Система для напівавтоматичного класифікації тканин з використанням оптичного дифрактометра для аналізу біополімерних структур.

Автор(и)

  • A. A. Skrynnik Институт Энергетических Проблем Химической Физики РАН им. В.Л. Тальрозе, Russian Federation
  • V. A. Oganessian Институт Энергетических Проблем Химической Физики РАН им. В.Л. Тальрозе, Russian Federation
  • A. G. Jablokov Институт Энергетических Проблем Химической Физики РАН им. В.Л. Тальрозе, Russian Federation
  • O. V. Gradov Институт Химической Физики им. Н.Н. Семенова РАН, г. Москва, Российская Федерация, Russian Federation https://orcid.org/0000-0001-5118-6261

DOI:

https://doi.org/10.26641/1997-9665.2018.3.164-171

Ключові слова:

ідентифікація тканин, класифікація тканин, регулярність структури гістологічних зразків, періодичність гістологічних зразків, голографічний аналіз гістологічних зразків, проекційні трансформанти, лазерна біофізика

Анотація

У роботі описується інструментальний стенд для напівавтоматичної класифікації тканин, заснований на конструкції, описаній Б. Вайнштейном у статті по тривимірній електронної мікроскопії біополімерних структур. Фазографічне голографічне і кореляційно-спектральне вимірювання на даному стенді можуть бути розширеними джерелами комплементарних ідентифікаційних дескрипторів. Впровадження лазерного об'єктива-коліматора відрізняє вхідна ланка даної установки від класичної версії Вайнштейна. Метод проекційних трансформант також може бути реалізований (з деякими доповненнями і модифікаціями в тому числі) на даній установці.

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