Detail Investigation on Success of the Filters and Classification Algorithms for Determining Pneumonia Disease
Citation
BİLİR, Sena & Sadullah ÖZTÜRK."Detail Investigation on Success of the Filters and Classification Algorithms for Determining Pneumonia Disease". 13th International Conference on Electrical and Electronics Engineering, ELECO 2021, (2021):279-283.Abstract
Today, as a result of the widespread use of electronic
stethoscopes, lung sounds can be recorded and transferred to
a computer. Thus, it was possible to analyze the lung sounds.
Healthy lung sounds are called normal sounds, and
unhealthy sounds are called abnormal sounds. In this study,
lung sounds taken from the Kaggle site were studied. Normal
and three types of abnormal sounds were selected among
lung sounds. Abnormal sounds are belonging to patients with
pneumonia, bronchiectasis, and COPD. Pneumonia sounds
were tried to be distinct from other sounds. In the presence
of pneumonia, crackles are heard in addition to normal lung
sounds. For detecting crackles, first of all, three different
filters were designed Butterworth, Chebyshev, and Elliptic
bandpass filters by using MATLAB. Wavelet Transform was
applied to the filtered sounds and features were extracted
from the obtained subbands. These features were classified
as normal-abnormal and 'yes or no pneumonia' with the help
of K-nearest neighbors and Support Vector Machines.
According to the results obtained, the filters and
classification methods were compared.