Lukasz Burzawa, Linlin Li, Xu Wang, Adrian Buganza-Tepole, David M Umulis
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引用次数: 4
Abstract
Purpose of review: Partial differential equation (PDE) mathematical models of biological systems and the simulation approaches used to solve them are widely used to test hypotheses and infer regulatory interactions based on optimization of the PDE model against the observed data. In this review, we discuss the ability of powerful machine learning methods to accelerate the parametric screening of biophysical informed- PDE systems.
Recent findings: A major shortcoming in more broad adaptation of PDE-based models is the high computational complexity required to solve and optimize the models and it requires many simulations to traverse the very high-dimensional parameter spaces during model calibration and inference tasks. For instance, when scaling up to tens of millions of simulations for optimization and sensitivity analysis of the PDE models, compute times quickly extend from months to years for sufficient coverage to solve the problems. For many systems, this brute-force approach is simply not feasible. Recently, neural network metamodels have been shown to be an efficient way to accelerate PDE model calibration and here we look at the benefits and limitations in extending the PDE acceleration methods to improve optimization and sensitivity analysis.
Summary: We use an example simulation to quantitatively and qualitatively show how neural network metamodels can be accurate and fast and demonstrate their potential for optimization of complex spatiotemporal problems in biology. We expect these approaches will be broadly applied to speed up scientific research and discovery in biology and other systems that can be described by complex PDE systems.
期刊介绍:
This journal aims to offer expert review articles on the most important recent research pertaining to biological mechanisms underlying disease, including etiology, pathogenesis, and the clinical manifestations of cellular alteration. By providing clear, insightful, balanced contributions, the journal intends to serve those for whom the elucidation of new techniques and technologies related to pathobiology is essential. We accomplish this aim by appointing international authorities to serve as Section Editors in key subject areas across the field. Section Editors select topics for which leading experts contribute comprehensive review articles that emphasize new developments and recently published papers of major importance, highlighted by annotated reference lists. An Editorial Board of more than 20 internationally diverse members reviews the annual table of contents, ensures that topics include emerging research, and suggests topics of special importance to their country/region. Topics covered may include autophagy, cancer stem cells, induced pluripotential stem cells (iPS cells), inflammation and cancer, matrix pathobiology, miRNA in pathobiology, mitochondrial dysfunction/diseases, and myofibroblast.