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用于预测妇科癌症的机器学习模型:进展、挑战与未来方向。

Machine Learning Models for Predicting Gynecological Cancers: Advances, Challenges, and Future Directions.

作者信息

Garg Pankaj, Krishna Madhu, Kulkarni Prakash, Horne David, Salgia Ravi, Singhal Sharad S

机构信息

Department of Chemistry, GLA University, NH-19, Mathura-Delhi Road, Mathura 281406, Uttar Pradesh, India.

Department of Medical Oncology and Therapeutic Research, Beckman Research Institute of City of Hope, 1500 E Duarte Road, Duarte, CA 91010, USA.

出版信息

Cancers (Basel). 2025 Aug 27;17(17):2799. doi: 10.3390/cancers17172799.

Abstract

Gynecological cancer, especially breast, cervical, and ovarian cancer, are significant health issues affecting women worldwide. When screened they are mostly detected at later stages because of non-specific signs and symptoms as well as the unavailability of reliable screening methods. The improvement of early oncologic prediction methods is therefore needed to work out the survival rates, guide individualized treatment, and relieve healthcare pressures. Outcome forecasting and clinical detection are rapidly changing with the use of machine learning (ML), one of the promising technologies used to analyze complex biomedical data. Artificial intelligence (AI)-based ML models are capable of determining low-level trends and making accurate predictions of disease risk and outcomes, because they can combine different datasets (clinical records, genomics, proteomics, medical imaging) and learn to identify subtle patterns. Standard algorithms, including support vector machines, random forests, and deep learning (DL) models, such as convolutional neural networks, have demonstrated high potential in identifying the type of cancer, monitoring disease progression, and designing treatment patterns. This manuscript reviews the recent developments in the use of ML models to advance oncologic prediction tasks in gynecologic oncology. It reports on critical domains, like screening, risk classification, and survival modeling, as well as comments on difficulties, like data inconsistency, inability of interpretation of models, and issues of clinical interpretation. New developments, such as explainable AI, federated learning (FL), and multi-omics fusion, are discussed to develop these models and to make them applicable in practice because of their reliability. Conclusively, this article emphasizes the transformative role of ML in precision oncology to deliver improved, patient-centered outcomes to women who are victims of gynecological cancers.

摘要

妇科癌症,尤其是乳腺癌、宫颈癌和卵巢癌,是影响全球女性的重大健康问题。由于症状不具特异性以及缺乏可靠的筛查方法,这些癌症在筛查时大多在晚期才被发现。因此,需要改进早期肿瘤预测方法,以提高生存率、指导个体化治疗并减轻医疗压力。随着机器学习(ML)的应用,结果预测和临床检测正在迅速变化,机器学习是用于分析复杂生物医学数据的有前景的技术之一。基于人工智能(AI)的ML模型能够确定低水平趋势,并对疾病风险和结果做出准确预测,因为它们可以整合不同的数据集(临床记录、基因组学、蛋白质组学、医学影像)并学会识别细微模式。标准算法,包括支持向量机、随机森林,以及深度学习(DL)模型,如卷积神经网络,在识别癌症类型、监测疾病进展和设计治疗模式方面已显示出巨大潜力。本文综述了ML模型在推进妇科肿瘤学肿瘤预测任务方面的最新进展。报告了关键领域,如筛查、风险分类和生存建模,以及对困难的评论,如数据不一致、模型无法解释以及临床解释问题。还讨论了可解释人工智能、联邦学习(FL)和多组学融合等新进展,以开发这些模型并使其因其可靠性而适用于实践。总之,本文强调了ML在精准肿瘤学中的变革性作用,为妇科癌症患者提供改善的、以患者为中心的治疗结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a058/12427352/7e384a39f370/cancers-17-02799-g001.jpg

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