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Artificial intelligence-based classification of schizophrenia: A high density electroencephalographic and support vector machine study

BACKGROUND: Interview-based schizophrenia (SCZ) diagnostic methods are not completely valid. Moreover, SCZ-the disease entity is very heterogeneous. Supervised-Machine-Learning (sML) application of Artificial-Intelligence holds a tremendous promise in solving these issues. AIMS: To sML-based discrim...

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Autores principales: Tikka, Sai Krishna, Singh, Bikesh Kumar, Nizamie, S. Haque, Garg, Shobit, Mandal, Sunandan, Thakur, Kavita, Singh, Lokesh Kumar
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer - Medknow 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7368447/
https://www.ncbi.nlm.nih.gov/pubmed/32773870
http://dx.doi.org/10.4103/psychiatry.IndianJPsychiatry_91_20
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author Tikka, Sai Krishna
Singh, Bikesh Kumar
Nizamie, S. Haque
Garg, Shobit
Mandal, Sunandan
Thakur, Kavita
Singh, Lokesh Kumar
author_facet Tikka, Sai Krishna
Singh, Bikesh Kumar
Nizamie, S. Haque
Garg, Shobit
Mandal, Sunandan
Thakur, Kavita
Singh, Lokesh Kumar
author_sort Tikka, Sai Krishna
collection PubMed
description BACKGROUND: Interview-based schizophrenia (SCZ) diagnostic methods are not completely valid. Moreover, SCZ-the disease entity is very heterogeneous. Supervised-Machine-Learning (sML) application of Artificial-Intelligence holds a tremendous promise in solving these issues. AIMS: To sML-based discriminating validity of resting-state electroencephalographic (EEG) quantitative features in classifying SCZ from healthy and, positive (PS) and negative symptom (NS) subgroups, using a high-density recording. SETTINGS AND DESIGN: Data collected at a tertiary care mental-health institute using a cross-sectional study design and analyzed at a premier Engineering Institute. MATERIALS AND METHODS: Data of 38-SCZ patients and 20-healthy controls were retrieved. The positive-negative subgroup classification was done using Positive and Negative Syndrome Scale operational-criteria. EEG was recorded using 256-channel high-density equipment. Eight priori regions-of-interest were selected. Six-level wavelet decomposition and Kernel-Support Vector Machine (SVM) method were used for feature extraction and data classification. STATISTICAL ANALYSIS: Mann–Whitney test was used for comparison of machine learning-features. Accuracy, sensitivity, specificity, and area under receiver operating characteristics-curve were measured as discriminatory indices of classifications. RESULTS: Accuracy of classifying SCZ from healthy and PS from NS SCZ, were 78.95% and 89.29%, respectively. While beta and gamma frequency related features most accurately classified SCZ from healthy controls, delta and theta frequency related features most accurately classified positive from negative SCZ. Inferior frontal gyrus features most accurately contributed to both the classificatory instances. CONCLUSIONS: SVM-based classification and sub-classification of SCZ using EEG data is optimal and might help in improving the “validity” and reducing the “heterogeneity” in the diagnosis of SCZ. These results might only be generalized to acute and moderately ill male SCZ patients.
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spelling pubmed-73684472020-08-07 Artificial intelligence-based classification of schizophrenia: A high density electroencephalographic and support vector machine study Tikka, Sai Krishna Singh, Bikesh Kumar Nizamie, S. Haque Garg, Shobit Mandal, Sunandan Thakur, Kavita Singh, Lokesh Kumar Indian J Psychiatry Original Article (Marfatia Award) BACKGROUND: Interview-based schizophrenia (SCZ) diagnostic methods are not completely valid. Moreover, SCZ-the disease entity is very heterogeneous. Supervised-Machine-Learning (sML) application of Artificial-Intelligence holds a tremendous promise in solving these issues. AIMS: To sML-based discriminating validity of resting-state electroencephalographic (EEG) quantitative features in classifying SCZ from healthy and, positive (PS) and negative symptom (NS) subgroups, using a high-density recording. SETTINGS AND DESIGN: Data collected at a tertiary care mental-health institute using a cross-sectional study design and analyzed at a premier Engineering Institute. MATERIALS AND METHODS: Data of 38-SCZ patients and 20-healthy controls were retrieved. The positive-negative subgroup classification was done using Positive and Negative Syndrome Scale operational-criteria. EEG was recorded using 256-channel high-density equipment. Eight priori regions-of-interest were selected. Six-level wavelet decomposition and Kernel-Support Vector Machine (SVM) method were used for feature extraction and data classification. STATISTICAL ANALYSIS: Mann–Whitney test was used for comparison of machine learning-features. Accuracy, sensitivity, specificity, and area under receiver operating characteristics-curve were measured as discriminatory indices of classifications. RESULTS: Accuracy of classifying SCZ from healthy and PS from NS SCZ, were 78.95% and 89.29%, respectively. While beta and gamma frequency related features most accurately classified SCZ from healthy controls, delta and theta frequency related features most accurately classified positive from negative SCZ. Inferior frontal gyrus features most accurately contributed to both the classificatory instances. CONCLUSIONS: SVM-based classification and sub-classification of SCZ using EEG data is optimal and might help in improving the “validity” and reducing the “heterogeneity” in the diagnosis of SCZ. These results might only be generalized to acute and moderately ill male SCZ patients. Wolters Kluwer - Medknow 2020 2020-05-15 /pmc/articles/PMC7368447/ /pubmed/32773870 http://dx.doi.org/10.4103/psychiatry.IndianJPsychiatry_91_20 Text en Copyright: © 2020 Indian Journal of Psychiatry http://creativecommons.org/licenses/by-nc-sa/4.0 This is an open access journal, and articles are distributed under the terms of the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 License, which allows others to remix, tweak, and build upon the work non-commercially, as long as appropriate credit is given and the new creations are licensed under the identical terms.
spellingShingle Original Article (Marfatia Award)
Tikka, Sai Krishna
Singh, Bikesh Kumar
Nizamie, S. Haque
Garg, Shobit
Mandal, Sunandan
Thakur, Kavita
Singh, Lokesh Kumar
Artificial intelligence-based classification of schizophrenia: A high density electroencephalographic and support vector machine study
title Artificial intelligence-based classification of schizophrenia: A high density electroencephalographic and support vector machine study
title_full Artificial intelligence-based classification of schizophrenia: A high density electroencephalographic and support vector machine study
title_fullStr Artificial intelligence-based classification of schizophrenia: A high density electroencephalographic and support vector machine study
title_full_unstemmed Artificial intelligence-based classification of schizophrenia: A high density electroencephalographic and support vector machine study
title_short Artificial intelligence-based classification of schizophrenia: A high density electroencephalographic and support vector machine study
title_sort artificial intelligence-based classification of schizophrenia: a high density electroencephalographic and support vector machine study
topic Original Article (Marfatia Award)
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7368447/
https://www.ncbi.nlm.nih.gov/pubmed/32773870
http://dx.doi.org/10.4103/psychiatry.IndianJPsychiatry_91_20
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