Pathological Voice Signal Analysis Using Machine Learning Based Approaches

Voice signal analysis is becoming one of the most significant examination in clinical practice due to the importance of extracting related parameters to reflect the patient's health. In this regard, various acoustic studies have been revealed that the analysis of laryngeal, respiratory and articulatory function may be efficient as an early indicator in the diagnosis of Parkinson disease (PD). PD is a common chronic neurodegenerative disorder, which affects a central nervous system and it is characterized by progressive loss of muscle control. Tremor, movement and speech disorders are the main symptoms of PD. The diagnosis decision of PD is obtained by continued clinical observation which relies on expert human observer. Therefore, an additional diagnosis method is desirable for most comfortable and timely detection of PD as well as faster treatment is needed. In this study, we develop and validate automated classification algorithms, which are based on Naive Bayes and K- Nearest Neighbors (KNN) using voice signal measurements to predict PD. According to the results, the diagnostic performance provided by the automated classification algorithm using Naive Bayes was superior to that of the KNN and it is useful as a predictive tool for PD screening with a high degree of accuracy, approximately 93.3%.

[1]  Raymond D. Kent,et al.  Parametric quantitative acoustic analysis of conversation produced by speakers with dysarthria and healthy speakers. , 2006, Journal of speech, language, and hearing research : JSLHR.

[2]  J. Teixeira,et al.  Análise acústica vocal - determinação do Jitter e Shimmer para diagnóstico de patalogias da fala , 2011 .

[3]  K. Hugdahl,et al.  Subtypes of mild cognitive impairment in parkinson's disease: Progression to dementia , 2006, Movement disorders : official journal of the Movement Disorder Society.

[4]  J. Jankovic Parkinson’s disease: clinical features and diagnosis , 2008, Journal of Neurology, Neurosurgery, and Psychiatry.

[5]  Max A. Little,et al.  Suitability of Dysphonia Measurements for Telemonitoring of Parkinson's Disease , 2008, IEEE Transactions on Biomedical Engineering.

[6]  João Paulo Teixeira,et al.  CENTERIS 2013-Conference on ENTERprise Information Systems / HCIST 2013-International Conference on Health and Social Care Information Systems and Technologies Vocal Acoustic Analysis-Jitter , Shimmer and HNR Parameters , 2013 .

[7]  Max A. Little,et al.  Exploiting Nonlinear Recurrence and Fractal Scaling Properties for Voice Disorder Detection , 2007 .

[8]  E. Metter,et al.  Clinical and acoustical variability in hypokinetic dysarthria. , 1986, Journal of communication disorders.

[9]  Parkinson's Disease: Diagnosis, Therapeutics & Management , 2012 .

[10]  Stephen J Wilson,et al.  Home-based speech treatment for Parkinson's disease delivered remotely: a case report , 2010, Journal of telemedicine and telecare.

[11]  L. Ramig,et al.  Speech treatment for Parkinson's disease. , 2005, NeuroRehabilitation.

[12]  Olcay Kursun,et al.  Telediagnosis of Parkinson’s Disease Using Measurements of Dysphonia , 2010, Journal of Medical Systems.

[13]  David J Brooks,et al.  Parkinson's disease: diagnosis. , 2012, Parkinsonism & related disorders.

[14]  N Mai,et al.  Computational analysis of open loop handwriting movements in Parkinson's disease: A rapid method to detect dopamimetic effects , 1996, Movement disorders : official journal of the Movement Disorder Society.

[15]  P. Boersma ACCURATE SHORT-TERM ANALYSIS OF THE FUNDAMENTAL FREQUENCY AND THE HARMONICS-TO-NOISE RATIO OF A SAMPLED SOUND , 1993 .

[16]  Fikret S. Gürgen,et al.  Collection and Analysis of a Parkinson Speech Dataset With Multiple Types of Sound Recordings , 2013, IEEE Journal of Biomedical and Health Informatics.

[17]  K. Thanushkodi,et al.  An Improved k-Nearest Neighbor Classification Using Genetic Algorithm , 2010 .

[18]  Miad Faezipour,et al.  A Neural Network System for Detection of Obstructive Sleep Apnea Through SpO2 Signal Features , 2012 .

[19]  Elmar Nöth,et al.  Detection of persons with Parkinson's disease by acoustic, vocal, and prosodic analysis , 2011, 2011 IEEE Workshop on Automatic Speech Recognition & Understanding.

[20]  R Iansek,et al.  Motor instability in parkinsonian speech intensity. , 2001, Neuropsychiatry, neuropsychology, and behavioral neurology.

[21]  Tara L Whitehill,et al.  Intonation contrast in Cantonese speakers with hypokinetic dysarthria associated with Parkinson's disease. , 2010, Journal of speech, language, and hearing research : JSLHR.

[22]  G. Canter SPEECH CHARACTERISTICS OF PATIENTS WITH PARKINSON'S DISEASE: I. INTENSITY, PITCH, AND DURATION. , 1963, The Journal of speech and hearing disorders.