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Book ChapterDOI

Comparative Study of Machine Learning Approaches for Heart Transplantation

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TLDR
This study provides basic guidelines on machine learning technique and the results provide an overview of machineLearning technique.
Abstract
Heart failure is a severe medical case, where the heart is not able to function properly to maintain blood flow. The surgical heart transplant procedure accomplished with the last stage of failure of the heart. Machine learning approaches account an ability to handle large datasets systematically and are extensively used in a biomedical research field. With the help of machine learning algorithms, tools are developed that helps specialist as a successful mechanism. The objective of this study is to learn different machine learning approaches for analyzing the heart transplantation dataset by using suitable classification algorithm. Also, the theoretical and the experimental comparative study of different machine learning techniques, using heart transplantation data. This study provides basic guidelines on machine learning technique. The results provide an overview of machine learning technique. We have used a WEKA machine learning software for evaluation and analysis to get an easy way to understand the result.

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References
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Journal ArticleDOI

Learning from Imbalanced Data

TL;DR: A critical review of the nature of the problem, the state-of-the-art technologies, and the current assessment metrics used to evaluate learning performance under the imbalanced learning scenario is provided.
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Artificial neural networks (the multilayer perceptron)—a review of applications in the atmospheric sciences

TL;DR: This paper presents a general introduction and discussion of recent applications of the multilayer perceptron, one type of artificial neural network, in the atmospheric sciences.

Handling imbalanced datasets: A review

TL;DR: This paper describes various techniques for handling imbalanced dataset problems, and hopes that the references cited will cover the major theoretical issues, guiding the researcher in interesting re- search directions and suggesting possible bias combinations that have yet to be explored.
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Empirical Study on Applications of Data Mining Techniques in Healthcare

TL;DR: The potential use of classification based data mining techniques such as Rule based, decision tree and Artificial Neural Network to massive volume of healthcare data is examined.
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Predicting the graft survival for heart–lung transplantation patients: An integrated data mining methodology

TL;DR: Data mining-based methodology proposed in this study reveals that there are undiscovered relationships among the survival-related variables, which helps better predict the survival of the heart-lung transplants.