Возможности денситометрии в оценке диффузных изменений паренхимы легких (обзор литературы)

Автор: Сучилова М.М., Блохин И.А., Коденко М.Р., Решетников Р.В., Николаев А.Е., Омелянская О.В., Владзимирский А.В.

Журнал: Сибирский журнал клинической и экспериментальной медицины @cardiotomsk

Рубрика: Обзоры и лекции

Статья в выпуске: 3 т.38, 2023 года.

Бесплатный доступ

Данные, полученные при проведении компьютерной томографии (КТ) органов грудной клетки, можно проанализировать не только визуально, но и численно. Количественная оценка позволяет более точно и объективно оценить степень тяжести заболевания. Наиболее изученным способом количественной оценки данных КТ является денситометрия - автоматический анализ плотностных показателей легких, выраженных в единицах Хаунсфилда. Данный обзор посвящен типам заболеваний, для которых возможна формализация диагностической задачи и применение денситометрии, а также ограничениям метода и способам их преодоления.

Денситометрия, компьютерная томография, низкодозная компьютерная томография

Короткий адрес: https://sciup.org/149143644

IDR: 149143644   |   DOI: 10.29001/2073-8552-2023-39-3-23-31

Список литературы Возможности денситометрии в оценке диффузных изменений паренхимы легких (обзор литературы)

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