阴道功率多普勒参数作为细胞质内精子注射结果的新预测指标

Zeinab Abbas, C. Fakih, Ali Saad, M. Ayache
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引用次数: 2

摘要

胞浆内精子注射(ICSI)是有不孕问题的夫妇生育孩子的最佳机会。ICSI治疗是昂贵的,有许多因素影响治疗的成功。本工作主要是利用(1)经典统计研究(即逻辑回归)和(2)人工智能(即神经网络)对ICSI治疗结果进行分类和预测。为此,数据是从真实患者中提取的。数据包括年龄、子宫内膜容受性、子宫内膜和子宫肌层血管指数、胚胎移植数量、移植日期和胚胎移植质量等参数。这些参数可能会影响ICSI治疗的结果。总体而言,逻辑回归预测ICSI结果输出的准确率为75%。在其他部分,神经网络在所有参数下的准确率为79.5%,仅在重要参数下的准确率为75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vaginal Power Doppler Parameters as New Predictors of Intra-Cytoplasmic Sperm Injection Outcome
Intra-Cytoplasmic Sperm Injection (ICSI) represents the best chance to have a baby for couples that have an infertility problem. ICSI treatment is expensive, and there are a number of factors affecting the success of the treatment. This work is mainly aimed to classify and predict the ICSI treatment results using (1) the classical statistical study, (i.e. logistic regression) and (2) the artificial intelligence (i.e. Neural Networks). For this purpose, data are extracted from real patients. The data contain parameters such as the age, the endometrial receptivity, the endometrial and myometrial vascularity index, number of embryo transfer, the day of transfer, and the quality of embryo transferred. These parameters may affect the result of the ICSI treatment. Overall, the logistic regression predicts the output of the ICSI outcome with an accuracy of 75%. In other parts, the neural network managed to achieve an accuracy of 79.5% with all parameters and 75% with only the significant parameters.
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