Медицинская радиология и радиационная безопасность. 2022. Том 67. № 4

А.В. Капишников1, Е.Н. Суровцев1,2, Ю.Д. Удалов3

МАГНИТНО-РЕЗОНАНСНАЯ ТОМОГРАФИЯ
ПЕРВИЧНЫХ ВНЕМОЗГОВЫХ ОПУХОЛЕЙ:
ПРОБЛЕМЫ ДИАГНОСТИКИ И ПЕРСПЕКТИВЫ РАДИОМИКИ

1 Самарский государственный медицинский университет Минздрава России, Самара, Россия. 

2 Лечебно-диагностический центр Международного института биологических систем имени Сергея Березина, Тольятти, Россия.

3 Федеральный научно-клинический центр медицинской радиологии и онкологии ФМБА России, Димитровград, Россия.

Контактное лицо: Капишников Александр Викторович, e-mail: This email address is being protected from spambots. You need JavaScript enabled to view it.

СОДЕРЖАНИЕ

Введение

МРТ семиотика в дифференциальной диагностике первичных внемозговых опухолей (ПВО)

Локализация опухоли и её связь с анатомическими структурами

Неоднородность (гетерогенность) опухоли

Границы опухоли и перитуморальный отек

Измеряемый коэффициент диффузии (ИКД)

Дуральный «хвост»

Информационные технологии анализа МРТ изображений и радиомика

Радиомика в дифференциальной диагностике ПВО

Заключение

Ключевые слова: магнитно-резонансная томография, первичные внемозговые опухоли, менингиомы, радиомика, информационные технологии

Для цитирования: Капишников А.В., Суровцев Е.Н., Удалов Ю.Д. Магнитно-резонансная томография первичных внемозговых опухолей: проблемы диагностики и перспективы радиомики // Медицинская радиология и радиационная безопасность. 2022. Т. 67. № 4. С. 49–56. DOI: 10.33266/1024-6177-2022-67-4-49-56

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Поступила: 20.04.2022. Принята к публикации: 25.05.2022.