Deep learning classification method for boar sperm morphology analysis
Alexandra Keller,
McKenna Maus,
Emma Keller
et al.
Abstract:BackgroundBoar semen quality emphasizes three major criteria: sperm concentration, motility, and morphology. Methods to analyze concentration and motility quickly and objectively readily exist, but few exist for analyzing morphology outside of subjective manual counting. Other vital factors for fertilization, like acrosome health, lack efficient detection methods due to limitations in detection by the human eye and costly biomarker analysis, which is rarely used in semen diagnostics.ObjectiveTo overcome these … Show more
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