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Estimation of Sperm Concentration and Total Motility from Microscopic Videos of Human Semen Samples

机译:从人类精液样本的显微视频估计精子浓度和总运动力

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We present a method for automated analysis of human semen quality using microscopic video sequences of live semen samples. The videos are captured through an automated microscope at 400× magnification. In each video frame, objects of interest are extracted using image processing techniques. A deep convolution neural network (CNN) is used to distinguish between sperms and non-sperm objects. The frame-wise count of sperm cells is used to estimate the concentration of sperms in unit volume of semen. In each video, individual sperm cells are tracked across the frames using a predictive approach which handles collisions and occlusions well. Based on their computed trajectories, sperms are classified into progressively motile, nonprogressively motile and immotile types as per the WHO manual. In certain samples, due to various reasons, all visible objects drift in a certain direction. We present a method for identifying and compensating for the drift. Experimental results are presented on a set of more than 100 semen samples collected from a clinical laboratory. The results correlate well with existing accepted standard, SQA-V Gold for sperm concentration as well as motility parameters.
机译:我们提出了一种使用活精液样品的显微视频序列自动分析人类精液质量的方法。通过自动显微镜以400倍的放大倍率捕获视频。在每个视频帧中,使用图像处理技术提取感兴趣的对象。深度卷积神经网络(CNN)用于区分精子和非精子对象。精子细胞的逐帧计数用于估计精液单位体积中的精子浓度。在每个视频中,使用一种能够很好地处理碰撞和遮挡的预测方法,在整个帧中跟踪各个精子细胞。根据它们的计算轨迹,根据WHO手册,将精子分为渐进型,非渐进型和不动型。在某些样本中,由于各种原因,所有可见物体都向某个方向漂移。我们提出了一种识别和补偿漂移的方法。从临床实验室收集的一组100多个精液样品中给出了实验结果。结果与现有公认的精子浓度标准SQA-V Gold和运动参数高度相关。

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