Literature DB >> 33220450

Accuracy and reproducibility of automated white matter hyperintensities segmentation with lesion segmentation tool: A European multi-site 3T study.

Federica Ribaldi1, Daniele Altomare2, Jorge Jovicich3, Clarissa Ferrari4, Agnese Picco5, Francesca Benedetta Pizzini6, Andrea Soricelli7, Anna Mega8, Antonio Ferretti9, Antonios Drevelegas10, Beatriz Bosch11, Bernhard W Müller12, Camillo Marra13, Carlo Cavaliere7, David Bartrés-Faz11, Flavio Nobili14, Franco Alessandrini6, Frederik Barkhof15, Helene Gros-Dagnac16, Jean-Philippe Ranjeva17, Jens Wiltfang18, Joost Kuijer19, Julien Sein17, Karl-Titus Hoffmann20, Luca Roccatagliata21, Lucilla Parnetti22, Magda Tsolaki23, Manos Constantinidis24, Marco Aiello7, Marco Salvatore7, Martina Montalti8, Massimo Caulo9, Mira Didic25, Núria Bargallo26, Olivier Blin27, Paolo M Rossini28, Peter Schonknecht29, Piero Floridi30, Pierre Payoux31, Pieter Jelle Visser32, Régis Bordet33, Renaud Lopes33, Roberto Tarducci34, Stephanie Bombois33, Tilman Hensch29, Ute Fiedler12, Jill C Richardson35, Giovanni B Frisoni2, Moira Marizzoni8.   

Abstract

Brain vascular damage accumulate in aging and often manifest as white matter hyperintensities (WMHs) on MRI. Despite increased interest in automated methods to segment WMHs, a gold standard has not been achieved and their longitudinal reproducibility has been poorly investigated. The aim of present work is to evaluate accuracy and reproducibility of two freely available segmentation algorithms. A harmonized MRI protocol was implemented in 3T-scanners across 13 European sites, each scanning five volunteers twice (test-retest) using 2D-FLAIR. Automated segmentation was performed using Lesion segmentation tool algorithms (LST): the Lesion growth algorithm (LGA) in SPM8 and 12 and the Lesion prediction algorithm (LPA). To assess reproducibility, we applied the LST longitudinal pipeline to the LGA and LPA outputs for both the test and retest scans. We evaluated volumetric and spatial accuracy comparing LGA and LPA with manual tracing, and for reproducibility the test versus retest. Median volume difference between automated WMH and manual segmentations (mL) was -0.22[IQR = 0.50] for LGA-SPM8, -0.12[0.57] for LGA-SPM12, -0.09[0.53] for LPA, while the spatial accuracy (Dice Coefficient) was 0.29[0.31], 0.33[0.26] and 0.41[0.23], respectively. The reproducibility analysis showed a median reproducibility error of 20%[IQR = 41] for LGA-SPM8, 14% [31] for LGA-SPM12 and 10% [27] with the LPA cross-sectional pipeline. Applying the LST longitudinal pipeline, the reproducibility errors were considerably reduced (LGA: 0%[IQR = 0], p < 0.001; LPA: 0% [3], p < 0.001) compared to those derived using the cross-sectional algorithms. The DC using the longitudinal pipeline was excellent (median = 1) for LGA [IQR = 0] and LPA [0.02]. LST algorithms showed moderate accuracy and good reproducibility. Therefore, it can be used as a reliable cross-sectional and longitudinal tool in multi-site studies.
Copyright © 2020 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Accuracy; Automated segmentation algorithms; Lesion segmentation toolbox; Reproducibility; White matter hyperintensities

Year:  2020        PMID: 33220450     DOI: 10.1016/j.mri.2020.11.008

Source DB:  PubMed          Journal:  Magn Reson Imaging        ISSN: 0730-725X            Impact factor:   2.546


  5 in total

1.  Brain Networks Involved in Depression in Patients with Frontotemporal Dementia and Parkinson's Disease: An Exploratory Resting-State Functional Connectivity MRI Study.

Authors:  Vincenzo Alfano; Giovanni Federico; Giulia Mele; Federica Garramone; Marcello Esposito; Marco Aiello; Marco Salvatore; Carlo Cavaliere
Journal:  Diagnostics (Basel)       Date:  2022-04-12

2.  Detection of subtle white matter lesions in MRI through texture feature extraction and boundary delineation using an embedded clustering strategy.

Authors:  Kokhaur Ong; David M Young; Sarina Sulaiman; Siti Mariyam Shamsuddin; Norzaini Rose Mohd Zain; Hilwati Hashim; Kahhay Yuen; Stephan J Sanders; Weimiao Yu; Seepheng Hang
Journal:  Sci Rep       Date:  2022-03-15       Impact factor: 4.379

3.  Higher-resolution quantification of white matter hypointensities by large-scale transfer learning from 2D images on the JPSC-AD cohort.

Authors:  Benjamin Thyreau; Yasuko Tatewaki; Liying Chen; Yuji Takano; Naoki Hirabayashi; Yoshihiko Furuta; Jun Hata; Shigeyuki Nakaji; Tetsuya Maeda; Moeko Noguchi-Shinohara; Masaru Mimura; Kenji Nakashima; Takaaki Mori; Minoru Takebayashi; Toshiharu Ninomiya; Yasuyuki Taki
Journal:  Hum Brain Mapp       Date:  2022-05-07       Impact factor: 5.399

4.  Diagnostic performance of deep learning-based automatic white matter hyperintensity segmentation for classification of the Fazekas scale and differentiation of subcortical vascular dementia.

Authors:  Leehi Joo; Woo Hyun Shim; Chong Hyun Suh; Su Jin Lim; Hwon Heo; Woo Seok Kim; Eunpyeong Hong; Dongsoo Lee; Jinkyeong Sung; Jae-Sung Lim; Jae-Hong Lee; Sang Joon Kim
Journal:  PLoS One       Date:  2022-09-15       Impact factor: 3.752

5.  Disrupted Structural Brain Connectome Is Related to Cognitive Impairment in Patients With Ischemic Leukoaraiosis.

Authors:  Tong Lu; Zan Wang; Ying Cui; Jiaying Zhou; Yuancheng Wang; Shenghong Ju
Journal:  Front Hum Neurosci       Date:  2021-06-10       Impact factor: 3.169

  5 in total

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