Artificial intelligence and omics in malignant gliomas.

IF 2.5 4区 生物学 Q3 CELL BIOLOGY Physiological genomics Pub Date : 2024-12-01 Epub Date: 2024-10-22 DOI:10.1152/physiolgenomics.00011.2024
Richa Tambi, Binte Zehra, Aswathy Vijayakumar, Dharana Satsangi, Mohammed Uddin, Bakhrom K Berdiev
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Abstract

Glioblastoma multiforme (GBM) is one of the most common and aggressive type of malignant glioma with an average survival time of 12-18 mo. Despite the utilization of extensive surgical resections using cutting-edge neuroimaging, and advanced chemotherapy and radiotherapy, the prognosis remains unfavorable. The heterogeneity of GBM and the presence of the blood-brain barrier further complicate the therapeutic process. It is crucial to adopt a multifaceted approach in GBM research to understand its biology and advance toward effective treatments. In particular, omics research, which primarily includes genomics, transcriptomics, proteomics, and epigenomics, helps us understand how GBM develops, finds biomarkers, and discovers new therapeutic targets. The availability of large-scale multiomics data requires the development of computational models to infer valuable biological insights for the implementation of precision medicine. Artificial intelligence (AI) refers to a host of computational algorithms that is becoming a major tool capable of integrating large omics databases. Although the application of AI tools in GBM-omics is currently in its early stages, a thorough exploration of AI utilization to uncover different aspects of GBM (subtype classification, prognosis, and survival) would have a significant impact on both researchers and clinicians. Here, we aim to review and provide database resources of different AI-based techniques that have been used to study GBM pathogenesis using multiomics data over the past decade. We summarize different types of GBM-related omics resources that can be used to develop AI models. Furthermore, we explore various AI tools that have been developed using either individual or integrated multiomics data, highlighting their applications and limitations in the context of advancing GBM research and treatment.

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恶性胶质瘤中的人工智能和 Omics。
大规模多组学数据的可用性要求开发计算模型,以推断出有价值的生物学见解,从而实施精准医疗。人工智能(AI)指的是一系列计算算法,这些算法正在成为能够整合大规模基因组学、转录组学、蛋白质组学和代谢组学数据的主要工具。机器学习(ML)是健康科学领域最重要的人工智能算法,特别是由于深度学习最近取得的进展,这种算法已经呈现爆炸式增长。虽然人工智能/ML 工具在 GBM 组学中的应用仍处于早期阶段,但全面讨论如何利用人工智能来揭示 GBM 的各个方面(肿瘤内异质性、生物标记物发现、生存预测和治疗优化)对研究人员和临床医生都非常重要。在此,我们旨在回顾过去十年中利用多组学数据研究 GBM 发病机制的不同人工智能技术。我们首先总结了可用于开发人工智能模型的不同类型的 GBM 相关组学资源。然后,我们讨论了多组学数据的各种人工智能应用,以提高 GBM 精准医疗水平。最后,我们讨论了限制其应用的技术和伦理挑战,以及改进其在临床中实施的方法。
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来源期刊
Physiological genomics
Physiological genomics 生物-生理学
CiteScore
6.10
自引率
0.00%
发文量
46
审稿时长
4-8 weeks
期刊介绍: The Physiological Genomics publishes original papers, reviews and rapid reports in a wide area of research focused on uncovering the links between genes and physiology at all levels of biological organization. Articles on topics ranging from single genes to the whole genome and their links to the physiology of humans, any model organism, organ, tissue or cell are welcome. Areas of interest include complex polygenic traits preferably of importance to human health and gene-function relationships of disease processes. Specifically, the Journal has dedicated Sections focused on genome-wide association studies (GWAS) to function, cardiovascular, renal, metabolic and neurological systems, exercise physiology, pharmacogenomics, clinical, translational and genomics for precision medicine, comparative and statistical genomics and databases. For further details on research themes covered within these Sections, please refer to the descriptions given under each Section.
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