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A survey on application of machine learning in computer aided diagnosis.

Issue Abstract

Abstract
In this paper we have analyzed the usefulness of machine learning algorithm in the field of medical image analysis. Machine learning algorithms are very promising techniques and they are very successful in analyzing the data. As the amount and types of image generated in healthcare industry is growing very fast various machine learning algorithm are used to analyze the image and decide treatment of the patient. In this article I have tried to analyze the role of machine learning algorithm in the field of health care. Although different models are used neural network is most popular of those. It has to be customized according to the requirement of the problem.

 Keywords: Medical image analysis, machine learning, deep learning


Author Information
E. Abhuday Tripathi
Issue No
9
Volume No
2
Issue Publish Date
05 Sep 2022
Issue Pages
1-7

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