Радиомика — фронтир современной ревматологии: достижения и перспективы визуализации поражения органов грудной клетки
https://doi.org/10.47360/1995-4484-2025-24-36
Аннотация
На примере ревматологии в статье рассмотрены современные тенденции развития цифровых технологий в медицине; обсуждается значение радиомики, совмещающей радиологию, математическое моделирование и глубокое машинное обучение. Текстурный анализ изображений компьютерной томографии и других методов визуализации более глубоко характеризует патофизиологические особенности тканей и может рассматриваться как неинвазивная «виртуальная биопсия». Показано, что радиомика увеличивает качество диагностического и предсказательного моделирования. Обсуждается потенциал применения радиомических моделей для изучения и прогнозирования поражения органов грудной клетки при различных патологических состояниях, включая иммуновоспалительные ревматические заболевания (РЗ). Прогресс в диагностике и лечении РЗ может быть обеспечен интеграцией радиомики и омиксных технологий. Цифровая эра, открывающая широкие перспективы для прогресса в ревматологии, несомненно, потребует комплексного решения новых проблем, технических, юридических и этических.
Об авторах
Т. В. БекетоваРоссия
Бекетова Татьяна Валентиновна.
121356, Москва, ул. Маршала Тимошенко, 15; 115522, Москва, Каширское шоссе, 34а; 107023, Москва, ул. Большая Семеновская, 38
Конфликт интересов:
Нет
Е. Л. Насонов
Россия
115522, Москва, Каширское шоссе, 34а
Конфликт интересов:
Нет
М. А. Алексеев
Россия
107023, Москва, ул. Большая Семеновская, 38
Конфликт интересов:
Нет
Е. И. Щепихин
Россия
121356, Москва, ул. Маршала Тимошенко, 15
Конфликт интересов:
Нет
Ю. Н. Филиппович
Россия
107023, Москва, ул. Большая Семеновская, 38
Конфликт интересов:
Нет
А. С. Кружалов
Россия
107023, Москва, ул. Большая Семеновская, 38
Конфликт интересов:
Нет
А. Ю. Филиппович
Россия
107023, Москва, ул. Большая Семеновская, 38
Конфликт интересов:
Нет
В. А. Кульбак
Россия
117997, Москва, ул. Большая Серпуховская, 27; 119991, Москва, Ломоносовский просп., 27, корп. 1
Конфликт интересов:
Нет
Д. А. Аргунова
Россия
117997, Москва, ул. Большая Серпуховская, 27
Конфликт интересов:
Нет
П. Г. Шахнович
Россия
121356, Москва, ул. Маршала Тимошенко, 15
Конфликт интересов:
Нет
Т. А. Праздничных
Россия
119991, Москва, Ломоносовский просп., 27, корп. 1
Конфликт интересов:
Нет
М. П. Обидин
Россия
119991, Москва, Ломоносовский просп., 27, корп. 1
Конфликт интересов:
Нет
Т. Н. Краснова
Россия
119991, Москва, Ломоносовский просп., 27, корп. 1
Конфликт интересов:
Нет
Н. Н. Владимирова
Россия
121356, Москва, ул. Маршала Тимошенко, 15
Конфликт интересов:
Нет
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Рецензия
Для цитирования:
Бекетова Т.В., Насонов Е.Л., Алексеев М.А., Щепихин Е.И., Филиппович Ю.Н., Кружалов А.С., Филиппович А.Ю., Кульбак В.А., Аргунова Д.А., Шахнович П.Г., Праздничных Т.А., Обидин М.П., Краснова Т.Н., Владимирова Н.Н. Радиомика — фронтир современной ревматологии: достижения и перспективы визуализации поражения органов грудной клетки. Научно-практическая ревматология. 2025;63(1):24-36. https://doi.org/10.47360/1995-4484-2025-24-36
For citation:
Beketova T.V., Nasonov E.L., Alekseev M.A., Shchepikhin E.I., Philippovich Yu.N., Kruzhalov A.S., Philippovich A.Yu., Kulbak V.A., Argunova D.A., Shakhnovich P.G., Prazdnichnykh T.A., Obidin M.P., Krasnova T.N., Vladimirova N.N. Radiomics as a new frontier in modern rheumatology: Chest pathology visualization advances and prospects. Rheumatology Science and Practice. 2025;63(1):24-36. (In Russ.) https://doi.org/10.47360/1995-4484-2025-24-36