Ren Peng, Cui Xuehua, Liang Xia
Research Center for Social Computing and Information Retrieval, Harbin Institute of Technology, Harbin, China.
Institute of Science and Technology for Brain-Inspired Intelligence and Department of Neurology, Huashan Hospital, Fudan University, Shanghai, China.
PLoS Comput Biol. 2025 Jan 21;21(1):e1012743. doi: 10.1371/journal.pcbi.1012743. eCollection 2025 Jan.
Neurodegenerative diseases are a group of disorders characterized by progressive degeneration or death of neurons. The complexity of clinical symptoms and irreversibility of disease progression significantly affects individual lives, leading to premature mortality. The prevalence of neurodegenerative diseases keeps increasing, yet the specific pathogenic mechanisms remain incompletely understood and effective treatment strategies are lacking. In recent years, convergent experimental evidence supports the "prion-like transmission" assumption that abnormal proteins induce misfolding of normal proteins, and these misfolded proteins propagate throughout the neural networks to cause neuronal death. To elucidate this dynamic process in vivo from a computational perspective, researchers have proposed three connectome-based biophysical models to simulate the spread of pathological proteins: the Network Diffusion Model, the Epidemic Spreading Model, and the agent-based Susceptible-Infectious-Removed model. These models have demonstrated promising predictive capabilities. This review focuses on the explanations of their fundamental principles and applications. Then, we compare the strengths and weaknesses of the models. Building upon this foundation, we introduce new directions for model optimization and propose a unified framework for the evaluation of connectome-based biophysical models. We expect that this review could lower the entry barrier for researchers in this field, accelerate model optimization, and thereby advance the clinical translation of connectome-based biophysical models.
神经退行性疾病是一组以神经元进行性变性或死亡为特征的病症。临床症状的复杂性和疾病进展的不可逆性严重影响个体生命,导致过早死亡。神经退行性疾病的患病率持续上升,但其具体致病机制仍未完全明确,且缺乏有效的治疗策略。近年来,越来越多的实验证据支持“朊病毒样传播”假说,即异常蛋白质会诱导正常蛋白质错误折叠,这些错误折叠的蛋白质在神经网络中传播,导致神经元死亡。为了从计算角度阐明体内这一动态过程,研究人员提出了三种基于连接组的生物物理模型来模拟病理性蛋白质的传播:网络扩散模型、流行病传播模型和基于主体的易感-感染-清除模型。这些模型已展现出良好的预测能力。本综述重点阐述其基本原理及应用。接着,我们比较了这些模型的优缺点。在此基础上,我们介绍了模型优化的新方向,并提出了一个基于连接组的生物物理模型评估的统一框架。我们期望本综述能够降低该领域研究人员的入门门槛,加速模型优化,从而推动基于连接组的生物物理模型的临床转化。