2020
DOI: 10.1007/978-3-030-64610-3_19
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Automatic MR Spinal Cord Segmentation by Hybrid Residual Attention-Aware Convolutional Neural Networks and Learning Rate Optimization on Real World Data

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“…Further to a proof of concept study developed with a preliminary methodology in a reduced cohort [28], in this extended work we aim to present a novel approach for automated cervical spinal cord segmentation from MR, based on hybrid residual attention-aware mechanisms that, together with a focal loss function [29] with the Tversky-index [30] as main metric, addresses the problems of unbalanced annotation and MR imaging preprocessing. We evaluate the performance of this methodology by its application to a dataset of real-world MR images (3D-T1 weighted images acquired in a 3T system) acquired in patients suffering from MS.…”
Section: Introductionmentioning
confidence: 99%
“…Further to a proof of concept study developed with a preliminary methodology in a reduced cohort [28], in this extended work we aim to present a novel approach for automated cervical spinal cord segmentation from MR, based on hybrid residual attention-aware mechanisms that, together with a focal loss function [29] with the Tversky-index [30] as main metric, addresses the problems of unbalanced annotation and MR imaging preprocessing. We evaluate the performance of this methodology by its application to a dataset of real-world MR images (3D-T1 weighted images acquired in a 3T system) acquired in patients suffering from MS.…”
Section: Introductionmentioning
confidence: 99%