Optimizing the Hyperparameter Tuning of YOLOv5 for Breast Cancer Detection

dc.contributor.authorAnongnat Intasam
dc.contributor.authorYuttachon Promworn
dc.contributor.authorAniwat Juhong
dc.contributor.authorSomchai Thanasitthichai
dc.contributor.authorSirihattaya Khwayotha
dc.contributor.authorTitipon Jiranantanakorn
dc.contributor.authorSoonthorn Thawornwanchai
dc.contributor.authorWibool Piyawattanametha
dc.date.accessioned2026-05-08T19:17:28Z
dc.date.issued2023-6-1
dc.description.abstractThis research aims to find the best use optimizer for the task while reducing training time. We optimized the YOLOv5s model and focused on three optimizers, including the Stochastic Gradient Descent (SGD) optimizer, Adaptive Moment Estimation (Adam) optimizer, and Adam with Weight Decay Regularization (AdamW) optimizer. This research utilized 1,471 mammogram images from National Cancer Institute and Udonthani Cancer Hospital, Thailand. A dataset of mammograms was labeled into six classes, including Masses Benign, Masses Malignant, Calcifications Benign, Calcifications Malignant, Associated Features Benign, and Associated Features Malignant, to classify the results accurately. We found that the SGD optimizer outperformed the others, with a mean average precision (mAP) of 0.91, a precision of 0.92, a recall of 0.85, and the shortest training time of about 5.453 hr.
dc.identifier.doi10.1109/iceast58324.2023.10157611
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/16033
dc.subjectAI in cancer detection
dc.subjectRadiomics and Machine Learning in Medical Imaging
dc.subjectCOVID-19 diagnosis using AI
dc.titleOptimizing the Hyperparameter Tuning of YOLOv5 for Breast Cancer Detection
dc.typeArticle

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