[Establishment of a predictive nomogram for clinical pregnancy rate in patients with endometriosis undergoing fresh embryo transfer].

Q3 Medicine
S Pan, Y Li, Z Wu, Y Mao, C Wang
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引用次数: 0

Abstract

Objective: To establish a nomogram model for predicting clinical pregnancy rate in patients with endometriosis undergoing fresh embryo transfer.

Methods: We retrospectively collected the data of 464 endometriosis patients undergoing fresh embryo transfer, who were randomly divided into a training dataset (60%) and a testing dataset (40%). Using univariate analysis, multiple logistic regression analysis, and LASSO regression analysis, we identified the factors associated with the fresh transplantation pregnancy rate in these patients and developed a nomogram model for predicting the clinical pregnancy rate following fresh embryo transfer. We employed an integrated learning approach that combined GBM, XGBOOST, and MLP algorithms for optimization of the model performance through parameter adjustments.

Results: The clinical pregnancy rate following fresh embryo transfer was significantly influenced by female age, Gn initiation dose, number of assisted reproduction cycles, and number of embryos transferred. The variables included in the LASSO model selection included female age, FSH levels, duration and initial dose of Gn usage, number of assisted reproduction cycles, retrieved oocytes, embryos transferred, endometrial thickness on HCG day, and progesterone level on HCG day. The nomogram demonstrated an accuracy of 0.642 (95% CI: 0.605-0.679) in the training dataset and 0.652 (95% CI: 0.600-0.704) in the validation dataset. The predictive ability of the model was further improved using ensemble learning methods and achieved predicative accuracies of 0.725 (95% CI: 0.680-0.770) in the training dataset and 0.718 (95% CI: 0.675-0.761) in the validation dataset.

Conclusions: The established prediction model in this study can help in prediction of clinical pregnancy rates following fresh embryo transfer in patients with endometriosis.

[建立新鲜胚胎移植子宫内膜异位症患者临床妊娠率预测提名图]。
目的:建立预测新鲜胚胎移植子宫内膜异位症患者临床妊娠率的提名图模型:建立一个预测接受新鲜胚胎移植的子宫内膜异位症患者临床妊娠率的提名图模型:我们回顾性地收集了 464 名接受新鲜胚胎移植的子宫内膜异位症患者的数据,并将其随机分为训练数据集(60%)和测试数据集(40%)。通过单变量分析、多元逻辑回归分析和 LASSO 回归分析,我们确定了这些患者新鲜移植妊娠率的相关因素,并建立了一个用于预测新鲜胚胎移植后临床妊娠率的提名图模型。我们采用了一种综合学习方法,结合 GBM、XGBOOST 和 MLP 算法,通过调整参数来优化模型性能:结果:新鲜胚胎移植后的临床妊娠率受女性年龄、Gn起始剂量、辅助生殖周期数和移植胚胎数的显著影响。LASSO模型选择的变量包括女性年龄、FSH水平、Gn使用时间和初始剂量、辅助生殖周期次数、取回的卵母细胞、移植的胚胎、HCG日的子宫内膜厚度和HCG日的孕酮水平。该提名图在训练数据集中的准确率为 0.642(95% CI:0.605-0.679),在验证数据集中的准确率为 0.652(95% CI:0.600-0.704)。使用集合学习方法进一步提高了模型的预测能力,训练数据集的预测准确率为 0.725(95% CI:0.680-0.770),验证数据集的预测准确率为 0.718(95% CI:0.675-0.761):本研究建立的预测模型有助于预测子宫内膜异位症患者新鲜胚胎移植后的临床妊娠率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.50
自引率
0.00%
发文量
208
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