Department of Biomedical Engineering, Texas A&M University, College Station, TX 77843, USA.
Heart, Lung, and Vascular Institute, Division of Cardiovascular Health and Disease, Department of Internal Medicine, Cincinnati, OH, USA; Department of Pharmacology and Systems Physiology, University of Cincinnati, Cincinnati, OH, USA.
Comput Biol Med. 2023 Sep;163:107134. doi: 10.1016/j.compbiomed.2023.107134. Epub 2023 Jun 9.
Impaired relaxation of cardiomyocytes leads to diastolic dysfunction in the left ventricle. Relaxation velocity is regulated in part by intracellular calcium (Ca) cycling, and slower outflux of Ca during diastole translates to reduced relaxation velocity of sarcomeres. Sarcomere length transient and intracellular calcium kinetics are integral parts of characterizing the relaxation behavior of the myocardium. However, a classifier tool that can separate normal cells from cells with impaired relaxation using sarcomere length transient and/or calcium kinetics remains to be developed. In this work, we employed nine different classifiers to classify normal and impaired cells, using ex-vivo measurements of sarcomere kinematics and intracellular calcium kinetics data. The cells were isolated from wild-type mice (referred to as normal) and transgenic mice expressing impaired left ventricular relaxation (referred to as impaired). We utilized sarcomere length transient data with a total of n = 126 cells (n = 60 normal cells and n = 66 impaired cells) and intracellular calcium cycling measurements with a total of n = 116 cells (n = 57 normal cells and n = 59 impaired cells) from normal and impaired cardiomyocytes as inputs to machine learning (ML) models for classification. We trained all ML classifiers with cross-validation method separately using both sets of input features, and compared their performance metrics. The performance of classifiers on test data showed that our soft voting classifier outperformed all other individual classifiers on both sets of input features, with 0.94 and 0.95 area under the receiver operating characteristic curves for sarcomere length transient and calcium transient, respectively, while multilayer perceptron achieved comparable scores of 0.93 and 0.95, respectively. However, the performance of decision tree, and extreme gradient boosting was found to be dependent on the set of input features used for training. Our findings highlight the importance of selecting appropriate input features and classifiers for the accurate classification of normal and impaired cells. Layer-wise relevance propagation (LRP) analysis demonstrated that the time to 50% contraction of the sarcomere had the highest relevance score for sarcomere length transient, whereas time to 50% decay of calcium had the highest relevance score for calcium transient input features. Despite the limited dataset, our study demonstrated satisfactory accuracy, suggesting that the algorithm can be used to classify relaxation behavior in cardiomyocytes when the potential relaxation impairment of the cells is unknown.
心肌细胞松弛功能障碍导致左心室舒张功能障碍。细胞内钙离子(Ca)循环部分调节松弛速度,舒张期间 Ca 外流速度较慢会导致肌节松弛速度降低。肌节长度瞬变和细胞内钙动力学是心肌松弛行为特征的重要组成部分。然而,仍然需要开发一种分类器工具,该工具可以使用肌节长度瞬变和/或钙动力学来区分正常细胞和松弛功能障碍的细胞。在这项工作中,我们使用了九种不同的分类器,使用离体测量的肌节运动学和细胞内钙动力学数据来对正常和松弛功能障碍的细胞进行分类。这些细胞是从野生型小鼠(称为正常)和表达左心室松弛功能障碍的转基因小鼠(称为异常)中分离出来的。我们利用肌节长度瞬变数据,总共 n = 126 个细胞(n = 60 个正常细胞和 n = 66 个异常细胞)和细胞内钙循环测量数据,总共 n = 116 个细胞(n = 57 个正常细胞和 n = 59 个异常细胞),作为输入到机器学习(ML)模型进行分类。我们使用交叉验证方法分别使用两组输入特征训练所有 ML 分类器,并比较它们的性能指标。在测试数据上的分类器性能表明,我们的软投票分类器在两组输入特征上均优于所有其他单个分类器,肌节长度瞬变和钙瞬变的接收者操作特征曲线下面积分别为 0.94 和 0.95,而多层感知器的得分分别为 0.93 和 0.95。然而,决策树和极端梯度提升的性能发现依赖于用于训练的输入特征集。我们的研究结果强调了选择合适的输入特征和分类器对于准确分类正常和异常细胞的重要性。层相关传播(LRP)分析表明,肌节收缩 50%的时间对肌节长度瞬变具有最高的相关性得分,而钙衰减 50%的时间对钙瞬变输入特征具有最高的相关性得分。尽管数据集有限,但我们的研究表明了令人满意的准确性,这表明当细胞的潜在松弛功能障碍未知时,该算法可用于分类心肌细胞的松弛行为。