Portela Alberto, Banga Julio R, Matabuena Marcos
Computational Biology Lab, MBG-CSIC (Spanish National Research Council), Pontevedra, Galicia, Spain.
Department of Biostatistics, Harvard University, Boston, Massachusetts, United States of America.
PLoS Comput Biol. 2025 May 12;21(5):e1013098. doi: 10.1371/journal.pcbi.1013098. eCollection 2025 May.
Uncertainty quantification (UQ) is the process of systematically determining and characterizing the degree of confidence in computational model predictions. In systems biology, and particularly with dynamic models, UQ is critical due to the nonlinearities and parameter sensitivities that influence the behavior of complex biological systems. Addressing these issues through robust UQ enables a deeper understanding of system dynamics and more reliable extrapolation beyond observed conditions. Many state-of-the-art UQ approaches in this field are grounded in Bayesian statistical methods. While these frameworks naturally incorporate uncertainty quantification, they often require the specification of parameter distributions as priors and may impose parametric assumptions that do not always reflect biological reality. Additionally, Bayesian methods can be computationally expensive, posing significant challenges when dealing with large-scale models and seeking rapid, reliable uncertainty calibration. As an alternative, we propose using conformal predictions methods and introduce two novel algorithms designed for dynamic biological systems. These approaches can provide non-asymptotic guarantees, improving robustness and scalability across various applications, even when the predictive models are misspecified. Through several illustrative scenarios, we demonstrate that these conformal algorithms can serve as powerful complements-or even alternatives-to conventional Bayesian methods, delivering effective uncertainty quantification for predictive tasks in systems biology.
不确定性量化(UQ)是系统地确定和表征计算模型预测置信度的过程。在系统生物学中,特别是对于动态模型,由于影响复杂生物系统行为的非线性和参数敏感性,不确定性量化至关重要。通过强大的不确定性量化来解决这些问题,能够更深入地理解系统动态,并在超出观测条件时进行更可靠的外推。该领域许多最先进的不确定性量化方法都基于贝叶斯统计方法。虽然这些框架自然地纳入了不确定性量化,但它们通常需要指定参数分布作为先验,并且可能会施加并不总是反映生物学现实的参数假设。此外,贝叶斯方法在计算上可能很昂贵,在处理大规模模型并寻求快速、可靠的不确定性校准时会带来重大挑战。作为替代方案,我们建议使用共形预测方法,并介绍两种为动态生物系统设计的新颖算法。这些方法可以提供非渐近保证,提高各种应用中的鲁棒性和可扩展性,即使预测模型被错误指定。通过几个说明性场景,我们证明这些共形算法可以作为传统贝叶斯方法的有力补充甚至替代方案,为系统生物学中的预测任务提供有效的不确定性量化。