Langham C D, Williams S T, Sneath P H, Mortimer A M
Department of Microbiology, University of Leicester, UK.
J Gen Microbiol. 1989 Jan;135(1):121-33. doi: 10.1099/00221287-135-1-121.
The character state data obtained for clusters defined in a previous phenetic classification were used to construct two probabilistic matrices for Streptomyces species. These superseded an original published identification matrix by exclusion of other genera and the inclusion of more Streptomyces species. Separate matrices were constructed for major and minor clusters. The minimum number of diagnostic characters for each matrix was selected by computer programs for determination of character separation indices (CHARSEP) and a selection of group diagnostic properties (DIACHAR). The resulting matrices consisted of 26 phena x 50 characters (major clusters) and 28 phena x 39 characters (minor clusters). Cluster overlap (OVERMAT program) was small in both matrices. Identification scores were used to evaluate both matrices. The theoretically best scores for the most typical example of each cluster (MOSTTYP program) were all satisfactory. Input of test data for randomly selected cluster representatives resulted in correct identification with high scores. The major cluster matrix was shown to be practically sound by its application to 35 unknown soil isolates, 77% of which were clearly identified. The minor cluster matrix provides tentative probabilistic identifications as the small number of strains in each cluster reduces its ability to withstand test variation. A diagnostic table for single-membered clusters, constructed using the CHARSEP and DIACHAR programs, was also produced.
在前一个表型分类中定义的簇所获得的性状状态数据被用于构建两个链霉菌属物种的概率矩阵。通过排除其他属并纳入更多链霉菌属物种,这些矩阵取代了最初发表的鉴定矩阵。分别为主要簇和次要簇构建了矩阵。通过计算机程序选择每个矩阵的最小诊断性状数量,以确定性状分离指数(CHARSEP)和一组诊断特性(DIACHAR)。所得矩阵由26个表型×50个性状(主要簇)和28个表型×39个性状(次要簇)组成。两个矩阵中的簇重叠(OVERMAT程序)都很小。使用鉴定分数来评估这两个矩阵。每个簇最典型例子的理论最佳分数(MOSTTYP程序)都令人满意。将随机选择的簇代表的测试数据输入后,得到了高分的正确鉴定结果。主要簇矩阵应用于35个未知土壤分离株时显示出实际可行性,其中77%得到了明确鉴定。次要簇矩阵提供了初步的概率鉴定,因为每个簇中的菌株数量较少,降低了其承受测试变异的能力。还使用CHARSEP和DIACHAR程序制作了单成员簇的诊断表。