Adrián Segura-Ortiz , Karen Giménez-Orenga , José García-Nieto , Elisa Oltra , José F. Aldana-Montes
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引用次数: 0
摘要
基因调控网络(grn)的推断是系统生物学的一个基本挑战,旨在从表达数据中破译基因相互作用。然而,传统的推理技术在其结果中表现出差异,并且对特定数据集有明显的偏好。为了解决这个问题,我们提出了BIO-INSIGHT (biological Informed Optimizer - integrated Software To Infer grn by Holistic Thinking),这是一种并行异步多目标进化算法,可以优化由生物学相关目标指导的多种推理方法之间的共识。BIO-INSIGHT已经在106个grn的学术基准上进行了评估,将其性能与MO-GENECI和其他共识策略进行了比较。结果显示,AUROC和AUPR在统计学上有显著改善,表明生物指导优化优于主要的数学方法。此外,BIO-INSIGHT应用于纤维肌痛、肌痛性脑脊髓炎患者的基因表达数据,以及两种疾病的共同诊断。推断出的网络揭示了每种疾病特有的调节相互作用,表明其在生物标志物鉴定和潜在治疗靶点方面的临床应用。BIO-INSIGHT的健壮性和独创性巩固了其作为GRN推断创新工具的潜力,使其能够生成更准确和生物学上可行的网络。源代码托管在MIT许可下的公共GitHub存储库中:https://github.com/AdrianSeguraOrtiz/BIO-INSIGHT。此外,为了方便其再现性和使用,与此实现相关的软件已打包到PyPI: https://pypi.org/project/GENECI/3.0.1/上提供的Python库中。
Multifaceted evolution focused on maximal exploitation of domain knowledge for the consensus inference of Gene Regulatory Networks
The inference of gene regulatory networks (GRNs) is a fundamental challenge in systems biology, aiming to decipher gene interactions from expression data. However, traditional inference techniques exhibit disparities in their results and a clear preference for specific datasets. To address this issue, we present BIO-INSIGHT (Biologically Informed Optimizer - INtegrating Software to Infer GRNs by Holistic Thinking), a parallel asynchronous many-objective evolutionary algorithm that optimizes the consensus among multiple inference methods guided by biologically relevant objectives. BIO-INSIGHT has been evaluated on an academic benchmark of 106 GRNs, comparing its performance against MO-GENECI and other consensus strategies. The results show a statistically significant improvement in AUROC and AUPR, demonstrating that biologically guided optimization outperforms primarily mathematical approaches. Additionally, BIO-INSIGHT was applied to gene expression data from patients with fibromyalgia, myalgic encephalomyelitis, and co-diagnosis of both diseases. The inferred networks revealed regulatory interactions specific to each condition, suggesting its clinical utility in biomarker identification and potential therapeutic targets. The robustness and ingenuity of BIO-INSIGHT consolidate its potential as an innovative tool for GRN inference, enabling the generation of more accurate and biologically feasible networks. The source code is hosted in a public GitHub repository under the MIT license: https://github.com/AdrianSeguraOrtiz/BIO-INSIGHT. Moreover, to facilitate its reproducibility and usage, the software associated with this implementation has been packaged into a Python library available on PyPI: https://pypi.org/project/GENECI/3.0.1/.
期刊介绍:
Computers in Biology and Medicine is an international forum for sharing groundbreaking advancements in the use of computers in bioscience and medicine. This journal serves as a medium for communicating essential research, instruction, ideas, and information regarding the rapidly evolving field of computer applications in these domains. By encouraging the exchange of knowledge, we aim to facilitate progress and innovation in the utilization of computers in biology and medicine.