Zhang Meng, Ji Xiaohui, Hu Xinye, Zhu Yingying, Ma Haozhe, Xu Hua, La Xiaolin, Zhang Qingxue
Reproductive Medicine Center, Sun Yat-sen Memorial Hospital, Sun Yat-sen University, Guangzhou, China.
Guangdong Provincial Clinical Research Center for Obstetrical and Gynecological Diseases, Guangzhou, China.
Front Endocrinol (Lausanne). 2024 Feb 14;14:1280145. doi: 10.3389/fendo.2023.1280145. eCollection 2023.
This study focuses on the risk of early miscarriage in patients undergoing fertilization (IVF) or intracytoplasmic sperm injection (ICSI). These patients commonly experience heightened stress levels and may discontinue treatment due to emotional burdens associated with repeated failures. Despite the identification of numerous potential factors contributing to early miscarriage, there exists a research gap in integrating these factors into predictive models specifically for IVF/ICSI patients. The objective of this study is to develop a user-friendly nomogram that incorporates relevant risk factors to predict early miscarriage in IVF/ICSI patients. Through internal and external validation, the nomogram facilitates early identification of high-risk patients, supporting clinicians in making informed decisions.
A retrospective analysis was conducted on 20,322 first cycles out of 31,307 for IVF/ICSI treatment at Sun Yat-sen Memorial Hospital between January 2011 and December 2020. After excluding ineligible cycles, 6,724 first fresh cycles were included and randomly divided into a training dataset (n = 4,516) and an internal validation dataset (n = 2,208). An external dataset (n = 1,179) from another hospital was used for validation. Logistic and LASSO regression models identified risk factors, and a multivariable logistic regression constructed the nomogram. Model performance was evaluated using AUC, calibration curves, and decision curve analysis (DCA).
Significant risk factors for early miscarriage were identified, including female age, BMI, number of spontaneous abortions, number of induced abortions and medical abortions, basal FSH levels, endometrial thickness on hCG day, and number of good quality embryos. The predictive nomogram demonstrated good fit and discriminatory power, with AUC values of 0.660, 0.640, and 0.615 for the training, internal validation, and external validation datasets, respectively. Calibration curves showed good consistency with actual outcomes, and DCA confirmed the clinical usefulness. Subgroup analysis revealed variations; for the elder subgroup (age ≥35 years), female age, basal FSH levels, and number of available embryos were significant risk factors, while for the younger subgroup (age <35 years), female age, BMI, number of spontaneous abortions, and number of good quality embryos were significant.
Our study provides valuable insights into the impact factors of early miscarriage in both the general study population and specific age subgroups, offering practical recommendations for clinical practitioners. We have taken into account the significance of population differences and regional variations, ensuring the adaptability and relevance of our model across diverse populations. The user-friendly visualization of results and subgroup analysis further enhance the applicability and value of our research. These findings have significant implications for informed decision-making, allowing for individualized treatment strategies and the optimization of outcomes in IVF/ICSI patients.
本研究聚焦于接受体外受精(IVF)或卵胞浆内单精子注射(ICSI)的患者发生早期流产的风险。这些患者通常承受着较高的压力水平,可能因与反复失败相关的情感负担而中断治疗。尽管已识别出众多导致早期流产的潜在因素,但在将这些因素整合到专门针对IVF/ICSI患者的预测模型方面仍存在研究空白。本研究的目的是开发一种用户友好的列线图,纳入相关风险因素以预测IVF/ICSI患者的早期流产。通过内部和外部验证,该列线图有助于早期识别高危患者,支持临床医生做出明智决策。
对2011年1月至2020年12月期间在中山大学附属孙逸仙纪念医院进行的31307例IVF/ICSI治疗的20322个首次周期进行回顾性分析。排除不合格周期后,纳入6724个首次新鲜周期,并随机分为训练数据集(n = 4516)和内部验证数据集(n = 2208)。使用来自另一家医院的外部数据集(n = 1179)进行验证。通过逻辑回归和LASSO回归模型识别风险因素,并构建多变量逻辑回归列线图。使用AUC、校准曲线和决策曲线分析(DCA)评估模型性能。
确定了早期流产的显著风险因素,包括女性年龄、BMI、自然流产次数、人工流产和药物流产次数、基础FSH水平、hCG日的子宫内膜厚度以及优质胚胎数量。预测列线图显示出良好的拟合度和区分能力,训练、内部验证和外部验证数据集的AUC值分别为0.660、0.640和0.615。校准曲线与实际结果显示出良好的一致性,DCA证实了其临床实用性。亚组分析显示存在差异;对于年龄较大的亚组(年龄≥35岁),女性年龄、基础FSH水平和可用胚胎数量是显著风险因素,而对于年龄较小的亚组(年龄<35岁),女性年龄、BMI、自然流产次数和优质胚胎数量是显著因素。
我们的研究为一般研究人群和特定年龄亚组中早期流产的影响因素提供了有价值的见解,为临床医生提供了实用建议。我们考虑了人群差异和地区差异的重要性,确保了我们模型在不同人群中的适应性和相关性。结果的用户友好可视化和亚组分析进一步提高了我们研究的适用性和价值。这些发现对明智决策具有重要意义,有助于制定个体化治疗策略并优化IVF/ICSI患者的治疗结果。