Title :
Severity analysis on vasopressin hormone secretion of smoker using Laser Doppler Flowmetry data
Author :
Saleh Ovi, Md Abu ; Shuvo, Md Faisal ; Aowlad Hossain, A.B.M.
Author_Institution :
Dept. of Electron. & Commun. Eng., Khulna Univ. of Eng. & Technol., Khulna, Bangladesh
Abstract :
Smoking is a life threatening bad habit which is known to a leading cause of lung cancer and cardiovascular diseases. The secretion level of vasopressin hormone is closely associated with the health impact of smoking. This study presents an analysis on vasopressin hormone secretion using Laser Doppler Flowmetry (LDF) technique in micro-vascular network. Using the blood perfusion unit (BPU) datagram of LDF the severity of vasopressin hormone secretion is determined which can be used to examine the smoking related effects on health. 10 human subjects have been chosen to take the LDF data under smoking and nonsmoking conditions. From the acquired BPU signals, statistical analysis (mean, median, root mean square, variance, skewness) as well as spectral analysis (normalized peak, power spectral density) have been performed in order to extract specific features. 240 datasets of extracted features have been used to determine the severity level of vasopressin hormone secretion using Artificial Neural Network (ANN) where the severity level is considered as three specific secretion states Normal, Medium and High. It was observed that the secretion state of the randomly selected testing data can be accurately detected. We think the proposed method and the classifier will be helpful for clinical applications.
Keywords :
blood; cancer; cardiovascular system; feature extraction; haemodynamics; haemorheology; laser applications in medicine; lung; medical signal processing; neural nets; signal classification; spectral analysis; statistical analysis; ANN; BPU datagram; BPU signals; LDF data; artificial neural network; blood perfusion unit datagram; cardiovascular diseases; clinical applications; health impact; human subjects; laser Doppler flowmetry data; lung cancer; microvascular network; nonsmoking conditions; power spectral density; random selected testing data; severity analysis; specific feature extraction; spectral analysis; statistical analysis; vasopressin hormone secretion; Artificial neural networks; Biochemistry; Blood; Blood flow; Doppler effect; Feature extraction; Lasers; Laser Doppler flowmetry; artificial neural network; blood perfusion unit; feature extraction; vasopressin hormone secretion;
Conference_Titel :
Strategic Technology (IFOST), 2014 9th International Forum on
Conference_Location :
Cox´s Bazar
Print_ISBN :
978-1-4799-6060-6
DOI :
10.1109/IFOST.2014.6991105