Detection of early stages of Parkinson's disease by analyzing fMRI data and machine learning approaches
Abstract
Parkinson's Disease is a progressive nervous system brain disorder which affects
motor neuron loss control and movement coordination. Parkinson's symptoms are
shown gradually and get worse over time. Its signs and symptoms can be different
for everyone. There may be minor early signs and they may go unnoticed. Therefore,
early detection of Parkinson's disease might significantly improve life style by giving
proper treatment. Moreover, doctors may suggest regulating certain regions of your
brain and improve the symptoms. In recent years, the use of Functional Imaging
in neurodegenerative diseases has increased, with applications in basic pathophysiology
research, support in determination, or evaluation of new medications. In our
research we used fMRI data of eight early PD patients. Resting-state fMRI images
were collected for analyzing the data and feature extraction. Time series data were
generated for each subject based on voxel intensity. In addition, STFT was used to
measure the time frequency function. Furthermore, SVM classifier was used for the
classification and prediction of the early stage of PD. Using our proposed method, we
have achieved 100% sensitivity, specificity, and accuracy considering seven subjects,
however, one subject was exceptional whereas we have achieved 99.76% accuracy,
100% specificity and 99.53% sensitivity. Finally, this process is a well-structured
model for predicting the early stages of PD. It may help to the doctors for diagnosis
of the disease at its early stages and the patients should receive better treatment.