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Blood smear analyzer for white blood cell counting: A hybrid microscopic image analyzing technique
Affiliation:1. Department of Computer Science and Engineering, RCC Institute of Information Technology, Kolkata 700015, India;2. Department of Computer Science and Engineering, Jadavpur University, Kolkata 700032, India;1. Key Laboratory of Polor Materials and Devices, East China Normal University, Shanghai 200241, China;2. Institutes for Advanced Interdisciplinary Research, East China Normal University, Shanghai 200062, China;3. Medical Center, Columbia University, New York, NY 10032, USA;4. Ruinjin Hospital, Shanghai 200021, China;1. Department of Electronics & Communication, Cochin University College of Engineering Kuttanad, Cochin University of Science And Technology, Pulincunnu P.O., Alappuzha District, Kerala State 688504, India;2. Department of Medical Lab Technology, School of Medical Education, Center for Professional and Advanced Studies, Gandhinagar P.O., Kottayam District, Kerala State 686008, India;1. Shanghai Key Laboratory of Multidimensional Information Processing, East China Normal University, Shanghai 200241, China;2. Engineering Center of SHMEC for Space Information and GNSS, Shanghai 200241, China
Abstract:Total count and differential count of leukocytes or white blood cells (WBC) in blood samples are very important pathological factors for diagnosing a disease. There are not enough pathological infrastructures in the remote places of India and other developing countries. The objective of this work is to design a system, compatible with telemedicine, for automatic calculation of the total count and differential count of WBC from the blood smear slides. Hemocytometer based WBC counting provides more accurate result than manual counting, but hemocytometer preparation process needs expertise. As this device is targeted for remote places, blood smear technique is adopted to reduce the overhead of the operator. In the proposed system, microscopic images of blood smear sample are processed to highlight the WBC for segmentation. Region segmentation procedure involves background scaling and redundant region elimination from the region set. After segmentation, the more accurate region boundary is restored by using gradient based region growing with neighbourhood influence. Individual regions are separately classified on the basis of shape, size, color and texture features independently using different fuzzy and non-fuzzy techniques. A final decision is taken by combining these classification results, which is a kind of hybridization. A set of rules has been generated for making final classification decision based on outputs from various classifiers. The sensitivity and specificity of the system are found to be 96.4% and 79.6%, respectively on a database of 150 blood smear slides collected from different health centres of Kolkata Municipal Corporation, Kolkata, India.
Keywords:Boundary derivative  Euclidean distance  Fuzzy classification  HSI color model  Region growing  Texture
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