Suppr超能文献

如何估算一个或多个完整体外受精周期后活产的概率?单中心新型模型的开发。

How to estimate the probability of a live birth after one or more complete IVF cycles? the development of a novel model in a single-center.

作者信息

Kong Xiangyi, Liu Zhiqiang, Huang Chunyu, Hu Xiuyu, Mo Meilan, Zhang Hongzhan, Zeng Yong

机构信息

Reproductive Center of Shenzhen Zhongshan Obstetrics and Gynecology Hospital Formerly Reproductive Center of Shenzhen Zhongshan Urology Hospital, Shenzhen, Guangdong Province, China.

出版信息

BMC Pregnancy Childbirth. 2025 Jan 30;25(1):86. doi: 10.1186/s12884-024-07017-6.

Abstract

OBJECTIVE

To develop a predictive tool in the form of a Nomogram based on the Cox regression model, which incorporates the impact of the length of treatment cycles on the outcome of live birth, to evaluate the probability of infertile couples having a live birth after one or more complete cycles of In Vitro Fertilization (IVF), and to provide patients with a risk assessment that is easy to understand and visualize.

METHODS

A retrospective study for establishing a prediction model was conducted in the reproductive center of Shenzhen Zhongshan Obstetrics & Gynecology Hospital (formerly Shenzhen Zhongshan Urology Hospital). A total of 4413 patients who completed ovarian stimulation treatment and reached the trigger were involved. 70% of the patients were randomly placed into the training set (n = 3089) and the remaining 30% of the patients were placed into the validation set (n = 1324) randomly. Live birth rate (LBR) and cumulative LBR (CLBR) were calculated for one retrieval cycle and the subsequent five frozen embryo transfer (FET) cycles. Proportional Hazards (PH) Assumption test was used for selecting the parameter in the predictive model. A Cox regression model was built based on the basis of training set, and ROC curves were used to test the specificity and sensitivity of the prediction model. Subsequently, the validation set was applied to verify the validity of the model. Finally, for a more intuitive assessment of the CLBR more intuitively for clinicians and patients, a Nomogram model was established based on predictive model. By calculating the scores of the model, the clinicians could more effectively predict the probability for an individual patient to obtain at least one live birth.

RESULTS

In the fresh embryo transfer cycle, the LBR was 38.7%. In the first to fifth FET cycle, the optimal estimate and conservative estimate CLBRs were 59.95%, 65.41%, 66.35%, 66.58%, 66.61% and 56.81%, 60.84%, 61.50%, 61.66%, 61.68%, respectively. Based on PH test results, the potential predictive factors for live birth were insemination method, infertility factors, serum progesterone level (R = 0.043, p = 0.059), and luteinizing hormone level (R = 0.015, p = 0.499) on the day initiated with gonadotropin, basal follicle-stimulating hormone (R = -0.042, p = 0.069) and BMI (R = -0.035, p = 0.123). We used ROC curve to test the predictive power of the model. The AUC was 0.782 (p < 0.01, 95% CI: 0.764-0.801). Then the model was verified using the validation data. The AUC was 0.801 (p < 0.01, 95% CI: 0.774-0.828). A Nomogram model was built based on potential predictive factors that might influence the event of a live birth.

CONCLUSIONS

The Cox regression and Nomogram prediction models effectively predicted the probability of infertile couples having a live birth. Therefore, this model could assist clinicians with making clinical decisions and providing guidance for patients.

TRIAL REGISTRATION

N/A.

摘要

目的

基于Cox回归模型开发一种列线图形式的预测工具,纳入治疗周期长度对活产结局的影响,以评估不孕夫妇在一个或多个完整体外受精(IVF)周期后活产的概率,并为患者提供易于理解和可视化的风险评估。

方法

在深圳中山泌尿外科医院(现深圳中山妇产医院)生殖中心进行一项建立预测模型的回顾性研究。共纳入4413例完成卵巢刺激治疗并触发排卵的患者。70%的患者随机纳入训练集(n = 3089),其余30%的患者随机纳入验证集(n = 1324)。计算一个取卵周期及随后五个冻融胚胎移植(FET)周期的活产率(LBR)和累积活产率(CLBR)。采用比例风险(PH)假设检验选择预测模型中的参数。基于训练集建立Cox回归模型,并用ROC曲线检验预测模型的特异性和敏感性。随后,将验证集应用于验证模型的有效性。最后,为使临床医生和患者更直观地评估CLBR,基于预测模型建立列线图模型。通过计算模型得分,临床医生可以更有效地预测个体患者获得至少一次活产的概率。

结果

在新鲜胚胎移植周期中,LBR为38.7%。在第一个至第五个FET周期中,最佳估计和保守估计的CLBR分别为59.95%、65.41%、66.35%、66.58%、66.61%和56.81%、60.84%、61.50%、61.66%、61.68%。基于PH检验结果,活产的潜在预测因素为受精方式、不孕因素、促性腺激素启动日的血清孕酮水平(R = 0.043,p = 0.059)、黄体生成素水平(R = 0.015,p = 0.499)、基础卵泡刺激素(R = -0.042,p = 0.069)和BMI(R = -0.035,p = 0.123)。我们用ROC曲线检验模型的预测能力。AUC为0.782(p < 0.01,95%CI:0.764 - 0.801)。然后用验证数据验证模型。AUC为0.801(p < 0.01,95%CI:0.774 - 0.828)。基于可能影响活产事件的潜在预测因素建立列线图模型。

结论

Cox回归和列线图预测模型有效地预测了不孕夫妇活产的概率。因此,该模型可协助临床医生进行临床决策并为患者提供指导。

试验注册

无。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1982/11780784/ac515d8270bb/12884_2024_7017_Fig1_HTML.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验