شماره ركورد كنفرانس :
3297
عنوان مقاله :
Graph Theoretical Metrics and Machine Learning for Diagnosis of Parkinson's Disease Using rs-fMRI
عنوان به زبان ديگر :
Graph Theoretical Metrics and Machine Learning for Diagnosis of Parkinson's Disease Using rs-fMRI
پديدآورندگان :
Kazeminejad Amirali School of Electrical and Computer Engineering - University of Tehran , Golbabaei Soroosh School of Electrical and Computer Engineering - University of Tehran , Soltanian-Zadeh Hamid School of Electrical and Computer Engineering - University of Tehran
كليدواژه :
SVM , Graph theory , Machine learning , rs-fMRI , Parkinson’s disease , component
عنوان كنفرانس :
نوزدهمين سمپوزيوم بين المللي هوش مصنوعي و پردازش سيگنال
چكيده لاتين :
In this study, we investigated the suitability of graph
theoretical analysis for automatic diagnosis of Parkinson’s disease.
Resting state fMRI data from 18 healthy controls and 19 patients
were used in the study. After data preprocessing and identifying
90 regions of interest using the AAL atlas, average time series of
each region was obtained. Next, a brain network graph was
constructed using the regions as nodes and the Pearson correlation
between their average time series as edge weights. A percentage of
edges with the highest magnitude were kept and the rest were
omitted from the graph using a thresholding method ranging from
10% to 30% with 2% increments. Global graph theoretical
metrics for integration (Characteristic path length and
Efficiency), segregation (Clustering Coefficient and Transitivity)
and small-worldness were extracted for each subject and their
between group differences were subjected to statistical analysis.
Local metrics, including integration, segregation, centrality
(betweenness, z-score, and participation coefficient) and nodal
degree, were also extracted for each subject and used as features
to train a support vector machine classifier. We have shown a
statistically significant increase in characteristic path length as
well as a decrease in segregation metrics and efficiency in
Parkinson’s patients. A floating forward automatic feature
selection method was used to select the 5 best features from all
extracted metrics to classify patients. Our classifier was able to
achieve a diagnosis accuracy of ~95% when subjected to a leaveone-
out cross-validation test. These features belonged to cuneus
(right hemisphere), precuneus (left), superior (right) and middle
(both) frontal gyri which were all previously reported to undergo
alterations in Parkinson’s disease. This investigation confirmed
that global brain network alterations are associated with
Parkinson’s patients’ symptoms and showed the potency of using
graph theoretical metrics and machine learning for diagnosing the
disease.