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Random Forest ensembles for detection and prediction of Alzheimer's disease with a good between-cohort robustness()

Computer-aided diagnosis of Alzheimer's disease (AD) is a rapidly developing field of neuroimaging with strong potential to be used in practice. In this context, assessment of models' robustness to noise and imaging protocol differences together with post-processing and tuning strategies a...

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Autores principales: Lebedev, A.V., Westman, E., Van Westen, G.J.P., Kramberger, M.G., Lundervold, A., Aarsland, D., Soininen, H., Kłoszewska, I., Mecocci, P., Tsolaki, M., Vellas, B., Lovestone, S., Simmons, A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4215532/
https://www.ncbi.nlm.nih.gov/pubmed/25379423
http://dx.doi.org/10.1016/j.nicl.2014.08.023
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author Lebedev, A.V.
Westman, E.
Van Westen, G.J.P.
Kramberger, M.G.
Lundervold, A.
Aarsland, D.
Soininen, H.
Kłoszewska, I.
Mecocci, P.
Tsolaki, M.
Vellas, B.
Lovestone, S.
Simmons, A.
author_facet Lebedev, A.V.
Westman, E.
Van Westen, G.J.P.
Kramberger, M.G.
Lundervold, A.
Aarsland, D.
Soininen, H.
Kłoszewska, I.
Mecocci, P.
Tsolaki, M.
Vellas, B.
Lovestone, S.
Simmons, A.
author_sort Lebedev, A.V.
collection PubMed
description Computer-aided diagnosis of Alzheimer's disease (AD) is a rapidly developing field of neuroimaging with strong potential to be used in practice. In this context, assessment of models' robustness to noise and imaging protocol differences together with post-processing and tuning strategies are key tasks to be addressed in order to move towards successful clinical applications. In this study, we investigated the efficacy of Random Forest classifiers trained using different structural MRI measures, with and without neuroanatomical constraints in the detection and prediction of AD in terms of accuracy and between-cohort robustness. From The ADNI database, 185 AD, and 225 healthy controls (HC) were randomly split into training and testing datasets. 165 subjects with mild cognitive impairment (MCI) were distributed according to the month of conversion to dementia (4-year follow-up). Structural 1.5-T MRI-scans were processed using Freesurfer segmentation and cortical reconstruction. Using the resulting output, AD/HC classifiers were trained. Training included model tuning and performance assessment using out-of-bag estimation. Subsequently the classifiers were validated on the AD/HC test set and for the ability to predict MCI-to-AD conversion. Models' between-cohort robustness was additionally assessed using the AddNeuroMed dataset acquired with harmonized clinical and imaging protocols. In the ADNI set, the best AD/HC sensitivity/specificity (88.6%/92.0% — test set) was achieved by combining cortical thickness and volumetric measures. The Random Forest model resulted in significantly higher accuracy compared to the reference classifier (linear Support Vector Machine). The models trained using parcelled and high-dimensional (HD) input demonstrated equivalent performance, but the former was more effective in terms of computation/memory and time costs. The sensitivity/specificity for detecting MCI-to-AD conversion (but not AD/HC classification performance) was further improved from 79.5%/75%–83.3%/81.3% by a combination of morphometric measurements with ApoE-genotype and demographics (age, sex, education). When applied to the independent AddNeuroMed cohort, the best ADNI models produced equivalent performance without substantial accuracy drop, suggesting good robustness sufficient for future clinical implementation.
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spelling pubmed-42155322014-11-06 Random Forest ensembles for detection and prediction of Alzheimer's disease with a good between-cohort robustness() Lebedev, A.V. Westman, E. Van Westen, G.J.P. Kramberger, M.G. Lundervold, A. Aarsland, D. Soininen, H. Kłoszewska, I. Mecocci, P. Tsolaki, M. Vellas, B. Lovestone, S. Simmons, A. Neuroimage Clin Article Computer-aided diagnosis of Alzheimer's disease (AD) is a rapidly developing field of neuroimaging with strong potential to be used in practice. In this context, assessment of models' robustness to noise and imaging protocol differences together with post-processing and tuning strategies are key tasks to be addressed in order to move towards successful clinical applications. In this study, we investigated the efficacy of Random Forest classifiers trained using different structural MRI measures, with and without neuroanatomical constraints in the detection and prediction of AD in terms of accuracy and between-cohort robustness. From The ADNI database, 185 AD, and 225 healthy controls (HC) were randomly split into training and testing datasets. 165 subjects with mild cognitive impairment (MCI) were distributed according to the month of conversion to dementia (4-year follow-up). Structural 1.5-T MRI-scans were processed using Freesurfer segmentation and cortical reconstruction. Using the resulting output, AD/HC classifiers were trained. Training included model tuning and performance assessment using out-of-bag estimation. Subsequently the classifiers were validated on the AD/HC test set and for the ability to predict MCI-to-AD conversion. Models' between-cohort robustness was additionally assessed using the AddNeuroMed dataset acquired with harmonized clinical and imaging protocols. In the ADNI set, the best AD/HC sensitivity/specificity (88.6%/92.0% — test set) was achieved by combining cortical thickness and volumetric measures. The Random Forest model resulted in significantly higher accuracy compared to the reference classifier (linear Support Vector Machine). The models trained using parcelled and high-dimensional (HD) input demonstrated equivalent performance, but the former was more effective in terms of computation/memory and time costs. The sensitivity/specificity for detecting MCI-to-AD conversion (but not AD/HC classification performance) was further improved from 79.5%/75%–83.3%/81.3% by a combination of morphometric measurements with ApoE-genotype and demographics (age, sex, education). When applied to the independent AddNeuroMed cohort, the best ADNI models produced equivalent performance without substantial accuracy drop, suggesting good robustness sufficient for future clinical implementation. Elsevier 2014-08-28 /pmc/articles/PMC4215532/ /pubmed/25379423 http://dx.doi.org/10.1016/j.nicl.2014.08.023 Text en © 2014 The Authors. Published by Elsevier Inc. All rights reserved. http://creativecommons.org/licenses/by-nc-sa/3.0/ This is an open access article under the CC BY-NC-SA license (http://creativecommons.org/licenses/by-nc-sa/3.0/).
spellingShingle Article
Lebedev, A.V.
Westman, E.
Van Westen, G.J.P.
Kramberger, M.G.
Lundervold, A.
Aarsland, D.
Soininen, H.
Kłoszewska, I.
Mecocci, P.
Tsolaki, M.
Vellas, B.
Lovestone, S.
Simmons, A.
Random Forest ensembles for detection and prediction of Alzheimer's disease with a good between-cohort robustness()
title Random Forest ensembles for detection and prediction of Alzheimer's disease with a good between-cohort robustness()
title_full Random Forest ensembles for detection and prediction of Alzheimer's disease with a good between-cohort robustness()
title_fullStr Random Forest ensembles for detection and prediction of Alzheimer's disease with a good between-cohort robustness()
title_full_unstemmed Random Forest ensembles for detection and prediction of Alzheimer's disease with a good between-cohort robustness()
title_short Random Forest ensembles for detection and prediction of Alzheimer's disease with a good between-cohort robustness()
title_sort random forest ensembles for detection and prediction of alzheimer's disease with a good between-cohort robustness()
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4215532/
https://www.ncbi.nlm.nih.gov/pubmed/25379423
http://dx.doi.org/10.1016/j.nicl.2014.08.023
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