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Prediction of Liver Diseases by Using Few Machine Learning Based Approaches


Md. Shafiul Azam1, Aishe Rahman1, S. M. Hasan Sazzad Iqbal1, and Md. Toukir Ahmed1*


1Department of Computer Science and Engineering, Pabna University of Science and Technology (PUST), Pabna, Bangladesh.

*Correspondence: toukirahmedreal@gmail.com (Md. Toukir Ahmed, Lecturer, Department of Computer Science and Engineering, PUST, Pabna, Bangladesh).

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ABSTRACT

Advancement in medical science has always been one of the most vital aspects of the human race. With the progress in technology, the use of modern techniques and equipment is always imposed on treatment purposes. Nowadays, machine learning techniques have widely been used in medical science for assuring accuracy. In this work, we have constructed computational model building techniques for liver disease prediction accurately. We used some efficient classification algorithms: Random Forest, Perceptron, Decision Tree, K-Nearest Neighbors (KNN), and Support Vector Machine (SVM) for predicting liver diseases. Our works provide the implementation of hybrid model construction and comparative analysis for improving prediction performance. At first, classification algorithms are applied to the original liver patient datasets collected from the UCI repository. Then we analyzed features and tweaked to improve the performance of our predictor and made a comparative analysis among the classifiers. We examined that, KNN algorithm outperformed all other techniques with feature selection.


Keywords: Classification, Feature selection, Liver disease, Machine learning, and Performance metrics.


Citation: Azam MS, Rahman A, Iqbal SMHS, and Ahmed MT. (2020). Prediction of liver diseases by using few machine learning based approaches, Aust. J. Eng. Innov. Technol., 2(5), 85-90. 

https://doi.org/10.34104/ajeit.020.085090


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