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An automatic classification method of testicular histopathology based on SC-YOLO framework.

Jinggen WuYao SunYangbo JiangYangcheng BuChong ChenJingping LiLejun LiWeikang ChenKeren ChengJian Xu
Published in: BioTechniques (2024)
The pathological diagnosis and treatment of azoospermia depend on precise identification of spermatogenic cells. Traditional methods are time-consuming and highly subjective due to complexity of Johnsen score, posing challenges for accurately diagnosing azoospermia. Here, we introduce a novel SC-YOLO framework for automating the classification of spermatogenic cells that integrates S3Ghost module, CoordAtt module and DCNv2 module, effectively capturing texture and shape features of spermatogenic cells while reducing model parameters. Furthermore, we propose a simplified Johnsen score criteria to expedite the diagnostic process. Our SC-YOLO framework presents the higher efficiency and accuracy of deep learning technology in spermatogenic cell recognition. Future research endeavors will focus on optimizing the model's performance and exploring its potential for clinical applications.
Keyphrases
  • deep learning
  • induced apoptosis
  • cell cycle arrest
  • machine learning
  • endoplasmic reticulum stress
  • cell death
  • artificial intelligence
  • computed tomography
  • magnetic resonance
  • depressive symptoms