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首页> 外文期刊>Computer Methods and Programs in Biomedicine: An International Journal Devoted to the Development, Implementation and Exchange of Computing Methodology and Software Systems in Biomedical Research and Medical Practice >Clavulanic acid production estimation based on color and structural features of streptomyces clavuligerus bacteria using self-organizing map and genetic algorithm
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Clavulanic acid production estimation based on color and structural features of streptomyces clavuligerus bacteria using self-organizing map and genetic algorithm

机译:基于自组织图和遗传算法的链霉菌细菌颜色和结构特征的克拉维酸产量估算

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摘要

The utilization of antibiotics produced by Clavulanic acid (CA) is an increasing need in medicine and industry. Usually, the CA is created from the fermentation of Streptomycen Clavuligerus (SC) bacteria. Analysis of visual and morphological features of SC bacteria is an appropriate measure to estimate the growth of CA. In this paper, an automatic and fast CA production level estimation algorithm based on visual and structural features of SC bacteria instead of statistical methods and experimental evaluation by microbiologist is proposed. In this algorithm, structural features such as the number of newborn branches, thickness of hyphal and bacterial density and also color features such as acceptance color levels are extracted from the SC bacteria. Moreover, PH and biomass of the medium provided by microbiologists are considered as specified features. The level of CA production is estimated by using a new application of Self-Organizing Map (SOM), and a hybrid model of genetic algorithm with back propagation network (GA-BPN). The proposed algorithm is evaluated on four carbonic resources including malt, starch, wheat flour and glycerol that had used as different mediums of bacterial growth. Then, the obtained results are compared and evaluated with observation of specialist. Finally, the Relative Error (RE) for the SOM and GA-BPN are achieved 14.97% and 16.63%, respectively.
机译:棒酸(CA)产生的抗生素的利用在医学和工业中日益增长。通常,CA由链霉菌(SC)细菌的发酵产生。分析SC细菌的视觉和形态特征是评估CA生长的适当措施。本文提出了一种基于SC细菌的视觉和结构特征的自动,快速的CA生产水平估计算法,代替了统计方法和微生物学家的实验评估。在该算法中,从SC细菌中提取结构特征,例如新生儿分支的数量,菌丝的厚度和细菌密度,以及颜色特征(例如接受颜色的水平)。此外,微生物学家提供的培养基的PH和生物量被视为特定特征。通过使用新的自组织图(SOM)和遗传算法与反向传播网络的混合模型(GA-BPN)来估算CA的生产水平。该算法对麦芽,淀粉,小麦粉和甘油等四种碳资源进行了评估,这些碳资源已被用作细菌生长的不同媒介。然后,将获得的结果进行比较并在专家的观察下进行评估。最后,SOM和GA-BPN的相对误差(RE)分别达到14.97%和16.63%。

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