分割
卷积神经网络
计算机科学
精子
人工智能
图像分割
不育
深度学习
人工神经网络
电子显微照片
精液
模式识别(心理学)
生物
解剖
男科
医学
电子显微镜
怀孕
光学
遗传学
物理
作者
René Meléndez,César Beltrán,Rosario Medina-Rodríguez
标识
DOI:10.1109/cbms52027.2021.00084
摘要
Human infertility is considered a serious disease of the the reproductive system that affects more than 10% of couples worldwide,and more than 30% of reported cases are related to men. The crucial step in evaluating male in fertility is a semen analysis, highly dependent on sperm morphology. However,this analysis is done at the laboratory manually and depends mainly on the doctor’s experience. Besides,it is laborious, and there is also a high degree of interlaboratory variability in the results. This article proposes applying a specialized convolutional neural network architecture (U-Net),which focuses on the segmentation of sperm cells in micrographs to overcome these problems.The results showed high scores for the model segmentation metrics such as precisión (93%), IoU score (86%),and DICE score of 93%. Moreover,we can conclude that U-net architecture turned out to be a good option to carry out the segmentation of sperm cells.
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