Abdol Hamid Pilevar

Work place: Department of Computer Engineering, Bu Ali Sina University Hamedan, Iran

E-mail: pilevar@basu.ac.ir

Website: https://www.researchgate.net/scientific-contributions/Abdol-Hamid-Pilevar-81589601

Research Interests: Speech Recognition, Image Processing, Natural Language Processing, Artificial Intelligence and Applications

Biography

Abdol Hamid Pilevar, Assistant professor in Computers Engineering Department, Bu Ali Sina University, Hamedan, Iran. He received his B.Sc. and MSc. degrees in Computer Systems from Florida Atlantic University, Florida, U.S.A. Dr. Pilevar received the PhD degree in Computer Science from the University of Mysore, Mysore, India in 2005. He was a Research Associate and Post-Doctoral Fellow at the Indian Institute of Science (Bangalore, India), and Mediscan Prenatal Diagnosis and Fetal Therapy Center (Chennai, India) in 2005-2006. His fields of interest include Medical Intelligence and Image Processing, 3D Modeling, and Speech and Natural Language Processing. He has published more than 60 articles in international and national journals, and conferences.

Author Articles
Mass Detection in Lung CT Images using Region Growing Segmentation and Decision Making based on Fuzzy Systems

By Hamid bagherieh Atiyeh Hashemi Abdol Hamid Pilevar

DOI: https://doi.org/10.5815/ijigsp.2014.01.01, Pub. Date: 8 Nov. 2013

Lung cancer is distinguished by presenting one of the highest incidences and one of the highest rates of mortality among all other types of cancers. Detecting and curing the disease in the early stages provides the patients with a high chance of survival. In order to help specialists in the search and recognition of the lung nodules in tomography images, a good number of research centers have been developed in computer-aided detection (CAD) systems for automating the procedures. This work aims at detecting lung nodules automatically through computerized tomography images. Accordingly, this article aim at presenting a method to improve the efficiency of the lung cancer diagnosis system, through proposing a region growing segmentation method to segment CT scan lung images and, then, cancer recognition by FIS (Fuzzy Inference System). 
The proposed method consists of three steps. The first step was pre-processing for enhancing contrast, removing noise, and pictures less corrupted by Linear-Filtering. In second step, the region growing segmentation method was used to segment the CT images. In third step, we have developed an expert system for decision making which differentiates between normal, benign, malignant or advanced abnormality findings. The FIS can be of great help in diagnosing any abnormality in the medical images.  This step was done by extracting the features such as area and color (gray values) and given to the FIS as input. This system utilizes fuzzy membership functions which can be stated in the form of if-then rules for finding the type of the abnormality. Finally, the analysis step will be discussed and the accuracy of the method will be determined. Our experiments show that the average sensitivity of the proposed method is more than 95%.

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Mass Detection in Lung CT Images Using Region Growing Segmentation and Decision Making Based on Fuzzy Inference System and Artificial Neural Network

By Atiyeh Hashemi Abdol Hamid Pilevar Reza Rafeh

DOI: https://doi.org/10.5815/ijigsp.2013.06.03, Pub. Date: 8 May 2013

Lung cancer is distinguished by presenting one of the highest incidences and one of the highest rates of mortality among all other types of cancers. Detecting and curing the disease in the early stages provides the patients with a high chance of survival. 
This work aims at detecting lung nodules automatically through computerized tomography (CT) image. Accordingly, this article aim at presenting a method to improve the efficiency of the lung cancer diagnosis system, through proposing a region growing segmentation method to segment CT scan lung images. Afterwards, cancer recognition are presenting by Fuzzy Inference System (FIS) for differentiating between malignant, benign and advanced lung nodules. In the following, this paper is testing the diagnostic performances of FIS system by using artificial neural networks (ANNs). Our experiments show that the average sensitivity of the proposed method is 95%.

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