2024
DOI: 10.1002/ima.70008
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YOLOv8 Outperforms Traditional CNN Models in Mammography Classification: Insights From a Multi‐Institutional Dataset

Erfan AkbarnezhadSany,
Hossein EntezariZarch,
Mohammad AlipoorKermani
et al.

Abstract: This study evaluates the efficacy of four deep learning methods—YOLOv8, VGG16, ResNet101, and EfficientNet—for classifying mammography images into normal, benign, and malignant categories using a large‐scale, multi‐institutional dataset. Each dataset was divided into training and testing groups with an 80%/20% split, ensuring that all examinations from the same patient were consistently allocated to the same split. The training set for the malignant class contained 10 220 images, the benign class 6086 images, … Show more

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