Civcik, LeventYilmaz, BurakOzbay, YukselEmlik, Ganime Dilek2020-03-262020-03-2620151300-06321303-6203https://dx.doi.org/10.3906/elk-1303-139https://hdl.handle.net/20.500.12395/31989Microcalcification detection is a very important issue in early diagnosis of breast cancer. Generally physicians use mammogram images for this task; however, sometimes analyzing these images become a hard task because of problems in images such as high brightness values, dense tissues, noise, and insufficient contrast level. In this paper, we present a novel technique for the task of microcalcification detection. This technique consists of three steps. The first step is focused on removing pectoral muscle and unnecessary parts from the mammogram images by using cellular neural networks (CNNs), which makes this a novel process. In the second step, we present a novel image enhancement technique focused on enhancing lesion intensities called the automated lesion intensity enhancer (ALIE). In the third step, we use a special CNN structure, named multistable CNNs. After applying the combination of these methods on the MIAS database, we achieve 82.0% accuracy, 90.9% sensitivity, and 52.2% specificity values.en10.3906/elk-1303-139info:eu-repo/semantics/openAccessMammogrammicrocalcificationcellular neural networksimage processingimage enhancementautomated lesion intensity enhancerpectoral muscleDetection of microcalcification in digitized mammograms with multistable cellular neural networks using a new image enhancement method: automated lesion intensity enhancer (ALIE)Article233853872Q3WOS:000352476800017Q4