Che Yanan, Zhao Meng, Gao Yan, Zhang Zhibin, Zhang Xiangyang
School of Pharmaceutical Science and Technology, Tianjin University, Tianjin, China.
Department of General Surgery, Tianjin First Central Hospital, Tianjin, China.
Front Mol Biosci. 2024 Dec 17;11:1483326. doi: 10.3389/fmolb.2024.1483326. eCollection 2024.
Thyroid diseases, including functional and neoplastic diseases, bring a huge burden to people's health. Therefore, a timely and accurate diagnosis is necessary. Mass spectrometry (MS) based multi-omics has become an effective strategy to reveal the complex biological mechanisms of thyroid diseases. The exponential growth of biomedical data has promoted the applications of machine learning (ML) techniques to address new challenges in biology and clinical research. In this review, we presented the detailed review of applications of ML for MS-based multi-omics in thyroid disease. It is primarily divided into two sections. In the first section, MS-based multi-omics, primarily proteomics and metabolomics, and their applications in clinical diseases are briefly discussed. In the second section, several commonly used unsupervised learning and supervised algorithms, such as principal component analysis, hierarchical clustering, random forest, and support vector machines are addressed, and the integration of ML techniques with MS-based multi-omics data and its application in thyroid disease diagnosis is explored.
甲状腺疾病,包括功能性和肿瘤性疾病,给人们的健康带来了巨大负担。因此,及时、准确的诊断是必要的。基于质谱(MS)的多组学已成为揭示甲状腺疾病复杂生物学机制的有效策略。生物医学数据的指数增长推动了机器学习(ML)技术的应用,以应对生物学和临床研究中的新挑战。在本综述中,我们详细介绍了ML在基于MS的甲状腺疾病多组学中的应用。它主要分为两个部分。在第一部分中,简要讨论了基于MS的多组学,主要是蛋白质组学和代谢组学,及其在临床疾病中的应用。在第二部分中,介绍了几种常用的无监督学习和监督算法,如主成分分析、层次聚类、随机森林和支持向量机,并探讨了ML技术与基于MS的多组学数据的整合及其在甲状腺疾病诊断中的应用。