Dual Channel Pulse Coupled Neural Network Algorithm for Fusion of Multimodality Brain Images with Quality Analysis

Background: In the review of medical imaging techniques, an important fact that emerged is that radiologists and physicians still are in a need of high-resolution medical images with complementary information from different modalities to ensure efficient analysis. This requirement should have been s...

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Main Authors: Kavitha SRINIVASAN, Thyagharajan KANDASWAMY KONDAMPATTI
Format: Article
Language:English
Published: Iuliu Hatieganu University of Medicine and Pharmacy, Cluj-Napoca 2014-09-01
Series:Applied Medical Informatics
Online Access:http://ami.info.umfcluj.ro/index.php/AMI/article/view/496
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spelling doaj-359cd448942b4ea9a4f922191568f2cd2020-11-25T01:56:46ZengIuliu Hatieganu University of Medicine and Pharmacy, Cluj-NapocaApplied Medical Informatics1224-55932067-78552014-09-013513139Dual Channel Pulse Coupled Neural Network Algorithm for Fusion of Multimodality Brain Images with Quality AnalysisKavitha SRINIVASAN0Thyagharajan KANDASWAMY KONDAMPATTI1Department of Computer Science and Engineering, SSN College of Engineering, Chennai - 603 110, India.Department of Electronics and Communication Engineering, RMD Engineering College, Chennai - 601 206, India.Background: In the review of medical imaging techniques, an important fact that emerged is that radiologists and physicians still are in a need of high-resolution medical images with complementary information from different modalities to ensure efficient analysis. This requirement should have been sorted out using fusion techniques with the fused image being used in image-guided surgery, image-guided radiotherapy and non-invasive diagnosis. Aim: This paper focuses on Dual Channel Pulse Coupled Neural Network (PCNN) Algorithm for fusion of multimodality brain images and the fused image is further analyzed using subjective (human perception) and objective (statistical) measures for the quality analysis. Material and Methods: The modalities used in fusion are CT, MRI with subtypes T1/T2/PD/GAD, PET and SPECT, since the information from each modality is complementary to one another. The objective measures selected for evaluation of fused image were: Information Entropy (IE) - image quality, Mutual Information (MI) – deviation in fused to the source images and Signal to Noise Ratio (SNR) – noise level, for analysis. Eight sets of brain images with different modalities (T2 with T1, T2 with CT, PD with T2, PD with GAD, T2 with GAD, T2 with SPECT-Tc, T2 with SPECT-Ti, T2 with PET) are chosen for experimental purpose and the proposed technique is compared with existing fusion methods such as the Average method, the Contrast pyramid, the Shift Invariant Discrete Wavelet Transform (SIDWT) with Harr and the Morphological pyramid, using the selected measures to ascertain relative performance. Results: The IE value and SNR value of the fused image derived from dual channel PCNN is higher than other fusion methods, shows that the quality is better with less noise. Conclusion: The fused image resulting from the proposed method retains the contrast, shape and texture as in source images without false information or information loss.http://ami.info.umfcluj.ro/index.php/AMI/article/view/496
collection DOAJ
language English
format Article
sources DOAJ
author Kavitha SRINIVASAN
Thyagharajan KANDASWAMY KONDAMPATTI
spellingShingle Kavitha SRINIVASAN
Thyagharajan KANDASWAMY KONDAMPATTI
Dual Channel Pulse Coupled Neural Network Algorithm for Fusion of Multimodality Brain Images with Quality Analysis
Applied Medical Informatics
author_facet Kavitha SRINIVASAN
Thyagharajan KANDASWAMY KONDAMPATTI
author_sort Kavitha SRINIVASAN
title Dual Channel Pulse Coupled Neural Network Algorithm for Fusion of Multimodality Brain Images with Quality Analysis
title_short Dual Channel Pulse Coupled Neural Network Algorithm for Fusion of Multimodality Brain Images with Quality Analysis
title_full Dual Channel Pulse Coupled Neural Network Algorithm for Fusion of Multimodality Brain Images with Quality Analysis
title_fullStr Dual Channel Pulse Coupled Neural Network Algorithm for Fusion of Multimodality Brain Images with Quality Analysis
title_full_unstemmed Dual Channel Pulse Coupled Neural Network Algorithm for Fusion of Multimodality Brain Images with Quality Analysis
title_sort dual channel pulse coupled neural network algorithm for fusion of multimodality brain images with quality analysis
publisher Iuliu Hatieganu University of Medicine and Pharmacy, Cluj-Napoca
series Applied Medical Informatics
issn 1224-5593
2067-7855
publishDate 2014-09-01
description Background: In the review of medical imaging techniques, an important fact that emerged is that radiologists and physicians still are in a need of high-resolution medical images with complementary information from different modalities to ensure efficient analysis. This requirement should have been sorted out using fusion techniques with the fused image being used in image-guided surgery, image-guided radiotherapy and non-invasive diagnosis. Aim: This paper focuses on Dual Channel Pulse Coupled Neural Network (PCNN) Algorithm for fusion of multimodality brain images and the fused image is further analyzed using subjective (human perception) and objective (statistical) measures for the quality analysis. Material and Methods: The modalities used in fusion are CT, MRI with subtypes T1/T2/PD/GAD, PET and SPECT, since the information from each modality is complementary to one another. The objective measures selected for evaluation of fused image were: Information Entropy (IE) - image quality, Mutual Information (MI) – deviation in fused to the source images and Signal to Noise Ratio (SNR) – noise level, for analysis. Eight sets of brain images with different modalities (T2 with T1, T2 with CT, PD with T2, PD with GAD, T2 with GAD, T2 with SPECT-Tc, T2 with SPECT-Ti, T2 with PET) are chosen for experimental purpose and the proposed technique is compared with existing fusion methods such as the Average method, the Contrast pyramid, the Shift Invariant Discrete Wavelet Transform (SIDWT) with Harr and the Morphological pyramid, using the selected measures to ascertain relative performance. Results: The IE value and SNR value of the fused image derived from dual channel PCNN is higher than other fusion methods, shows that the quality is better with less noise. Conclusion: The fused image resulting from the proposed method retains the contrast, shape and texture as in source images without false information or information loss.
url http://ami.info.umfcluj.ro/index.php/AMI/article/view/496
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AT thyagharajankandaswamykondampatti dualchannelpulsecoupledneuralnetworkalgorithmforfusionofmultimodalitybrainimageswithqualityanalysis
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