Hybrid Deep Learning and Handcrafted Feature Fusion for Mammographic Breast Cancer Classification
Hybrid Deep Learning and Handcrafted Feature Fusion for Mammographic Breast Cancer Classification
Automated breast cancer classification from mammography remains a significant challenge due to subtle distinctions between benign and malignant tissue. In this work, we present a hybrid framework combining deep convolutional features from a ResNet-50 backbone with handcrafted descriptors and transformer-based embeddings. Using the CBIS-DDSM dataset, we benchmark our ResNet-50 baseline (AUC: 78.1%) and demonstrate that fusing handcrafted features with deep ResNet-50 and DINOv2 features improves AUC to 79.6% (setup d1), with a peak recall of 80.5% (setup d1) and highest F1 score of 67.4% (setup d1). Our experiments show that handcrafted features not only complement deep representations but also enhance performance beyond transformer-based embeddings. This hybrid fusion approach achieves results comparable to state-of-the-art methods while maintaining architectural simplicity and computational efficiency, making it a practical and effective solution for clinical decision support.
Maximilian Tschuchnig、Michael Gadermayr、Khalifa Djemal
医学研究方法肿瘤学计算技术、计算机技术
Maximilian Tschuchnig,Michael Gadermayr,Khalifa Djemal.Hybrid Deep Learning and Handcrafted Feature Fusion for Mammographic Breast Cancer Classification[EB/OL].(2025-07-26)[2025-08-10].https://arxiv.org/abs/2507.19843.点此复制
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