2016 IEEE Congress on Evolutionary Computation (CEC) 2016
DOI: 10.1109/cec.2016.7743941
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Efficient diagnosis system for Parkinson's disease using deep belief network

Abstract: Abstract-In this paper, a deep belief network (DBN) has been adopted as an efficient technique to diagnosis the Parkinson's disease (PD). This diagnosis has been established based on the speech signal of the patients. Through the distinguishing and analyzing of the speech signal, the DBN has the ability to diagnose Parkinson's disease. To realize the diagnosis of Parkinson's disease by using DBN, the proposed system has been trained and tested with voices from a number of patients and healthy people. A feature… Show more

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Cited by 76 publications
(37 citation statements)
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“…A deep belief network (DBN) has been used in [111] for the diagnosis of Parkinson's disease (PD) based on the speech signals obtained from the UCI repository. The proposed method was trained on various healthy and patient voices, and feature extraction was performed by inputting DBN.…”
Section: ) Recurrent Neural Network (Rnn)mentioning
confidence: 99%
“…A deep belief network (DBN) has been used in [111] for the diagnosis of Parkinson's disease (PD) based on the speech signals obtained from the UCI repository. The proposed method was trained on various healthy and patient voices, and feature extraction was performed by inputting DBN.…”
Section: ) Recurrent Neural Network (Rnn)mentioning
confidence: 99%
“…DBN [9] is composed of multiple RBMs. The hidden layer of the first layer RBM is used as the display layer of the second RBM.…”
Section: Performance Analysis Fitting Model Based On Dbnmentioning
confidence: 99%
“…Method Accuracy (%) [38] PCA-AE-Ada 85 [39] ACO-SVM 95.98 [35] GA-SVM 97.19 [35] PSO-SVM 97.37 [26] GA-MOO-NN 98.85 [14] PCA-SVM 96.84 [40] Breast cancer diagnosis techniques using SVM, PNN, and MLP 97.80 [11] Classification system using fuzzy-GA method 97.36 [20] Classification system using mixture ensemble of convolutional neural network 96.39 [41] SAE-SVM 98.25 [42] Prediction of breast cancer using SVM and K-NN 98.57 [43] Breast…”
Section: Referencementioning
confidence: 99%