Artificial neural networks in neurosurgery

Journal of Neurology, Neurosurgery and Psychiatry - Tập 86 Số 3 - Trang 251-256 - 2015
Parisa Azimi1, Hassan Reza Mohammadi1, Edward C. Benzel2, Shorab Shahzadi1, Shirzad Azhari1, Ali Montazeri3
1Shahid Beheshti University of Medical Sciences
2[Cleveland Clinic Foundation]
3Mental Health Research Group, Health Metrics Research Centre, Iranian Institute for Health Sciences Research, ACECR

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