Convolutional neural networks for skull-stripping in brain MR imaging using silver standard masks
Oeslle Lucena, Roberto Souza, Letícia Rittner, Richard Frayne, Roberto Lotufo
ARTIGO
Inglês
Agradecimentos: This project was supported by FAPESP CEPID-BRAINN (2013/07559-3) and CAPES PVE (88881.062158/2014-01). Oeslle Lucena thanks FAPESP (2016/18332-8), Roberto Souza thanks the Natural Science and Engineering Research Council of Canada Collaborative Research and Training Experience...
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Agradecimentos: This project was supported by FAPESP CEPID-BRAINN (2013/07559-3) and CAPES PVE (88881.062158/2014-01). Oeslle Lucena thanks FAPESP (2016/18332-8), Roberto Souza thanks the Natural Science and Engineering Research Council of Canada Collaborative Research and Training Experience International and Industrial Imaging Training (NSERC CREATE I3T) Program and the Hotchkiss Brain Institute, Letícia Rittner thanks CNPq (308311/2016-7), Richard Frayne is supported by the NSERC (261754-2013), Canadian Institutes for Health Research (CIHR, MOP-333931) and the Hopewell Professorship in Brain Imaging, and Roberto Lotufo thanks CNPq (311228/2014-3)
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Abstract: Manual annotation is considered to be the "gold standard" in medical imaging analysis. However, medical imaging datasets that include expert manual segmentation are scarce as this step is time-consuming, and therefore expensive. Moreover, single-rater manual annotation is most often used...
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Abstract: Manual annotation is considered to be the "gold standard" in medical imaging analysis. However, medical imaging datasets that include expert manual segmentation are scarce as this step is time-consuming, and therefore expensive. Moreover, single-rater manual annotation is most often used in data-driven approaches making the network biased to only that single expert. In this work, we propose a CNN for brain extraction in magnetic resonance (MR) imaging, that is fully trained with what we refer to as "silver standard" masks. Therefore, eliminating the cost associated with manual annotation. Silver standard masks are generated by forming the consensus from a set of eight, public, non-deep-learning-based brain extraction methods using the Simultaneous Truth and Performance Level Estimation (STAPLE) algorithm. Our method consists of (1) developing a dataset with "silver standard" masks as input, and implementing (2) a tri-planar method using parallel 2D U-Net-based convolutional neural networks (CNNs) (referred to as CONSNet). This term refers to our integrated approach, i.e., training with silver standard masks and using a 2D U-Net-based architecture. We conducted our analysis using three public datasets: the Calgary-Campinas-359 (CC-359), the LONI Probabilistic Brain Atlas (LPBA40), and the Open Access Series of Imaging Studies (OASIS). Five performance metrics were used in our experiments: Dice coefficient, sensitivity, specificity, Hausdorff distance, and symmetric surface-to-surface mean distance. Our results showed that we outperformed (i.e., larger Dice coefficients) the current state-of-the-art skull-stripping methods without using gold standard annotation for the CNNs training stage. CONSNet is the first deep learning approach that is fully trained using silver standard data and is, thus, more generalizable. Using these masks, we eliminate the cost of manual annotation, decreased inter-/intra-rater variability, and avoided CNN segmentation overfitting towards one specific manual annotation guideline that can occur when gold standard masks are used. Moreover, once trained, our method takes few seconds to process a typical brain image volume using modern a high-end GPU. In contrast, many of the other competitive methods have processing times in the order of minutes
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CONSELHO NACIONAL DE DESENVOLVIMENTO CIENTÍFICO E TECNOLÓGICO - CNPQ
308311/2016-7; 311228/2014-3
COORDENAÇÃO DE APERFEIÇOAMENTO DE PESSOAL DE NÍVEL SUPERIOR - CAPES
88881.062158/2014-01
FUNDAÇÃO DE AMPARO À PESQUISA DO ESTADO DE SÃO PAULO - FAPESP
2013/07559-3; 2016/18332-8
Fechado
Convolutional neural networks for skull-stripping in brain MR imaging using silver standard masks
Oeslle Lucena, Roberto Souza, Letícia Rittner, Richard Frayne, Roberto Lotufo
Convolutional neural networks for skull-stripping in brain MR imaging using silver standard masks
Oeslle Lucena, Roberto Souza, Letícia Rittner, Richard Frayne, Roberto Lotufo
Fontes
Artificial intelligence in medicine (Fonte avulsa) |