Известия Саратовского университета.

Новая серия. Серия Физика

ISSN 1817-3020 (Print)
ISSN 2542-193X (Online)


Для цитирования:

Волков И. Ю., Сагайдачный А. А., Фомин А. В. Фотоплетизмографическая визуализация гемодинамики и двухмерная оксиметрия // Известия Саратовского университета. Новая серия. Серия Физика. 2022. Т. 22, вып. 1. С. 15-45. DOI: 10.18500/1817-3020-2022-22-1-15-45

Статья опубликована на условиях лицензии Creative Commons Attribution 4.0 International (CC-BY 4.0).
Опубликована онлайн: 
31.03.2022
Полный текст в формате PDF(Ru):
(загрузок: 52)
Язык публикации: 
русский
Тип статьи: 
Научная статья
УДК: 
57.087.3:612.1

Фотоплетизмографическая визуализация гемодинамики и двухмерная оксиметрия

Авторы: 
Волков Иван Юрьевич, Саратовский национальный исследовательский государственный университет имени Н. Г. Чернышевского
Сагайдачный Андрей Александрович, Саратовский национальный исследовательский государственный университет имени Н. Г. Чернышевского
Фомин Андрей Владимирович, Саратовский национальный исследовательский государственный университет имени Н. Г. Чернышевского
Аннотация: 

Выполнен обзор современных зарубежных и российских научных работ, посвященных активно развивающимся методам фотоплетизмографической визуализации (ФПГ-визуализации) пульсаций объема крови в сосудах и бесконтактной двухмерной оксиметрии на поверхности тела человека. Рассмотрены физические основы и технические аспекты ФПГ-визуализации и оксиметрии. Показан спектр физиологических параметров, доступных для анализа методом ФПГ-визуализации. Обсуждаются возможные направления дальнейшего развития технологии ФПГ-визуализации. Описаны возможности бесконтактного определения насыщенности крови кислородом SpO2 (пульсовой сатурации O2). Подчеркивается актуальность дистанционного определения уровня оксигенации в связи с распространением новой коронавирусной инфекции SARS-CoV-2(COVID-19). Большинство рассматриваемых работ охватывают период 2010–2021 гг.

Благодарности: 
Обзор возможностей определения оксигенации на основе технологии фотоплетизмографической визуализации выполнен при поддержке Совета по грантам Президента Российской Федерации для государственной поддержки молодых российских ученых – кандидатов наук (проект № МК-140.2021.4); обзор возможностей верификации тепловизионных данных методом фотоплетизмографической визуализации выполнен при финансовой поддержке Российского научного фонда (проект № 21-75-00035.
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Поступила в редакцию: 
29.12.2021
Принята к публикации: 
04.02.2022
Опубликована: 
31.03.2022