Stroke Lesion Segmentation in FLAIR MRI Datasets Using Customized Markov Random Fields

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Stroke Lesion Segmentation in FLAIR MRI Datasets Using Customized Markov Random Fields. / Subbanna, Nagesh K; Rajashekar, Deepthi; Cheng, Bastian; Thomalla, Götz; Fiehler, Jens; Arbel, Tal; Forkert, Nils D.

in: FRONT NEUROL, Jahrgang 10, 2019, S. 541.

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@article{deaf14c8b2834150b10ace2f169b533b,
title = "Stroke Lesion Segmentation in FLAIR MRI Datasets Using Customized Markov Random Fields",
abstract = "Robust and reliable stroke lesion segmentation is a crucial step toward employing lesion volume as an independent endpoint for randomized trials. The aim of this work was to develop and evaluate a novel method to segment sub-acute ischemic stroke lesions from fluid-attenuated inversion recovery (FLAIR) magnetic resonance imaging (MRI) datasets. After preprocessing of the datasets, a Bayesian technique based on Gabor textures extracted from the FLAIR signal intensities is utilized to generate a first estimate of the lesion segmentation. Using this initial segmentation, a customized voxel-level Markov random field model based on intensity as well as Gabor texture features is employed to refine the stroke lesion segmentation. The proposed method was developed and evaluated based on 151 multi-center datasets from three different databases using a leave-one-patient-out validation approach. The comparison of the automatically segmented stroke lesions with manual ground truth segmentation revealed an average Dice coefficient of 0.582, which is in the upper range of previously presented lesion segmentation methods using multi-modal MRI datasets. Furthermore, the results obtained by the proposed technique are superior compared to the results obtained by two methods based on convolutional neural networks and three phase level-sets, respectively, which performed best in the ISLES 2015 challenge using multi-modal imaging datasets. The results of the quantitative evaluation suggest that the proposed method leads to robust lesion segmentation results using FLAIR MRI datasets only as a follow-up sequence.",
author = "Subbanna, {Nagesh K} and Deepthi Rajashekar and Bastian Cheng and G{\"o}tz Thomalla and Jens Fiehler and Tal Arbel and Forkert, {Nils D}",
year = "2019",
doi = "10.3389/fneur.2019.00541",
language = "English",
volume = "10",
pages = "541",
journal = "FRONT NEUROL",
issn = "1664-2295",
publisher = "Frontiers Research Foundation",

}

RIS

TY - JOUR

T1 - Stroke Lesion Segmentation in FLAIR MRI Datasets Using Customized Markov Random Fields

AU - Subbanna, Nagesh K

AU - Rajashekar, Deepthi

AU - Cheng, Bastian

AU - Thomalla, Götz

AU - Fiehler, Jens

AU - Arbel, Tal

AU - Forkert, Nils D

PY - 2019

Y1 - 2019

N2 - Robust and reliable stroke lesion segmentation is a crucial step toward employing lesion volume as an independent endpoint for randomized trials. The aim of this work was to develop and evaluate a novel method to segment sub-acute ischemic stroke lesions from fluid-attenuated inversion recovery (FLAIR) magnetic resonance imaging (MRI) datasets. After preprocessing of the datasets, a Bayesian technique based on Gabor textures extracted from the FLAIR signal intensities is utilized to generate a first estimate of the lesion segmentation. Using this initial segmentation, a customized voxel-level Markov random field model based on intensity as well as Gabor texture features is employed to refine the stroke lesion segmentation. The proposed method was developed and evaluated based on 151 multi-center datasets from three different databases using a leave-one-patient-out validation approach. The comparison of the automatically segmented stroke lesions with manual ground truth segmentation revealed an average Dice coefficient of 0.582, which is in the upper range of previously presented lesion segmentation methods using multi-modal MRI datasets. Furthermore, the results obtained by the proposed technique are superior compared to the results obtained by two methods based on convolutional neural networks and three phase level-sets, respectively, which performed best in the ISLES 2015 challenge using multi-modal imaging datasets. The results of the quantitative evaluation suggest that the proposed method leads to robust lesion segmentation results using FLAIR MRI datasets only as a follow-up sequence.

AB - Robust and reliable stroke lesion segmentation is a crucial step toward employing lesion volume as an independent endpoint for randomized trials. The aim of this work was to develop and evaluate a novel method to segment sub-acute ischemic stroke lesions from fluid-attenuated inversion recovery (FLAIR) magnetic resonance imaging (MRI) datasets. After preprocessing of the datasets, a Bayesian technique based on Gabor textures extracted from the FLAIR signal intensities is utilized to generate a first estimate of the lesion segmentation. Using this initial segmentation, a customized voxel-level Markov random field model based on intensity as well as Gabor texture features is employed to refine the stroke lesion segmentation. The proposed method was developed and evaluated based on 151 multi-center datasets from three different databases using a leave-one-patient-out validation approach. The comparison of the automatically segmented stroke lesions with manual ground truth segmentation revealed an average Dice coefficient of 0.582, which is in the upper range of previously presented lesion segmentation methods using multi-modal MRI datasets. Furthermore, the results obtained by the proposed technique are superior compared to the results obtained by two methods based on convolutional neural networks and three phase level-sets, respectively, which performed best in the ISLES 2015 challenge using multi-modal imaging datasets. The results of the quantitative evaluation suggest that the proposed method leads to robust lesion segmentation results using FLAIR MRI datasets only as a follow-up sequence.

U2 - 10.3389/fneur.2019.00541

DO - 10.3389/fneur.2019.00541

M3 - SCORING: Journal article

C2 - 31178820

VL - 10

SP - 541

JO - FRONT NEUROL

JF - FRONT NEUROL

SN - 1664-2295

ER -