物种均匀度
跳跃
理论(学习稳定性)
参数统计
参数空间
计算机科学
采样(信号处理)
合成生物学
群落结构
可进化性
生物系统
数学
生态学
生物
机器学习
物种丰富度
统计
计算生物学
电信
金融经济学
探测器
进化生物学
经济
作者
Ruhi Choudhary,Radhakrishnan Mahadevan
标识
DOI:10.1016/j.bpj.2024.05.006
摘要
There have been a growing number of computational strategies to aid in the design of synthetic microbial consortia. A framework to identify regions in parametric space to maximize two essential properties, evenness and stability, is critical. In this study, we introduce DyMMM-LEAPS (dynamic multispecies metabolic modeling-locating evenness and stability in large parametric space), an extension of the DyMMM framework. Our method explores the large parametric space of genetic circuits in synthetic microbial communities to identify regions of evenness and stability. Due to the high computational costs of exhaustive sampling, we utilize adaptive sampling and surrogate modeling to reduce the number of simulations required to map the vast space. Our framework predicts engineering targets and computes their operating ranges to maximize the probability of the engineered community to have high evenness and stability. We demonstrate our approach by simulating five cocultures and one three-strain culture with different social interactions (cooperation, competition, and predation) employing quorum-sensing-based genetic circuits. In addition to guiding circuit tuning, our pipeline gives an opportunity for a detailed analysis of pockets of evenness and stability for the circuit under investigation, which can further help dissect the relationship between the two properties. DyMMM-LEAPS is easily customizable and can be expanded to a larger community with more complex interactions.
科研通智能强力驱动
Strongly Powered by AbleSci AI