Machine learning as a tool for classifying electron tomographic reconstructions

IF 3.56 Q1 Medicine
Lech Staniewicz, Paul A. Midgley
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引用次数: 21

Abstract

Electron tomographic reconstructions often contain artefacts from sources such as noise in the projections and a “missing wedge” of projection angles which can hamper quantitative analysis. We present a machine-learning approach using freely available software for analysing imperfect reconstructions to be used in place of the more traditional thresholding based on grey-level technique and show that a properly trained image classifier can achieve manual levels of accuracy even on heavily artefacted data, though if multiple reconstructions are being processed, a separate classifier will need to be trained on each reconstruction for maximum accuracy.

Abstract Image

机器学习作为分类电子层析重建的工具
电子层析重建通常包含来自投影中的噪声和投影角度的“缺失楔”等来源的伪影,这可能会妨碍定量分析。我们提出了一种机器学习方法,使用免费的软件来分析不完美的重建,以取代基于灰度技术的更传统的阈值,并表明经过适当训练的图像分类器即使在大量人工数据上也可以达到人工水平的准确性,尽管如果正在处理多个重建,则需要对每个重建进行单独的分类器训练以获得最大的准确性。
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来源期刊
Advanced Structural and Chemical Imaging
Advanced Structural and Chemical Imaging Medicine-Radiology, Nuclear Medicine and Imaging
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