Quantitative Analysis System for Bacterial Cells in SEM Image using Deep Learning

Yasuki Kakishita, Arkadip Ray, Hideharu Hattori, A. Hisada, Y. Ominami, J. Baudoin, J. B. Khalil, D. Raoult
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引用次数: 1

Abstract

In this paper we propose a system to analyze bacteria from a given Scanning Electron Microscope (SEM) image of the bacterial sample. Thousands of bacteria lives in the human gut and recent studies have shown that the quantitative features of the microbiome, such as co-existence ratio of different bacteria, can be indicative of the health condition in humans. Conventional bacteria analysis methods using microscopic images, can only be used to examine a single bacteria colony. In contrast, we propose a novel system to morphologically analyze the bacteria from SEM images. By this, we expect to enable a rapid analysis of the human gut bacteria ratio, in which various type of bacteria are mixed. However, to achieve an automatic and accurate count of the bacteria in the SEM images, it is important to accurately identify the bacteria regions, separate the connected bacteria regions and classify them. To address this, we propose a system that includes a segmentation, separation and a classification module. Our system achieves more than 90% recall for all of original three datasets that we have created. Subsequently, we show the comparison results between another state-of-the-art segmentation method and our system, and we empirically report that our system has a better performance.
基于深度学习的SEM图像细菌细胞定量分析系统
在本文中,我们提出了一个系统来分析细菌从给定的扫描电子显微镜(SEM)图像的细菌样品。成千上万的细菌生活在人类肠道中,最近的研究表明,微生物组的定量特征,如不同细菌的共存比例,可以指示人类的健康状况。传统的细菌分析方法使用显微图像,只能用于检查单个细菌菌落。相反,我们提出了一种新的系统来从扫描电镜图像中对细菌进行形态学分析。通过这种方法,我们希望能够快速分析人类肠道细菌比例,其中各种类型的细菌混合在一起。然而,为了实现对SEM图像中细菌的自动准确计数,准确识别细菌区域,分离连接的细菌区域并对其进行分类是很重要的。为了解决这个问题,我们提出了一个包括分割、分离和分类模块的系统。我们的系统对我们创建的所有原始三个数据集实现了90%以上的召回。随后,我们展示了另一种最先进的分割方法与我们的系统之间的比较结果,我们经验地报告了我们的系统具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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