Breast Cancer Detection based on 3-D Mammography Images using Deep Learning Strategies

In recent scenario, women are suffering from breast cancer disease across the world. Mammography is one of the important methods to detect breast cancer early; that to reduce the cost and workload of radiologists. Medical image processing is a tremendous technique used to determine the disease in ad...

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Veröffentlicht in:Nashrīyah-i mudīrīyat-i fannāvarī-i iṭṭilāʻāt 2022-07, Vol.14 (4), p.2-18
Hauptverfasser: K. Martin Sagayam, A. Amir Anton Jone, Korhan Cengiz, L. Rajesh, Ahmed Elngar
Format: Artikel
Sprache:eng ; per
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Zusammenfassung:In recent scenario, women are suffering from breast cancer disease across the world. Mammography is one of the important methods to detect breast cancer early; that to reduce the cost and workload of radiologists. Medical image processing is a tremendous technique used to determine the disease in advance to reduce the risk factor. To predict the disease from 2-D mammography images for diagnosing and detecting based on advanced soft computing paradigm. Still, to get more accuracy in all coordinate axes, 3-D mammography imaging is used to capture depth information from all different angles. After the reconstruction of this process, a better quality of 3D mammography is obtained. It is useful for the experts to identify the disease in well advance. To improve the accuracy of disease findings, deep convolution neural networks (CNN) can be applied for automatic feature learning, and classifier building. This work also presents a comparison of the other state of art methods used in the last decades.
ISSN:2008-5893
2423-5059
DOI:10.22059/jitm.2022.88132