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Enhancing Medical Imaging for Diagnosis and Treatment using Neuro Fuzzy Systems


Affiliations
1 Department of Computer Science and Engineering, Sri Eshwar College of Engineering, India
2 Department of Computer Science and Engineering, SNS College of Technology, India

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Cardiovascular diseases (CVDs) are a leading cause of mortality worldwide. Accurate and early diagnosis is critical for effective treatment. Traditional methods of medical imaging analysis often lack precision and efficiency. The challenge lies in enhancing the accuracy and efficiency of medical imaging analysis for CVD diagnosis using advanced computational methods. This study proposes a novel approach that integrates extreme learning machines (ELM) for feature extraction with neuro-fuzzy systems for classification. The ELMs efficiently extract relevant features from medical images, while the neuro-fuzzy systems classify these features with high accuracy. Experimental results demonstrate a significant improvement in diagnosis accuracy. The proposed method achieved a classification accuracy of 95.7%, sensitivity of 94.3%, and specificity of 96.2%. These results outperform several existing methods in terms of both accuracy and computational efficiency.

Keywords

Cardiovascular Disease, Medical Imaging, Extreme Learning Machines, Neuro-Fuzzy Systems, Feature Extraction
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  • Enhancing Medical Imaging for Diagnosis and Treatment using Neuro Fuzzy Systems

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Authors

H. Summia Parveen
Department of Computer Science and Engineering, Sri Eshwar College of Engineering, India
S. Karthik
Department of Computer Science and Engineering, SNS College of Technology, India
M.S. Kavitha
Department of Computer Science and Engineering, SNS College of Technology, India
R. Sabitha
Department of Computer Science and Engineering, SNS College of Technology, India

Abstract


Cardiovascular diseases (CVDs) are a leading cause of mortality worldwide. Accurate and early diagnosis is critical for effective treatment. Traditional methods of medical imaging analysis often lack precision and efficiency. The challenge lies in enhancing the accuracy and efficiency of medical imaging analysis for CVD diagnosis using advanced computational methods. This study proposes a novel approach that integrates extreme learning machines (ELM) for feature extraction with neuro-fuzzy systems for classification. The ELMs efficiently extract relevant features from medical images, while the neuro-fuzzy systems classify these features with high accuracy. Experimental results demonstrate a significant improvement in diagnosis accuracy. The proposed method achieved a classification accuracy of 95.7%, sensitivity of 94.3%, and specificity of 96.2%. These results outperform several existing methods in terms of both accuracy and computational efficiency.

Keywords


Cardiovascular Disease, Medical Imaging, Extreme Learning Machines, Neuro-Fuzzy Systems, Feature Extraction