பயோ இன்ஜினியரிங் மற்றும் மெடிக்கல் டெக்னாலஜி ஜர்னல்

Speech Signal Analysis as an Alternative to Spirometry in Asthma Diagnosis

Kutor John

Speech production involves the vibration of the vocal cords. Voice changes will however occur in asthma due to the inflamed lung airways. Spirometry is a well-known technique employed in the diagnosis of asthma to give information on patient pulmonary function. The purpose of this research was to investigate the correlation between FEV1 /FVC (Forced Expiratory Volume to Forced Vital Capacity) ratio obtained from spirometry and Harmonics-to-Noise Ratio (HNR) obtained from human speech, in order to determine whether speech analysis could be an alternative to spirometry in diagnosing asthma. Spirometry data was obtained from 150 subjects, who were asthmatic patients attending the Korle-Bu Teaching Hospital, Ghana. Speech data consisting of the vowel sounds /a:/, /e:/, /ε:/, /i:/, /o:/, /כ:/, /u:/, consonant /s:/ and phrase “She sells”, was also recorded from the subjects. 33 samples were selected and analyzed to generate speech parameters with Praat software. The correlation was established between HNR from the speech signals and spirometry data FEV1 /FVC. The highest correlation coefficient was observed between HNR and vowel sound /ε:/ (42.08%). In conclusion, among the other speech vowels and phonemes, the Harmonics-to-Noise ratio (HNR) of /ε:/ sound showed the most promise to being a suitable alternative to spirometry in asthma diagnosis

மறுப்பு: இந்த சுருக்கமானது செயற்கை நுண்ணறிவு கருவிகளைப் பயன்படுத்தி மொழிபெயர்க்கப்பட்டது மற்றும் இன்னும் மதிப்பாய்வு செய்யப்படவில்லை அல்லது சரிபார்க்கப்படவில்லை