TY - JOUR T1 - Enhancing Mammography Images with Artificial Intelligence to Improve Radiological Diagnosis in Breast Cancer TT - Enhancing Mammography Images with Artificial Intelligence to Improve Radiological Diagnosis in Breast Cancer AU - Gül, Fatih AU - Uçar, Muhammed AU - Hürsoy, Nur PY - 2025 DA - January Y2 - 2024 DO - 10.34248/bsengineering.1535503 JF - Black Sea Journal of Engineering and Science JO - BSJ Eng. Sci. PB - Karyay Karadeniz Yayımcılık Ve Organizasyon Ticaret Limited Şirketi WT - DergiPark SN - 2619-8991 SP - 185 EP - 190 VL - 8 IS - 1 LA - en AB - Breast cancer is one of the most common types of cancer in women, and early diagnosis is life-saving. The aim of this study is to enhance the resolution of mammography images, thereby improving the contrast resolution, spatial resolution, and the detectability of calcifications, distortions, and opacities in the images. For this purpose, mammography images obtained from the open-access mini-MIAS dataset were used. Both the original dataset and the images processed with the CLAHE (Contrast Limited Adaptive Histogram Equalization) algorithm underwent resolution enhancement using the Stable Diffusion artificial intelligence system. The results were evaluated by an expert radiologist, and it was determined that the diagnostic quality of the images significantly increased. These improvements aim to support early diagnosis in breast cancer and enhance diagnostic accuracy. Additionally, the applicability and effectiveness of these methods were emphasized, and the potential benefits of resolution enhancement techniques in clinical practice were discussed. The results have the potential to allow for more detailed and accurate analysis of mammography images, thereby improving patient care and treatment planning. KW - Mammography KW - Image processing KW - Resolution enhancement KW - Artificial intelligence KW - Clahe algorithm N2 - Breast cancer is one of the most common types of cancer in women, and early diagnosis is life-saving. The aim of this study is to enhance the resolution of mammography images, thereby improving the contrast resolution, spatial resolution, and the detectability of calcifications, distortions, and opacities in the images. For this purpose, mammography images obtained from the open-access mini-MIAS dataset were used. Both the original dataset and the images processed with the CLAHE (Contrast Limited Adaptive Histogram Equalization) algorithm underwent resolution enhancement using the Stable Diffusion artificial intelligence system. The results were evaluated by an expert radiologist, and it was determined that the diagnostic quality of the images significantly increased. These improvements aim to support early diagnosis in breast cancer and enhance diagnostic accuracy. Additionally, the applicability and effectiveness of these methods were emphasized, and the potential benefits of resolution enhancement techniques in clinical practice were discussed. The results have the potential to allow for more detailed and accurate analysis of mammography images, thereby improving patient care and treatment planning. CR - Al-Najdawi, Nijad, Mariam Biltawi, Sara Tedmori. 2015. Mammogram image visual enhancement, mass segmentation and classification. Applied Soft Comput, 35: 175–85. doi:10.1016/J.ASOC.2015.06.029 CR - Avcı, Hanife, Jale Karakaya. 2023. A novel medical image enhancement algorithm for breast cancer detection on mammography images using machine learning. Diagnostics, 13(3): 348. doi:10.3390/DIAGNOSTICS13030348 CR - Besl, Paul J, Ramesh C Jain. 1988. Segmentation through variable-order surface fitting. 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