O. Yavuz, A. Akdöner, Mehmet Eyüphan Özgozen, Begüm Ertan, Sefa Kurt, E. Ulukus, Mehmet Güney
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引用次数: 0
摘要
本研究旨在通过对子宫切除术患者子宫形态学声像图评估(MUSA)特征的修订定义来预测子宫腺肌症的诊断。研究分析了 2022 年 1 月至 2023 年 1 月期间接受子宫切除术的 196 例患者。研究采用了腺肌症方法的 MUSA 特征的修订定义来记录超声检查的直接和间接结果。根据组织病理学报告,病例被分为第 1 组(腺肌症;n = 40,20.4%)和第 2 组(对照组;n = 156,79.6%)。球形子宫和不规则交界区是最具预测性的间接特征(分别为 p = 0.04 和 p = 0.03)。在所有间接特征中,球形子宫的预测性最高(p = 0.02)。本研究表明,使用修订后的 MUSA 特征定义,特征总数大于 4 的组合可实际用于评估子宫腺肌症。
Prediction of adenomyosis according to revised definitions of morphological uterus sonographic assessment features
This study aimed to predict the diagnosis of adenomyosis by revised definitions of morphological uterus sonographic assessment (MUSA) features in individuals who had hysterectomy.This was retrospective cohort research conducted at a tertiary facility. Between January 2022 and January 2023, 196 individuals who had hysterectomy were analyzed in the research. The revised definitions of MUSA features of the adenomyosis approach were used to record the direct and indirect results of the sonography. The cases were classified as Group 1 (adenomyosis; n = 40, 20.4%) and Group 2 (control; n = 156, 79.6%) according to histopathology reports.Hyperechogenic islands and echogenic subendometrial buds and lines were the most predictive direct features (p = 0.02). Globular uterus and irregular junctional zone were the most predictive indirect features (p = 0.04; p = 0.03, respectively). Among all indirect features, the globular uterus was the most predictive (p = 0.02). Total feature >4 was determined as the significant cutoff value to predict adenomyosis (p < 0.001).This study shows that combinations with a total number of features >4 can be practically used in the evaluation of adenomyosis using the revised definitions of MUSA features.