医学
微波消融
子宫肌瘤
经皮
烧蚀
置信区间
超声波
外科
不利影响
放射科
内科学
作者
Jiajun Xia,Dengke Teng,Guoqing Sui,Qiang Luo,Yuanqiang Lin,Hui Wang
标识
DOI:10.1016/j.jmig.2022.12.013
摘要
To evaluate the effectiveness and safety of ultrasound-guided percutaneous microwave ablation (MWA) for a single uterine fibroid greater than 300 cm3.Retrospective observational study.China-Japan Union Hospital of Jilin University, China.Thirty-seven patients each with a single fibroid greater than 300 cm3 diagnosed by ultrasound and core needle biopsy.Ultrasound-guided percutaneous MWA.All patients were followed up for 12 months postoperatively to assess the postoperative lesion volume reduction rate, degree of symptomatic relief, improvements in quality of life, and occurrence of adverse events. All 37 patients met the criteria for complete ablation, and the lesion volume significantly decreased from 334.28 cm3 (95% confidence interval [CI] 326.75-366.73) preoperatively to 52.01 cm3 (95% CI, 46.95-74.69) at the 12-month follow-up (difference: 280.15 cm3; 95% CI, 267.92-294.65; p <.001). The lesion volume reduction rates at 1, 3, 6, and 12 months postoperatively were 27.30% (95% CI, 24.12-31.45), 52.90% (95% CI, 47.95-55.80), 67.90% (95% CI, 63.03-70.77), and 84.00% (95% CI, 80.22-85.94), respectively. The differences in the preoperative and postoperative Uterine Fibroid Symptom and Health-Related Quality of Life Questionnaire scores were significant (p <.01). The hemoglobin levels of the anemic patients were significantly elevated after the procedure (p <.001). Of the 37 patients in this study, 29 patients (78.38%) had a highly significant treatment effect, and 8 patients (21.62%) had a significant treatment effect. Seventeen patients (45.95%) had Society of Interventional Radiology grade A to B adverse effects that required no clinical intervention or only simple clinical intervention.Ultrasound-guided percutaneous MWA has good clinical efficacy and high safety in the treatment of a single uterine fibroid greater than 300 cm3.
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