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Using machine learning to characterize heart failure across the scales

机译:使用机器学习在尺度上表征心力衰竭

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Heart failure is a progressive chronic condition in which the heart undergoes detrimental changes in structure and function across multiple scales in time and space. Multiscale models of cardiac growth can provide a patient-specific window into the progression of heart failure and guide personalized treatment planning. Yet, the predictive potential of cardiac growth models remains poorly understood. Here, we quantify predictive power of a stretch-driven growth model using a chronic porcine heart failure model, subject-specific multiscale simulation, and machine learning techniques. We combine hierarchical modeling, Bayesian inference, and Gaussian process regression to quantify the uncertainty of our experimental measurements during an 8-week long study of volume overload in six pigs. We then propagate the experimental uncertainties from the organ scale through our computational growth model and quantify the agreement between experimentally measured and computationally predicted alterations on the cellular scale. Our study suggests that stretch is the major stimulus for myocyte lengthening and demonstrates that a stretch-driven growth model alone can explain 52.7% of the observed changes in myocyte morphology. We anticipate that our approach will allow us to design, calibrate, and validate a new generation of multiscale cardiac growth models to explore the interplay of various subcellular-, cellular-, and organ-level contributors to heart failure. Using machine learning in heart failure research has the potential to combine information from different sources, subjects, and scales to provide a more holistic picture of the failing heart and point toward new treatment strategies.
机译:心力衰竭是一种渐进的慢性状况,其中心脏经历了在时间和空间的多种尺度上的结构和功能的有害变化。多尺度的心脏增长型号可以为患者特定的窗口提供进入心力衰竭和指导个性化治疗规划的进展。然而,心脏生长模型的预测潜力仍然明显着。这里,我们使用慢性猪心力衰竭模型,对象特定的多尺度模拟和机器学习技术来量化拉伸驱动生长模型的预测力。我们结合了层次建模,贝叶斯推断和高斯工艺回归,以量化六只猪体积过载8周的8周的实验测量的不确定性。然后,我们通过我们的计算增长模型从器官规模中传播实验不确定性,并量化在实验测量和计算预测的细胞尺度上的改变之间的协议。我们的研究表明,延伸是肌细胞延长的主要刺激,并证明单独的拉伸驱动的生长模型可以解释肌细胞形态学的观察到的52.7%。我们预计我们的方法将使我们能够设计,校准和验证新一代多尺度心脏增长模型,以探索各种亚细胞,细胞和器官级贡献者对心力衰竭的相互作用。在心力衰竭研究中使用机器学习有可能将来自不同来源,受试者和规模的信息结合,以提供更加全面的心灵图像和朝向新的治疗策略的指向。

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