基于人工智能的妇科肿瘤风险分层、准确诊断和治疗预测。

IF 12.1 1区 医学 Q1 ONCOLOGY Seminars in cancer biology Pub Date : 2023-09-30 DOI:10.1016/j.semcancer.2023.09.005
Yuting Jiang , Chengdi Wang , Shengtao Zhou
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引用次数: 2

摘要

作为数据驱动的科学,人工智能(AI)为一个不断发展的卫生系统铺平了一条充满希望的道路,该系统充满了精准肿瘤学的激动人心的机会。尽管肿瘤学人工智能在肺癌、乳腺肿瘤和脑恶性肿瘤等领域取得了巨大成功,但研究人工智能对妇科肿瘤学的影响却很少。因此,这篇综述阐明了最先进的人工智能技术对妇科肿瘤,特别是宫颈癌、卵巢癌和子宫内膜癌癌症患者精细化风险分层和全过程管理的日益贡献,重点是从临床数据(电子健康记录)中提取的信息和特征,癌症成像,包括放射学成像、阴道镜图像、细胞学和组织病理学数字图像以及分子图谱(基因组学、转录组学、代谢组学等)。然而,除了性能验证之外,还有一些值得注意的挑战。因此,这项工作进一步描述了人工智能模型在实际应用中面临的局限性和挑战,以及解决这些问题的潜在解决方案。
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Artificial intelligence-based risk stratification, accurate diagnosis and treatment prediction in gynecologic oncology

As data-driven science, artificial intelligence (AI) has paved a promising path toward an evolving health system teeming with thrilling opportunities for precision oncology. Notwithstanding the tremendous success of oncological AI in such fields as lung carcinoma, breast tumor and brain malignancy, less attention has been devoted to investigating the influence of AI on gynecologic oncology. Hereby, this review sheds light on the ever-increasing contribution of state-of-the-art AI techniques to the refined risk stratification and whole-course management of patients with gynecologic tumors, in particular, cervical, ovarian and endometrial cancer, centering on information and features extracted from clinical data (electronic health records), cancer imaging including radiological imaging, colposcopic images, cytological and histopathological digital images, and molecular profiling (genomics, transcriptomics, metabolomics and so forth). However, there are still noteworthy challenges beyond performance validation. Thus, this work further describes the limitations and challenges faced in the real-word implementation of AI models, as well as potential solutions to address these issues.

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来源期刊
Seminars in cancer biology
Seminars in cancer biology 医学-肿瘤学
CiteScore
26.80
自引率
4.10%
发文量
347
审稿时长
15.1 weeks
期刊介绍: Seminars in Cancer Biology (YSCBI) is a specialized review journal that focuses on the field of molecular oncology. Its primary objective is to keep scientists up-to-date with the latest developments in this field. The journal adopts a thematic approach, dedicating each issue to an important topic of interest to cancer biologists. These topics cover a range of research areas, including the underlying genetic and molecular causes of cellular transformation and cancer, as well as the molecular basis of potential therapies. To ensure the highest quality and expertise, every issue is supervised by a guest editor or editors who are internationally recognized experts in the respective field. Each issue features approximately eight to twelve authoritative invited reviews that cover various aspects of the chosen subject area. The ultimate goal of each issue of YSCBI is to offer a cohesive, easily comprehensible, and engaging overview of the selected topic. The journal strives to provide scientists with a coordinated and lively examination of the latest developments in the field of molecular oncology.
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