Sequential Experimental Design for Optimal Structural Intervention in Gene Regulatory Networks Based on the Mean Objective Cost of Uncertainty

Author:

Imani Mahdi1,Dehghannasiri Roozbeh2,Braga-Neto Ulisses M13,Dougherty Edward R13

Affiliation:

1. Department of Electrical & Computer Engineering, Texas A&M University, College Station, TX, USA

2. School of Medicine, Stanford University, Stanford, CA, USA

3. Center for Bioinformatics and Genomic Systems Engineering, Texas A&M Engineering Experiment Station (TEES), College Station, TX, USA

Abstract

Scientists are attempting to use models of ever-increasing complexity, especially in medicine, where gene-based diseases such as cancer require better modeling of cell regulation. Complex models suffer from uncertainty and experiments are needed to reduce this uncertainty. Because experiments can be costly and time-consuming, it is desirable to determine experiments providing the most useful information. If a sequence of experiments is to be performed, experimental design is needed to determine the order. A classical approach is to maximally reduce the overall uncertainty in the model, meaning maximal entropy reduction. A recently proposed method takes into account both model uncertainty and the translational objective, for instance, optimal structural intervention in gene regulatory networks, where the aim is to alter the regulatory logic to maximally reduce the long-run likelihood of being in a cancerous state. The mean objective cost of uncertainty (MOCU) quantifies uncertainty based on the degree to which model uncertainty affects the objective. Experimental design involves choosing the experiment that yields the greatest reduction in MOCU. This article introduces finite-horizon dynamic programming for MOCU-based sequential experimental design and compares it with the greedy approach, which selects one experiment at a time without consideration of the full horizon of experiments. A salient aspect of the article is that it demonstrates the advantage of MOCU-based design over the widely used entropy-based design for both greedy and dynamic programming strategies and investigates the effect of model conditions on the comparative performances.

Publisher

SAGE Publications

Subject

Cancer Research,Oncology

Cited by 15 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Dynamic Intervention in Gene Regulatory Networks: A Partially Observed Zero-Sum Markov Game;2024 IEEE Conference on Control Technology and Applications (CCTA);2024-08-21

2. Learning to Fight Against Cell Stimuli: A Game Theoretic Perspective;2023 IEEE Conference on Artificial Intelligence (CAI);2023-06

3. Structure-Based Inverse Reinforcement Learning for Quantification of Biological Knowledge;2023 IEEE Conference on Artificial Intelligence (CAI);2023-06

4. Reinforcement Learning Data-Acquiring for Causal Inference of Regulatory Networks;2023 American Control Conference (ACC);2023-05-31

5. Inference of regulatory networks through temporally sparse data;Frontiers in Control Engineering;2022-12-13

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