医学
子宫内膜异位症
协商一致会议
超声波
盆腔子宫内膜异位症
普通外科
放射科
医学物理学
妇科
内科学
作者
Scott W. Young,Priyanka Jha,Luciana Pardini Chamié,Shuchi K. Rodgers,Rosanne M. Kho,Mindy M. Horrow,Phyllis Glanc,Myra Feldman,Yvette Groszmann,Zaraq Khan,Steven L. Young,Liina Pöder,Tatnai L. Burnett,Eric Hu,Susan Egan,Wendaline M. VanBuren
出处
期刊:Radiology
[Radiological Society of North America]
日期:2024-04-01
卷期号:311 (1)
被引量:7
标识
DOI:10.1148/radiol.232191
摘要
Endometriosis is a prevalent and potentially debilitating condition that mostly affects individuals of reproductive age, and often has a substantial diagnostic delay. US is usually the first-line imaging modality used when patients report chronic pelvic pain or have issues of infertility, both common symptoms of endometriosis. Other than the visualization of an endometrioma, sonologists frequently do not appreciate endometriosis on routine transvaginal US images. Given a substantial body of literature describing techniques to depict endometriosis at US, the Society of Radiologists in Ultrasound convened a multidisciplinary panel of experts to make recommendations aimed at improving the screening process for endometriosis. The panel was composed of experts in the imaging and management of endometriosis, including radiologists, sonographers, gynecologists, reproductive endocrinologists, and minimally invasive gynecologic surgeons. A comprehensive literature review combined with a modified Delphi technique achieved a consensus. This statement defines the targeted screening population, describes techniques for augmenting pelvic US, establishes direct and indirect observations for endometriosis at US, creates an observational grading and reporting system, and makes recommendations for additional imaging and patient management. The panel recommends transvaginal US of the posterior compartment, observation of the relative positioning of the uterus and ovaries, and the uterine sliding sign maneuver to improve the detection of endometriosis. These additional techniques can be performed in 5 minutes or less and could ultimately decrease the delay of an endometriosis diagnosis in at-risk patients.
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