Dipartimento Scienze della Salute della Donna, del Bambino e di Sanità Pubblica, Fondazione Policlinico Universitario Agostino Gemelli, IRCCS, Rome, Italy.
Dipartimento Universitario Scienze della Vita e Sanità Pubblica, Università Cattolica del Sacro Cuore, Rome, Italy.
Int J Cancer. 2024 Nov 15;155(10):1832-1845. doi: 10.1002/ijc.35092. Epub 2024 Jul 11.
The aim of this paper was to explore the role of artificial intelligence (AI) applied to ultrasound imaging in gynecology oncology. Web of Science, PubMed, and Scopus databases were searched. All studies were imported to RAYYAN QCRI software. The overall quality of the included studies was assessed using QUADAS-AI tool. Fifty studies were included, of these 37/50 (74.0%) on ovarian masses or ovarian cancer, 5/50 (10.0%) on endometrial cancer, 5/50 (10.0%) on cervical cancer, and 3/50 (6.0%) on other malignancies. Most studies were at high risk of bias for subject selection (i.e., sample size, source, or scanner model were not specified; data were not derived from open-source datasets; imaging preprocessing was not performed) and index test (AI models was not externally validated) and at low risk of bias for reference standard (i.e., the reference standard correctly classified the target condition) and workflow (i.e., the time between index test and reference standard was reasonable). Most studies presented machine learning models (33/50, 66.0%) for the diagnosis and histopathological correlation of ovarian masses, while others focused on automatic segmentation, reproducibility of radiomics features, improvement of image quality, prediction of therapy resistance, progression-free survival, and genetic mutation. The current evidence supports the role of AI as a complementary clinical and research tool in diagnosis, patient stratification, and prediction of histopathological correlation in gynecological malignancies. For example, the high performance of AI models to discriminate between benign and malignant ovarian masses or to predict their specific histology can improve the diagnostic accuracy of imaging methods.
本文旨在探讨人工智能(AI)在妇科肿瘤学超声成像中的应用。检索了 Web of Science、PubMed 和 Scopus 数据库。所有研究均被导入 RAYYAN QCRI 软件。使用 QUADAS-AI 工具评估纳入研究的整体质量。共纳入 50 项研究,其中 37/50(74.0%)项研究涉及卵巢肿块或卵巢癌,5/50(10.0%)项研究涉及子宫内膜癌,5/50(10.0%)项研究涉及宫颈癌,3/50(6.0%)项研究涉及其他恶性肿瘤。大多数研究在研究对象选择(即样本量、来源或扫描仪型号未指定;数据不是从开源数据集得出的;未进行成像预处理)和索引测试(AI 模型未进行外部验证)方面存在高偏倚风险,而在参考标准(即参考标准正确分类目标情况)和工作流程(即索引测试和参考标准之间的时间合理)方面存在低偏倚风险。大多数研究提出了机器学习模型(33/50,66.0%)用于诊断和卵巢肿块的组织病理学相关性,而其他研究则侧重于自动分割、放射组学特征的可重复性、图像质量的提高、治疗耐药性、无进展生存期和基因突变的预测。目前的证据支持 AI 作为一种补充的临床和研究工具,用于诊断、患者分层和预测妇科恶性肿瘤的组织病理学相关性。例如,AI 模型在区分良性和恶性卵巢肿块或预测其特定组织学方面的高性能可以提高成像方法的诊断准确性。