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Machine-intelligence for developing a potent signature to predict ovarian response to tailor assisted reproduction technology

机译:用于开发有效签名的机器智能以预测卵巢反应裁缝辅助再现技术

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摘要

The prediction of poor ovarian response (POR) for stratified interference is a critical clinical issue that has received an increasing amount of recent concern. Anthropogenic diagnostic modes remain too simple for the handling of actual clinical complexity. Therefore, this study conducted extensive selection using models that were derived from a variety of machine learning algorithms, including random forest (RF), decision trees, eXtreme Gradient Boosting (XGBoost), support vector machine (SVM), and artificial neural networks (ANN) for the development of two models called the COS pre-launch model (CPLM) and the hCG pre-trigger model (HPTM) to assess POR based on different requirements. The results demonstrated that CPLM constructed using ANN achieved the highest AUC result of all the algorithms in COS pre-launch (AUC=0.859, C-index=0.87, good calibration), and HPTL constructed using random forest was found to be the most effective in hCG pre-trigger (AUC=0.903, C-index=0.90, good calibration). It is notable that CPLM and HPTM exhibited better performance than common clinical characteristics (0.895 [CPLM], and 0.903 [HPTM] in comparison to 0.824 [anti-Müllerian hormone (AMH)], and 0.799 [antral follicle count (AFC)]). Furthermore, variable importance figure elucidated the values of AMH, AFC, and E2 level and follicle number on hCG day, which provides important theoretical guidance and experimental data for further application. Generally, the CPLM and HPTM can offer effective POR prediction for patients who are receiving assisted reproduction technology (ART), and has great potential for guiding the clinical treatment of infertility.
机译:分层干扰的卵巢响应(POR)的预测是一个关键的临床问题,这些问题已获得越来越多的临名问题。人为诊断模式对于处理实际临床复杂性仍然太简单。因此,本研究通过源自各种机器学习算法的模型进行了广泛的选择,包括随机森林(RF),决策树,极端梯度升压(XGBoost),支持向量机(SVM)和人工神经网络(ANN )对于开发称为COS预启动模型(CPLM)和HCG预触发模型(HPTM)的模型的开发,以基于不同的要求评估POR。结果表明,使用ANN构建的CPLM实现了COS预发射(AUC = 0.859,C-Index = 0.87,良好校准)所有算法的最高AUC结果,并且发现使用随机森林构建的HPTL是最有效的在HCG预触发(AUC = 0.903,C-INDEX = 0.90,校准良好)中。值得注意的是,CPLM和HPTM与常见的临床特征(0.895 [CPLM]和0.903 [HPTM]相比表现出更好的性能,与0.824 [抗Müllerian激素(AMH)]和0.799 [嗜睡卵泡计数(AFC)]) 。此外,可变的重要性人物阐明了HCG Day上的AMH,AFC和E2水平和卵泡编号,为进一步应用提供了重要的理论指导和实验数据。通常,CPLM和HPTM可以为正在接受辅助生殖技术(艺术)的患者提供有效的POR预测,并且具有指导不孕症的临床治疗的潜力。

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