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EEG p-adic quantum potential accurately identifies depression, schizophrenia and cognitive decline

No diagnostic or predictive instruments to help with early diagnosis and timely therapeutic intervention are available as yet for most neuro-psychiatric disorders. A quantum potential mean and variability score (qpmvs), to identify neuropsychiatric and neurocognitive disorders with high accuracy, ba...

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Autores principales: Shor, Oded, Glik, Amir, Yaniv-Rosenfeld, Amit, Valevski, Avi, Weizman, Abraham, Khrennikov, Andrei, Benninger, Felix
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8341571/
https://www.ncbi.nlm.nih.gov/pubmed/34351992
http://dx.doi.org/10.1371/journal.pone.0255529
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author Shor, Oded
Glik, Amir
Yaniv-Rosenfeld, Amit
Valevski, Avi
Weizman, Abraham
Khrennikov, Andrei
Benninger, Felix
author_facet Shor, Oded
Glik, Amir
Yaniv-Rosenfeld, Amit
Valevski, Avi
Weizman, Abraham
Khrennikov, Andrei
Benninger, Felix
author_sort Shor, Oded
collection PubMed
description No diagnostic or predictive instruments to help with early diagnosis and timely therapeutic intervention are available as yet for most neuro-psychiatric disorders. A quantum potential mean and variability score (qpmvs), to identify neuropsychiatric and neurocognitive disorders with high accuracy, based on routine EEG recordings, was developed. Information processing in the brain is assumed to involve integration of neuronal activity in various areas of the brain. Thus, the presumed quantum-like structure allows quantification of connectivity as a function of space and time (locality) as well as of instantaneous quantum-like effects in information space (non-locality). EEG signals reflect the holistic (nonseparable) function of the brain, including the highly ordered hierarchy of the brain, expressed by the quantum potential according to Bohmian mechanics, combined with dendrogram representation of data and p-adic numbers. Participants consisted of 230 participants including 28 with major depression, 42 with schizophrenia, 65 with cognitive impairment, and 95 controls. Routine EEG recordings were used for the calculation of qpmvs based on ultrametric analyses, closely coupled with p-adic numbers and quantum theory. Based on area under the curve, high accuracy was obtained in separating healthy controls from those diagnosed with schizophrenia (p<0.0001), depression (p<0.0001), Alzheimer’s disease (AD; p<0.0001), and mild cognitive impairment (MCI; p<0.0001) as well as in differentiating participants with schizophrenia from those with depression (p<0.0001), AD (p<0.0001) or MCI (p<0.0001) and in differentiating people with depression from those with AD (p<0.0001) or MCI (p<0.0001). The novel EEG analytic algorithm (qpmvs) seems to be a useful and sufficiently accurate tool for diagnosis of neuropsychiatric and neurocognitive diseases and may be able to predict disease course and response to treatment.
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spelling pubmed-83415712021-08-06 EEG p-adic quantum potential accurately identifies depression, schizophrenia and cognitive decline Shor, Oded Glik, Amir Yaniv-Rosenfeld, Amit Valevski, Avi Weizman, Abraham Khrennikov, Andrei Benninger, Felix PLoS One Research Article No diagnostic or predictive instruments to help with early diagnosis and timely therapeutic intervention are available as yet for most neuro-psychiatric disorders. A quantum potential mean and variability score (qpmvs), to identify neuropsychiatric and neurocognitive disorders with high accuracy, based on routine EEG recordings, was developed. Information processing in the brain is assumed to involve integration of neuronal activity in various areas of the brain. Thus, the presumed quantum-like structure allows quantification of connectivity as a function of space and time (locality) as well as of instantaneous quantum-like effects in information space (non-locality). EEG signals reflect the holistic (nonseparable) function of the brain, including the highly ordered hierarchy of the brain, expressed by the quantum potential according to Bohmian mechanics, combined with dendrogram representation of data and p-adic numbers. Participants consisted of 230 participants including 28 with major depression, 42 with schizophrenia, 65 with cognitive impairment, and 95 controls. Routine EEG recordings were used for the calculation of qpmvs based on ultrametric analyses, closely coupled with p-adic numbers and quantum theory. Based on area under the curve, high accuracy was obtained in separating healthy controls from those diagnosed with schizophrenia (p<0.0001), depression (p<0.0001), Alzheimer’s disease (AD; p<0.0001), and mild cognitive impairment (MCI; p<0.0001) as well as in differentiating participants with schizophrenia from those with depression (p<0.0001), AD (p<0.0001) or MCI (p<0.0001) and in differentiating people with depression from those with AD (p<0.0001) or MCI (p<0.0001). The novel EEG analytic algorithm (qpmvs) seems to be a useful and sufficiently accurate tool for diagnosis of neuropsychiatric and neurocognitive diseases and may be able to predict disease course and response to treatment. Public Library of Science 2021-08-05 /pmc/articles/PMC8341571/ /pubmed/34351992 http://dx.doi.org/10.1371/journal.pone.0255529 Text en © 2021 Shor et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Shor, Oded
Glik, Amir
Yaniv-Rosenfeld, Amit
Valevski, Avi
Weizman, Abraham
Khrennikov, Andrei
Benninger, Felix
EEG p-adic quantum potential accurately identifies depression, schizophrenia and cognitive decline
title EEG p-adic quantum potential accurately identifies depression, schizophrenia and cognitive decline
title_full EEG p-adic quantum potential accurately identifies depression, schizophrenia and cognitive decline
title_fullStr EEG p-adic quantum potential accurately identifies depression, schizophrenia and cognitive decline
title_full_unstemmed EEG p-adic quantum potential accurately identifies depression, schizophrenia and cognitive decline
title_short EEG p-adic quantum potential accurately identifies depression, schizophrenia and cognitive decline
title_sort eeg p-adic quantum potential accurately identifies depression, schizophrenia and cognitive decline
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8341571/
https://www.ncbi.nlm.nih.gov/pubmed/34351992
http://dx.doi.org/10.1371/journal.pone.0255529
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