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Abstract #3268

Resting state fMRI “Epilepsy networks”.

Rose Dawn Bharath1, Rajanikant Panda2, Jeetu Raj3, Sanjib Sinha4, Kenchaiah Raghavendra4, Ravindranadh Chowdary Mundlamuri4, Ganne Chaitanya5, Anita Mahadevan6, Arivazhagan Arimappamagan7, Malla Bhaskara Rao7, Kandavel Thennarasu8, Kaushik Majumdar9, Parthasarathy Satishchandra4, and Tapan Gandhi3

1Department of Neuroimaging and Interventional Radiology, National Institute of Mental Health and Neurosciences, Bengaluru, India, 2Coma Science Group, Universitè de Liège, Liège, Belgium, 3Department of Electrical Engineering, Indian Institute of Technology Delhi, New Delhi, India, 4Department of Neurology, National Institute of Mental Health and Neurosciences, Bengaluru, India, 5Department of Neurology, Thomas Jefferson University, Philadelphia, PA, United States, 6Department of Neuropathology, National Institute of Mental Health and Neurosciences, Bengaluru, India, 7Department of Neurosurgery, National Institute of Mental Health and Neurosciences, Bengaluru, India, 8Department of Biostatistics, National Institute of Mental Health and Neurosciences, Bengaluru, India, 9Systems Science and Informatics Unit, Indian Statistical Institute, Bengaluru, India

Resting state functional MRI (rsfMRI) research typically focuses on few well identified networks though many more networks (15-80) are often visualized, in the course of investigating functional networks. It is customary to discard these networks as they are presumed to have no functional relevance. We used machine learning methods to identify “epilepsy networks” in 45 individuals with TLE using FSL derived 88 independent components. In line with evidence from experimental models, the current results indicates that TLE is associated with disease specific “rsfMRI epilepsy networks” which can be visualised in-vivo at individual subject level.

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