Zhang Jiayang, Che Yilin, Liu Rongrong, Wang Zhicheng, Liu Weiwu
Department of Radiology, The Second Hospital of Jilin University, 218 zigiang Street, Changchun, 130041, People's Republic of China.
NHC Key Laboratory of Radiobiology, School of Public Health, Jilin University, 1163 Xinmin Street, Changchun, 130021, People's Republic of China.
Brief Bioinform. 2025 Jul 2;26(4). doi: 10.1093/bib/bbaf440.
Artificial intelligence (AI) excels at efficiently processing large volumes of data and extracting valuable insights. Deep Learning (DL), a subfield of AI, utilizes multi-layer neural network algorithms to analyze various types of data, mimicking the neural network architecture of the human brain. One of the most prominent features of DL is its end-to-end learning mechanism, which excels at automatic feature extraction and pattern recognition in data. As multi-omics technologies rapidly evolve, the volume of omics data from cancer samples has surged, presenting a significant challenge in managing this vast amount of information. Due to its strong data processing capabilities, DL is increasingly applied across a range of cancer research areas, such as early detection and screening, diagnosis, molecular subtype classification, discovery of biomarkers, and predicting patient prognosis and treatment responses. DL integrates high-dimensional data from fields such as genomics, epigenomics, transcriptomics, proteomics, radiomics, and single-cell omics, enhancing our understanding of cancer development and advancing personalized treatment approaches. This paper reviews various DL models and their roles in analyzing complex data patterns, providing a review of DL applications in cancer multi-omics analysis research and emphasizing its potential in early detection, diagnosis, classification, and prognosis prediction. As DL models are introduced continuously, we expect their application in cancer research to become more extensive, thus propelling the advancement of cancer medicine.
人工智能(AI)擅长高效处理大量数据并提取有价值的见解。深度学习(DL)作为AI的一个子领域,利用多层神经网络算法来分析各种类型的数据,模仿人类大脑的神经网络架构。DL最显著的特点之一是其端到端学习机制,该机制在数据的自动特征提取和模式识别方面表现出色。随着多组学技术的迅速发展,癌症样本的组学数据量激增,在管理如此大量的信息方面带来了重大挑战。由于其强大的数据处理能力,DL越来越多地应用于一系列癌症研究领域,如早期检测与筛查、诊断、分子亚型分类、生物标志物发现以及预测患者预后和治疗反应。DL整合了来自基因组学、表观基因组学、转录组学、蛋白质组学、放射组学和单细胞组学等领域的高维数据,加深了我们对癌症发展的理解,并推动了个性化治疗方法的进步。本文综述了各种DL模型及其在分析复杂数据模式中的作用,回顾了DL在癌症多组学分析研究中的应用,并强调了其在早期检测、诊断、分类和预后预测方面的潜力。随着DL模型的不断引入,我们预计它们在癌症研究中的应用将更加广泛,从而推动癌症医学的进步。