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IJSTR >> Volume 9 - Issue 2, February 2020 Edition



International Journal of Scientific & Technology Research  
International Journal of Scientific & Technology Research

Website: http://www.ijstr.org

ISSN 2277-8616



A Profound Interpretation On Medical Image Classification Using Deep Neural Networks

[Full Text]

 

AUTHOR(S)

Sai Sudha Gadde ,Dr. K. V. D. Kiran

 

KEYWORDS

Deep Learning (DL), Neural Networks, Medical Image Classification, Convolution Neural Network (CNN)

 

ABSTRACT

Healthcare industry is in high priority compare to others, since people need an accurate, high quality of care and services regardless of cost. Symptomatic diseases have an influential impact on the continuum of care and on early diagnosis when it comes to screening, Diagnosis at a foregoing disease stage aid in patient prognosis and in Treatment Decisions. Deep learning algorithms, exceptionally convolution neural networks swiftly became a handpicked methodology to assay medical images in healthcare industry. This survey covers major Convolutional neural network architectures and we tried to include major deep learning concepts precise to medical image classification and various improvement to the field, also a brief overview provided on study of diabetic retinopathy from past three years. We confine with the prospectus of the nonce state-of-the-art, challenges and navigation for subsequent research.

 

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