Cargando…

Evaluating the reliability of neurocognitive biomarkers of neurodegenerative diseases across countries: A machine learning approach

Accurate early diagnosis of neurodegenerative diseases represents a growing challenge for current clinical practice. Promisingly, current tools can be complemented by computational decision-support methods to objectively analyze multidimensional measures and increase diagnostic confidence. Yet, wide...

Descripción completa

Detalles Bibliográficos
Autores principales: Bachli, M. Belen, Sedeño, Lucas, Ochab, Jeremi K., Piguet, Olivier, Kumfor, Fiona, Reyes, Pablo, Torralva, Teresa, Roca, María, Cardona, Juan Felipe, Campo, Cecilia Gonzalez, Herrera, Eduar, Slachevsky, Andrea, Matallana, Diana, Manes, Facundo, García, Adolfo M., Ibáñez, Agustín, Chialvo, Dante R.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7008715/
https://www.ncbi.nlm.nih.gov/pubmed/31841681
http://dx.doi.org/10.1016/j.neuroimage.2019.116456
_version_ 1783495521176911872
author Bachli, M. Belen
Sedeño, Lucas
Ochab, Jeremi K.
Piguet, Olivier
Kumfor, Fiona
Reyes, Pablo
Torralva, Teresa
Roca, María
Cardona, Juan Felipe
Campo, Cecilia Gonzalez
Herrera, Eduar
Slachevsky, Andrea
Matallana, Diana
Manes, Facundo
García, Adolfo M.
Ibáñez, Agustín
Chialvo, Dante R.
author_facet Bachli, M. Belen
Sedeño, Lucas
Ochab, Jeremi K.
Piguet, Olivier
Kumfor, Fiona
Reyes, Pablo
Torralva, Teresa
Roca, María
Cardona, Juan Felipe
Campo, Cecilia Gonzalez
Herrera, Eduar
Slachevsky, Andrea
Matallana, Diana
Manes, Facundo
García, Adolfo M.
Ibáñez, Agustín
Chialvo, Dante R.
author_sort Bachli, M. Belen
collection PubMed
description Accurate early diagnosis of neurodegenerative diseases represents a growing challenge for current clinical practice. Promisingly, current tools can be complemented by computational decision-support methods to objectively analyze multidimensional measures and increase diagnostic confidence. Yet, widespread application of these tools cannot be recommended unless they are proven to perform consistently and reproducibly across samples from different countries. We implemented machine-learning algorithms to evaluate the prediction power of neurocognitive biomarkers (behavioral and imaging measures) for classifying two neurodegenerative conditions –Alzheimer Disease (AD) and behavioral variant frontotemporal dementia (bvFTD)– across three different countries (>200 participants). We use machine-learning tools integrating multimodal measures such as cognitive scores (executive functions and cognitive screening) and brain atrophy volume (voxel based morphometry from fronto-temporo-insular regions in bvFTD, and temporo-parietal regions in AD) to identify the most relevant features in predicting the incidence of the diseases. In the Country-1 cohort, predictions of AD and bvFTD became maximally improved upon inclusion of cognitive screenings outcomes combined with atrophy levels. Multimodal training data from this cohort allowed predicting both AD and bvFTD in the other two novel datasets from other countries with high accuracy (>90%), demonstrating the robustness of the approach as well as the differential specificity and reliability of behavioral and neural markers for each condition. In sum, this is the first study, across centers and countries, to validate the predictive power of cognitive signatures combined with atrophy levels for contrastive neurodegenerative conditions, validating a benchmark for future assessments of reliability and reproducibility.
format Online
Article
Text
id pubmed-7008715
institution National Center for Biotechnology Information
language English
publishDate 2019
record_format MEDLINE/PubMed
spelling pubmed-70087152020-03-01 Evaluating the reliability of neurocognitive biomarkers of neurodegenerative diseases across countries: A machine learning approach Bachli, M. Belen Sedeño, Lucas Ochab, Jeremi K. Piguet, Olivier Kumfor, Fiona Reyes, Pablo Torralva, Teresa Roca, María Cardona, Juan Felipe Campo, Cecilia Gonzalez Herrera, Eduar Slachevsky, Andrea Matallana, Diana Manes, Facundo García, Adolfo M. Ibáñez, Agustín Chialvo, Dante R. Neuroimage Article Accurate early diagnosis of neurodegenerative diseases represents a growing challenge for current clinical practice. Promisingly, current tools can be complemented by computational decision-support methods to objectively analyze multidimensional measures and increase diagnostic confidence. Yet, widespread application of these tools cannot be recommended unless they are proven to perform consistently and reproducibly across samples from different countries. We implemented machine-learning algorithms to evaluate the prediction power of neurocognitive biomarkers (behavioral and imaging measures) for classifying two neurodegenerative conditions –Alzheimer Disease (AD) and behavioral variant frontotemporal dementia (bvFTD)– across three different countries (>200 participants). We use machine-learning tools integrating multimodal measures such as cognitive scores (executive functions and cognitive screening) and brain atrophy volume (voxel based morphometry from fronto-temporo-insular regions in bvFTD, and temporo-parietal regions in AD) to identify the most relevant features in predicting the incidence of the diseases. In the Country-1 cohort, predictions of AD and bvFTD became maximally improved upon inclusion of cognitive screenings outcomes combined with atrophy levels. Multimodal training data from this cohort allowed predicting both AD and bvFTD in the other two novel datasets from other countries with high accuracy (>90%), demonstrating the robustness of the approach as well as the differential specificity and reliability of behavioral and neural markers for each condition. In sum, this is the first study, across centers and countries, to validate the predictive power of cognitive signatures combined with atrophy levels for contrastive neurodegenerative conditions, validating a benchmark for future assessments of reliability and reproducibility. 2019-12-10 2020-03 /pmc/articles/PMC7008715/ /pubmed/31841681 http://dx.doi.org/10.1016/j.neuroimage.2019.116456 Text en This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Article
Bachli, M. Belen
Sedeño, Lucas
Ochab, Jeremi K.
Piguet, Olivier
Kumfor, Fiona
Reyes, Pablo
Torralva, Teresa
Roca, María
Cardona, Juan Felipe
Campo, Cecilia Gonzalez
Herrera, Eduar
Slachevsky, Andrea
Matallana, Diana
Manes, Facundo
García, Adolfo M.
Ibáñez, Agustín
Chialvo, Dante R.
Evaluating the reliability of neurocognitive biomarkers of neurodegenerative diseases across countries: A machine learning approach
title Evaluating the reliability of neurocognitive biomarkers of neurodegenerative diseases across countries: A machine learning approach
title_full Evaluating the reliability of neurocognitive biomarkers of neurodegenerative diseases across countries: A machine learning approach
title_fullStr Evaluating the reliability of neurocognitive biomarkers of neurodegenerative diseases across countries: A machine learning approach
title_full_unstemmed Evaluating the reliability of neurocognitive biomarkers of neurodegenerative diseases across countries: A machine learning approach
title_short Evaluating the reliability of neurocognitive biomarkers of neurodegenerative diseases across countries: A machine learning approach
title_sort evaluating the reliability of neurocognitive biomarkers of neurodegenerative diseases across countries: a machine learning approach
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7008715/
https://www.ncbi.nlm.nih.gov/pubmed/31841681
http://dx.doi.org/10.1016/j.neuroimage.2019.116456
work_keys_str_mv AT bachlimbelen evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT sedenolucas evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT ochabjeremik evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT piguetolivier evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT kumforfiona evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT reyespablo evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT torralvateresa evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT rocamaria evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT cardonajuanfelipe evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT campoceciliagonzalez evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT herreraeduar evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT slachevskyandrea evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT matallanadiana evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT manesfacundo evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT garciaadolfom evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT ibanezagustin evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach
AT chialvodanter evaluatingthereliabilityofneurocognitivebiomarkersofneurodegenerativediseasesacrosscountriesamachinelearningapproach