用机器学习揭示精子运动异质性。

IF 2.7
Andrés Aragón-Martínez
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引用次数: 0

摘要

计算机辅助精子分析(CASA)系统的数据管理对于理解精子运动是至关重要的。CASA系统通过跟踪单个精子细胞生成运动参数,生成原始数据作为精子坐标,形成精子轨迹构建的基础。这些参数和轨迹允许统计描述运动和识别精子异质性。CASA提供的大量信息使人工智能(AI)技术的应用能够解释其生物学意义。然而,CASA数据的类型和格式,无论是原始的还是浓缩的,都对使用传统统计方法进行分析提出了挑战。机器学习和深度学习的进步通过利用运动参数和轨迹表示来实现运动模式的自动分类和聚类,解决了这些限制。这些方法,包括监督和无监督学习,已被用于识别精子样本中的运动亚群,为精子动力学提供更深入的见解。开源工具和CASA系统通过为人工智能在精子活力分析中的应用提供可访问的平台,促进了这一进展。尽管机器学习在这一领域的应用仍然有限,但将casa衍生的数据与人工智能技术相结合,显示出自动化精子分类和识别运动模式、推进生殖生物学和生育能力评估的潜力。这项工作回顾了CASA数据的传统使用,分析约束,以及机器学习在增强对精子运动学异质性的理解方面的有前途的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unraveling sperm kinematic heterogeneity with machine learning.

The management of data from computer-aided sperm analysis (CASA) systems is crucial for understanding sperm motility. CASA systems generate motility parameters derived from tracking individual sperm cells, producing raw data as spermatozoa coordinates, which form the basis for sperm trajectory construction. These parameters and trajectories allow statistical descriptions of motility and identification of sperm heterogeneity. The substantial information provided by CASA enables the application of artificial intelligence (AI) techniques to interpret their biological significance. However, the type and format of CASA data, whether raw or condensed, pose challenges for analysis using conventional statistical methods. Advances in machine learning and deep learning have addressed these limitations by leveraging motility parameters and trajectory representations for automated classification and clustering of motility patterns. These methods, including supervised and unsupervised learning, have been employed to identify kinematic subpopulations within sperm samples, offering deeper insights into sperm dynamics. Open-source tools and CASA systems have facilitated this progress by providing accessible platforms for AI applications in sperm motility analysis. Although the use of machine learning in this field remains limited, integrating CASA-derived data with AI techniques shows potential for automating sperm classification and identifying motility patterns, advancing reproductive biology and fertility assessments. This work reviews the traditional use of CASA data, the analytical constraints, and the promising role of machine learning in enhancing the understanding of the heterogeneity of sperm kinematics.

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