教授 博士生导师 硕士生导师
主要任职: 医学部党委书记兼常务副部长
性别: 男
毕业院校: 复旦大学
学位: 博士
所在单位: 生物医学工程学院
学科: 生物医学工程
电子邮箱: krqin@dlut.edu.cn
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论文类型: 会议论文
发表时间: 2021-06-05
卷号: 2018-June
页面范围: 1076-1081
摘要: Gene regulatory networks play a critical role in cellular behavior and decision making. Mathematical modeling of gene regulatory networks can help unravel the complexity of gene regulation and provide deep insights into key biological processes at the cellular level. In this paper, we focus on building Boolean models for gene regulatory networks from time series gene expression data. Since the two classic methods, REVEAL and Best-Fit Extension, are both computationally expensive and cannot scale well for large networks, we propose a novel hybrid approach combining the feature selection technique based on random forest and the Best-Fit Extension algorithm. The feature selection step can effectively rule out most of the incorrect candidate regulators, and thereby can significantly decrease the workload of the subsequent Best-Fit Extension fitting procedure. The efficiency and performance of the proposed two-stage framework are analyzed theoretically and validated comprehensively with synthetic datasets generated by the core regulatory network active in myeloid differentiation.