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Partially spatially coherent digital holographic microscopy and machine learning for quantitative analysis of human spermatozoa under oxidative stress condition

机译:部分空间相干数字全息显微镜和机器学习用于氧化应激条件下人类精子的定量分析

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摘要

Semen quality assessed by sperm count and sperm cell characteristics such as morphology and motility, is considered to be the main determinant of men’s reproductive health. Therefore, sperm cell selection is vital in assisted reproductive technology (ART) used for the treatment of infertility. Conventional bright field optical microscopy is widely utilized for the imaging and selection of sperm cells based on the qualitative analysis by experienced clinicians. In this study, we report the development of a highly sensitive quantitative phase microscopy (QPM) using partially spatially coherent light source, which is a label-free, non-invasive and high-resolution technique to quantify various biophysical parameters. The partial spatial coherence nature of light source provides a significant improvement in spatial phase sensitivity and hence reconstruction of the phase of the entire sperm cell is demonstrated, which was otherwise not possible using highly spatially coherent light source. High sensitivity of the system enables quantitative phase imaging of the specimens having very low refractive index contrast with respect to the medium like tail of the sperm cells. Further, it also benefits with accurate quantification of 3D-morphological parameters of sperm cells which might be helpful in the infertility treatment. The quantitative analysis of more than 2500 sperm cells under hydrogen peroxide (H2O2) induced oxidative stress condition is demonstrated. It is further correlated with motility of sperm cell to study the effect of oxidative stress on healthy sperm cells. The results exhibit a decrease in the maximum phase values of the sperm head as well as decrease in the sperm cell’s motility with increasing oxidative stress, i.e., H2O2 concentration. Various morphological and texture parameters were extracted from the phase maps and subsequently support vector machine (SVM) based machine learning algorithm is employed for the classification of the control and the stressed sperms cells. The algorithm achieves an area under the receiver operator characteristic (ROC) curve of 89.93% based on the all morphological and texture parameters with a sensitivity of 91.18%. The proposed approach can be implemented for live sperm cells selection in ART procedure for the treatment of infertility.
机译:通过精子数量和精子细胞特征(如形态和运动性)评估的精液质量被认为是男性生殖健康的主要决定因素。因此,精子细胞的选择对于用于治疗不孕症的辅助生殖技术(ART)至关重要。基于经验丰富的临床医生的定性分析,传统的明场光学显微镜被广泛用于精子细胞的成像和选择。在这项研究中,我们报告了使用部分空间相干光源的高灵敏度定量相显微镜(QPM)的发展,该光源是一种无标签,无创且高分辨率的技术,可以量化各种生物物理参数。光源的部分空间相干性极大地改善了空间相位敏感性,因此证明了整个精子细胞相的重建,否则使用高度空间相干的光源是不可能的。该系统的高灵敏度能够对相对于像精子细胞尾巴这样的介质具有非常低的折射率对比的标本进行定量相位成像。此外,它还有助于准确定量精子细胞的3D形态学参数,这可能有助于治疗不育症。证明了在过氧化氢(H2O2)诱导的氧化应激条件下对2500多个精子细胞的定量分析。研究氧化应激对健康精子细胞的影响还与精子细胞的活力有关。结果表明,随着氧化应激(即H2O2浓度)的增加,精子头部的最大相位值降低,精子细胞的活力降低。从相图中提取各种形态学和质地参数,随后将基于支持向量机(SVM)的机器学习算法用于控制和受精精子细胞的分类。该算法基于所有形态和纹理参数,在接收器操作员特征(ROC)曲线下获得了89.93%的面积,灵敏度为91.18%。所提出的方法可以在ART程序中用于不育症治疗中的活精子细胞选择。

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