| Literature DB >> 27274882 |
Derya Avci1, Akif Dogantekin2.
Abstract
Parkinson disease is a major public health problem all around the world. This paper proposes an expert disease diagnosis system for Parkinson disease based on genetic algorithm- (GA-) wavelet kernel- (WK-) Extreme Learning Machines (ELM). The classifier used in this paper is single layer neural network (SLNN) and it is trained by the ELM learning method. The Parkinson disease datasets are obtained from the UCI machine learning database. In wavelet kernel-Extreme Learning Machine (WK-ELM) structure, there are three adjustable parameters of wavelet kernel. These parameters and the numbers of hidden neurons play a major role in the performance of ELM. In this study, the optimum values of these parameters and the numbers of hidden neurons of ELM were obtained by using a genetic algorithm (GA). The performance of the proposed GA-WK-ELM method is evaluated using statical methods such as classification accuracy, sensitivity and specificity analysis, and ROC curves. The calculated highest classification accuracy of the proposed GA-WK-ELM method is found as 96.81%.Entities:
Year: 2016 PMID: 27274882 PMCID: PMC4871978 DOI: 10.1155/2016/5264743
Source DB: PubMed Journal: Parkinsons Dis ISSN: 2042-0080
Figure 1The block diagram of the pattern diagnosis concept.
Figure 2The structure of a single-hidden layer feedforward network.
The attributes of biomedical voice measurements.
| Number | Attributes | Explanation |
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| 1 | MDVP:Fo (Hz) | Average vocal fundamental frequency |
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| 2 | MDVP:Fhi (Hz) | Maximum vocal fundamental frequency |
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| 3 | MDVP:Flo (Hz) | Minimum vocal fundamental frequency |
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| 4 | MDVP:Jitter (%) | Several measures of variation in fundamental frequency |
| 5 | MDVP:Jitter (abs) | |
| 6 | MDVP:RAP | |
| 7 | MDVP:PPQ | |
| 8 | Jitter:DDP | |
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| 9 | MDVP:Shimmer | Several measures of variation in amplitude |
| 10 | MDVP:Shimmer (dB) | |
| 11 | Shimmer:APQ3 | |
| 12 | Shimmer:APQ5 | |
| 13 | MDVP:APQ | |
| 14 | Shimmer:DDA | |
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| 15 | RPDE | Two nonlinear dynamical complexity measures |
| 16 | D2 | |
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| 17 | NHR | The measure of ratio of noise to tonal components in the voice status |
| 18 | HNR | |
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| 19 | DFA | Signal fractal scaling exponent |
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| 20 | spread1 | Three nonlinear measures of fundamental frequency variation |
| 21 | spread2 | |
| 22 | PPE | |
Figure 3Components of a GA.
Figure 4The block diagram of GA-WK-ELM based optimal PD diagnosis system.
Coding for parameters of wavelet kernel function.
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Coding for number of hidden neurons.
| The number of hidden neurons | Coding |
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Figure 5An example for individuals of the population.
The obtained PD diagnosis accuracy by statistical methods.
| Method | Correct diagnosis rate |
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| Sensitivity Analysis | 95.45 |
| Specificity Analysis | 98.17 |
| Average | 96.81 |
The correct Parkinson diseases diagnosis performance comparing of the GA-WK-ELM method with classic ELM classifiers, which have different types of kernel function and the number of hidden neurons.
| Used method | Type of the kernel function | Value of | Value of | Value of | The number of hidden neurons | Accuracy (%) |
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| GA-WK-ELM | Wavelet | 6 | 5 | 12 | 74 | 96.32 |
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| GA-WK-ELM | Wavelet | 9 | 4 | 17 | 23 | 95.46 |
| GA-WK-ELM | Wavelet | 5 | 4 | 12 | 42 | 95.28 |
| Classic ELM | Poly | — | — | — | 76 | 89.31 |
| Classic ELM | Hard limit | — | — | — | 142 | 83.22 |
| Classic ELM | Tangent sigmoid | — | — | — | 164 | 91.75 |
| Classic ELM | Tangent sigmoid | — | — | — | 242 | 91.64 |
| Classic ELM | Poly | — | — | — | 56 | 83.85 |
| Classic ELM | Radial basis | — | — | — | 108 | 87.62 |
| Classic ELM | Sigmoid | — | — | — | 265 | 92.28 |
| Classic ELM | Radial basis | — | — | — | 356 | 91.54 |
| Classic ELM | Radial basis | — | — | — | 462 | 93.45 |
The comparison results of the proposed GA-WK-ELM method and previous studies.
| Studies | Method | The number of features | Training | Testing | |
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| Ref [ | ANFIS-LH | 4 | — | 95.38 | 94.72 |
| MLPNN | 4 | — | 93.88 | 89.69 | |
| RBFNN | 4 | — | 91.84 | 87.63 | |
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| Ref [ | PNN | 22 | — | 81.74 | 81.28 |
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| In this study | GA-WK-ELM | 22 | 0.21 | 99.42 | 96.81 |
Figure 6The ROC curve of the suggested GA-WK-ELM method for expert PD diagnosis.