Hierarchical diagnosis of vocal fold disorders

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Abstract

This paper explores the use of hierarchical structure for diagnosis of vocal fold disorders. The hierarchical structure is initially used to train different second-level classifiers. At the first level normal and pathological signals have been distinguished. Next, pathological signals have been classified into neurogenic and organic vocal fold disorders. At the final level, vocal fold nodules have been distinguished from polyps in organic disorders category. For feature selection at each level of hierarchy, the reconstructed signal at each wavelet packet decomposition sub-band in 5 levels of decomposition with mother wavelet of (db10) is used to extract the nonlinear features of self-similarity and approximate entropy. Also, wavelet packet coefficients are used to measure energy and Shannon entropy features at different spectral sub-bands. Davies-Bouldin criterion has been employed to find the most discriminant features. Finally, support vector machines have been adopted as classifiers at each level of hierarchy resulting in the diagnosis accuracy of 92%. © 2008 Springer-Verlag.

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APA

Nikkhah-Bahrami, M., Ahmadi-Noubari, H., Seyed Aghazadeh, B., & Khadivi Heris, H. (2008). Hierarchical diagnosis of vocal fold disorders. In Communications in Computer and Information Science (Vol. 6 CCIS, pp. 897–900). https://doi.org/10.1007/978-3-540-89985-3_128

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