Коронавирусная пандемия: факты распространения и эволюции опасной инфекции и технологии противостояния

Авторы

  • Матвей Владимирович Спринджук Объединенный институт проблем информатики НАН Беларуси; 220012, Беларусь, Минск, ул. Сурганова, 6 https://orcid.org/0000-0001-9500-2954
  • Василий Иванович Берник Институт математики НАН Беларуси; 220072, Беларусь, Минск, ул. Сурганова, 11 https://orcid.org/0000-0001-8096-1079
  • Балтын Бэтгэрэл Институт математики и цифровых технологий Монгольской Академии наук; 13330, Монголия, Улан-Батор, р-н Баянзурх, пр-т Мира, 54Б https://orcid.org/0000-0001-6322-275X
  • Александр Станиславович Владыко Республиканский научно-практический центр эпидемиологии и микробиологии; 220114, Беларусь, Минск, ул. Филимонова, 23 https://orcid.org/0000-0001-6927-5043
  • Леонид Петрович Титов Республиканский научно-практический центр эпидемиологии и микробиологии; 220114, Беларусь, Минск, ул. Филимонова, 23 https://orcid.org/0000-0002-4524-3730
  • Елена Михайловна Скрягина Республиканский научно-практический центр пульмонологии и фтизиатрии; 220053, Беларусь, Минск, Долгиновский тракт, 157 https://orcid.org/0000-0002-1460-0272
  • Александр Егорович Скрягин Республиканский научно-практический центр пульмонологии и фтизиатрии; 220053, Беларусь, Минск, Долгиновский тракт, 157
  • Наталья Викторовна Яцкевич Республиканский научно-практический центр пульмонологии и фтизиатрии; 220053, Беларусь, Минск, Долгиновский тракт, 157 https://orcid.org/0000-0001-8691-1849
  • Андрей Петрович Кончиц Институт леса НАН Беларуси; 246050, Беларусь, Гомель, ул. Пролетарская, 71 https://orcid.org/0000-0002-8823-0630
  • Дмитрий Александрович Климук Республиканский научно-практический центр пульмонологии и фтизиатрии; 220053, Беларусь, Минск, Долгиновский тракт, 157 https://orcid.org/0000-0002-0222-5583
  • Николай Иванович Калоша Институт математики НАН Беларуси; 220072, Беларусь, Минск, ул. Сурганова, 11 https://orcid.org/0000-0001-5266-9900
  • Алексей Сергеевич Кудин Институт математики НАН Беларуси; 220072, Беларусь, Минск, ул. Сурганова, 11 https://orcid.org/0000-0002-2059-4470
  • Татьяна Николаевна Глинская Республиканский научно-практический центр пульмонологии и фтизиатрии; 220053, Беларусь, Минск, Долгиновский тракт, 157 https://orcid.org/0000-0002-5891-5989
  • Варвара Валерьевна Солодовникова Республиканский научно-практический центр пульмонологии и фтизиатрии; 220053, Беларусь, Минск, Долгиновский тракт, 157 https://orcid.org/0000-0003-1655-4000

DOI:

https://doi.org/10.33408/2519-237X.2021.5-4.466

Ключевые слова:

коронавирус, пандемия, биоинформатика, системы медицинского назначения, геномика, особо опасные инфекции, математическое моделирование, иммуноинформатика, медицинские дроны, прогнозирование, противовирусная терапия

Аннотация

Цель. Междисциплинарно изучить и кратко описать ключевые вопросы эпидемиологии, этиологии коронавирусной инфекции, сопутствующих инфекций (в частности, туберкулеза и ВИЧ-инфекции), а также вопросы применения арсенала средств медицинской кибернетики, биоинформатики и других смежных физико-математических и технических наук для решения задач в области эпидемиологии, моделирования и мониторинга заболевания, медицинской профилактики и лечения пациентов.

Методы. Анализ публикаций из общедоступных баз данных по проблеме исследования: Google scholar (https://scholar.google.ru), EBSCO (https://www.ebsco.com), КиберЛенинка (https://cyberleninka.ru), PubMed (https://pubmed.ncbi.nlm.nih.gov), IEEE explore (https://ieeexplore.ieee.org/Xplore/home.jsp), BioRxiv (https://www.biorxiv.org).

Результаты. Освещены современные данные этиологии и эпидемиологии новой коронавирусной инфекции. Представлены возможности применения в данной предметной области современных методов биоинформатики и искусственного интеллекта, математического моделирования и прогноза. Отображены избранные аспекты применения иммуноинформатики и разработки эффективных и безопасных вакцин, реальные возможности применения медицинских дронов для борьбы с СOVID-19.

Область применения исследований. Материал статьи может быть использован как полезный источник информации для ученых, работников медицинских, биологических, биотехнологических и смежных специальностей, а также в образовательном процессе, реализуемом учреждениями высшего образования и дополнительного образования специалистов. Cтатья будет интересна широкому кругу читателей.

Биографии авторов

Матвей Владимирович Спринджук, Объединенный институт проблем информатики НАН Беларуси; 220012, Беларусь, Минск, ул. Сурганова, 6

лаборатория математической кибернетики, старший научный сотрудник; кандидат технических наук

Василий Иванович Берник, Институт математики НАН Беларуси; 220072, Беларусь, Минск, ул. Сурганова, 11

отдел теории чисел, главный научный сотрудник; доктор физико-математических наук, профессор

Балтын Бэтгэрэл, Институт математики и цифровых технологий Монгольской Академии наук; 13330, Монголия, Улан-Батор, р-н Баянзурх, пр-т Мира, 54Б

ученый секретарь; кандидат физико-математических наук, профессор

Александр Станиславович Владыко, Республиканский научно-практический центр эпидемиологии и микробиологии; 220114, Беларусь, Минск, ул. Филимонова, 23

лаборатория биотехнологии и иммунодиагностики особо опасных инфекций, главный научный сотрудник; доктор медицинских наук, профессор

Леонид Петрович Титов, Республиканский научно-практический центр эпидемиологии и микробиологии; 220114, Беларусь, Минск, ул. Филимонова, 23

лаборатория экспериментальной иммунологии, заведующий лабораторией; доктор медицинских наук, профессор, член-корреспондент НАН Беларуси

Елена Михайловна Скрягина, Республиканский научно-практический центр пульмонологии и фтизиатрии; 220053, Беларусь, Минск, Долгиновский тракт, 157

заместитель директора по научной работе; доктор медицинских наук, доцент

Александр Егорович Скрягин, Республиканский научно-практический центр пульмонологии и фтизиатрии; 220053, Беларусь, Минск, Долгиновский тракт, 157

врач-фтизиатр, анестезиолог-реаниматолог; кандидат медицинских наук, доцент

Наталья Викторовна Яцкевич, Республиканский научно-практический центр пульмонологии и фтизиатрии; 220053, Беларусь, Минск, Долгиновский тракт, 157

ведущий научный сотрудник; кандидат медицинских наук, доцент

Андрей Петрович Кончиц, Институт леса НАН Беларуси; 246050, Беларусь, Гомель, ул. Пролетарская, 71

лаборатория лесной селекции и семеноводства, ведущий научный сотрудник; кандидат биологических наук

Дмитрий Александрович Климук, Республиканский научно-практический центр пульмонологии и фтизиатрии; 220053, Беларусь, Минск, Долгиновский тракт, 157

отдел фтизиопульмонологического мониторинга и оценки, заведующий отделом

Николай Иванович Калоша, Институт математики НАН Беларуси; 220072, Беларусь, Минск, ул. Сурганова, 11

отдел теории чисел, старший научный сотрудник; кандидат физико-математических наук

Алексей Сергеевич Кудин, Институт математики НАН Беларуси; 220072, Беларусь, Минск, ул. Сурганова, 11

отдел теории чисел, старший научный сотрудник; кандидат физико-математических наук

Татьяна Николаевна Глинская, Республиканский научно-практический центр пульмонологии и фтизиатрии; 220053, Беларусь, Минск, Долгиновский тракт, 157

ученый секретарь; кандидат медицинских наук, доцент

Варвара Валерьевна Солодовникова, Республиканский научно-практический центр пульмонологии и фтизиатрии; 220053, Беларусь, Минск, Долгиновский тракт, 157

отдел лабораторной диагностики и лечения туберкулеза, старший научный сотрудник

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2021-11-22

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Спринджук, М. В., Берник, В. И., Бэтгэрэл, Б., Владыко, А. С., Титов, Л. П., Скрягина, Е. М., Скрягин, А. Е., Яцкевич, Н. В., Кончиц, А. П., Климук, Д. А., Калоша, Н. И., Кудин, А. С., Глинская, Т. Н. и Солодовникова, В. В. (2021) «Коронавирусная пандемия: факты распространения и эволюции опасной инфекции и технологии противостояния», Вестник Университета гражданской защиты МЧС Беларуси, 5(4), сс. 466–496. doi: 10.33408/2519-237X.2021.5-4.466.

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Безопасность в чрезвычайных ситуациях (технические науки)

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