Author:
Manjón José V.,Romero José E.,Vivo-Hernando Roberto,Rubio Gregorio,Aparici Fernando,de la Iglesia-Vaya Mariam,Coupé Pierrick
Abstract
Automatic and reliable quantitative tools for MR brain image analysis are a very valuable resource for both clinical and research environments. In the past few years, this field has experienced many advances with successful techniques based on label fusion and more recently deep learning. However, few of them have been specifically designed to provide a dense anatomical labeling at the multiscale level and to deal with brain anatomical alterations such as white matter lesions (WML). In this work, we present a fully automatic pipeline (vol2Brain) for whole brain segmentation and analysis, which densely labels (N > 100) the brain while being robust to the presence of WML. This new pipeline is an evolution of our previous volBrain pipeline that extends significantly the number of regions that can be analyzed. Our proposed method is based on a fast and multiscale multi-atlas label fusion technology with systematic error correction able to provide accurate volumetric information in a few minutes. We have deployed our new pipeline within our platform volBrain (www.volbrain.upv.es), which has been already demonstrated to be an efficient and effective way to share our technology with the users worldwide.
Funder
Ministerio de Economía, Industria y Competitividad, Gobierno de España
Agence Nationale de la Recherche
Subject
Computer Science Applications,Biomedical Engineering,Neuroscience (miscellaneous)
Cited by
15 articles.
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