Sharma Prannda, Satorius Ashley E, Raff Marika R, Rivera Adriana, Newton Duane W, Younger John G
The Biointerfaces Institute and Department of Emergency Medicine, University of Michigan, 26-329N North Campus Research Complex, 2800 Plymouth Road, Ann Arbor, MI 48109, USA.
Department of Pathology, University of Michigan, 2F461 UH, 1500 E. Medical Center Drive, Ann Arbor, MI 48109, USA.
Interdiscip Perspect Infect Dis. 2014;2014:787458. doi: 10.1155/2014/787458. Epub 2014 Mar 2.
Staphylococcus epidermidis is an important cause of nosocomial infection and bacteremia. It is also a common contaminant of blood cultures and, as a result, there is frequently uncertainty as to its diagnostic significance when recovered in the clinical laboratory. One molecular strategy that might be of value in clarifying the interpretation of S. epidermidis identified in blood culture is multilocus sequence typing. Here, we examined 100 isolates of this species (50 blood isolates representing true bacteremia, 25 likely contaminant isolates, and 25 skin isolates) and the ability of sequence typing to differentiate them. Three machine learning algorithms (classification regression tree, support vector machine, and nearest neighbor) were employed. Genetic variability was substantial between isolates, with 44 sequence types found in 100 isolates. Sequence types 2 and 5 were most commonly identified. However, among the classification algorithms we employed, none were effective, with CART and SVM both yielding only 73% diagnostic accuracy and nearest neighbor analysis yielding only 53% accuracy. Our data mirror previous studies examining the presence or absence of pathogenic genes in that the overlap between truly significant organisms and contaminants appears to prevent the use of MLST in the clarification of blood cultures recovering S. epidermidis.
表皮葡萄球菌是医院感染和菌血症的重要病因。它也是血培养中常见的污染物,因此,当在临床实验室中分离出该菌时,其诊断意义常常存在不确定性。多基因座序列分型是一种可能有助于明确血培养中分离出的表皮葡萄球菌的解释的分子策略。在此,我们检测了该菌种的100株分离株(50株血源分离株代表真正的菌血症,25株可能的污染分离株,以及25株皮肤分离株),以及序列分型对它们进行区分的能力。我们采用了三种机器学习算法(分类回归树、支持向量机和最近邻算法)。分离株之间的基因变异性很大,在100株分离株中发现了44种序列类型。序列类型2和5最为常见。然而,在我们采用的分类算法中,没有一种是有效的,分类回归树和支持向量机的诊断准确率均仅为73%,最近邻分析的准确率仅为53%。我们的数据反映了之前关于致病基因存在与否的研究,即真正有意义的微生物和污染物之间的重叠似乎阻碍了多基因座序列分型在明确血培养中分离出的表皮葡萄球菌方面的应用。