ISSN 2071-8594

Российская академия наук

Главный редактор

Академик С. В. Емельянов

А.А. Мелдо, Л.В. Уткин "Обзор методов машинного обучения в диагностике рака легкого"

Аннотация.

В работе представлен обзор методов машинного обучения в диагностике рака легкого и особенностей интеллектуальных систем, классифицирующих опухоли на изображениях, полученных на основе компьютерной томографии. Рассматриваются основные этапы обнаружения и классификации образований в легких. Основное внимание уделяется анализу интеллектуальных составляющих систем диагностики на основе алгоритмов глубокого и «неглубокого» обучения.

Ключевые слова:

искусственный интеллект, рак легкого, классификация, компьютерная томография, система диагностики.

Стр. 28-38.

DOI 10.14357/20718594180313

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