Data-driven model discovery and model selection for noisy biological systems.

IF 3.8 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS
PLoS Computational Biology Pub Date : 2025-01-21 eCollection Date: 2025-01-01 DOI:10.1371/journal.pcbi.1012762
Xiaojun Wu, MeiLu McDermott, Adam L MacLean
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引用次数: 0

Abstract

Biological systems exhibit complex dynamics that differential equations can often adeptly represent. Ordinary differential equation models are widespread; until recently their construction has required extensive prior knowledge of the system. Machine learning methods offer alternative means of model construction: differential equation models can be learnt from data via model discovery using sparse identification of nonlinear dynamics (SINDy). However, SINDy struggles with realistic levels of biological noise and is limited in its ability to incorporate prior knowledge of the system. We propose a data-driven framework for model discovery and model selection using hybrid dynamical systems: partial models containing missing terms. Neural networks are used to approximate the unknown dynamics of a system, enabling the denoising of the data while simultaneously learning the latent dynamics. Simulations from the fitted neural network are then used to infer models using sparse regression. We show, via model selection, that model discovery using hybrid dynamical systems outperforms alternative approaches. We find it possible to infer models correctly up to high levels of biological noise of different types. We demonstrate the potential to learn models from sparse, noisy data in application to a canonical cell state transition using data derived from single-cell transcriptomics. Overall, this approach provides a practical framework for model discovery in biology in cases where data are noisy and sparse, of particular utility when the underlying biological mechanisms are partially but incompletely known.

噪声生物系统的数据驱动模型发现与模型选择。
生物系统表现出复杂的动力学,微分方程通常可以熟练地表示。常微分方程模型广泛应用;直到最近,它们的构建还需要对系统有广泛的先验知识。机器学习方法提供了模型构建的替代方法:微分方程模型可以通过使用非线性动力学的稀疏识别(SINDy)的模型发现从数据中学习。然而,SINDy与现实水平的生物噪声作斗争,并且在整合系统先验知识的能力方面受到限制。我们提出了一个数据驱动的框架,用于使用混合动力系统进行模型发现和模型选择:包含缺失项的部分模型。神经网络用于逼近系统的未知动态,在学习潜在动态的同时实现数据的去噪。从拟合的神经网络模拟,然后使用稀疏回归推断模型。我们通过模型选择表明,使用混合动力系统的模型发现优于其他方法。我们发现有可能正确地推断模型,直到不同类型的高水平生物噪声。我们展示了利用来自单细胞转录组学的数据从稀疏、嘈杂的数据中学习模型的潜力,这些数据应用于典型的细胞状态转换。总的来说,这种方法为数据嘈杂和稀疏的情况下的生物学模型发现提供了一个实用的框架,特别是当潜在的生物学机制部分但不完全已知时。
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来源期刊
PLoS Computational Biology
PLoS Computational Biology BIOCHEMICAL RESEARCH METHODS-MATHEMATICAL & COMPUTATIONAL BIOLOGY
CiteScore
7.10
自引率
4.70%
发文量
820
审稿时长
2.5 months
期刊介绍: PLOS Computational Biology features works of exceptional significance that further our understanding of living systems at all scales—from molecules and cells, to patient populations and ecosystems—through the application of computational methods. Readers include life and computational scientists, who can take the important findings presented here to the next level of discovery. Research articles must be declared as belonging to a relevant section. More information about the sections can be found in the submission guidelines. Research articles should model aspects of biological systems, demonstrate both methodological and scientific novelty, and provide profound new biological insights. Generally, reliability and significance of biological discovery through computation should be validated and enriched by experimental studies. Inclusion of experimental validation is not required for publication, but should be referenced where possible. Inclusion of experimental validation of a modest biological discovery through computation does not render a manuscript suitable for PLOS Computational Biology. Research articles specifically designated as Methods papers should describe outstanding methods of exceptional importance that have been shown, or have the promise to provide new biological insights. The method must already be widely adopted, or have the promise of wide adoption by a broad community of users. Enhancements to existing published methods will only be considered if those enhancements bring exceptional new capabilities.
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