Palaniappan Rajkumar, Sundaraj Kenneth, Sundaraj Sebastian, Huliraj N, Revadi S S
School of Electronics Engineering (SENSE), VIT University, Vellore 632014, Tamil Nadu, India.
Faculty of Electronic and Computer Engineering, Universiti Teknikal Malaysia Melaka (UTeM), Melaka, Malaysia.
Biomed Tech (Berl). 2018 Jul 26;63(4):383-394. doi: 10.1515/bmt-2016-0097.
Auscultation is a medical procedure used for the initial diagnosis and assessment of lung and heart diseases. From this perspective, we propose assessing the performance of the extreme learning machine (ELM) classifiers for the diagnosis of pulmonary pathology using breath sounds.
Energy and entropy features were extracted from the breath sound using the wavelet packet transform. The statistical significance of the extracted features was evaluated by one-way analysis of variance (ANOVA). The extracted features were inputted into the ELM classifier.
The maximum classification accuracies obtained for the conventional validation (CV) of the energy and entropy features were 97.36% and 98.37%, respectively, whereas the accuracies obtained for the cross validation (CRV) of the energy and entropy features were 96.80% and 97.91%, respectively. In addition, maximum classification accuracies of 98.25% and 99.25% were obtained for the CV and CRV of the ensemble features, respectively.
The results indicate that the classification accuracy obtained with the ensemble features was higher than those obtained with the energy and entropy features.
听诊是一种用于肺部和心脏疾病初步诊断与评估的医学检查方法。从这个角度出发,我们提议评估极限学习机(ELM)分类器利用呼吸音诊断肺部病变的性能。
使用小波包变换从呼吸音中提取能量和熵特征。通过单因素方差分析(ANOVA)评估提取特征的统计学意义。将提取的特征输入到ELM分类器中。
能量和熵特征的传统验证(CV)获得的最大分类准确率分别为97.36%和98.37%,而能量和熵特征的交叉验证(CRV)获得的准确率分别为96.80%和97.91%。此外,集成特征的CV和CRV分别获得了98.25%和99.25%的最大分类准确率。
结果表明,集成特征获得的分类准确率高于能量和熵特征获得的分类准确率。