Marianna Ciancia, Francesca Moro, Martina Bertoni, Giulia Baldassari, Pierpaolo Schips, Francesco Fanfani, Anna Fagotti, Antonia Carla Testa
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The protocol was registered in the PROSPERO database (registration record CRD42025648961).</p><p><strong>Results: </strong>Thirty studies were included: 18 (60%) distinguished between benign and malignant endometrial lesions, 4 (13.3%) focused on predicting lymph node metastases, 3 (10%) evaluated myometrial invasion, and 2 (6.6%) classified tumor risk. Additionally, 2 studies assessed disease-free survival (6.6%), while another developed a model for the automated identification of endometrial lesions (3.3%). According to QUADAS-AI, most studies were at high risk of bias for subject selection (eg, sample size not specified, imaging preprocessing not performed) (27/30, 90%) and the index test (no external validation) (27/30, 90%) domains, and at low risk of bias for the reference standard (target condition correctly classified by the reference standard) (29/30, 97%) and the workflow (reasonable time between index test and reference standard) (29/30, 97%) domains. 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引用次数: 0
摘要
目的:综合人工智能(AI)在子宫内膜癌超声成像评估中的应用,重点探讨预测不同结果的方法学方法和诊断准确性。方法:检索PubMed、Scopus和Web of Science数据库,检索时间为成立至2025年1月16日。包括应用人工智能超声成像在子宫内膜恶性病理诊断、分期和治疗中的研究。使用以人工智能为中心的诊断测试准确性研究质量评估工具(QUADAS-AI)对检索到的研究进行质量评估。协议在PROSPERO数据库中注册(注册记录CRD42025648961)。结果:纳入30项研究:18项(60%)研究区分子宫内膜良恶性病变,4项(13.3%)研究预测淋巴结转移,3项(10%)研究评估子宫肌层浸润,2项(6.6%)研究分类肿瘤风险。此外,2项研究评估了无病生存率(6.6%),而另一项研究开发了子宫内膜病变自动识别模型(3.3%)。根据QUADAS-AI,大多数研究在受试者选择(如未指定样本量、未进行成像预处理)(27/ 30,90%)和指标测试(未进行外部验证)(27/ 30,90%)领域存在高偏倚风险,在参考标准(参考标准正确分类的目标条件)(29/ 30,97%)和工作流程(指标测试与参考标准之间的合理时间)(29/ 30,97%)领域存在低偏倚风险。模型在3/30的研究中被外部验证(10%),在3/30的研究中被内部交叉验证(10%),在13/30的研究中被内部保留验证(43.3%),在11/30的研究中未被验证(36.7%)。结论:已发表的人工智能在子宫内膜癌超声诊断中的应用研究主要集中在建立分类模型,以区分子宫内膜良恶性病变并对疾病进行分期。总体而言,基于超声波的人工智能模型显示出强大的预测性能。然而,大多数研究受到样本量小和缺乏外部验证的限制。
Role of artificial intelligence applied to ultrasound in endometrial cancer: a systematic review.
Objective: To synthesize the application of artificial intelligence (AI) in ultrasound imaging for the assessment of endometrial cancer, with a focus on methodological approaches and diagnostic accuracy in predicting different outcomes.
Methods: PubMed, Scopus, and Web of Science databases were searched from inception up to January 16, 2025. Studies applying AI to ultrasound imaging in the diagnosis, staging, and management of endometrial malignant pathology were included. Quality assessment of the retrieved studies was performed using the Quality Assessment Tool for Artificial Intelligence-Centered Diagnostic Test Accuracy Studies (QUADAS-AI). The protocol was registered in the PROSPERO database (registration record CRD42025648961).
Results: Thirty studies were included: 18 (60%) distinguished between benign and malignant endometrial lesions, 4 (13.3%) focused on predicting lymph node metastases, 3 (10%) evaluated myometrial invasion, and 2 (6.6%) classified tumor risk. Additionally, 2 studies assessed disease-free survival (6.6%), while another developed a model for the automated identification of endometrial lesions (3.3%). According to QUADAS-AI, most studies were at high risk of bias for subject selection (eg, sample size not specified, imaging preprocessing not performed) (27/30, 90%) and the index test (no external validation) (27/30, 90%) domains, and at low risk of bias for the reference standard (target condition correctly classified by the reference standard) (29/30, 97%) and the workflow (reasonable time between index test and reference standard) (29/30, 97%) domains. Models were externally validated in 3/30 studies (10%), internally cross-validated in 3/30 (10%), internally hold-out validated in 13/30 (43.3%), and not validated in 11/30 (36.7%).
Conclusions: Published research on AI applications in ultrasound for endometrial cancer primarily focuses on developing classification models to distinguish benign from malignant endometrial lesions and to stage the disease. Overall, ultrasound-based AI models have demonstrated strong predictive performance. However, most studies are limited by small sample sizes and a lack of external validation.
期刊介绍:
The International Journal of Gynecological Cancer, the official journal of the International Gynecologic Cancer Society and the European Society of Gynaecological Oncology, is the primary educational and informational publication for topics relevant to detection, prevention, diagnosis, and treatment of gynecologic malignancies. IJGC emphasizes a multidisciplinary approach, and includes original research, reviews, and video articles. The audience consists of gynecologists, medical oncologists, radiation oncologists, radiologists, pathologists, and research scientists with a special interest in gynecological oncology.