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使用多组学和多模态方案通过基因关注评估低级别胶质瘤的预后

Estimating the Prognosis of Low-Grade Glioma with Gene Attention Using Multi-Omics and Multi-Modal Schemes.

作者信息

Choi Sanghyuk Roy, Lee Minhyeok

机构信息

School of Electrical and Electronics Engineering, Chung-Ang University, Seoul 06974, Korea.

出版信息

Biology (Basel). 2022 Oct 5;11(10):1462. doi: 10.3390/biology11101462.

Abstract

The prognosis estimation of low-grade glioma (LGG) patients with deep learning models using gene expression data has been extensively studied in recent years. However, the deep learning models used in these studies do not utilize the latest deep learning techniques, such as residual learning and ensemble learning. To address this limitation, in this study, a deep learning model using multi-omics and multi-modal schemes, namely the Multi-Prognosis Estimation Network (Multi-PEN), is proposed. When using Multi-PEN, gene attention layers are employed for each datatype, including mRNA and miRNA, thereby allowing us to identify prognostic genes. Additionally, recent developments in deep learning, such as residual learning and layer normalization, are utilized. As a result, Multi-PEN demonstrates competitive performance compared to conventional models for prognosis estimation. Furthermore, the most significant prognostic mRNA and miRNA were identified using the attention layers in Multi-PEN. For instance, MYBL1 was identified as the most significant prognostic mRNA. Such a result accords with the findings in existing studies that have demonstrated that MYBL1 regulates cell survival, proliferation, and differentiation. Additionally, hsa-mir-421 was identified as the most significant prognostic miRNA, and it has been extensively reported that hsa-mir-421 is highly associated with various cancers. These results indicate that the estimations of Multi-PEN are valid and reliable and showcase Multi-PEN's capacity to present hypotheses regarding prognostic mRNAs and miRNAs.

摘要

近年来,利用基因表达数据通过深度学习模型对低级别胶质瘤(LGG)患者进行预后评估的研究已广泛开展。然而,这些研究中使用的深度学习模型并未采用最新的深度学习技术,如残差学习和集成学习。为解决这一局限性,本研究提出了一种使用多组学和多模态方案的深度学习模型,即多预后评估网络(Multi-PEN)。使用Multi-PEN时,针对包括mRNA和miRNA在内的每种数据类型采用基因注意力层,从而使我们能够识别预后基因。此外,还利用了深度学习的最新进展,如残差学习和层归一化。结果表明,与传统的预后评估模型相比,Multi-PEN具有竞争优势。此外,利用Multi-PEN中的注意力层确定了最显著的预后mRNA和miRNA。例如,MYBL1被确定为最显著的预后mRNA。这一结果与现有研究结果一致,现有研究表明MYBL1调节细胞存活、增殖和分化。此外,hsa-mir-421被确定为最显著的预后miRNA,并且已有大量报道表明hsa-mir-421与多种癌症高度相关。这些结果表明,Multi-PEN的评估是有效且可靠的,并展示了Multi-PEN提出关于预后mRNA和miRNA假设的能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/38d5/9598836/fc0b68fb920c/biology-11-01462-g001.jpg

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