Insights into the dependence of post-stroke motor recovery on the initial corticospinal tract connectivity from a computational model.

IF 5.2 2区 医学 Q1 ENGINEERING, BIOMEDICAL Journal of NeuroEngineering and Rehabilitation Pub Date : 2025-01-20 DOI:10.1186/s12984-024-01513-8
Dongwon Kim, Leah M O'Shea, Naveed R Aghamohammadi
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Abstract

There is a consensus that motor recovery post-stroke primarily depends on the degree of the initial connectivity of the ipsilesional corticospinal tract (CST). Indeed, if the residual CST connectivity is sufficient to convey motor commands, the neuromotor system continues to use the CST predominantly, and motor function recovers up to 80%. In contrast, if the residual CST connectivity is insufficient, hand/arm dexterity barely recovers, even as the phases of stroke progress. Instead, the functional upregulation of the reticulospinal tract (RST) often occurs. In this study, we construct a computational model that reproduces the dependence of post-stroke motor recovery on the initial CST connectivity. The model emulates biologically plausible evolutions of primary motor descending tracts, based on activity-dependent or use-dependent plasticity and the preferential use of more strongly connected neural circuits. The model replicates several elements of the empirical evidence presented by the Fugl-Meyer Assessment (FMA) subscores, which evaluate the capabilities for out-of-synergy and in-synergy movements. These capabilities presumably change differently depending on the degree of the initial CST connectivity post-stroke, providing insights into the interactive dynamics of the primary descending motor tracts. We discuss findings derived from the proposed model in relation to the well-known proportional recovery rule. This modeling study aims to present a way to differentiate individuals who can achieve 70 to 80% recovery in the chronic phase from those who cannot by examining the interactive evolution of out-of-synergy and in-synergy movement capabilities during the subacute phase, as assessed by the FMA.

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脑卒中后运动恢复依赖于初始皮质-脊髓束连接的计算模型。
卒中后运动恢复主要取决于同伤皮质脊髓束(CST)初始连通性的程度,这是一个共识。事实上,如果残余的CST连接足以传递运动命令,神经运动系统继续以CST为主,运动功能恢复高达80%。相反,如果残余CST连通性不足,手/手臂的灵活性几乎没有恢复,即使中风的阶段进展。相反,网状脊髓束(RST)的功能上调经常发生。在这项研究中,我们构建了一个计算模型,再现了中风后运动恢复对初始CST连通性的依赖。该模型基于活动依赖或使用依赖的可塑性,以及优先使用连接更强的神经回路,模拟了初级运动下行束的生物学上合理的进化。该模型复制了Fugl-Meyer评估(FMA)子分数所提供的经验证据的几个要素,该分数评估了协同外和协同内运动的能力。根据中风后CST连接的程度,这些功能可能会发生不同的变化,这为初级下行运动束的相互作用动力学提供了见解。我们讨论了从所提出的模型中得出的与众所周知的比例恢复规则相关的发现。本模型研究旨在通过FMA评估的亚急性期非协同和协同运动能力的相互演变,提出一种方法来区分在慢性期能达到70%至80%恢复的个体和那些不能达到70%至80%恢复的个体。
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来源期刊
Journal of NeuroEngineering and Rehabilitation
Journal of NeuroEngineering and Rehabilitation 工程技术-工程:生物医学
CiteScore
9.60
自引率
3.90%
发文量
122
审稿时长
24 months
期刊介绍: Journal of NeuroEngineering and Rehabilitation considers manuscripts on all aspects of research that result from cross-fertilization of the fields of neuroscience, biomedical engineering, and physical medicine & rehabilitation.
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