A Comparative Study of Diagnosis of Lower Back Pain Based on Classification and Imaging Techniques

Mittal Desai
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Abstract

In this paper different classification methods are compared using base and meta (Combination of Multiple Classifier for training) level classifiers, for the fruitful diagnosis of Lower Back Pain. Radiology based different imaging techniques are also compared for diagnosing Lower Back Pain, like Computed Tomography (CT)  scan, Magnetic Resonance Imaging (MRI).  The Lower Back Pain becomes chronic with age, so needs to be correctly diagnose with symptoms in the early age. Five independent classifiers were implemented at base level and meta level. At meta level, five combinations of different classifiers were implemented, using voting technique. According to the scores, the overall classification using Naive Bayes and Multilayer Perceptron got the maximum efficiency 83.87%. The purpose of this paper is to diagnose healthy individuals efficiently. To carry out study the Lower Back Pain Symptoms Dataset is used from very famous platform for predictive modelling, Kaggle. The experiments were carried out in WEKA (Waikato Environment for Knowledge Analysis), suite of machine learning software [1].
基于分类和影像学技术诊断下背部疼痛的比较研究
本文比较了基本分类器和元分类器(combined of Multiple Classifier for training)两种不同分类方法对腰痛的诊断效果。基于不同成像技术的放射学诊断腰痛也进行了比较,如计算机断层扫描(CT)扫描,磁共振成像(MRI)。随着年龄的增长,腰痛会变成慢性的,所以需要在早期就有症状的正确诊断。在基级和元级分别实现了5个独立的分类器。在元水平上,使用投票技术实现了五种不同分类器的组合。从得分来看,使用朴素贝叶斯和多层感知机进行整体分类的效率最高,达到83.87%。本文的目的是有效地诊断健康个体。为了进行研究,我们使用了著名的预测建模平台Kaggle的下背部疼痛症状数据集。实验在机器学习软件WEKA (Waikato Environment for Knowledge Analysis)中进行[1]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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