用于分割目的的合成脑电子显微镜数据集的生成与研究

IF 1.1 Q4 OPTICS
N.A. Sokolov, E.P. Vasiliev, A.A. Getmanskaya
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引用次数: 0

摘要

电子显微镜等先进的显微技术为生物医学研究人员开辟了新的视野。由于训练阶段的注释数据较少,使用人工智能方法处理EM数据在很大程度上是困难的。因此,我们将合成图像添加到带注释的真实EM数据集或使用完全合成的训练数据集。在这项工作中,我们提出了一种合成6种细胞器的算法。在EPFL数据集的基础上,生成了1161个真实片段256×256 (ORG)和2000个合成片段SYN (SYN)及其组合(MIX)的训练集。6,5类和二值分割的训练模型实验表明,尽管合成的不完善,在混合(MIX)数据集上训练,6和5的Dice度量显著增加(约0.1),二值分割的结果相同。合成数据策略免费提供注释,但将精力转移到生成足够逼真的图像上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generation and study of the synthetic brain electron microscopy dataset for segmentation purpose
Advanced microscopy technologies such as electron microscopy have opened up a new field of vision for biomedical researchers. The use of artificial intelligence methods for processing EM data is largely difficult due to the small amount of annotated data at the training stage. Therefore, we add synthetic images to an annotated real EM dataset or use a fully synthetic training dataset. In this work, we present an algorithm for the synthesis of 6 types of organelles. Based on the EPFL dataset, a training set of 1161 real fragments 256×256 (ORG) and 2000 synthetic ones (SYN), as well as their combination (MIX), were generated. The experiment of training models for 6, 5-classes and binary segmentation showed that, despite the imperfections of synthetics, training on a mixed (MIX) dataset gave a significant increase (about 0.1) in the Dice metric for 6 and 5 and same results at binary. The synthetic data strategy gives annotations for free, but shifts the effort to producing sufficiently realistic images.
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来源期刊
Computer Optics
Computer Optics OPTICS-
CiteScore
4.20
自引率
10.00%
发文量
73
审稿时长
9 weeks
期刊介绍: The journal is intended for researchers and specialists active in the following research areas: Diffractive Optics; Information Optical Technology; Nanophotonics and Optics of Nanostructures; Image Analysis & Understanding; Information Coding & Security; Earth Remote Sensing Technologies; Hyperspectral Data Analysis; Numerical Methods for Optics and Image Processing; Intelligent Video Analysis. The journal "Computer Optics" has been published since 1987. Published 6 issues per year.
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