to assess the texture features based on human visual observation. There are few studies on myocardial texture based on echocardiography. Therefore, this paper proposes an adaptive machine learning method based on ultrasonic image texture features to identify CA. In this retrospective study, a total of 289 participants (50 cases of myocardial amyloidosis; Hypertrophic cardiomyopathy: 70 cases; Uremic cardiomyopathy: 92 cases; Hypertensive heart disease: 77 cases). We extracted the myocardial ultrasonic imaging features of these patients and screened the features, and four models of random forest (RF), support vector machine (SVM), logistic regression (LR) and gradient decision-making lifting tree (GBDT) were established to distinguish myocardial amyloidosis from other diseases. Finally, the diagnostic efficiency of the model was evaluated and compared with the traditional ultrasonic diagnostic methods. In the overall population, the four machine learning models we established could effectively distinguish CA from nonCA diseases, AUC (RF 0.77, SVM 0.81, LR 0.81, GBDT 0.71). The LR model had the best diagnostic efficiency with recall, F1-score, sensitivity and specificity of 0.21, 0.34, 0.21 and 1.0, respectively. Slightly better than the traditional ultrasonic diagnosis model. In further subgroup analysis, the myocardial amyloidosis group was compared one-by-one with the patients with hypertrophic cardiomyopathy, uremic cardiomyopathy, and hypertensive heart disease groups, and the same method was used for feature extraction and data modeling. The diagnostic efficiency of the model was further improved. Notably, in identifying of the CA group and HHD group, AUC values reached more than 0.92, accuracy reached more than 0.87, sensitivity equal to or greater than 0.81, specificity 0.91, and F1 score higher than 0.84. This novel method based on echocardiography combined with machine learning may have the potential to be used in the diagnosis of CA.
心肌淀粉样变(CA)与其他左心室肥厚的病因病理学不同,经胸超声心动图难以基于人类视觉观察评估纹理特征。基于超声心动图的心肌纹理研究较少。因此,本文提出了一种基于超声图像纹理特征的自适应机器学习方法,用于识别 CA。在这项回顾性研究中,共纳入 289 名参与者(心肌淀粉样变 50 例;肥厚型心肌病 70 例;尿毒症性心肌病 92 例;高血压性心脏病 77 例)。我们提取了这些患者的心肌超声成像特征并进行了特征筛选,建立了随机森林(RF)、支持向量机(SVM)、逻辑回归(LR)和梯度决策提升树(GBDT)四种模型,以区分心肌淀粉样变与其他疾病。最后,评估并比较了模型的诊断效率与传统超声诊断方法。在总体人群中,我们建立的四种机器学习模型能够有效地区分 CA 与非 CA 疾病,AUC(RF 为 0.77,SVM 为 0.81,LR 为 0.81,GBDT 为 0.71)。LR 模型的诊断效率最高,其召回率、F1 评分、灵敏度和特异性分别为 0.21、0.34、0.21 和 1.0。略优于传统超声诊断模型。在进一步的亚组分析中,将心肌淀粉样变组与肥厚型心肌病、尿毒症性心肌病和高血压性心脏病组患者逐一比较,采用相同的方法进行特征提取和数据建模。模型的诊断效率进一步提高。值得注意的是,在识别 CA 组和 HHD 组时,AUC 值均超过 0.92,准确率超过 0.87,灵敏度等于或大于 0.81,特异性 0.91,F1 评分高于 0.84。这种基于超声心动图结合机器学习的新方法可能有潜力用于 CA 的诊断。