Analysis and validation of automated skull stripping tools: A validation study based on 296 MR images from the Honolulu Asia aging study

As population-based epidemiologic studies may acquire images from thousands of subjects, automated image post-processing is needed. However, error in these methods may be biased and related to subject characteristics relevant to the research question. Here, we compare two automated methods of brain...

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Veröffentlicht in:NeuroImage (Orlando, Fla.) Fla.), 2006-05, Vol.30 (4), p.1179-1186
Hauptverfasser: Hartley, S.W., Scher, A.I., Korf, E.S.C., White, L.R., Launer, L.J.
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container_title NeuroImage (Orlando, Fla.)
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creator Hartley, S.W.
Scher, A.I.
Korf, E.S.C.
White, L.R.
Launer, L.J.
description As population-based epidemiologic studies may acquire images from thousands of subjects, automated image post-processing is needed. However, error in these methods may be biased and related to subject characteristics relevant to the research question. Here, we compare two automated methods of brain extraction against manually segmented images and evaluate whether method accuracy is associated with subject demographic and health characteristics. MRI data ( n = 296) are from the Honolulu Asia Aging Study, a population-based study of elderly Japanese–American men. The intracranial space was manually outlined on the axial proton density sequence by a single operator. The brain was extracted automatically using BET (Brain Extraction Tool) and BSE (Brain Surface Extractor) on axial proton density images. Total intracranial volume was calculated for the manually segmented images (ticvM), the BET segmented images (ticvBET) and the BSE segmented images (ticvBSE). Mean ticvBSE was closer to that of ticvM, but ticvBET was more highly correlated with ticvM than ticvBSE. BSE had significant over (positive error) and underestimated (negative error) ticv, but net error was relatively low. BET had large positive and very low negative error. Method accuracy, measured in percent positive and negative error, varied slightly with age, head circumference, presence of the apolipoprotein eε4 polymorphism, subcortical and cortical infracts and enlarged ventricles. This epidemiologic approach to the assessment of potential bias in image post-processing tasks shows both skull-stripping programs performed well in this large image dataset when compared to manually segmented images. Although method accuracy was statistically associated with some subject characteristics, the extent of the misclassification (in terms of percent of brain volume) was small.
doi_str_mv 10.1016/j.neuroimage.2005.10.043
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However, error in these methods may be biased and related to subject characteristics relevant to the research question. Here, we compare two automated methods of brain extraction against manually segmented images and evaluate whether method accuracy is associated with subject demographic and health characteristics. MRI data ( n = 296) are from the Honolulu Asia Aging Study, a population-based study of elderly Japanese–American men. The intracranial space was manually outlined on the axial proton density sequence by a single operator. The brain was extracted automatically using BET (Brain Extraction Tool) and BSE (Brain Surface Extractor) on axial proton density images. Total intracranial volume was calculated for the manually segmented images (ticvM), the BET segmented images (ticvBET) and the BSE segmented images (ticvBSE). Mean ticvBSE was closer to that of ticvM, but ticvBET was more highly correlated with ticvM than ticvBSE. 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subjects Age
Aged
Aged, 80 and over
Aging - physiology
Alzheimer Disease - pathology
Apolipoprotein E4
Apolipoproteins
Apolipoproteins E - genetics
Asian Americans
Atrophy
Automation
Brain
Brain - pathology
Cephalometry
Cerebral Infarction - diagnosis
Cerebral Infarction - pathology
Cerebral Ventricles - pathology
Cognitive ability
Cohort Studies
Dementia
Genotype & phenotype
Hawaii
Humans
Image Enhancement - methods
Image Processing, Computer-Assisted - methods
Magnetic Resonance Imaging - methods
Male
Mathematical Computing
NMR
Nuclear magnetic resonance
Polymorphism, Genetic - genetics
Population Surveillance
Prospective Studies
Reading
Reference Values
Skull - pathology
Software
Statistics as Topic
title Analysis and validation of automated skull stripping tools: A validation study based on 296 MR images from the Honolulu Asia aging study
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