Kim Youngbin, Wang Kunlun, Lock Roberta I, Nash Trevor R, Fleischer Sharon, Wang Bryan Z, Fine Barry M, Vunjak-Novakovic Gordana
Department of Biomedical EngineeringColumbia University New York NY 10032 USA.
Department of MedicineDivision of CardiologyColumbia University Medical Center New York NY 10032 USA.
IEEE Open J Eng Med Biol. 2024 Apr 5;5:238-249. doi: 10.1109/OJEMB.2024.3377461. eCollection 2024.
Contractile response and calcium handling are central to understanding cardiac function and physiology, yet existing methods of analysis to quantify these metrics are often time-consuming, prone to mistakes, or require specialized equipment/license. We developed BeatProfiler, a suite of cardiac analysis tools designed to quantify contractile function, calcium handling, and force generation for multiple in vitro cardiac models and apply downstream machine learning methods for deep phenotyping and classification. We first validate BeatProfiler's accuracy, robustness, and speed by benchmarking against existing tools with a fixed dataset. We further confirm its ability to robustly characterize disease and dose-dependent drug response. We then demonstrate that the data acquired by our automatic acquisition pipeline can be further harnessed for machine learning (ML) analysis to phenotype a disease model of restrictive cardiomyopathy and profile cardioactive drug functional response. To accurately classify between these biological signals, we apply feature-based ML and deep learning models (temporal convolutional-bidirectional long short-term memory model or TCN-BiLSTM). Benchmarking against existing tools revealed that BeatProfiler detected and analyzed contraction and calcium signals better than existing tools through improved sensitivity in low signal data, reduction in false positives, and analysis speed increase by 7 to 50-fold. Of signals accurately detected by published methods (PMs), BeatProfiler's extracted features showed high correlations to PMs, confirming that it is reliable and consistent with PMs. The features extracted by BeatProfiler classified restrictive cardiomyopathy cardiomyocytes from isogenic healthy controls with 98% accuracy and identified relax90 as a top distinguishing feature in congruence with previous findings. We also show that our TCN-BiLSTM model was able to classify drug-free control and 4 cardiac drugs with different mechanisms of action at 96% accuracy. We further apply Grad-CAM on our convolution-based models to identify signature regions of perturbations by these drugs in calcium signals. We anticipate that the capabilities of BeatProfiler will help advance in vitro studies in cardiac biology through rapid phenotyping, revealing mechanisms underlying cardiac health and disease, and enabling objective classification of cardiac disease and responses to drugs.
收缩反应和钙处理是理解心脏功能和生理学的核心,但现有的用于量化这些指标的分析方法往往耗时、容易出错,或者需要专门的设备/许可证。我们开发了BeatProfiler,这是一套心脏分析工具,旨在量化多种体外心脏模型的收缩功能、钙处理和力产生,并应用下游机器学习方法进行深度表型分析和分类。我们首先通过使用固定数据集与现有工具进行基准测试,验证了BeatProfiler的准确性、稳健性和速度。我们进一步证实了它能够稳健地表征疾病和剂量依赖性药物反应。然后,我们证明了通过我们的自动采集管道获取的数据可以进一步用于机器学习(ML)分析,以对限制性心肌病的疾病模型进行表型分析,并描绘心脏活性药物的功能反应。为了准确区分这些生物信号,我们应用了基于特征的ML和深度学习模型(时间卷积-双向长短期记忆模型或TCN-BiLSTM)。与现有工具的基准测试表明,BeatProfiler在低信号数据中具有更高的灵敏度,减少了假阳性,并将分析速度提高了7至50倍,从而比现有工具更好地检测和分析收缩和钙信号。在已发表方法(PMs)准确检测到的信号中,BeatProfiler提取的特征与PMs显示出高度相关性,证实了它与PMs可靠且一致。BeatProfiler提取的特征以98%的准确率将限制性心肌病心肌细胞与同基因健康对照区分开来,并确定relax90是与先前发现一致的主要区分特征。我们还表明,我们的TCN-BiLSTM模型能够以96%的准确率对无药物对照和4种具有不同作用机制的心脏药物进行分类。我们进一步在基于卷积的模型上应用Grad-CAM,以识别这些药物在钙信号中引起扰动的特征区域。我们预计,BeatProfiler的功能将通过快速表型分析、揭示心脏健康和疾病的潜在机制以及实现心脏病和药物反应的客观分类,帮助推进心脏生物学的体外研究。