COMPARITIVE ANALYSIS OF LUNG DISEASE DETECTION USING DEEP LEARNING MODELS

Authors

  • Dr.Syed Abdul Sattar
  • d Khaleel Ahmed

DOI:

https://doi.org/10.46243/jst.2021.v6.i05.pp153-158

Keywords:

Radiologists, Lung Diseases, Deep Learning Models, Early Diagnosis, X-Ray.

Abstract

Now a days for identifying or predict any diseases on human beings, we should have proper diagnosis for predicting the disease which is present in that human body. In general for prediction of diseases we try to use either X-Ray, CT or MRI scan techniques for taking decision on that appropriate disease. In general medical person need complete knowledge on that appropriate domain to find out the abnormality which is present in human beings. As we all know that India tops the world for having more deaths due to lung diseases. After the second highest cause of deaths in India due to heart disease, this ling disease is one which is increasing its rank more and more. In order to reduce that problem early diagnosis and treatment of lung diseases is critical to prevent complications including death. Normally for finding the abnormality present in lung, chest X-ray is playing very important role to detect the complete information about the lungs. In this current article we try to present an effective way for expert diagnosis of lung diseases using deep learning models. It focuses on creating a system for assistance of Radiologists in detection of lung diseases. This will especially benefit rural areas where radiologists aren’t easily available. We use two models like Vgg16 and Vgg19 for predicting the lung disease from chest X ray images and then tell which model gives high accuracy and performance. We conclude by discussing research obstacles, emerging trends, and possible future directions for improving some more advancement.

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Published

2021-09-01

How to Cite

Dr.Syed Abdul Sattar, & d Khaleel Ahmed. (2021). COMPARITIVE ANALYSIS OF LUNG DISEASE DETECTION USING DEEP LEARNING MODELS. Journal of Science & Technology (JST), 6(5), 153–158. https://doi.org/10.46243/jst.2021.v6.i05.pp153-158