气管切除术
医学
宫颈癌
保持生育能力
生育率
妊娠率
辅助生殖技术
怀孕
阶段(地层学)
产科
活产
妇科
癌症
不育
人口
内科学
古生物学
环境卫生
生物
遗传学
作者
Camran Nezhat,Robert A. Roman,Anupama Rambhatla,Farr Nezhat
标识
DOI:10.1016/j.fertnstert.2020.02.003
摘要
This review sought to evaluate the current literature on reproductive and oncologic outcomes after fertility-sparing surgery for early stage cervical cancer (stage IA1-IB1) including cold-knife conization/simple trachelectomy, vaginal radical trachelectomy, abdominal radical trachelectomy, and laparoscopic radical trachelectomy with or without robotic assistance. A systematic review using the preferred reporting items for systematic reviews and meta-analysis (PRISMA) checklist to evaluate the current literature on fertility-sparing surgery for early stage cervical cancer and its subsequent clinical pregnancy rate, reproductive outcomes, and cancer recurrence was performed. Sixty-five studies were included encompassing 3,044 patients who underwent fertility-sparing surgery, including 1,047 pregnancies with reported reproductive outcomes. The mean clinical pregnancy rate of patients trying to conceive was 55.4%, with the highest clinical pregnancy rate after vaginal radical trachelectomy (67.5%). The mean live-birth rate was 67.9% in our study. Twenty percent of pregnancies after fertility-sparing surgery required assisted reproductive technology. The mean cancer recurrence rate was 3.2%, and the cancer death rate was 0.6% after a median follow-up period of 39.7 months with no statistically significant difference across surgical approaches. Fertility-sparing surgery is a reasonable alternative to traditional radical hysterectomy for early-stage cervical cancer in women desiring fertility preservation. Vaginal radical trachelectomy had the highest clinical pregnancy rate, and minimally invasive approaches to fertility-sparing surgery had equivalent oncologic outcomes compared with an abdominal approach. The results of our study allow for appropriate patient counseling preoperatively and highlight the importance of a multidisciplinary approach to achieve the best outcomes for each patient.
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