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Intervening Nidal Brain Parenchyma and Risk of Radiation-Induced Changes After Radiosurgery for Brain Arteriovenous Malformation: A Study Using an Unsupervised Machine Learning Algorithm
Journal article   Peer reviewed

Intervening Nidal Brain Parenchyma and Risk of Radiation-Induced Changes After Radiosurgery for Brain Arteriovenous Malformation: A Study Using an Unsupervised Machine Learning Algorithm

Cheng-Chia Lee, Huai-Che Yang, Chung-Jung Lin, Ching-Jen Chen, Hsiu-Mei Wu, Cheng-Ying Shiau, Wan-Yuo Guo, David Hung-Chi Pan, Kang-Du Liu, Wen-Yuh Chung, …
World Neurosurgery, Vol.125
2019

Abstract

Adolescent Adult Aged Algorithms Brain Child Female Humans Intracranial Arteriovenous Malformations Male Middle Aged Parenchymal Tissue Prospective Studies Radiation Injuries Radiosurgery Risk Factors Unsupervised Machine Learning Young Adult adolescent adult aged algorithm Article brain brain arteriovenous malformation brain parenchyma cerebrospinal fluid child clinical article cohort analysis contrast enhancement digital subtraction angiography female follow up fuzzy system gamma knife radiosurgery human male neuroimaging nuclear magnetic resonance imaging parenchyma sensitivity and specificity stereotactic radiosurgery unsupervised machine learning vascular tissue vascularization adverse event brain brain arteriovenous malformation middle aged parenchyma prospective study radiation injury radiation response radiosurgery risk factor young adult

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