基于因果推理构建泛癌症调控网络。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-07-23 DOI:10.1016/j.biosystems.2024.105279
Ruirui Ji , Mengfei Yan , Meng Zhao , Yi Geng
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引用次数: 0

摘要

泛癌计划旨在从跨癌症类型的角度研究癌细胞的起源模式、癌变过程和信号通路。泛癌症相关基因调控网络的构建有助于挖掘不同类型癌症之间调控关系的共性。它还有助于了解癌症发生和发展背后的机制,对癌症的预防和治疗具有重要的科学意义。针对泛癌症组学数据维度高、样本量大的特点,提出了一种基于随机复杂性的泛癌症因果基因调控网络推断算法。采用先局部后全局的网络构建策略,利用随机复杂性对目标节点的候选相邻节点集进行条件独立性检验和因果方向推断。这种方法旨在降低因果网络学习的时间复杂度和错误率。将该算法应用于 TCGA 数据库中包括乳腺癌、肺腺癌等七种癌症的样本数据,构建了泛癌症相关因果调控网络,并验证了其生物学意义。实验结果表明,该算法能有效消除冗余调控关系,更准确地推断出泛癌症调控网络。(https://github.com/LindeEugen/CNI-SC)。
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Construction of pan-cancer regulatory networks based on causal inference

The pan-cancer initiative aims to study the origin patterns of cancer cell, the processes of carcinogenesis, and the signaling pathways from a perspective that spans across different types of cancer. The construction of the pan-cancer related gene regulatory network is helpful to excavate the commonalities in regulatory relationships among different types of cancers. It also aids in understanding the mechanisms behind cancer occurrence and development, which is of great scientific significance for cancer prevention and treatment. In light of the high dimension and large sample size of pan-cancer omics data, a causal pan-cancer gene regulation network inference algorithm based on stochastic complexity is proposed. With the network construction strategy of local first and then global, the stochastic complexity is used in the conditional independence test and causal direction inference for the candidate adjacent node set of the target nodes. This approach aims to decrease the time complexity and error rate of causal network learning. By applying this algorithm to the sample data of seven types of cancers in the TCGA database, including breast cancer, lung adenocarcinoma, and so on, the pan-cancer related causal regulatory networks are constructed, and their biological significance is verified. The experimental results show that this algorithm can eliminate the redundant regulatory relationships effectively and infer the pan-cancer regulatory network more accurately (https://github.com/LindeEugen/CNI-SC).

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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