基于移动平台的CNN网络在精子形态分类中的分析

Omer Lutfu Tortumlu, Hamza Osman Ilhan
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引用次数: 3

摘要

基于男性因素的不育症的诊断是通过实验室精液标本的评估来进行的。精液样本在精子浓度、形态和活力方面进行了研究。由于成本高,这些调查通常由专家使用显微镜进行,而不是使用基于计算机的系统。然而,人工观察也被称为视觉评估(VA),已经证明了显著的主观性,包括观察者内部和实验室之间的差异。在本研究中,我们在精子形态分类问题中测试了两个专门针对移动平台可能使用的CNN模型,以消除分析中的人为因素。在分析中,使用了三个著名的精子形态数据集,即HuSHeM, SMIDS和SCIAN-Morpho。由于所使用的数据集存在数据不平衡和稀缺性问题,因此提出了数据扩充和历元分析方法。
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The Analysis of Mobile Platform based CNN Networks in the Classification of Sperm Morphology
The diagnosis of male factor based infertility is performed by the evaluation of semen specimens in laboratories. Semen samples are investigated in terms of sperm concentration, morphology and motility. These investigations are generally performed manually by experts using microscopes instead of using computer based systems due to their high costs. However, manual observation also known as Visual Assessment (VA), has demonstrated significant subjectivity, including intra-observer and inter-laboratory variations. In this study, two CNN models especially for the possible usage in mobile platforms have been tested in the sperm morphology classification problem to eliminate the human factor in the analysis. In the analysis, three well-known sperm morphology data sets namely, HuSHeM, SMIDS and SCIAN-Morpho have been employed. Due to the data imbalance and scarcity problem of the utilized data sets, data augmentation and epoch analysis are also presented.
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