Title :
Performance comparison of heterogeneous classifiers for detection of Parkinson´s disease using voice disorder (dysphonia)
Author :
Islam, Md Shariful ; Parvez, Imtiaz ; Hai Deng ; Goswami, Parijat
Author_Institution :
Electr. & Comput. Eng., Florida Int. Univ., Miami, FL, USA
Abstract :
Speech signal processing and its recognition system have gained a lot of attention from last few years due to its widespread application. In this study, we have conducted a comparative analysis for effective detection of Parkinson´s disease using various machine learning classifiers from voice disorder known as dysphonia. To investigate robust detection process, three independent classifier topologies were applied to distinguish between PD patient and healthy individual, and to make a comparison of the results. The classifiers used here are Random Tree (RT), Support Vector Machine (SVM) and Feedforward Back-propagation based Artificial Neural Network (FBANN). To validate the overall classification with acceptable error rate, a 100 times repeated 10-fold cross validation analysis has been carried out for all classifiers. With optimized statistical parameters and using selective feature set, the proposed scheme has achieved up to 97.37% recognition accuracy. FBANN classifier outperformed than the others. Considering the classification accuracy, sensitivity, specificity and the area under the receiver operating characteristic (ROC) curve, all classifiers achieved better than chance level. The proposed modality and computational process may clinically effective, viable, noninvasive, powerful technique to develop decision support system (DSS) for remote diagnosis of neurodegenerative disorders at early stage with propitious results.
Keywords :
backpropagation; decision support systems; diseases; feedforward neural nets; medical disorders; medical signal detection; patient diagnosis; random processes; sensitivity analysis; signal classification; speech; speech processing; speech recognition; statistical analysis; support vector machines; 10-fold cross validation analysis; DSS; FBANN classifier; Feedforward Back-propagation based Artificial Neural Network; PD patient; Parkinson´s disease detection; ROC; RT; Random Tree; SVM; Support Vector Machine; acceptable error rate; area under the receiver operating characteristic curve; chance level; classification accuracy; classification sensitivity; classification specificity; comparative analysis; computational process; decision support system; dysphonia; effective technique; healthy individual; heterogeneous classifier; independent classifier topology; machine learning classifiers; modality; neurodegenerative disorders; noninvasive technique; optimized statistical parameters; overall classification; powerful technique; recognition accuracy; recognition system; remote diagnosis; robust detection process; selective feature set; speech signal processing; viable technique; voice disorder; Accuracy; Neurons; Parkinson´s disease; Sensitivity; Speech; Support vector machines; Training; Artificial Intelligence; DSS; Dysphonia Measurements; FBANN; PD; SVM; UPDRS;
Conference_Titel :
Informatics, Electronics & Vision (ICIEV), 2014 International Conference on
Conference_Location :
Dhaka
Print_ISBN :
978-1-4799-5179-6
DOI :
10.1109/ICIEV.2014.6850849