Fr. 64.00

Image processing based diagnosis of thyroid abnormalities - Thyroid computed tomographic scans detector

English, German · Paperback / Softback

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Description

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This book is about the development of a tool by using Matlab module "Image Processing Toolkit". A rule based system has been proposed to aid the physicians in the diagnosis of thyroid abnormalities. This system is intended just to facilitate the physicians not replace them. The major contributions of this research are: A methodology to automatically diagnose of cold and hot spots nodules has been proposed. The size of lobes on the scan is calculated. The location of the nodule is determined; the location is given in terms of lobes. This book also give deep insight into methodology of how to develop any kind of application in Matlab. Dr Asma Haque and Muhammad Ali provides me excellent assistance and technical guidance for the completion of this work.

About the author










Rana Rehan Khalid was born in Pakistan, in January 1988. He is the researcher of Bioinformatics at Govt College University, Faisalabad. He has been worked as research assistant with an Australian Company. He has been worked as IT professional in a medical college. Now he is doing job as government educator at grade 16 in Kamalia.

Product details

Authors Muhammad Ali, Asm Haque, Asma Haque, Rana Reha Khalid, Rana Rehan Khalid, Muhammad Ali
Publisher LAP Lambert Academic Publishing
 
Languages English, German
Product format Paperback / Softback
Released 20.08.2012
 
EAN 9783659218750
ISBN 978-3-659-21875-0
No. of pages 76
Subjects Guides
Natural sciences, medicine, IT, technology > IT, data processing

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