Ahmadi Mohammad, Thomas Payton J, Buecherl Lukas, Winstead Chris, Myers Chris J, Zheng Hao
Department of Computer Science and Engineering, University of South Florida, Tampa, Florida33620-9951, United States.
Department of Biomedical Engineering, University of Utah, Salt Lake City, Utah84112, United States.
ACS Synth Biol. 2023 Jan 20;12(1):287-304. doi: 10.1021/acssynbio.2c00553. Epub 2022 Dec 30.
Rare events are of particular interest in synthetic biology because rare biochemical events may be catastrophic to a biological system by, for example, triggering irreversible events such as off-target drug delivery. To estimate the probability of rare events efficiently, several weighted stochastic simulation methods have been developed. Under optimal parameters and model conditions, these methods can greatly improve simulation efficiency in comparison to traditional stochastic simulation. Unfortunately, the optimal parameters and conditions cannot be deduced . This paper presents a critical survey of weighted stochastic simulation methods. It shows that the methods considered here cannot consistently, efficiently, and exactly accomplish the task of rare event simulation without resorting to a computationally expensive calibration procedure, which undermines their overall efficiency. The results suggest that further development is needed before these methods can be deployed for general use in biological simulations.
罕见事件在合成生物学中特别受关注,因为罕见的生化事件可能会对生物系统造成灾难性影响,例如引发诸如脱靶药物递送等不可逆转的事件。为了有效地估计罕见事件的概率,已经开发了几种加权随机模拟方法。在最佳参数和模型条件下,与传统随机模拟相比,这些方法可以大大提高模拟效率。不幸的是,无法推导出最佳参数和条件。本文对加权随机模拟方法进行了批判性综述。结果表明,这里所考虑的方法如果不借助计算成本高昂的校准程序,就无法始终如一地、高效且准确地完成罕见事件模拟任务,这削弱了它们的整体效率。结果表明,在这些方法能够普遍应用于生物模拟之前,还需要进一步发展。