AI Model Developed Using Machine Learning for Predicting Sperm Retrieval in Micro-TESE for Nonobstructive Azoospermia Patients

IF 2.1 4区 医学 Q3 ANDROLOGY
Andrologia Pub Date : 2023-12-08 DOI:10.1155/2023/5693116
Hideyuki Kobayashi, Masato Uetani, Fumito Yamabe, Yozo Mitsui, Koichi Nakajima, Koichi Nagao
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引用次数: 0

Abstract

Azoospermia is a severe problem that prevents couples from having their own children through natural pregnancy. In nonobstructive azoospermia (NOA), microdissection testicular sperm extraction (micro-TESE) is required to collect sperm and, at 40%–60%, the sperm retrieval success rate is not very high. Previous studies identified no single clinical finding or investigation that could accurately predict the outcome of sperm retrieval. It would be very valuable to have a factor for predicting the possibility of sperm retrieval in patients with NOA before performing micro-TESE. We retrospectively obtained data from the medical records of 430 patients who underwent micro-TESE from 2011 to 2020. Parameters extracted were age, height, body weight, body mass index, luteal hormone, follicle-stimulating hormone, PRL, total testosterone, E2, T/E2, sperm retrieval, G-band, AZF, medical history, Rt testis, and Lt testis. Prediction One, which does not require coding, was used to create the AI prediction model for sperm retrieval. Prediction One makes the best prediction model using an artificial neural network with internal cross-validation. Prediction One also evaluates the “importance of variables” using a method based on permutation feature importance. The AUC for the AI model was 0.7246, which is acceptable. In addition, among the variables, T/E2 ratios contributed most to predicting whether sperm retrieval was possible or not. However, the difference in T/E2 between successful and unsuccessful sperm retrieval was not statistically significant. In addition, our analysis of data from 20 patients who underwent micro-TESE in 2021 found that in 85%, the actual result matched the result predicted using our novel AI model. We created an AI model for predicting sperm retrieval in patients with NOA before undergoing micro-TESE. In addition, we found that T/E2 ratios contributed most to predicting possibility of sperm retrieval in NOA using machine learning.

Abstract Image

利用机器学习开发人工智能模型,预测非梗阻性无精子症患者显微取精术(Micro-TESE)的取精率
无精子症是一个严重的问题,使夫妇无法通过自然怀孕生育自己的孩子。在非阻塞性无精子症(NOA)中,需要显微解剖睾丸精子提取(micro-TESE)来收集精子,在40%-60%之间,精子提取成功率不是很高。以前的研究没有发现单一的临床发现或调查可以准确地预测精子提取的结果。对NOA患者在进行显微tese手术前预测精子恢复的可能性具有重要意义。我们回顾性地获得了2011年至2020年期间430例微创tese患者的医疗记录数据。提取的参数包括年龄、身高、体重、体重指数、黄体激素、促卵泡激素、PRL、总睾酮、E2、T/E2、精子回收、g带、AZF、病史、Rt睾丸、Lt睾丸。“预测1”不需要编码,用于创建人工智能精子提取预测模型。预测一使用具有内部交叉验证的人工神经网络做出最佳预测模型。预测一还使用基于排列特征重要性的方法来评估“变量的重要性”。AI模型的AUC为0.7246,可以接受。此外,在这些变量中,T/E2比值对预测精子是否可能回收贡献最大。然而,T/E2在成功和不成功精子提取之间的差异无统计学意义。此外,我们对2021年接受微型tese的20名患者的数据进行了分析,发现85%的患者的实际结果与使用我们的新型人工智能模型预测的结果相匹配。我们创建了一个人工智能模型,用于预测NOA患者在接受显微tese手术前的精子恢复。此外,我们发现T/E2比率对使用机器学习预测NOA中精子恢复的可能性贡献最大。
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来源期刊
Andrologia
Andrologia 医学-男科学
CiteScore
5.60
自引率
8.30%
发文量
292
审稿时长
6 months
期刊介绍: Andrologia provides an international forum for original papers on the current clinical, morphological, biochemical, and experimental status of organic male infertility and sexual disorders in men. The articles inform on the whole process of advances in andrology (including the aging male), from fundamental research to therapeutic developments worldwide. First published in 1969 and the first international journal of andrology, it is a well established journal in this expanding area of reproductive medicine.
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