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AuthorQiao, Kangjia
AuthorLiang, Jing
AuthorGuo, Wei-Feng
AuthorHu, Zhuo
AuthorYu, Kunjie
AuthorSuganthan, P.N.
Available date2025-01-19T10:05:06Z
Publication Date2024
Publication NameInformation Sciences
ResourceScopus
Identifierhttp://dx.doi.org/10.1016/j.ins.2024.121033
ISSN200255
URIhttp://hdl.handle.net/10576/62224
AbstractThe structural network control principle for identifying personalized drug targets (SNCPDTs) is a kind of constrained multiobjective optimization (CMO) problem with NP-hard features, which makes traditional mathematical methods difficult to adopt. Therefore, this study designs a knowledge-embedded multitasking constrained multiobjective evolutionary algorithm (KMCEA) to solve the SNCPDTs by mining relevant knowledge. Specifically, the relationships between two optimization objectives (minimizing the number of driver nodes and maximizing prior-known drug-target information) and constraints (guaranteeing network control) are analyzed from the perspective of CMO. We find that two objectives are difficult to optimize; thus two single-objective auxiliary tasks are created to optimize two objectives respectively, so as to maintain diversity along the Pareto front. Furthermore, we find that two optimization objectives have a complex reverse relation and a simple positive relation with constraints, respectively; thus, a population initialization method and a local auxiliary task are designed for two single-objective auxiliary tasks, respectively, so as to improve the performance of the algorithm on two objective functions. Finally, KMCEA is used to solve two kinds of models with three kinds of datasets. Compared with various methods, KMCEA can not only effectively discover clinical combinatorial drugs but also better solve the SNCPDTs regarding convergence and diversity. 2024
SponsorThis work was supported in part by National Natural Science Fund for Outstanding Young Scholars of China (61922072), Key R&D projects of the Ministry of Science and Technology of China (2022YFD2001200), National Natural Science Foundation of China (62176238, 61806179, 62002329, 61876169, 62106230 and 61976237), China Postdoctoral Science Foundation (2020M682347, 2021T140616, 2021M692920), Training Program of Young Backbone teachers in Colleges and universities in Henan Province (2020GGJS006), Henan Provincial Young Talents Lifting Project (2021HYTP007), Henan Provincial Natural Science Foundation Project (242300420277), and Open Fund Project of Chongqing University of Posts and Telecommunications Big Data Key Laboratory (BDIC-2023-B-005).
Languageen
PublisherElsevier
SubjectConstrained multiobjective optimization
Evolutionary algorithm
Personalized drug targets with cancer
Structural network control principles
TitleKnowledge-embedded constrained multiobjective evolutionary algorithm based on structural network control principles for personalized drug targets recognition in cancer
TypeArticle
Volume Number679
dc.accessType Full Text


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