Bioinformatic Analysis of Complex In Vitro Fertilization Data and Predictive Model Design Based on Machine Learning: The Age Paradox in Reproductive Health.

IF 3.6 3区 生物学 Q1 BIOLOGY
Myrto A Lantzi, Eleni Papakonstantinou, Dimitrios Vlachakis
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Abstract

Since its inception in 1987, in vitro fertilization (IVF) has constituted a significant medical achievement in the field of fertility treatment, offering a viable solution to the challenge of infertility. The continuous evolution of assisted reproductive technology (ART) has brought its relationship with the rapidly developing field of artificial intelligence (AI), in particular with techniques such as machine learning (ML), a rapidly evolving area of specialization. In fact, it is responsible for significant developments in the field of precision medicine, as well as in preventive and predictive medicine. The analysis focuses on a large volume of clinical data and patient characteristics of those who underwent assisted reproduction treatments. Concurrently, the utilization of machine learning algorithms has facilitated the development and implementation of predictive models. The objective is to predict the success of treatments for external fertilization based on processed clinical data. This study encompasses statistical analysis techniques and artificial intelligence algorithms for the correlation of variables, such as patient characteristics, the history of pregnancies, and the clinical and embryological parameters. The analysis and creation of prognostic models were compared with the objective of identifying factors that influence the outcome of IVF treatments. The potential for implementing a predictive model in routine clinical practice was also investigated. The findings revealed trends and factors that warrant attention. Such findings may prompt questions regarding the impact of the patient's age on treatment efficacy. Moreover, the value of developing a predictive model based entirely on patient data prior to the commencement of treatment was also investigated. This approach to the processing and utilization of clinical data demonstrates the potential for optimization and documentation of therapeutic procedures. The objective is to reduce costs and the emotional burden while increasing the success rate of IVF treatments.

复杂体外受精数据的生物信息学分析和基于机器学习的预测模型设计:生殖健康中的年龄悖论。
自1987年开始以来,体外受精(IVF)在生育治疗领域取得了重大的医学成就,为不孕症的挑战提供了可行的解决方案。辅助生殖技术(ART)的不断发展使其与快速发展的人工智能(AI)领域,特别是机器学习(ML)等技术,这是一个快速发展的专业领域的关系。事实上,它对精准医学领域以及预防和预测医学领域的重大发展负有责任。该分析侧重于大量临床数据和接受辅助生殖治疗的患者特征。同时,机器学习算法的使用促进了预测模型的开发和实现。目的是根据处理后的临床数据预测体外受精治疗的成功。这项研究包括统计分析技术和人工智能算法,用于变量的相关性,如患者特征、妊娠史、临床和胚胎学参数。预后模型的分析和创建与确定影响IVF治疗结果的因素的目标进行了比较。在常规临床实践中实施预测模型的可能性也进行了研究。调查结果揭示了值得关注的趋势和因素。这些发现可能会引发关于患者年龄对治疗效果影响的问题。此外,还研究了在开始治疗之前完全基于患者数据开发预测模型的价值。这种处理和利用临床数据的方法显示了优化和记录治疗程序的潜力。目的是在提高体外受精治疗成功率的同时降低成本和情感负担。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biology-Basel
Biology-Basel Biological Science-Biological Science
CiteScore
5.70
自引率
4.80%
发文量
1618
审稿时长
11 weeks
期刊介绍: Biology (ISSN 2079-7737) is an international, peer-reviewed, quick-refereeing open access journal of Biological Science published by MDPI online. It publishes reviews, research papers and communications in all areas of biology and at the interface of related disciplines. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Electronic files regarding the full details of the experimental procedure, if unable to be published in a normal way, can be deposited as supplementary material.
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