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Classification and Segmentation of Mitotic Cells using Ant Colony Algorithm and TNM Classifier

R.G. Vidhya, T.S. Sasikala, Ayoobkhan Mohamed Uvaze Ahamed, Subair Ali Liayakath Ali Khan, Kamlesh Singh, M. Saratha

20222022 International Conference on Augmented Intelligence and Sustainable Systems (ICAISS)16 citationsDOI

Abstract

Breast cancer develops from breast tissue and leads to abnormally growing cells in the chest. Doctors usually look for tumors on a mammogram, and some mammograms contain abnormal macrocalcifications and microcalcifications when the image quality is very poor. The presence of these abnormal amounts of calcium deposits in the breast is a sign of early breast cancer and should never be ignored. The image quality should be of the highest quality for an accurate interpretation of this mammographic deposit. Proposed research work is ongoing, exploring other screening methods and the stages of breast cancer. Improved Adaptive Fuzzy C-Means (IAFCM), Ant Colony Algorithm (ACA), and TNM (The size of the breast tumour (T), adjacent lymph nodes and Metastasized methods are used which builds the proposed medical image processing systems into an efficient way. Modified Poisson Inverse Gradient, Metastasized classifier (MPIG) has been used for classification. More than 500 image modalities are involved in all of the approaches. Clinical practitioners who make decisions based on photographs are predicted to benefit from the findings of this study.

Topics & Concepts

Breast cancerArtificial intelligenceSegmentationComputer scienceAnt colony optimization algorithmsMammographyImage qualityMedicinePattern recognition (psychology)RadiologyCancerInternal medicineImage (mathematics)AI in cancer detectionBrain Tumor Detection and ClassificationAdvanced Image Fusion Techniques
Classification and Segmentation of Mitotic Cells using Ant Colony Algorithm and TNM Classifier | Litcius