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Automated quantification of cerebral edema following hemispheric infarction: Application of a machine-learning algorithm to evaluate CSF shifts on serial head CTs

Although cerebral edema is a major cause of death and deterioration following hemispheric stroke, there remains no validated biomarker that captures the full spectrum of this critical complication. We recently demonstrated that reduction in intracranial cerebrospinal fluid (CSF) volume (∆ CSF) on se...

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Autores principales: Chen, Yasheng, Dhar, Rajat, Heitsch, Laura, Ford, Andria, Fernandez-Cadenas, Israel, Carrera, Caty, Montaner, Joan, Lin, Weili, Shen, Dinggang, An, Hongyu, Lee, Jin-Moo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5065050/
https://www.ncbi.nlm.nih.gov/pubmed/27761398
http://dx.doi.org/10.1016/j.nicl.2016.09.018
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author Chen, Yasheng
Dhar, Rajat
Heitsch, Laura
Ford, Andria
Fernandez-Cadenas, Israel
Carrera, Caty
Montaner, Joan
Lin, Weili
Shen, Dinggang
An, Hongyu
Lee, Jin-Moo
author_facet Chen, Yasheng
Dhar, Rajat
Heitsch, Laura
Ford, Andria
Fernandez-Cadenas, Israel
Carrera, Caty
Montaner, Joan
Lin, Weili
Shen, Dinggang
An, Hongyu
Lee, Jin-Moo
author_sort Chen, Yasheng
collection PubMed
description Although cerebral edema is a major cause of death and deterioration following hemispheric stroke, there remains no validated biomarker that captures the full spectrum of this critical complication. We recently demonstrated that reduction in intracranial cerebrospinal fluid (CSF) volume (∆ CSF) on serial computed tomography (CT) scans provides an accurate measure of cerebral edema severity, which may aid in early triaging of stroke patients for craniectomy. However, application of such a volumetric approach would be too cumbersome to perform manually on serial scans in a real-world setting. We developed and validated an automated technique for CSF segmentation via integration of random forest (RF) based machine learning with geodesic active contour (GAC) segmentation. The proposed RF + GAC approach was compared to conventional Hounsfield Unit (HU) thresholding and RF segmentation methods using Dice similarity coefficient (DSC) and the correlation of volumetric measurements, with manual delineation serving as the ground truth. CSF spaces were outlined on scans performed at baseline (< 6 h after stroke onset) and early follow-up (FU) (closest to 24 h) in 38 acute ischemic stroke patients. RF performed significantly better than optimized HU thresholding (p < 10(− 4) in baseline and p < 10(− 5) in FU) and RF + GAC performed significantly better than RF (p < 10(− 3) in baseline and p < 10(− 5) in FU). Pearson correlation coefficients between the automatically detected ∆ CSF and the ground truth were r = 0.178 (p = 0.285), r = 0.876 (p < 10(− 6)) and r = 0.879 (p < 10(− 6)) for thresholding, RF and RF + GAC, respectively, with a slope closer to the line of identity in RF + GAC. When we applied the algorithm trained from images of one stroke center to segment CTs from another center, similar findings held. In conclusion, we have developed and validated an accurate automated approach to segment CSF and calculate its shifts on serial CT scans. This algorithm will allow us to efficiently and accurately measure the evolution of cerebral edema in future studies including large multi-site patient populations.
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spelling pubmed-50650502016-10-19 Automated quantification of cerebral edema following hemispheric infarction: Application of a machine-learning algorithm to evaluate CSF shifts on serial head CTs Chen, Yasheng Dhar, Rajat Heitsch, Laura Ford, Andria Fernandez-Cadenas, Israel Carrera, Caty Montaner, Joan Lin, Weili Shen, Dinggang An, Hongyu Lee, Jin-Moo Neuroimage Clin Regular Article Although cerebral edema is a major cause of death and deterioration following hemispheric stroke, there remains no validated biomarker that captures the full spectrum of this critical complication. We recently demonstrated that reduction in intracranial cerebrospinal fluid (CSF) volume (∆ CSF) on serial computed tomography (CT) scans provides an accurate measure of cerebral edema severity, which may aid in early triaging of stroke patients for craniectomy. However, application of such a volumetric approach would be too cumbersome to perform manually on serial scans in a real-world setting. We developed and validated an automated technique for CSF segmentation via integration of random forest (RF) based machine learning with geodesic active contour (GAC) segmentation. The proposed RF + GAC approach was compared to conventional Hounsfield Unit (HU) thresholding and RF segmentation methods using Dice similarity coefficient (DSC) and the correlation of volumetric measurements, with manual delineation serving as the ground truth. CSF spaces were outlined on scans performed at baseline (< 6 h after stroke onset) and early follow-up (FU) (closest to 24 h) in 38 acute ischemic stroke patients. RF performed significantly better than optimized HU thresholding (p < 10(− 4) in baseline and p < 10(− 5) in FU) and RF + GAC performed significantly better than RF (p < 10(− 3) in baseline and p < 10(− 5) in FU). Pearson correlation coefficients between the automatically detected ∆ CSF and the ground truth were r = 0.178 (p = 0.285), r = 0.876 (p < 10(− 6)) and r = 0.879 (p < 10(− 6)) for thresholding, RF and RF + GAC, respectively, with a slope closer to the line of identity in RF + GAC. When we applied the algorithm trained from images of one stroke center to segment CTs from another center, similar findings held. In conclusion, we have developed and validated an accurate automated approach to segment CSF and calculate its shifts on serial CT scans. This algorithm will allow us to efficiently and accurately measure the evolution of cerebral edema in future studies including large multi-site patient populations. Elsevier 2016-09-26 /pmc/articles/PMC5065050/ /pubmed/27761398 http://dx.doi.org/10.1016/j.nicl.2016.09.018 Text en © 2016 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Regular Article
Chen, Yasheng
Dhar, Rajat
Heitsch, Laura
Ford, Andria
Fernandez-Cadenas, Israel
Carrera, Caty
Montaner, Joan
Lin, Weili
Shen, Dinggang
An, Hongyu
Lee, Jin-Moo
Automated quantification of cerebral edema following hemispheric infarction: Application of a machine-learning algorithm to evaluate CSF shifts on serial head CTs
title Automated quantification of cerebral edema following hemispheric infarction: Application of a machine-learning algorithm to evaluate CSF shifts on serial head CTs
title_full Automated quantification of cerebral edema following hemispheric infarction: Application of a machine-learning algorithm to evaluate CSF shifts on serial head CTs
title_fullStr Automated quantification of cerebral edema following hemispheric infarction: Application of a machine-learning algorithm to evaluate CSF shifts on serial head CTs
title_full_unstemmed Automated quantification of cerebral edema following hemispheric infarction: Application of a machine-learning algorithm to evaluate CSF shifts on serial head CTs
title_short Automated quantification of cerebral edema following hemispheric infarction: Application of a machine-learning algorithm to evaluate CSF shifts on serial head CTs
title_sort automated quantification of cerebral edema following hemispheric infarction: application of a machine-learning algorithm to evaluate csf shifts on serial head cts
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5065050/
https://www.ncbi.nlm.nih.gov/pubmed/27761398
http://dx.doi.org/10.1016/j.nicl.2016.09.018
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