未染色微制剂的高光谱图像神经网络分析

A. Pirogov, A. Nikonorov, A. Muzyka, A. Makarov, D. Ryskova, N. Ivliev, V. Podlipnov, N. Firsov, P.V. Boriskin
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引用次数: 0

摘要

本文介绍了一项研究的结果,在显微镜高光谱成像,以评估病理变化的未染色的医疗微制剂。采用与步进电机相结合的可移动工作台同步拍摄和移动系统进行高光谱成像。为了提高获得的图像质量,对光谱通道的照度进行了软件校正。通过卷积神经网络进行分类。该方法有望在临床实践中用于病理变化的评估。实验研究了不同类型组织的组织学制备,不使用对比医学染料染色。为了评估该分类方法的可靠性,对所研究的样品进行染色,并与标准方法进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hyperspectral images neural network analysis of unstained micropreparations
The article presents the results of a study of hyperspectral imaging in microscopy to assess pathological changes in unstained medical micropreparations. Hyperspectral imaging was carried out using a system of synchronous shooting and movement of a movable table combined with a stepper motor. To improve the quality of the obtained images, software correction of the illumination of the spectral channels was used. The classification was carried out by a convolutional neural network. This method may be promising for assessing pathological changes in clinical practice. Experimental studies were carried out on histological preparations with different types of tissues without staining with contrasting medical dyes. To assess the reliability of the classification method, a comparison was made with the standard method using staining of the studied samples.
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