Neural-symbolic hybrid model for myosin complex in cardiac ventriculum decodes structural bases for inheritable heart disease from its genetic encoding

Thomas P Burghardt
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Abstract

Background: Human ventriculum myosin (βmys) powers contraction sometimes in complex with myosin binding protein C (MYBPC3). The latter regulates βmys activity and impacts overall cardiac function. Nonsynonymous single nucleotide variants (SNVs) change protein sequence in βmys or MYBPC3 causing inheritable heart diseases by affecting the βmys/MYBPC3 complex. Muscle genetics encode instructions for contraction informing native protein construction, functional integration, and inheritable disease impairment. A digital model decodes these instructions and evolves by continuously processing new information content from diverse data modalities in partnership with the human agent. Methods: A general neural-network contraction model characterizes SNV impacts on human health. It rationalizes phenotype and pathogenicity assignment given the SNVs genetic characteristics and in this sense decodes βmys/MYBPC3 complex genetics and implicitly captures ventricular muscle functionality. When a SNV modified domain locates to an inter-protein contact in βmys/MYBPC3 it affects complex coordination. Domains involved, one in βmys and the other in MYBPC3, form coordinated domains (co-domains). Co-domains are bilateral implying potential for their SNV modification probabilities to respond jointly to a common perturbation to reveal their location. Human genetic diversity from the serial founder effect is the common systemic perturbation coupling co-domains that are mapped by a methodology called 2-dimensional correlation genetics (2D-CG). Results: Interpreting the general neural-network contraction model output involves 2D-CG co-domain mapping that provides natural language expressed structural insights. It aligns machine-learned intelligence from the neural network model with human provided structural insight from the 2D-CG map, and other data from the literature, to form a neural-symbolic hybrid model integrating genetic and protein interaction data into a nascent digital twin. This process is the template for combining new information content from diverse data modalities into a digital model that can evolve. The nascent digital twin interprets SNV implications to discover disease mechanism, can evaluate potential remedies for efficacy, and does so without animal models.
心室肌球蛋白复合物的神经符号混合模型从遗传编码解码遗传性心脏病的结构基础
背景:人类室管膜肌球蛋白(βmys)有时与肌球蛋白结合蛋白 C(MYBPC3)复合,为收缩提供动力。后者调节 βmys 的活性并影响整体心脏功能。非同义单核苷酸变异(SNV)改变了 βmys 或 MYBPC3 的蛋白质序列,影响了 βmys/MYBPC3 复合物,从而导致遗传性心脏病。肌肉遗传编码了收缩指令,为原生蛋白质的构建、功能整合和遗传性疾病损害提供了信息。数字模型对这些指令进行解码,并通过与人类代理合作不断处理来自不同数据模式的新信息内容来实现进化:方法:一个通用的神经网络收缩模型描述了 SNV 对人类健康的影响。方法:一般神经网络收缩模型描述 SNV 对人类健康的影响,它根据 SNV 的遗传特征合理分配表型和致病性,并在此意义上解码 βmys/MYBPC3 复杂遗传学,隐含地捕捉心室肌肉功能。当 SNV 修饰的结构域位于 βmys/MYBPC3 的蛋白间接触点时,会影响复合体的协调。所涉及的结构域,一个在βmys中,另一个在MYBPC3中,形成了协调结构域(共结构域)。共域是双边的,这意味着它们的 SNV 修饰概率有可能共同应对共同的扰动,从而揭示它们的位置。连环创始人效应产生的人类遗传多样性是共同系统扰动耦合共域,共域是通过一种称为二维相关遗传学(2D-CG)的方法绘制的。结果解读一般神经网络收缩模型的输出涉及 2D-CG 共域映射,它提供了用自然语言表达的结构见解。它将神经网络模型中的机器学习智能与 2D-CG 地图中人类提供的结构洞察力以及文献中的其他数据结合起来,形成一个神经-符号混合模型,将基因和蛋白质相互作用数据整合到一个新生的数字孪生中。这一过程是将来自不同数据模式的新信息内容整合到一个可进化的数字模型中的模板。新生的数字孪生子可以解释 SNV 的含义,从而发现疾病机理,评估潜在疗法的疗效,而且无需动物模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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