Геморрагический инсульт: нейрофизиологические предикторы острого периода

Background. Stroke is the most important medical and social problem due to its high proportion of morbidity, disability and mortality among patients of working age.Aims. The aim of the study is to predict the course of the acute period of hemorrhagic parenchymal stroke (supratentorial hemispheric he...

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Main Authors: I. S. Kurepina, R. A. Zorin, V. A. Zhadnov, O. A. Sorokin
Format: Article
Language:Russian
Published: Scientific Сentre for Family Health and Human Reproduction Problems 2020-11-01
Series:Acta Biomedica Scientifica
Subjects:
Online Access:https://www.actabiomedica.ru/jour/article/view/2439
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spelling doaj-f3785d738e774a6681f3fa885cc18b6b2021-08-17T13:53:05ZrusScientific Сentre for Family Health and Human Reproduction ProblemsActa Biomedica Scientifica2541-94202587-95962020-11-0155475210.29413/ABS.2020-5.5.62060Геморрагический инсульт: нейрофизиологические предикторы острого периодаI. S. Kurepina0R. A. Zorin1V. A. Zhadnov2O. A. Sorokin3Ryazan State Medical University named after academician I.P. PavlovRyazan State Medical University named after academician I.P. PavlovRyazan State Medical University named after academician I.P. PavlovRyazan Regional Clinical HospitalBackground. Stroke is the most important medical and social problem due to its high proportion of morbidity, disability and mortality among patients of working age.Aims. The aim of the study is to predict the course of the acute period of hemorrhagic parenchymal stroke (supratentorial hemispheric hematomas) based on neuroimaging data (localization, lateralization, hematoma volume) and neurophysiological data.Materials and methods. 86 patients suffering from hemorrhagic stroke of supratentorial localization were examined. The level of consciousness, cognitive functions, and neuroimaging data were evaluated (EEG, heart rate variability,  event-related auditory potential). The condition of patients on admission and over time was assessed on the basis of the Glasgow Coma Scale (GCS), the expanded Glasgow Coma Scale and the NIHSS.Results. Based on the results of cluster analysis and expert assessments, two groups of patients were identified: with a relatively favorable and unfavorable course of the acute period of hemorrhagic stroke. Differences in neurophysiological parameters in the groups were established: an increase in the power of theta  oscillations and a decrease in the frequency of theta oscillations of the electroencephalogram, a decrease in the amplitude of the N2P2-component of the cognitive evoked P300 potential, an increase in heart rate in an unfavorable course. An artificial neural network has been created to predict the course of the acute period of hemorrhagic stroke upon admission.Conclusion. Machine learning methods allow creating algorithms for predicting the level of consciousness of patients, the acute period of development of intracerebral hematomas of supratentorial localization, the possible development of disease outcomes in patients with non-traumatic intracerebral hematomas based on neurophysiological parameters, as well as the volume of hematoma. A correlate of the unfavorable dynamics turned out to be a reduced bioelectrogenesis in the associative zones of the cortex during stimulus recognition  and decision-making, as well as the unfavorable dynamics of the level of consciousness corresponded to a decrease in the amplitude and greater latency of P2N2-peaks, reflecting insufficient activation of the cortical structures during stimulus recognition.https://www.actabiomedica.ru/jour/article/view/2439hemorrhagic strokenhisscluster analysisneural network
collection DOAJ
language Russian
format Article
sources DOAJ
author I. S. Kurepina
R. A. Zorin
V. A. Zhadnov
O. A. Sorokin
spellingShingle I. S. Kurepina
R. A. Zorin
V. A. Zhadnov
O. A. Sorokin
Геморрагический инсульт: нейрофизиологические предикторы острого периода
Acta Biomedica Scientifica
hemorrhagic stroke
nhiss
cluster analysis
neural network
author_facet I. S. Kurepina
R. A. Zorin
V. A. Zhadnov
O. A. Sorokin
author_sort I. S. Kurepina
title Геморрагический инсульт: нейрофизиологические предикторы острого периода
title_short Геморрагический инсульт: нейрофизиологические предикторы острого периода
title_full Геморрагический инсульт: нейрофизиологические предикторы острого периода
title_fullStr Геморрагический инсульт: нейрофизиологические предикторы острого периода
title_full_unstemmed Геморрагический инсульт: нейрофизиологические предикторы острого периода
title_sort геморрагический инсульт: нейрофизиологические предикторы острого периода
publisher Scientific Сentre for Family Health and Human Reproduction Problems
series Acta Biomedica Scientifica
issn 2541-9420
2587-9596
publishDate 2020-11-01
description Background. Stroke is the most important medical and social problem due to its high proportion of morbidity, disability and mortality among patients of working age.Aims. The aim of the study is to predict the course of the acute period of hemorrhagic parenchymal stroke (supratentorial hemispheric hematomas) based on neuroimaging data (localization, lateralization, hematoma volume) and neurophysiological data.Materials and methods. 86 patients suffering from hemorrhagic stroke of supratentorial localization were examined. The level of consciousness, cognitive functions, and neuroimaging data were evaluated (EEG, heart rate variability,  event-related auditory potential). The condition of patients on admission and over time was assessed on the basis of the Glasgow Coma Scale (GCS), the expanded Glasgow Coma Scale and the NIHSS.Results. Based on the results of cluster analysis and expert assessments, two groups of patients were identified: with a relatively favorable and unfavorable course of the acute period of hemorrhagic stroke. Differences in neurophysiological parameters in the groups were established: an increase in the power of theta  oscillations and a decrease in the frequency of theta oscillations of the electroencephalogram, a decrease in the amplitude of the N2P2-component of the cognitive evoked P300 potential, an increase in heart rate in an unfavorable course. An artificial neural network has been created to predict the course of the acute period of hemorrhagic stroke upon admission.Conclusion. Machine learning methods allow creating algorithms for predicting the level of consciousness of patients, the acute period of development of intracerebral hematomas of supratentorial localization, the possible development of disease outcomes in patients with non-traumatic intracerebral hematomas based on neurophysiological parameters, as well as the volume of hematoma. A correlate of the unfavorable dynamics turned out to be a reduced bioelectrogenesis in the associative zones of the cortex during stimulus recognition  and decision-making, as well as the unfavorable dynamics of the level of consciousness corresponded to a decrease in the amplitude and greater latency of P2N2-peaks, reflecting insufficient activation of the cortical structures during stimulus recognition.
topic hemorrhagic stroke
nhiss
cluster analysis
neural network
url https://www.actabiomedica.ru/jour/article/view/2439
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AT oasorokin gemorragičeskijinsulʹtnejrofiziologičeskieprediktoryostrogoperioda
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