2022
DOI: 10.3389/fneur.2022.812432
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A Quantitative Imaging Biomarker Supporting Radiological Assessment of Hippocampal Sclerosis Derived From Deep Learning-Based Segmentation of T1w-MRI

Abstract: PurposeHippocampal volumetry is an important biomarker to quantify atrophy in patients with mesial temporal lobe epilepsy. We investigate the sensitivity of automated segmentation methods to support radiological assessments of hippocampal sclerosis (HS). Results from FreeSurfer and FSL-FIRST are contrasted to a deep learning (DL)-based segmentation method.Materials and MethodsWe used T1-weighted MRI scans from 105 patients with epilepsy and 354 healthy controls. FreeSurfer, FSL, and a DL-based method were appl… Show more

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Cited by 8 publications
(4 citation statements)
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“…Our findings of smaller error bars when using DL+-DiReCT instead of FreeSurfer together with larger group separation capabilities strongly suggest DL-based input for SCN estimation as an alternative. Enhanced robustness of DL+DiReCT compared to Free-Surfer has been reported before (Rebsamen et al, 2020(Rebsamen et al, , 2022Rusak et al, 2022). SCN analysis revealed clear separation between the two subgroups of MS, with DL+DiReCT from both non-enhanced and CE images.…”
Section: Structural Covariance Network (Scn)supporting
confidence: 62%
“…Our findings of smaller error bars when using DL+-DiReCT instead of FreeSurfer together with larger group separation capabilities strongly suggest DL-based input for SCN estimation as an alternative. Enhanced robustness of DL+DiReCT compared to Free-Surfer has been reported before (Rebsamen et al, 2020(Rebsamen et al, , 2022Rusak et al, 2022). SCN analysis revealed clear separation between the two subgroups of MS, with DL+DiReCT from both non-enhanced and CE images.…”
Section: Structural Covariance Network (Scn)supporting
confidence: 62%
“…The method was validated with a large cohort and shows similar robustness (test-retest reliability) than FreeSurfer [ 44 ]. However, DL + DiReCT was more sensitive than FreeSurfer to detect changes in cortical thickness related to age [ 44 ], dementia [ 44 ] and multiple sclerosis [ 46 ] and to identify hippocampal sclerosis in epilepsy [ 47 ]. For both hemispheres, DL + DiReCT was used to extract global mean cortical thickness, and mean thickness of bilateral insulae, caudal ACC and medial and lateral OFC.…”
Section: Methodsmentioning
confidence: 99%
“…Hippocampal subfields were segmented using a dedicated module ( Iglesias et al, 2015 ) of the FreeSurfer pipeline. Additionally, the images were processed using DL + DiReCT ( Rebsamen et al, 2020 , Rebsamen et al, 2022 ), from which 16 shape features of the hippocampi were derived using pyradiomics ( van Griethuysen et al, 2017 ). With a data-driven approach, we investigated the discriminatory power of these features to classify patients with vestibular dysfunction and its subgroup from healthy controls using a machine-learning classifier.…”
Section: Methodsmentioning
confidence: 99%