ЦИФРОВА ПАТОЛОГІЯ ЯК ІННОВАЦІЙНИЙ ІНСТРУМЕНТ ДЛЯ ПОКРАЩЕННЯ ДІАГНОСТИКИ ТА ЛІКУВАННЯ РАКУ
DOI:
https://doi.org/10.15407/exp-oncology.2024.04.289Анотація
Понад століття «золотим» стандартом діагностики злоякісних новоутворень є патогістологія. Разом з тим невпинний розвиток сучасних технологій приводить до кардинальної трансформації цієї галузі і появи цифрової патології (ЦП). Основними перевагами ЦП є зручність зберігання і передачі даних, можливість автоматизації діагностичних процесів на основі застосування технологій штучного інтелекту. Впровадження ЦП в клінічну практику в перспективі дозволить пришвидшити процес дослідження гістологічних зразків, знизити витрати на їх проведення і накопичити великі масиви даних для подальших наукових досліджень. Водночас розвиток ЦП стикається з певними викликами, зокрема, необхідністю технічного переоснащення лабораторій, забезпечення кібербезпеки даних і підготовки кваліфікованих кадрів.
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