Iqbal Imran, Mustafa Ghulam, Ma Jinwen
Department of Information and Computational Sciences, School of Mathematical Sciences and LMAM, Peking University, Beijing 100871, China.
Department of Biomedical Engineering, College of Engineering, Peking University, Beijing 100871, China.
Diagnostics (Basel). 2020 May 20;10(5):325. doi: 10.3390/diagnostics10050325.
Human infertility is considered as a serious disease of the reproductive system that affects more than 10% of couples across the globe and over 30% of the reported cases are related to men. The crucial step in the assessment of male infertility and subfertility is semen analysis that strongly depends on the sperm head morphology, i.e., the shape and size of the head of a spermatozoon. However, in medical diagnosis, the morphology of the sperm head is determined manually, and heavily depends on the expertise of the clinician. Moreover, this assessment as well as the morphological classification of human sperm heads are laborious and non-repeatable, and there is also a high degree of inter and intra-laboratory variability in the results. In order to overcome these problems, we propose a specialized convolutional neural network (CNN) architecture to accurately classify human sperm heads based on sperm images. It is carefully designed with several layers, and multiple filter sizes, but fewer filters and parameters to improve efficiency and effectiveness. It is demonstrated that our proposed architecture outperforms state-of-the-art methods, exhibiting 88% recall on the SCIAN dataset in the total agreement setting and 95% recall on the HuSHeM dataset for the classification of human sperm heads. Our proposed method shows the potential of deep learning to surpass embryologists in terms of reliability, throughput, and accuracy.
人类不育被视为一种严重的生殖系统疾病,全球超过10%的夫妇受其影响,且报告病例中超过30%与男性有关。评估男性不育和生育力低下的关键步骤是精液分析,这在很大程度上取决于精子头部形态,即精子头部的形状和大小。然而,在医学诊断中,精子头部形态是由人工确定的,并且很大程度上依赖于临床医生的专业知识。此外,这种评估以及人类精子头部的形态分类既费力又不可重复,而且结果在实验室间和实验室内也存在高度变异性。为了克服这些问题,我们提出了一种专门的卷积神经网络(CNN)架构,用于基于精子图像准确分类人类精子头部。它经过精心设计,有多层结构和多种滤波器尺寸,但滤波器和参数较少,以提高效率和有效性。结果表明,我们提出的架构优于现有方法,在SCIAN数据集的完全一致设置下对人类精子头部分类的召回率为88%,在HuSHeM数据集上的召回率为95%。我们提出的方法显示了深度学习在可靠性、通量和准确性方面超越胚胎学家的潜力。