人工智能无创PGTA

IF 3.5 2区 医学 Q1 OBSTETRICS & GYNECOLOGY Reproductive biomedicine online Pub Date : 2024-11-01 Epub Date: 2024-12-04 DOI:10.1016/j.rbmo.2024.104515
Dr. Marcos Meseguer
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引用次数: 0

摘要

人工智能(AI)在辅助生殖中的应用解决了不孕不育的复杂问题,这是一种影响相当大比例育龄人口的普遍情况。生殖医学的进步,以体外受精(IVF)和胞浆内精子显微注射(ICSI)等里程碑为标志,导致了辅助生殖技术(ART)的发展。虽然多胚胎移植(MET)传统上被用来增加怀孕机会,但它有风险。因此,对胚胎选择技术的兴趣迅速增加。采用延时技术的孵化器的引入使胚胎分析不影响培养条件,并涉及引入第一个胚胎选择算法。因此,开发和纳入人工智能方法是当前的挑战。本报告通过应用深度学习方法解决了胚胎学领域的现实挑战。最终目标是设计、开发和验证支持试管婴儿实验室日常工作的工具,最终提高辅助生殖诊所的成功率。解决任务的复杂性系统地增加,提供基于胚胎学的一致知识。具体目标包括用不同的方法解决具体任务和探索新的人工智能技术。任务包括受精、生存能力、质量和整倍体胚胎的预测。技术方法包括自动化、分割、监督对比学习和归纳迁移技术。这些发现为胚胎学领域做出了贡献,展示了创新人工智能方法的潜在应用。人工智能与精子选择过程的结合是近年来辅助生殖领域中探索最多的领域之一,并且已经开发了一些人工智能工具来根据其形态分析卵母细胞的质量。卵巢刺激也是辅助生殖领域的一个方向,可以借助人工智能来改进,并且在这个方向上有使用人工智能的研究。未来的目标是引入咨询和胚胎学实验室的持续整合,考虑到实际的临床条件,有助于提高辅助生殖诊所的成功率,并进一步探索非侵入性基因分析技术。
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NON-INVASIVE PGTA by AI
The application of artificial intelligence (AI) in assisted reproduction addresses the complex landscape of infertility, a prevalent condition affecting a significant percentage of the reproductive-age population. Advances in reproductive medicine, marked by milestones such as in vitro fertilization (IVF) and intracytoplasmic sperm microinjection (ICSI), have led to the development of assisted reproduction techniques (ART). While multiple embryo transfer (MET) has traditionally been employed to increase pregnancy chances, it carries risks. Therefore, embryo selection techniques have suffered a rapid increase in interest. The introduction of incubators with time-lapse technology allowed embryo analysis without disturbing culture conditions and involved the introduction of the first embryo selection algorithms. Consequently, developing and including AI approaches is the current challenge. This presentation addresses real-world challenges in the embryology field by applying deep learning methods. The final goal is to design, develop, and validate tools that support the daily routine in an IVF laboratory, ultimately improving success rates in assisted reproductive clinics. The complexity of the solved tasks increases systematically, providing consistent knowledge based on embryology. Specific goals involve solving concrete tasks with different methodologies and exploring novel AI techniques. The tasks include fecundation, viability, quality, and prediction of euploid embryos. The technical approaches encompass automation, segmentation, supervised contrastive learning, and inductive transfer techniques. The findings contribute to the field of embryology, showcasing potential applications of innovative AI methodologies. The incorporation of AI into the sperm selection process is one of the most explored areas in recent years within the field of assisted reproduction too and several AI-tools have been developed for analyzing oocyte quality according to its morphology. Ovarian stimulation is also one of the directions in the landscape of assisted reproduction which can be improved with the help of AI and there are studies in this direction using AI. Future goals introduce consistent integration into consultation and embryology laboratories, taking into account real clinical conditions, contributing to improved success rates in assisted reproduction clinics, and further exploring non-invasive techniques for genetic analysis.
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来源期刊
Reproductive biomedicine online
Reproductive biomedicine online 医学-妇产科学
CiteScore
7.20
自引率
7.50%
发文量
391
审稿时长
50 days
期刊介绍: Reproductive BioMedicine Online covers the formation, growth and differentiation of the human embryo. It is intended to bring to public attention new research on biological and clinical research on human reproduction and the human embryo including relevant studies on animals. It is published by a group of scientists and clinicians working in these fields of study. Its audience comprises researchers, clinicians, practitioners, academics and patients. Context: The period of human embryonic growth covered is between the formation of the primordial germ cells in the fetus until mid-pregnancy. High quality research on lower animals is included if it helps to clarify the human situation. Studies progressing to birth and later are published if they have a direct bearing on events in the earlier stages of pregnancy.
期刊最新文献
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