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人工智能在良性妇科疾病超声成像中的应用:系统评价

Application of artificial intelligence to ultrasound imaging for benign gynecological disorders: systematic review.

作者信息

Moro F, Giudice M T, Ciancia M, Zace D, Baldassari G, Vagni M, Tran H E, Scambia G, Testa A C

机构信息

Dipartimento Scienze della Salute della Donna, del Bambino e di Sanità Pubblica, Fondazione Policlinico Universitario Agostino Gemelli, IRCCS, Rome, Italy.

UniCamillus International Medical University, Rome, Italy.

出版信息

Ultrasound Obstet Gynecol. 2025 Mar;65(3):295-302. doi: 10.1002/uog.29171. Epub 2025 Jan 31.

Abstract

OBJECTIVE

Although artificial intelligence (AI) is increasingly being applied to ultrasound imaging in gynecology, efforts to synthesize the available evidence have been inadequate. The aim of this systematic review was to summarize and evaluate the literature on the role of AI applied to ultrasound imaging in benign gynecological disorders.

METHODS

Web of Science, PubMed and Scopus databases were searched from inception until August 2024. Inclusion criteria were studies applying AI to ultrasound imaging in the diagnosis and management of benign gynecological disorders. Studies retrieved from the literature search were imported into Rayyan software and quality assessment was performed using the Quality Assessment Tool for Artificial Intelligence-Centered Diagnostic Test Accuracy Studies (QUADAS-AI).

RESULTS

Of the 59 studies included, 12 were on polycystic ovary syndrome (PCOS), 11 were on infertility and assisted reproductive technology, 11 were on benign ovarian pathology (i.e. ovarian cysts, ovarian torsion, premature ovarian failure), 10 were on endometrial or myometrial pathology, nine were on pelvic floor disorder and six were on endometriosis. China was the most highly represented country (22/59 (37.3%)). According to QUADAS-AI, most studies were at high risk of bias for the subject selection domain (because the sample size, source or scanner model was not specified, data were not derived from open-source datasets and/or imaging preprocessing was not performed) and the index test domain (AI models were not validated externally), and at low risk of bias for the reference standard domain (the reference standard classified the target condition correctly) and the workflow domain (the time between the index test and the reference standard was reasonable). Most studies (40/59) developed and internally validated AI classification models for distinguishing between normal and pathological cases (i.e. presence vs absence of PCOS, pelvic endometriosis, urinary incontinence, ovarian cyst or ovarian torsion), whereas 19/59 studies aimed to automatically segment or measure ovarian follicles, ovarian volume, endometrial thickness, uterine fibroids or pelvic floor structures.

CONCLUSION

The published literature on AI applied to ultrasound in benign gynecological disorders is focused mainly on creating classification models to distinguish between normal and pathological cases, and on developing models to automatically segment or measure ovarian volume or follicles. © 2025 The Author(s). Ultrasound in Obstetrics & Gynecology published by John Wiley & Sons Ltd on behalf of International Society of Ultrasound in Obstetrics and Gynecology.

摘要

目的

尽管人工智能(AI)在妇科超声成像中的应用越来越广泛,但对现有证据进行综合分析的工作仍显不足。本系统评价的目的是总结和评估关于AI在良性妇科疾病超声成像中作用的文献。

方法

检索了Web of Science、PubMed和Scopus数据库,检索时间从建库至2024年8月。纳入标准为将AI应用于良性妇科疾病诊断和管理的超声成像研究。从文献检索中获取的研究被导入Rayyan软件,并使用以人工智能为中心的诊断试验准确性研究质量评估工具(QUADAS-AI)进行质量评估。

结果

在纳入的59项研究中,12项关于多囊卵巢综合征(PCOS),11项关于不孕症和辅助生殖技术,11项关于良性卵巢病变(即卵巢囊肿、卵巢扭转、卵巢早衰),10项关于子宫内膜或子宫肌层病变,9项关于盆底疾病,6项关于子宫内膜异位症。中国是被提及最多的国家(22/59(37.3%))。根据QUADAS-AI,大多数研究在受试者选择领域(因为样本量、来源或扫描仪型号未明确,数据并非来自开源数据集且/或未进行成像预处理)和索引测试领域(AI模型未进行外部验证)存在高偏倚风险,而在参考标准领域(参考标准正确分类目标疾病)和工作流程领域(索引测试与参考标准之间的时间合理)存在低偏倚风险。大多数研究(40/59)开发并在内部验证了用于区分正常和病理病例(即PCOS、盆腔子宫内膜异位症、尿失禁、卵巢囊肿或卵巢扭转的有无)的AI分类模型,而19/59的研究旨在自动分割或测量卵巢卵泡、卵巢体积、子宫内膜厚度、子宫肌瘤或盆底结构。

结论

已发表的关于AI应用于良性妇科疾病超声成像的文献主要集中在创建区分正常和病理病例的分类模型,以及开发自动分割或测量卵巢体积或卵泡的模型。© 2025作者。《妇产科超声》由John Wiley & Sons Ltd代表国际妇产科超声学会出版。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a22a/11872345/bdf0d0a3d034/UOG-65-295-g001.jpg

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