确定体外受精/卵胞浆内单精子注射治疗成功率预测模型有效因素的混合特征选择算法:横断面研究

IF 1.6 Q3 OBSTETRICS & GYNECOLOGY International Journal of Reproductive Biomedicine Pub Date : 2024-01-25 eCollection Date: 2023-12-01 DOI:10.18502/ijrm.v21i12.15038
Ameneh Mehrjerd, Hassan Rezaei, Saeid Eslami, Nayyere Khadem Ghaebi
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引用次数: 0

摘要

背景:先前的研究已经确定了影响体外受精或卵胞浆内单精子注射成功率的关键因素:以往的研究已经确定了影响体外受精或卵胞浆内单精子注射成功的关键因素,但缺乏适用于各种治疗的标准化方法仍是一项挑战:本研究旨在利用机器学习方法确定体外受精和卵胞浆内单精子注射治疗成功的主要预测因素:2016年11月至2017年3月期间,我们在伊朗马什哈德的2家不孕不育中心收集了734人的数据。在犹豫模糊集(HFS)的指导下,我们采用了特征选择方法来降低随机森林模型的维度。使用马修相关系数、运行时间、ACC、接收者工作特征曲线下面积、精确度或正预测值、召回率和 F 分数等机器学习指标评估,混合方法提高了预测者识别率和准确率(ACC),证明了结合特征选择方法的有效性:我们的混合特征选择方法表现出色,ACC(0.795)、接收者操作特征曲线下面积(0.72)和F-Score(0.8)最高,而只选择了7个特征。这些特征包括卵泡刺激素(FSH)、16Cells、FAge、卵母细胞、移植胚胎质量(GIII)、紧凑和不成功:我们在新方法中引入了 HFSs,以选择对预测不孕症成功率有影响的特征。通过使用多中心数据集,HFSs 根据标准之间的标准偏差减少了特征的数量,从而改进了特征选择。结果表明,在所选特征(包括 FSH、FAge、16Cells、卵母细胞、GIII 和紧凑型)方面,妊娠组和非妊娠组之间存在明显差异。我们还发现,FAge 与胎心率和临床妊娠率之间存在明显的相关性,剂量在 10-13 (mIU/ml) 之间的 FSH 水平最高(31.87%)。
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A hybrid feature selection algorithm to determine effective factors in predictive model of success rate for in vitro fertilization/intracytoplasmic sperm injection treatment: A cross-sectional study.

Background: Previous research has identified key factors affecting in vitro fertilization or intracytoplasmic sperm injection success, yet the lack of a standardized approach for various treatments remains a challenge.

Objective: The objective of this study is to utilize a machine learning approach to identify the principal predictors of success in in vitro fertilization and intracytoplasmic sperm injection treatments.

Materials and methods: We collected data from 734 individuals at 2 infertility centers in Mashhad, Iran between November 2016 and March 2017. We employed feature selection methods to reduce dimensionality in a random forest model, guided by hesitant fuzzy sets (HFSs). A hybrid approach enhanced predictor identification and accuracy (ACC), as assessed using machine learning metrics such as Matthew's correlation coefficient, runtime, ACC, area under the receiver operating characteristic curve, precision or positive predictive value, recall, and F-Score, demonstrating the effectiveness of combining feature selection methods.

Results: Our hybrid feature selection method excelled with the highest ACC (0.795), area under the receiver operating characteristic curve (0.72), and F-Score (0.8), while selecting only 7 features. These included follicle-stimulation hormone (FSH), 16Cells, FAge, oocytes, quality of transferred embryos (GIII), compact, and unsuccessful.

Conclusion: We introduced HFSs in our novel method to select influential features for predicting infertility success rates. Using a multi-center dataset, HFSs improved feature selection by reducing the number of features based on standard deviation among criteria. Results showed significant differences between pregnant and non-pregnant groups for selected features, including FSH, FAge, 16Cells, oocytes, GIII, and compact. We also found a significant correlation between FAge and fetal heart rate and clinical pregnancy rate, with the highest FSH level (31.87%) observed for doses ranging from 10-13 (mIU/ml).

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来源期刊
CiteScore
2.40
自引率
7.70%
发文量
93
审稿时长
16 weeks
期刊介绍: The International Journal of Reproductive BioMedicine (IJRM), formerly published as "Iranian Journal of Reproductive Medicine (ISSN: 1680-6433)", is an international monthly scientific journal for who treat and investigate problems of infertility and human reproductive disorders. This journal accepts Original Papers, Review Articles, Short Communications, Case Reports, Photo Clinics, and Letters to the Editor in the fields of fertility and infertility, ethical and social issues of assisted reproductive technologies, cellular and molecular biology of reproduction including the development of gametes and early embryos, assisted reproductive technologies in model system and in a clinical environment, reproductive endocrinology, andrology, epidemiology, pathology, genetics, oncology, surgery, psychology, and physiology. Emerging topics including cloning and stem cells are encouraged.
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