基于机器学习的中国大样本宫腔内人工授精临床妊娠预测模型的开发。

IF 3.2 3区 医学 Q2 GENETICS & HEREDITY
Jialin Wu, Tingting Li, Linan Xu, Lina Chen, Xiaoyan Liang, Aihua Lin, Wangjian Zhang, Rui Huang
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引用次数: 0

摘要

目的:本研究旨在评估随机森林(RF)模型在预测宫腔内人工授精(IUI)临床妊娠结局方面的有效性,并确定影响IUI妊娠的重要因素:结果:在我们的中国数据集中,共有11个变量被确定为与IUI临床妊娠相关的重要变量,其中包括8个女性变量(年龄、体重指数、不孕时间、既往流产和自然流产)、激素水平(抗穆勒氏管激素、卵泡刺激素、黄体生成素)和3个男性变量(吸烟、精液量和精子浓度)。基于射频的预测模型的接收者操作特征曲线下面积(AUC)为 0.716(95% 置信区间,0.6914-0.7406),准确率为 0.6081,灵敏度为 0.7113,特异性为 0.505。重要度分析表明,精液量是预测人工授精临床妊娠的最重要变量:基于机器学习的人工授精临床妊娠预测模型显示出了良好的预测效果,可以为选择人工授精治疗的目标不孕夫妇提供有效的指导工具,并确定哪些参数与人工授精临床妊娠最相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Development of a machine learning-based prediction model for clinical pregnancy of intrauterine insemination in a large Chinese population.

Development of a machine learning-based prediction model for clinical pregnancy of intrauterine insemination in a large Chinese population.

Purpose: This study aimed to evaluate the effectiveness of a random forest (RF) model in predicting clinical pregnancy outcomes from intrauterine insemination (IUI) and identifying significant factors affecting IUI pregnancy in a large Chinese population.

Methods: RESULTS: A total of 11 variables, including eight from female (age, body mass index, duration of infertility, prior miscarriage, and spontaneous abortion), hormone levels (anti-Müllerian hormone, follicle-stimulating hormone, luteinizing hormone), and three from male (smoking, semen volume, and sperm concentration), were identified as the significant variables associated with IUI clinical pregnancy in our Chinese dataset. The RF-based prediction model presents an area under the receiver operating characteristic curve (AUC) of 0.716 (95% confidence interval, 0.6914-0.7406), an accuracy rate of 0.6081, a sensitivity rate of 0.7113, and a specificity rate of 0.505. Importance analysis indicated that semen volume was the most vital variable in predicting IUI clinical pregnancy.

Conclusions: The machine learning-based IUI clinical pregnancy prediction model showed a promising predictive efficacy that could provide a potent tool to guide selecting targeted infertile couples beneficial from IUI treatment, and also identify which parameters are most relevant in IUI clinical pregnancy.

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来源期刊
CiteScore
5.70
自引率
9.70%
发文量
286
审稿时长
1 months
期刊介绍: The Journal of Assisted Reproduction and Genetics publishes cellular, molecular, genetic, and epigenetic discoveries advancing our understanding of the biology and underlying mechanisms from gametogenesis to offspring health. Special emphasis is placed on the practice and evolution of assisted reproduction technologies (ARTs) with reference to the diagnosis and management of diseases affecting fertility. Our goal is to educate our readership in the translation of basic and clinical discoveries made from human or relevant animal models to the safe and efficacious practice of human ARTs. The scientific rigor and ethical standards embraced by the JARG editorial team ensures a broad international base of expertise guiding the marriage of contemporary clinical research paradigms with basic science discovery. JARG publishes original papers, minireviews, case reports, and opinion pieces often combined into special topic issues that will educate clinicians and scientists with interests in the mechanisms of human development that bear on the treatment of infertility and emerging innovations in human ARTs. The guiding principles of male and female reproductive health impacting pre- and post-conceptional viability and developmental potential are emphasized within the purview of human reproductive health in current and future generations of our species. The journal is published in cooperation with the American Society for Reproductive Medicine, an organization of more than 8,000 physicians, researchers, nurses, technicians and other professionals dedicated to advancing knowledge and expertise in reproductive biology.
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