Cockrell Chase, Vodovotz Yoram, Zamora Ruben, An Gary
Department of Surgery, University of Vermont Larner College of Medicine.
Department of Surgery, University of Pittsburgh.
bioRxiv. 2024 Jun 10:2024.06.04.595972. doi: 10.1101/2024.06.04.595972.
Volumetric Muscle Loss (VML) injuries are characterized by significant loss of muscle mass, usually due to trauma or surgical resection, often with a residual open wound in clinical settings and subsequent loss of limb function due to the replacement of the lost muscle mass with non-functional scar. Being able to regrow functional muscle in VML injuries is a complex control problem that needs to override robust, evolutionarily conserved healing processes aimed at rapidly closing the defect in lieu of restoration of function. We propose that discovering and implementing this complex control can be accomplished by the development of a Medical Digital Twin of VML. Digital Twins (DTs) are the subject of a recent report from the National Academies of Science, Engineering and Medicine (NASEM), which provides guidance as to the definition, capabilities and research challenges associated with the development and implementation of DTs. Specifically, DTs are defined as dynamic computational models that can be personalized to an individual real world "twin" and are connected to that twin via an ongoing data link. DTs can be used to provide control on the real-world twin that is, by the ongoing data connection, adaptive. We have developed an anatomic scale cell-level agent-based model of VML termed the Wound Environment Agent Based Model (WEABM) that can serve as the computational specification for a DT of VML. Simulations of the WEABM provided fundamental insights into the biology of VML, and we used the WEABM in our previously developed pipeline for simulation-based Deep Reinforcement Learning (DRL) to train an artificial intelligence (AI) to implement a robust generalizable control policy aimed at increasing the healing of VML with functional muscle. The insights into VML obtained include: 1) a competition between fibrosis and myogenesis due to spatial constraints on available edges of intact myofibrils to initiate the myoblast differentiation process, 2) the need to biologically "close" the wound from atmospheric/environmental exposure, which represents an ongoing inflammatory stimulus that promotes fibrosis and 3) that selective, multimodal and adaptive local mediator-level control can shift the trajectory of healing away from a highly evolutionarily beneficial imperative to close the wound via fibrosis. Control discovery with the WEABM identified the following design principles: 1) multimodal adaptive tissue-level mediator control to mitigate pro-inflammation as well as the pro-fibrotic aspects of compensatory anti-inflammation, 2) tissue-level mediator manipulation to promote myogenesis, 3) the use of an engineered extracellular matrix (ECM) to functionally close the wound and 4) the administration of an anti-fibrotic agent focused on the collagen-producing function of fibroblasts and myofibroblasts. The WEABM-trained DRL AI integrates these control modalities and provides design specifications for a potential device that can implement the required wound sensing and intervention delivery capabilities needed. The proposed cyber-physical system integrates the control AI with a physical sense-and-actuate device that meets the tenets of DTs put forth in the NASEM report and can serve as an example schema for the future development of Medical DTs.
容积性肌肉损失(VML)损伤的特征是肌肉质量显著丧失,通常是由于创伤或手术切除,在临床环境中常常伴有残留的开放性伤口,并且由于失去的肌肉质量被无功能的瘢痕替代,随后会出现肢体功能丧失。能够在VML损伤中再生功能性肌肉是一个复杂的控制问题,需要超越旨在迅速闭合缺损而非恢复功能的强大的、进化上保守的愈合过程。我们提出,通过开发VML的医学数字孪生体可以实现对这一复杂控制的发现和实施。数字孪生体(DTs)是美国国家科学院、工程院和医学院(NASEM)最近一份报告的主题,该报告为与DTs的开发和实施相关的定义、能力和研究挑战提供了指导。具体而言,DTs被定义为动态计算模型,可针对个体真实世界的“孪生体”进行个性化设置,并通过持续的数据链接与该孪生体相连。DTs可用于对真实世界的孪生体进行控制,即通过持续的数据连接实现自适应控制。我们开发了一种VML的解剖尺度细胞水平基于智能体的模型,称为伤口环境基于智能体模型(WEABM),它可以作为VML数字孪生体的计算规范。WEABM的模拟为VML的生物学特性提供了基本见解,并且我们在之前开发的基于模拟的深度强化学习(DRL)管道中使用WEABM来训练人工智能(AI),以实施旨在促进VML功能性肌肉愈合的强大的可推广控制策略。获得的关于VML的见解包括:1)由于完整肌原纤维可用边缘的空间限制,成纤维细胞与肌生成之间存在竞争,从而启动成肌细胞分化过程;2)需要从大气/环境暴露中在生物学上“闭合”伤口,这代表一种持续的炎症刺激,会促进纤维化;3)选择性、多模态和自适应的局部介质水平控制可以使愈合轨迹从通过纤维化闭合伤口这一高度进化上有益的指令中转变。通过WEABM进行的控制发现确定了以下设计原则:1)多模态自适应组织水平介质控制,以减轻促炎以及代偿性抗炎的促纤维化方面;2)组织水平介质操纵以促进肌生成;3)使用工程化细胞外基质(ECM)在功能上闭合伤口;4)给予一种抗纤维化药物,重点针对成纤维细胞和肌成纤维细胞的胶原蛋白生成功能。经过WEABM训练的DRL AI整合了这些控制方式,并为一种潜在的设备提供了设计规范,该设备可以实现所需的伤口传感和干预递送能力。所提出的网络物理系统将控制AI与一个物理传感和驱动设备集成在一起,该设备符合NASEM报告中提出的DTs原则,并且可以作为医学DTs未来发展的一个示例架构。