Segmentation and Analysis of Cancer Cells in Blood Samples
Journal Title: Indian Journal of Computer Science and Engineering - Year 2015, Vol 6, Issue 5
Abstract
Blood cancer is an umbrella term for cancers that affect the blood, bone marrow and lymphatic system. Acute Lymphoblastic Leukemia (ALL) is one of the kinds of blood cancer which can be affected at any age in the humans. The analysis of peripheral blood samples is an important test in the procedures for the diagnosis of leukemia. In this paper the blood sample images are used and implementing a clustering algorithm for detection of the cancer cells. This paper also implements morphological operations and feature extraction techniques using MATLAB for the analysis of cancer cells in the images.
Authors and Affiliations
Arjun Nelikanti
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