University of North Carolina at Chapel Hill Nutrition Research Institute, Kannapolis, North Carolina, USA.
Department of Computer Science, University of North Carolina at Chapel Hill, Chapel Hill, North Carolina, USA.
Biol Reprod. 2017 Nov 1;97(5):698-708. doi: 10.1093/biolre/iox120.
The ability to accurately monitor alterations in sperm motility is paramount to understanding multiple genetic and biochemical perturbations impacting normal fertilization. Computer-aided sperm analysis (CASA) of human sperm typically reports motile percentage and kinematic parameters at the population level, and uses kinematic gating methods to identify subpopulations such as progressive or hyperactivated sperm. The goal of this study was to develop an automated method that classifies all patterns of human sperm motility during in vitro capacitation following the removal of seminal plasma. We visually classified CASA tracks of 2817 sperm from 18 individuals and used a support vector machine-based decision tree to compute four hyperplanes that separate five classes based on their kinematic parameters. We then developed a web-based program, CASAnova, which applies these equations sequentially to assign a single classification to each motile sperm. Vigorous sperm are classified as progressive, intermediate, or hyperactivated, and nonvigorous sperm as slow or weakly motile. This program correctly classifies sperm motility into one of five classes with an overall accuracy of 89.9%. Application of CASAnova to capacitating sperm populations showed a shift from predominantly linear patterns of motility at initial time points to more vigorous patterns, including hyperactivated motility, as capacitation proceeds. Both intermediate and hyperactivated motility patterns were largely eliminated when sperm were incubated in noncapacitating medium, demonstrating the sensitivity of this method. The five CASAnova classifications are distinctive and reflect kinetic parameters of washed human sperm, providing an accurate, quantitative, and high-throughput method for monitoring alterations in motility.
准确监测精子运动能力的变化对于理解影响正常受精的多种遗传和生化干扰至关重要。人类精子的计算机辅助分析(CASA)通常在群体水平上报告运动百分比和运动学参数,并使用运动学门控方法来识别亚群,如前向运动或超激活精子。本研究的目的是开发一种自动方法,在去除精液后,对体外获能过程中的所有人类精子运动模式进行分类。我们对 18 名个体的 2817 个精子的 CASA 轨迹进行了目视分类,并使用基于支持向量机的决策树计算了四个超平面,根据运动学参数将五个类分开。然后,我们开发了一个基于网络的程序,CASAnova,它依次应用这些方程来为每个运动精子分配一个单一的分类。活力强的精子被归类为前向运动、中间运动或超激活运动,非活力强的精子被归类为缓慢运动或弱运动。该程序以 89.9%的总体准确率将精子运动能力正确分类为五个类别之一。将 CASAnova 应用于获能的精子群体显示,随着获能的进行,运动模式从最初时间点的主要线性模式向更有力的模式转变,包括超激活运动。当精子在非获能培养基中孵育时,中间和超激活运动模式基本上都消失了,这表明了这种方法的敏感性。这五个 CASAnova 分类是独特的,反映了洗涤人类精子的动力学参数,为监测运动能力的变化提供了一种准确、定量和高通量的方法。