Hybrid texture-deep feature fusion for mammogram classification: a patient-level, calibrated evaluation

Muhammad, Subali and Lulu, Mawaddah Wisudawati and Teresa, Teresa (2026) Hybrid texture-deep feature fusion for mammogram classification: a patient-level, calibrated evaluation. IAES International Journal of Artificial Intelligence (IJ-AI).

[thumbnail of 30025-67207-1-PB.pdf] Text
30025-67207-1-PB.pdf - Published Version

Download (1MB)

Abstract

We propose a lightweight computer-aided diagnosis (CAD) framework that fuses four sub-band discrete wavelet transform gray-level co-occurrence matrix (DWT–GLCM) texture features with fine-tuned ResNet-50 embeddings under a strict, patient-level, leak-free evaluation protocol. Experiments were conducted on two public datasets: mammographic image analysis society (MIAS)(normal vs. abnormal) and curated breast imaging subset of the digital database for screening mammography (CBIS-DDSM)(benign vs. malignant).Five-fold cross-validation(CV)was confined to the training portion, operating thresholds were fixed on the validation split to target high recall, and the held-out test set was evaluated once. Performance was assessed using accuracy, F1-score, receiver operating characteristic(ROC)-area under the curve (AUC)with bootstrap 95% confidence intervals(CI), precision-recall (PR)-AUC, and calibration metrics (Brier score, expected calibration error). The proposed fusion model achieved ROC-AUC on MIAS (0.992) and strong performance on CBIS-DDSM (0.896), with consistent PR characteristics. Calibration analysis indicated reliable probability estimates and clinically interpretable decisions at a 95% sensitivity operating point. Ablation experiments revealed substantial gains over texture-only baselines and parity with convolutional neural network (CNN)-only models, highlighting fusion as a simple yet well-calibrated alternative for screening-oriented workflows. This study underscores the necessity of patient-level evaluation, explicit operating-point selection, and calibration reporting to ensure clinically meaningful CAD performance in mammography.

Item Type: Article
Subjects: Q Science > Q Science (General)
Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Depositing User: Dr. Mohammad Subali
Date Deposited: 20 Apr 2026 00:42
Last Modified: 20 Apr 2026 00:42
URI: http://repository.uca.ac.id/id/eprint/16

Actions (login required)

View Item
View Item