Abstract

In medical imaging, Computer Aided Diagnosis (CAD) is a rapidly growing dynamic area of research. In recent years, significant attempts are made for the enhancement of computer aided diagnosis applications because errors in medical diagnostic systems can result in seriously misleading medical treatments. Machine learning is important in Computer Aided Diagnosis. After using an easy equation, objects such as organs may not be indicated accurately. So, pattern recognition fundamentally involves learning from examples. In the field of bio-medical, pattern recognition and machine learning promise the improved accuracy of perception and diagnosis of disease. They also promote the objectivity of decision-making process. For the analysis of high-dimensional and multimodal bio-medical data, machine learning offers a worthy approach for making classy and automatic algorithms. This survey paper provides the comparative analysis of different machine learning algorithms for diagnosis of different diseases such as heart disease, diabetes disease, liver disease, dengue disease and hepatitis disease. It brings attention towards the suite of machine learning algorithms and tools that are used for the analysis of diseases and decision-making process accordingly.

Highlights

  • Artificial Intelligence can enable the computer to think

  • Significant attempts are made for the enhancement of computer aided diagnosis applications because errors in medical diagnostic systems can result in seriously misleading medical treatments

  • For the analysis of high-dimensional and multimodal bio-medical data, machine learning offers a worthy approach for making classy and automatic algorithms. This survey paper provides the comparative analysis of different machine learning algorithms for diagnosis of different diseases such as heart disease, diabetes disease, liver disease, dengue disease and hepatitis disease

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Summary

Introduction

Artificial Intelligence can enable the computer to think. Computer is made much more intelligent by AI. Unsupervised learning technique tries to find out the similarities between the input data and based on these similarities, un-supervised learning technique classify the data. Reinforcement learning is different from supervised learning in the sense that accurate input and output sets are not offered, nor suboptimal actions clearly précised. 6) Deep learning: This branch of machine learning is based on set of algorithms In data, these learning algorithms model high-level abstraction. The machine learning techniques discovers electronic health record that generally contains high dimensional patterns and multiple data sets. Machine learning algorithms are capable to manage huge number of data, to combine data from dissimilar resources, and to integrate the background information in the study [3]

Diagnosis of Diseases by Using Different Machine Learning Algorithms
Heart Disease
Diabetes Disease
Liver Disease
Dengue Disease
Hepatitis Disease
ID3 CART
Findings
Conclusion
Full Text
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