2023
DOI: 10.3390/s23146613
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A Dual Architecture Fusion and AutoEncoder for Automatic Morphological Classification of Human Sperm

Muhammad Izzuddin Mahali,
Jenq-Shiou Leu,
Jeremie Theddy Darmawan
et al.

Abstract: Infertility has become a common problem in global health, and unsurprisingly, many couples need medical assistance to achieve reproduction. Many human behaviors can lead to infertility, which is none other than unhealthy sperm. The important thing is that assisted reproductive techniques require selecting healthy sperm. Hence, machine learning algorithms are presented as the subject of this research to effectively modernize and make accurate standards and decisions in classifying sperm. In this study, we devel… Show more

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Cited by 2 publications
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“…By conducting a weighted majority vote on CNN predictions, classification performance was significantly enhanced, achieving accuracy rates of 94% and 73.2% on the Human Sperm Head Morphology dataset (HuSHeM) and Sperm Morphology Image dataset (SCIAN-Morpho), respectively [ 14 ]. Mahali and colleagues [ 15 ] introduced a deep learning architecture utilizing the capabilities of Swin Transformer and MobileNetV3. The SwinMobile model effectively extracts essential features from sperm images and reduces noise, improving the accuracy of sperm morphology classification.…”
Section: Related Workmentioning
confidence: 99%
“…By conducting a weighted majority vote on CNN predictions, classification performance was significantly enhanced, achieving accuracy rates of 94% and 73.2% on the Human Sperm Head Morphology dataset (HuSHeM) and Sperm Morphology Image dataset (SCIAN-Morpho), respectively [ 14 ]. Mahali and colleagues [ 15 ] introduced a deep learning architecture utilizing the capabilities of Swin Transformer and MobileNetV3. The SwinMobile model effectively extracts essential features from sperm images and reduces noise, improving the accuracy of sperm morphology classification.…”
Section: Related Workmentioning
confidence: 99%