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A survey for the applications of content-based microscopic image analysis in microorganism classification domains

机译:基于内容的显微图像分析在微生物分类领域中的应用概述

摘要

Microorganisms such as protozoa and bacteria play very important roles in many practical domains, like agriculture, industry and medicine. To explore functions of different categories of microorganisms is a fundamental work in biological studies, which can assist biologists and related scientists to get to know more properties, habits and characteristics of these tiny but obbligato living beings. However, taxonomy of microorganisms (microorganism classification) is traditionally investigated through morphological, chemical or physical analysis, which is time and money consuming. In order to overcome this, since the 1970s innovative content-based microscopic image analysis (CBMIA) approaches are introduced to microbiological fields. CBMIA methods classify microorganisms into different categories using multiple artificial intelligence approaches, such as machine vision, pattern recognition and machine learning algorithms. Furthermore, because CBMIA approaches are semi- or full-automatic computer-based methods, they are very efficient and labour cost saving, supporting a technical feasibility for microorganism classification in our current big data age. In this article, we review the development history of microorganism classification using CBMIA approaches with two crossed pipelines. In the first pipeline, all related works are grouped by their corresponding microorganism application domains. By this pipeline, it is easy for microbiologists to have an insight into each special application domain and find their interested applied CBMIA techniques. In the second pipeline, the related works in each application domain are reviewed by time periods. Using this pipeline, computer scientists can see the dynamic of technological development clearly and keep up with the future development trend in this interdisciplinary field. In addition, the frequently-used CBMIA methods are further analysed to find technological common points and potential reasons.
机译:诸如原生动物和细菌之类的微生物在许多实际领域中发挥着非常重要的作用,例如农业,工业和医学。探索不同种类微生物的功能是生物学研究的一项基础性工作,它可以帮助生物学家和相关科学家了解这些微小但易生化的生物的更多特性,习性和特征。然而,传统上通过形态,化学或物理分析来研究微生物的分类(微生物分类),这是耗时和金钱的。为了克服这个问题,自1970年代以来,创新的基于内容的显微图像分析(CBMIA)方法被引入微生物学领域。 CBMIA方法使用多种人工智能方法将微生物分为不同类别,例如机器视觉,模式识别和机器学习算法。此外,由于CBMIA方法是基于半自动或全自动计算机的方法,因此它们非常高效且节省了人工成本,在当前的大数据时代支持了微生物分类的技术可行性。在本文中,我们回顾了使用带有两条交叉管道的CBMIA方法进行微生物分类的发展历史。在第一个管道中,所有相关作品均按其相应的微生物应用域进行分组。通过该管道,微生物学家可以轻松了解每个特殊的应用领域,并找到他们感兴趣的应用CBMIA技术。在第二个管道中,按时间段审查每个应用程序领域中的相关工作。使用该管道,计算机科学家可以清楚地看到技术发展的动态,并跟上该跨学科领域的未来发展趋势。此外,将对常用的CBMIA方法进行进一步分析,以找到技术上的共同点和潜在原因。

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