生物学数学模型中可识别性分析的系统计算框架。

ArXiv Pub Date : 2025-01-20
Shun Wang, Wenrui Hao
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引用次数: 0

摘要

在数学系统的数据驱动建模中,实际可识别性是一个关键问题。本文提出了一种实用的可辨识性分析框架,用于评价生物系统数学模型中参数的可辨识性。从实际可辨识性的严格数学定义开始,我们证明了它与费雪信息矩阵的可逆性是等价的。我们的框架建立了实际可识别性和坐标可识别性之间的关系,引入了一种新的度量,与轮廓似然法相比,它简化和加速了参数可识别性的评估。此外,我们引入了新的正则化术语来处理不可识别的参数,使不确定性量化和提高模型可靠性。为了指导实验设计,我们提出了一个最佳的数据收集算法,以确保所有模型参数实际上是可识别的。Hill函数、神经网络和动态生物学模型的应用证明了所提出的计算框架在揭示关键生物过程和识别关键可观察变量方面的可行性和有效性。
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A Systematic Computational Framework for Practical Identifiability Analysis in Mathematical Models Arising from Biology.

Practical identifiability is a critical concern in data-driven modeling of mathematical systems. In this paper, we propose a novel framework for practical identifiability analysis to evaluate parameter identifiability in mathematical models of biological systems. Starting with a rigorous mathematical definition of practical identifiability, we demonstrate its equivalence to the invertibility of the Fisher Information Matrix. Our framework establishes the relationship between practical identifiability and coordinate identifiability, introducing a novel metric that simplifies and accelerates the evaluation of parameter identifiability compared to the profile likelihood method. Additionally, we introduce new regularization terms to address non-identifiable parameters, enabling uncertainty quantification and improving model reliability. To guide experimental design, we present an optimal data collection algorithm that ensures all model parameters are practically identifiable. Applications to Hill functions, neural networks, and dynamic biological models demonstrate the feasibility and efficiency of the proposed computational framework in uncovering critical biological processes and identifying key observable variables.

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Grade Inflation in Generative Models. A recent evaluation on the performance of LLMs on radiation oncology physics using questions of randomly shuffled options. A Systematic Computational Framework for Practical Identifiability Analysis in Mathematical Models Arising from Biology. Back to the Continuous Attractor. Inferring resource competition in microbial communities from time series.
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