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Cross-Modal Cortical Activity in the Brain Can Predict Cochlear Implantation Outcome in Adults: A Machine Learning Study

OBJECTIVES: Prediction of cochlear implantation (CI) outcome is often difficult because outcomes vary among patients. Though the brain plasticity across modalities during deafness is associated with individual CI outcomes, longitudinal observations in multiple patients are scarce. Therefore, we soug...

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Autores principales: Kyong, Jeong-Sug, Suh, Myung-Whan, Joon Han, Jae, Kyun Park, Moo, Soo Noh, Tae, Ha Oh, Seung, Ho Lee, Jun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: European Academy of Otology and Neurotology and the Politzer Society 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8975390/
https://www.ncbi.nlm.nih.gov/pubmed/34617886
http://dx.doi.org/10.5152/iao.2021.9337
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author Kyong, Jeong-Sug
Suh, Myung-Whan
Joon Han, Jae
Kyun Park, Moo
Soo Noh, Tae
Ha Oh, Seung
Ho Lee, Jun
author_facet Kyong, Jeong-Sug
Suh, Myung-Whan
Joon Han, Jae
Kyun Park, Moo
Soo Noh, Tae
Ha Oh, Seung
Ho Lee, Jun
author_sort Kyong, Jeong-Sug
collection PubMed
description OBJECTIVES: Prediction of cochlear implantation (CI) outcome is often difficult because outcomes vary among patients. Though the brain plasticity across modalities during deafness is associated with individual CI outcomes, longitudinal observations in multiple patients are scarce. Therefore, we sought a prediction system based on cross-modal plasticity in a longitudinal study with multiple patients. METHODS: Classification of CI outcomes between excellent or poor was tested based on the features of brain cross-modal plasticity, measured using event-related responses and their corresponding electromagnetic sources. A machine learning estimation model was applied to 13 datasets from 3 patients based on linear supervised training. Classification efficiency was evaluated comparing prediction accuracy, sensitivity/specificity, total mis-classification cost, and training time among feature set conditions. RESULTS: Combined feature sets with the sensor and source levels dramatically improved classification accuracy between excellent and poor outcomes. Specifically, the tactile feature set best explained CI outcome (accuracy, 98.83 ± 2.57%; sensitivity, 98.00 ± 0.01%; specificity, 98.15 ± 4.26%; total misclassification cost, 0.17 ± 0.38; training time, 0.51 ± 0.09 sec), followed by the visual feature (accuracy, 93.50 ± 4.89%; sensitivity, 89.17 ± 8.16%; specificity, 98.00 ± 0.01%; total misclassification cost, 0.65 ± 0.49; training time, 0.38 ± 0.50 sec). CONCLUSION: Individual tactile and visual processing in the brain best classified the current status when classified by combined sensor–source level features. Our results suggest that cross-modal brain plasticity due to deafness may provide a basis for classifying the status. We expect this novel method to contribute to the evaluation and prediction of CI outcomes.
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spelling pubmed-89753902022-04-14 Cross-Modal Cortical Activity in the Brain Can Predict Cochlear Implantation Outcome in Adults: A Machine Learning Study Kyong, Jeong-Sug Suh, Myung-Whan Joon Han, Jae Kyun Park, Moo Soo Noh, Tae Ha Oh, Seung Ho Lee, Jun J Int Adv Otol Original Article OBJECTIVES: Prediction of cochlear implantation (CI) outcome is often difficult because outcomes vary among patients. Though the brain plasticity across modalities during deafness is associated with individual CI outcomes, longitudinal observations in multiple patients are scarce. Therefore, we sought a prediction system based on cross-modal plasticity in a longitudinal study with multiple patients. METHODS: Classification of CI outcomes between excellent or poor was tested based on the features of brain cross-modal plasticity, measured using event-related responses and their corresponding electromagnetic sources. A machine learning estimation model was applied to 13 datasets from 3 patients based on linear supervised training. Classification efficiency was evaluated comparing prediction accuracy, sensitivity/specificity, total mis-classification cost, and training time among feature set conditions. RESULTS: Combined feature sets with the sensor and source levels dramatically improved classification accuracy between excellent and poor outcomes. Specifically, the tactile feature set best explained CI outcome (accuracy, 98.83 ± 2.57%; sensitivity, 98.00 ± 0.01%; specificity, 98.15 ± 4.26%; total misclassification cost, 0.17 ± 0.38; training time, 0.51 ± 0.09 sec), followed by the visual feature (accuracy, 93.50 ± 4.89%; sensitivity, 89.17 ± 8.16%; specificity, 98.00 ± 0.01%; total misclassification cost, 0.65 ± 0.49; training time, 0.38 ± 0.50 sec). CONCLUSION: Individual tactile and visual processing in the brain best classified the current status when classified by combined sensor–source level features. Our results suggest that cross-modal brain plasticity due to deafness may provide a basis for classifying the status. We expect this novel method to contribute to the evaluation and prediction of CI outcomes. European Academy of Otology and Neurotology and the Politzer Society 2021-09-01 /pmc/articles/PMC8975390/ /pubmed/34617886 http://dx.doi.org/10.5152/iao.2021.9337 Text en 2021 authors https://creativecommons.org/licenses/by-nc/4.0/ Content of this journal is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License. (https://creativecommons.org/licenses/by-nc/4.0/)
spellingShingle Original Article
Kyong, Jeong-Sug
Suh, Myung-Whan
Joon Han, Jae
Kyun Park, Moo
Soo Noh, Tae
Ha Oh, Seung
Ho Lee, Jun
Cross-Modal Cortical Activity in the Brain Can Predict Cochlear Implantation Outcome in Adults: A Machine Learning Study
title Cross-Modal Cortical Activity in the Brain Can Predict Cochlear Implantation Outcome in Adults: A Machine Learning Study
title_full Cross-Modal Cortical Activity in the Brain Can Predict Cochlear Implantation Outcome in Adults: A Machine Learning Study
title_fullStr Cross-Modal Cortical Activity in the Brain Can Predict Cochlear Implantation Outcome in Adults: A Machine Learning Study
title_full_unstemmed Cross-Modal Cortical Activity in the Brain Can Predict Cochlear Implantation Outcome in Adults: A Machine Learning Study
title_short Cross-Modal Cortical Activity in the Brain Can Predict Cochlear Implantation Outcome in Adults: A Machine Learning Study
title_sort cross-modal cortical activity in the brain can predict cochlear implantation outcome in adults: a machine learning study
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8975390/
https://www.ncbi.nlm.nih.gov/pubmed/34617886
http://dx.doi.org/10.5152/iao.2021.9337
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