Abstract #1375
Machine learning approach for lateralization of temporal lobe epilepsy utilizing DTI structural connectome
Kouhei Kamiya 1 , Yuichi Suzuki 2 , Shiori Amemiya 1 , Naoto Kunii 3 , Kensuke Kawai 4 , Harushi Mori 1 , Akira Kunimatsu 1 , Nobuhito Saito 3 , Shigeki Aoki 5 , and Kuni Ohtomo 1
1
Department of Radiology, The University of
Tokyo, Bunkyo, Tokyo, Japan,
2
Department
of Radiological Technology, The University of Tokyo
Hospital, Bunkyo, Tokyo, Japan,
3
Department
of Neurosurgery, The University of Tokyo, Bunkyo, Tokyo,
Japan,
4
Department
of Neurosurgery, NTT Medical Center Tokyo, Shinagawa,
Tokyo, Japan,
5
Department of Radiology,
Juntendo University School of Medicine, Bunkyo, Tokyo,
Japan
This study aimed to investigate the utility of machine
learning approach with DTI structural connectome for
lateralization of epileptogenicity in TLE. DTI (b=0,
1000 s/mm2; 13 MPGs; 3mm iso-voxel) and 3D-T1WI were
obtained in 41 patients with TLE (right/left 13/28). For
each patient, an 83x83 connectome matrix was generated
and graph theoretic regional network measures (degree,
clustering coefficient, local efficiency, and betweeness
centrality) were calculated. The regional measures were
used to train the classifier using the sparse linear
regression and support vector machine (SVM). SVM
demonstrated excellent discrimination between left and
right TLE, with 92.7% accuracy in leave-one-out cross
validation.
This abstract and the presentation materials are available to members only;
a login is required.
Join Here