一种利用机器学习进行肝炎疾病诊断的系统方法。

IF 1.1 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Ravi Kumar Sachdeva, Priyanka Bathla, Pooja Rani, Vikas Solanki, Rakesh Ahuja
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引用次数: 8

摘要

肝炎是地球上最致命的疾病之一。机器学习方法可以根据一些特征来诊断肝炎疾病。在UCI数据集上,作者评估了不同分类器的性能,以制定肝炎疾病诊断的系统策略。使用的分类器有支持向量机、逻辑回归(LR)、k近邻和随机森林。分类器在没有类平衡的情况下使用,并与使用SMOTE策略的类平衡结合使用。比较了两项研究,不含类平衡的分类和有类平衡的分类在不同性能参数方面的差异。采用类平衡后,分类器的效率显著提高。带有SMOTE的LR提供了最高水平的准确度(93.18%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A systematic method for diagnosis of hepatitis disease using machine learning.

A systematic method for diagnosis of hepatitis disease using machine learning.

A systematic method for diagnosis of hepatitis disease using machine learning.

A systematic method for diagnosis of hepatitis disease using machine learning.

Hepatitis is among the deadliest diseases on the planet. Machine learning approaches can contribute toward diagnosing hepatitis disease based on a few characteristics. On the UCI dataset, authors assessed distinct classifiers' performance in order to develop a systematic strategy for hepatitis disease diagnosis. The classifiers used are support vector machine, logistic regression (LR), K-nearest neighbor, and random forest. The classifiers were employed without class balancing and in conjunction with class balancing using SMOTE strategy. Both studies, classification without class balancing and with class balancing, were compared in terms of different performance parameters. After adopting class balancing, the efficiency of classifiers improved significantly. LR with SMOTE provided the highest level of accuracy (93.18%).

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来源期刊
Innovations in Systems and Software Engineering
Innovations in Systems and Software Engineering COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
3.80
自引率
8.30%
发文量
75
期刊介绍: Innovations in Systems and Software Engineering: A NASA Journal addresses issues and innovations in Systems Engineering, Systems Integration, Software Engineering, Software Development and other related areas that are specifically of interest to NASA. The journal includes peer-reviewed world-class technical papers on topics of research, development and practice related to NASA''s missions and projects, topics of interest to NASA for future use, and topics describing problem areas for NASA together with potential solutions. Papers that do not address issues related to NASA are of course very welcome, provided that they address topics that NASA might like to consider for the future. Papers are solicited from NASA and government employees, contractors, NASA-supported academic and industrial partners, and non-NASA-supported academics and industrialists both in the USA and worldwide. The journal includes updates on NASA innovations, articles on NASA initiatives, papers looking at educational activities, and a State-of-the-Art section that gives an overview of specific topic areas in a comprehensive format written by an expert in the field.
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