医学
子宫腔
子宫输卵管造影术
子宫内膜异位症
子宫
怀孕
子宫颈
产科
异位妊娠
泌尿系统
不育
妇科
放射科
解剖
内科学
癌症
生物
遗传学
作者
Mark Sugi,Rubal Penna,Priyanka Jha,Liina Pōder,Spencer C. Behr,Jesse Courtier,Evelyn Mok-Lin,Joseph T. Rabban,Hailey H. Choi
出处
期刊:Radiographics
[Radiological Society of North America]
日期:2021-10-01
卷期号:41 (6): 1857-1875
被引量:54
标识
DOI:10.1148/rg.2021210022
摘要
Müllerian duct anomalies (MDAs) have important implications for the reproductive health of female patients. In patients with both infertility and recurrent pregnancy loss, the incidence of MDAs is as high as 25%. Congenital uterine anomalies are often only part of a complex set of congenital anomalies involving the cervix, vagina, and urinary tract. Multiple classification systems for MDAs exist, each with different criteria that vary most for the diagnosis of septate uterus. Recognizing the features that guide clinical management is essential for interpretation. Identification of an MDA should prompt evaluation for associated urinary tract anomalies. In patients with infertility who seek to use assisted reproductive technologies such as intrauterine insemination, recognition of MDAs may have an affect on reproductive success, particularly in patients who have an incomplete and clinically occult septum that divides the cervix. Two-dimensional US is the first-line modality for evaluating the uterus and adnexa. Three-dimensional (3D) US or MRI may help to visualize the external uterine fundal contour and internal indentation of the endometrial cavity, which are two morphologic characteristics that are keys to the diagnosis of congenital uterine anomalies. Hysterosalpingo contrast-enhanced US may be performed in conjunction with 3D US to evaluate uterine morphologic characteristics, the endometrial cavity, and tubal patency in a single examination. MRI helps to characterize rudimentary uteri in patients with müllerian hypoplasia and allows assessment for ectopic ureters, abnormally positioned ovaries, or associated deep infiltrative endometriosis. Online supplemental material is available for this article. ©RSNA, 2021.
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