Bhardwaj Vipul, Sharma Arundhiti, Parambath Snijesh Valiya, Gul Ijaz, Zhang Xi, Lobie Peter E, Qin Peiwu, Pandey Vijay
Tsinghua Berkeley Shenzhen Institute, Tsinghua Shenzhen International Graduate School, Tsinghua University, Shenzhen, China.
Division of Molecular Medicine, St. John's Research Institute, Bangalore, India.
Front Oncol. 2022 Jul 27;12:852746. doi: 10.3389/fonc.2022.852746. eCollection 2022.
Endometrial cancer (EC) is a prevalent uterine cancer that remains a major contributor to cancer-associated morbidity and mortality. EC diagnosed at advanced stages shows a poor therapeutic response. The clinically utilized EC diagnostic approaches are costly, time-consuming, and are not readily available to all patients. The rapid growth in computational biology has enticed substantial research attention from both data scientists and oncologists, leading to the development of rapid and cost-effective computer-aided cancer surveillance systems. Machine learning (ML), a subcategory of artificial intelligence, provides opportunities for drug discovery, early cancer diagnosis, effective treatment, and choice of treatment modalities. The application of ML approaches in EC diagnosis, therapies, and prognosis may be particularly relevant. Considering the significance of customized treatment and the growing trend of using ML approaches in cancer prediction and monitoring, a critical survey of ML utility in EC may provide impetus research in EC and assist oncologists, molecular biologists, biomedical engineers, and bioinformaticians to further collaborative research in EC. In this review, an overview of EC along with risk factors and diagnostic methods is discussed, followed by a comprehensive analysis of the potential ML modalities for prevention, screening, detection, and prognosis of EC patients.
子宫内膜癌(EC)是一种常见的子宫癌,仍然是癌症相关发病率和死亡率的主要原因。晚期诊断出的EC显示出较差的治疗反应。临床上使用的EC诊断方法成本高、耗时,并非所有患者都能轻易获得。计算生物学的快速发展吸引了数据科学家和肿瘤学家的大量研究关注,从而推动了快速且经济高效的计算机辅助癌症监测系统的发展。机器学习(ML)作为人工智能的一个子类别,为药物发现、癌症早期诊断、有效治疗以及治疗方式的选择提供了机会。ML方法在EC诊断、治疗和预后中的应用可能尤为重要。考虑到个性化治疗的重要性以及在癌症预测和监测中使用ML方法的趋势不断增加,对ML在EC中的效用进行批判性综述可能会推动EC研究,并帮助肿瘤学家、分子生物学家、生物医学工程师和生物信息学家在EC领域进一步开展合作研究。在本综述中,讨论了EC的概述以及风险因素和诊断方法,随后对用于EC患者预防、筛查、检测和预后的潜在ML模式进行了全面分析。