Manual and computer aided methods to perform semen analysis are time-consuming, requires extensive training and prone to human error. The use of classical machine learning and deep learning based methods using videos to perform semen analysis have yielded good results. The state-of-the-art method uses regular convolutional neural networks to perform quality assessments on a video of the provided sample. In this paper we propose an improved deep learning based approach using three-dimensional convolutional neural networks to predict sperm motility from microscopic videos of the semen sample. We make use of the VISEM dataset that consists of video and tabular data of semen samples collected from 85 participants. We were able to achieve good results from significantly less data points. Our models indicate that deep learning based automatic semen analysis may become a valuable and effective tool in fertility and IVF labs.
翻译:精液分析的手工和计算机辅助方法耗费时间,需要广泛培训,容易发生人为错误。使用古典机器学习和深层学习方法使用视频进行精液分析取得了良好结果。最先进的方法利用常规神经神经网络对提供的样本的视频进行质量评估。在本文中,我们建议采用更深层次的深层学习方法,使用三维共生神经网络来预测精子从精液样本的微层视频中流出。我们利用了VISEM数据集,其中包括从85名参与者那里收集的精液样本的视频和表格数据。我们从数据点少得多的地方取得了良好结果。我们的模型表明,基于深学习的自动精液分析可能成为肥力实验室和IVF实验室的一个宝贵而有效的工具。