Cargando…

An Age-Adjusted EEG Source Classifier Accurately Detects School-Aged Barbadian Children That Had Protein Energy Malnutrition in the First Year of Life

We have identified an electroencephalographic (EEG) based statistical classifier that correctly distinguishes children with histories of Protein Energy Malnutrition (PEM) in the first year of life from healthy controls with 0.82% accuracy (area under the ROC curve). Our previous study achieved simil...

Descripción completa

Detalles Bibliográficos
Autores principales: Bringas Vega, Maria L., Guo, Yanbo, Tang, Qin, Razzaq, Fuleah A., Calzada Reyes, Ana, Ren, Peng, Paz Linares, Deirel, Galan Garcia, Lidice, Rabinowitz, Arielle G., Galler, Janina R., Bosch-Bayard, Jorge, Valdes Sosa, Pedro A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6905178/
https://www.ncbi.nlm.nih.gov/pubmed/31866804
http://dx.doi.org/10.3389/fnins.2019.01222
_version_ 1783478122266492928
author Bringas Vega, Maria L.
Guo, Yanbo
Tang, Qin
Razzaq, Fuleah A.
Calzada Reyes, Ana
Ren, Peng
Paz Linares, Deirel
Galan Garcia, Lidice
Rabinowitz, Arielle G.
Galler, Janina R.
Bosch-Bayard, Jorge
Valdes Sosa, Pedro A.
author_facet Bringas Vega, Maria L.
Guo, Yanbo
Tang, Qin
Razzaq, Fuleah A.
Calzada Reyes, Ana
Ren, Peng
Paz Linares, Deirel
Galan Garcia, Lidice
Rabinowitz, Arielle G.
Galler, Janina R.
Bosch-Bayard, Jorge
Valdes Sosa, Pedro A.
author_sort Bringas Vega, Maria L.
collection PubMed
description We have identified an electroencephalographic (EEG) based statistical classifier that correctly distinguishes children with histories of Protein Energy Malnutrition (PEM) in the first year of life from healthy controls with 0.82% accuracy (area under the ROC curve). Our previous study achieved similar accuracy but was based on scalp quantitative EEG features that precluded anatomical interpretation. We have now employed BC-VARETA, a novel high-resolution EEG source imaging method with minimal leakage and maximal sparseness, which allowed us to identify a classifier in the source space. The EEGs were recorded in 1978 in a sample of 108 children who were 5–11 years old and were participants in the 45+ year longitudinal Barbados Nutrition Study. The PEM cohort experienced moderate-severe PEM limited to the first year of life and were age, handedness and gender-matched with healthy classmates who served as controls. In the current study, we utilized a machine learning approach based on the elastic net to create a stable sparse classifier. Interestingly, the classifier was driven predominantly by nutrition group differences in alpha activity in the lingual gyrus. This structure is part of the pathway associated with generating alpha rhythms that increase with normal maturation. Our findings indicate that the PEM group showed a significant decrease in alpha activity, suggestive of a delay in brain development. Childhood malnutrition is still a serious worldwide public health problem and its consequences are particularly severe when present during early life. Deficits during this critical period are permanent and predict impaired cognitive and behavioral functioning later in life. Our EEG source classifier may provide a functionally interpretable diagnostic technology to study the effects of early childhood malnutrition on the brain, and may have far-reaching applicability in low resource settings.
format Online
Article
Text
id pubmed-6905178
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-69051782019-12-20 An Age-Adjusted EEG Source Classifier Accurately Detects School-Aged Barbadian Children That Had Protein Energy Malnutrition in the First Year of Life Bringas Vega, Maria L. Guo, Yanbo Tang, Qin Razzaq, Fuleah A. Calzada Reyes, Ana Ren, Peng Paz Linares, Deirel Galan Garcia, Lidice Rabinowitz, Arielle G. Galler, Janina R. Bosch-Bayard, Jorge Valdes Sosa, Pedro A. Front Neurosci Neuroscience We have identified an electroencephalographic (EEG) based statistical classifier that correctly distinguishes children with histories of Protein Energy Malnutrition (PEM) in the first year of life from healthy controls with 0.82% accuracy (area under the ROC curve). Our previous study achieved similar accuracy but was based on scalp quantitative EEG features that precluded anatomical interpretation. We have now employed BC-VARETA, a novel high-resolution EEG source imaging method with minimal leakage and maximal sparseness, which allowed us to identify a classifier in the source space. The EEGs were recorded in 1978 in a sample of 108 children who were 5–11 years old and were participants in the 45+ year longitudinal Barbados Nutrition Study. The PEM cohort experienced moderate-severe PEM limited to the first year of life and were age, handedness and gender-matched with healthy classmates who served as controls. In the current study, we utilized a machine learning approach based on the elastic net to create a stable sparse classifier. Interestingly, the classifier was driven predominantly by nutrition group differences in alpha activity in the lingual gyrus. This structure is part of the pathway associated with generating alpha rhythms that increase with normal maturation. Our findings indicate that the PEM group showed a significant decrease in alpha activity, suggestive of a delay in brain development. Childhood malnutrition is still a serious worldwide public health problem and its consequences are particularly severe when present during early life. Deficits during this critical period are permanent and predict impaired cognitive and behavioral functioning later in life. Our EEG source classifier may provide a functionally interpretable diagnostic technology to study the effects of early childhood malnutrition on the brain, and may have far-reaching applicability in low resource settings. Frontiers Media S.A. 2019-11-29 /pmc/articles/PMC6905178/ /pubmed/31866804 http://dx.doi.org/10.3389/fnins.2019.01222 Text en Copyright © 2019 Bringas Vega, Guo, Tang, Razzaq, Calzada Reyes, Ren, Paz Linares, Galan Garcia, Rabinowitz, Galler, Bosch-Bayard and Valdes Sosa. http://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
Bringas Vega, Maria L.
Guo, Yanbo
Tang, Qin
Razzaq, Fuleah A.
Calzada Reyes, Ana
Ren, Peng
Paz Linares, Deirel
Galan Garcia, Lidice
Rabinowitz, Arielle G.
Galler, Janina R.
Bosch-Bayard, Jorge
Valdes Sosa, Pedro A.
An Age-Adjusted EEG Source Classifier Accurately Detects School-Aged Barbadian Children That Had Protein Energy Malnutrition in the First Year of Life
title An Age-Adjusted EEG Source Classifier Accurately Detects School-Aged Barbadian Children That Had Protein Energy Malnutrition in the First Year of Life
title_full An Age-Adjusted EEG Source Classifier Accurately Detects School-Aged Barbadian Children That Had Protein Energy Malnutrition in the First Year of Life
title_fullStr An Age-Adjusted EEG Source Classifier Accurately Detects School-Aged Barbadian Children That Had Protein Energy Malnutrition in the First Year of Life
title_full_unstemmed An Age-Adjusted EEG Source Classifier Accurately Detects School-Aged Barbadian Children That Had Protein Energy Malnutrition in the First Year of Life
title_short An Age-Adjusted EEG Source Classifier Accurately Detects School-Aged Barbadian Children That Had Protein Energy Malnutrition in the First Year of Life
title_sort age-adjusted eeg source classifier accurately detects school-aged barbadian children that had protein energy malnutrition in the first year of life
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6905178/
https://www.ncbi.nlm.nih.gov/pubmed/31866804
http://dx.doi.org/10.3389/fnins.2019.01222
work_keys_str_mv AT bringasvegamarial anageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT guoyanbo anageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT tangqin anageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT razzaqfuleaha anageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT calzadareyesana anageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT renpeng anageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT pazlinaresdeirel anageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT galangarcialidice anageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT rabinowitzarielleg anageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT gallerjaninar anageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT boschbayardjorge anageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT valdessosapedroa anageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT bringasvegamarial ageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT guoyanbo ageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT tangqin ageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT razzaqfuleaha ageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT calzadareyesana ageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT renpeng ageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT pazlinaresdeirel ageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT galangarcialidice ageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT rabinowitzarielleg ageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT gallerjaninar ageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT boschbayardjorge ageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife
AT valdessosapedroa ageadjustedeegsourceclassifieraccuratelydetectsschoolagedbarbadianchildrenthathadproteinenergymalnutritioninthefirstyearoflife