Özge E. C., İlhan H. O., Serbes G., Uzun H., Karaca A. C., Huner Yigit M.
LIFE-BASEL, cilt.16, sa.3, ss.1-24, 2026 (Scopus)
-
Yayın Türü:
Makale / Tam Makale
-
Cilt numarası:
16
Sayı:
3
-
Basım Tarihi:
2026
-
Doi Numarası:
10.3390/life16030438
-
Dergi Adı:
LIFE-BASEL
-
Derginin Tarandığı İndeksler:
Scopus, BIOSIS, Directory of Open Access Journals
-
Sayfa Sayıları:
ss.1-24
-
Yıldız Teknik Üniversitesi Adresli:
Evet
Özet
Sperm morphology is one of the most critical indicators of male fertility. This paper presents a deep learning-based approach to classify sperm cells into 18 morphological classes, including one normal and 17 abnormal types. Two state-of-the-art convolutional neural networks, EfficientNetV2-S and ResNet50V2, are employed and fine-tuned using a class-weighted loss function together with extensive data augmentation to improve generalization under class imbalance. Automatic mixed precision training is adopted to reduce memory consumption and accelerate the training process. An ensemble strategy is subsequently constructed by linearly fusing the logits of both architectures, where the fusion weight is optimized to maximize recall, precision, and overall F1-score. Experimental results show that the proposed ensemble achieves an overall accuracy of 70.94%, consistently outperforming the individual models. Sperm cells with pronounced structural abnormalities, such as PinHead and DoubleTail, are classified with high accuracy, whereas less visually distinctive defects result in comparatively lower performance. These findings demonstrate the potential of CNN-based ensemble models to provide consistent and reliable automated sperm morphology classification.