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A cross-sectional study of explainable machine learning in Alzheimer’s disease: diagnostic classification using MR radiomic features

INTRODUCTION: Alzheimer’s disease (AD) even nowadays remains a complex neurodegenerative disease and its diagnosis relies mainly on cognitive tests which have many limitations. On the other hand, qualitative imaging will not provide an early diagnosis because the radiologist will perceive brain atro...

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Autores principales: Leandrou, Stephanos, Lamnisos, Demetris, Bougias, Haralabos, Stogiannos, Nikolaos, Georgiadou, Eleni, Achilleos, K. G., Pattichis, Constantinos S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10285704/
https://www.ncbi.nlm.nih.gov/pubmed/37358951
http://dx.doi.org/10.3389/fnagi.2023.1149871
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author Leandrou, Stephanos
Lamnisos, Demetris
Bougias, Haralabos
Stogiannos, Nikolaos
Georgiadou, Eleni
Achilleos, K. G.
Pattichis, Constantinos S.
author_facet Leandrou, Stephanos
Lamnisos, Demetris
Bougias, Haralabos
Stogiannos, Nikolaos
Georgiadou, Eleni
Achilleos, K. G.
Pattichis, Constantinos S.
author_sort Leandrou, Stephanos
collection PubMed
description INTRODUCTION: Alzheimer’s disease (AD) even nowadays remains a complex neurodegenerative disease and its diagnosis relies mainly on cognitive tests which have many limitations. On the other hand, qualitative imaging will not provide an early diagnosis because the radiologist will perceive brain atrophy on a late disease stage. Therefore, the main objective of this study is to investigate the necessity of quantitative imaging in the assessment of AD by using machine learning (ML) methods. Nowadays, ML methods are used to address high dimensional data, integrate data from different sources, model the etiological and clinical heterogeneity, and discover new biomarkers in the assessment of AD. METHODS: In this study radiomic features from both entorhinal cortex and hippocampus were extracted from 194 normal controls (NC), 284 mild cognitive impairment (MCI) and 130 AD subjects. Texture analysis evaluates statistical properties of the image intensities which might represent changes in MRI image pixel intensity due to the pathophysiology of a disease. Therefore, this quantitative method could detect smaller-scale changes of neurodegeneration. Then the radiomics signatures extracted by texture analysis and baseline neuropsychological scales, were used to build an XGBoost integrated model which has been trained and integrated. RESULTS: The model was explained by using the Shapley values produced by the SHAP (SHapley Additive exPlanations) method. XGBoost produced a f1-score of 0.949, 0.818, and 0.810 between NC vs. AD, MC vs. MCI, and MCI vs. AD, respectively. DISCUSSION: These directions have the potential to help to the earlier diagnosis and to a better manage of the disease progression and therefore, develop novel treatment strategies. This study clearly showed the importance of explainable ML approach in the assessment of AD.
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spelling pubmed-102857042023-06-23 A cross-sectional study of explainable machine learning in Alzheimer’s disease: diagnostic classification using MR radiomic features Leandrou, Stephanos Lamnisos, Demetris Bougias, Haralabos Stogiannos, Nikolaos Georgiadou, Eleni Achilleos, K. G. Pattichis, Constantinos S. Front Aging Neurosci Neuroscience INTRODUCTION: Alzheimer’s disease (AD) even nowadays remains a complex neurodegenerative disease and its diagnosis relies mainly on cognitive tests which have many limitations. On the other hand, qualitative imaging will not provide an early diagnosis because the radiologist will perceive brain atrophy on a late disease stage. Therefore, the main objective of this study is to investigate the necessity of quantitative imaging in the assessment of AD by using machine learning (ML) methods. Nowadays, ML methods are used to address high dimensional data, integrate data from different sources, model the etiological and clinical heterogeneity, and discover new biomarkers in the assessment of AD. METHODS: In this study radiomic features from both entorhinal cortex and hippocampus were extracted from 194 normal controls (NC), 284 mild cognitive impairment (MCI) and 130 AD subjects. Texture analysis evaluates statistical properties of the image intensities which might represent changes in MRI image pixel intensity due to the pathophysiology of a disease. Therefore, this quantitative method could detect smaller-scale changes of neurodegeneration. Then the radiomics signatures extracted by texture analysis and baseline neuropsychological scales, were used to build an XGBoost integrated model which has been trained and integrated. RESULTS: The model was explained by using the Shapley values produced by the SHAP (SHapley Additive exPlanations) method. XGBoost produced a f1-score of 0.949, 0.818, and 0.810 between NC vs. AD, MC vs. MCI, and MCI vs. AD, respectively. DISCUSSION: These directions have the potential to help to the earlier diagnosis and to a better manage of the disease progression and therefore, develop novel treatment strategies. This study clearly showed the importance of explainable ML approach in the assessment of AD. Frontiers Media S.A. 2023-06-07 /pmc/articles/PMC10285704/ /pubmed/37358951 http://dx.doi.org/10.3389/fnagi.2023.1149871 Text en Copyright © 2023 Leandrou, Lamnisos, Bougias, Stogiannos, Georgiadou, Achilleos, Pattichis and Alzheimer’s Disease Neuroimaging Initiative. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neuroscience
Leandrou, Stephanos
Lamnisos, Demetris
Bougias, Haralabos
Stogiannos, Nikolaos
Georgiadou, Eleni
Achilleos, K. G.
Pattichis, Constantinos S.
A cross-sectional study of explainable machine learning in Alzheimer’s disease: diagnostic classification using MR radiomic features
title A cross-sectional study of explainable machine learning in Alzheimer’s disease: diagnostic classification using MR radiomic features
title_full A cross-sectional study of explainable machine learning in Alzheimer’s disease: diagnostic classification using MR radiomic features
title_fullStr A cross-sectional study of explainable machine learning in Alzheimer’s disease: diagnostic classification using MR radiomic features
title_full_unstemmed A cross-sectional study of explainable machine learning in Alzheimer’s disease: diagnostic classification using MR radiomic features
title_short A cross-sectional study of explainable machine learning in Alzheimer’s disease: diagnostic classification using MR radiomic features
title_sort cross-sectional study of explainable machine learning in alzheimer’s disease: diagnostic classification using mr radiomic features
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10285704/
https://www.ncbi.nlm.nih.gov/pubmed/37358951
http://dx.doi.org/10.3389/fnagi.2023.1149871
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