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Computational Models for Prediction of Yeast Strain Potential for Winemaking from Phenotypic Profiles

机译:从表型分析预测酿酒酵母菌株潜力的计算模型

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摘要

Saccharomyces cerevisiae strains from diverse natural habitats harbour a vast amount of phenotypic diversity, driven by interactions between yeast and the respective environment. In grape juice fermentations, strains are exposed to a wide array of biotic and abiotic stressors, which may lead to strain selection and generate naturally arising strain diversity. Certain phenotypes are of particular interest for the winemaking industry and could be identified by screening of large number of different strains. The objective of the present work was to use data mining approaches to identify those phenotypic tests that are most useful to predict a strain's potential for winemaking. We have constituted a S. cerevisiae collection comprising 172 strains of worldwide geographical origins or technological applications. Their phenotype was screened by considering 30 physiological traits that are important from an oenological point of view. Growth in the presence of potassium bisulphite, growth at 40°C, and resistance to ethanol were mostly contributing to strain variability, as shown by the principal component analysis. In the hierarchical clustering of phenotypic profiles the strains isolated from the same wines and vineyards were scattered throughout all clusters, whereas commercial winemaking strains tended to co-cluster. Mann-Whitney test revealed significant associations between phenotypic results and strain's technological application or origin. Naïve Bayesian classifier identified 3 of the 30 phenotypic tests of growth in iprodion (0.05 mg/mL), cycloheximide (0.1 µg/mL) and potassium bisulphite (150 mg/mL) that provided most information for the assignment of a strain to the group of commercial strains. The probability of a strain to be assigned to this group was 27% using the entire phenotypic profile and increased to 95%, when only results from the three tests were considered. Results show the usefulness of computational approaches to simplify strain selection procedures.
机译:来自不同自然栖息地的酿酒酵母菌株具有大量的表型多样性,这是由酵母与相应环境之间的相互作用驱动的。在葡萄汁发酵中,菌株暴露于各种各样的生物和非生物胁迫源,这可能导致菌株选择并产生自然产生的菌株多样性。某些表型是酿酒业特别感兴趣的,可以通过筛选大量不同的菌株来鉴定。本研究的目的是使用数据挖掘方法来识别那些最能预测菌株酿酒潜力的表型测试。我们已经建立了一个酿酒酵母集合,其中包含172个全球地理起源或技术应用的菌株。他们的表型是通过考虑30种生理学特征来筛选的,这些特征从酿酒学的角度来看很重要。如主要成分分析所示,在亚硫酸氢钾存在下生长,在40°C下生长以及对乙醇的抵抗力主要是导致菌株变异性的原因。在表型特征的分层聚类中,从相同的葡萄酒和葡萄园中分离出的菌株散布在所有聚类中,而商业酿酒菌株趋向于共聚。 Mann-Whitney测试揭示了表型结果与菌株的技术应用或来源之间的显着关联。朴素的贝叶斯分类器在30种表型测试中发现了蛋白质生长(0.05 mg / mL),环己酰亚胺(0.1 µg / mL)和亚硫酸氢钾(150 mg / mL),这为菌株的分类提供了最多的信息商业菌株。如果仅考虑这三个测试的结果,则使用整个表型分析将菌株归为该组的可能性为27%,增加到95%。结果显示了简化应变选择程序的计算方法的有用性。

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