Department of Pulmonary Medicine, University of Texas-M D, Anderson Cancer Center, Houston, Texas, USA.
Respir Res. 2010 Jul 23;11(1):101. doi: 10.1186/1465-9921-11-101.
Lower respiratory tract infections continue to exact unacceptable worldwide mortality, often because the infecting pathogen cannot be identified. The respiratory epithelia provide protection from pneumonias through organism-specific generation of antimicrobial products, offering potential insight into the identity of infecting pathogens. This study assesses the capacity of the host gene expression response to infection to predict the presence and identity of lower respiratory pathogens without reliance on culture data.
Mice were inhalationally challenged with S. pneumoniae, P. aeruginosa, A. fumigatus or saline prior to whole genome gene expression microarray analysis of their pulmonary parenchyma. Characteristic gene expression patterns for each condition were identified, allowing the derivation of prediction rules for each pathogen. After confirming the predictive capacity of gene expression data in blinded challenges, a computerized algorithm was devised to predict the infectious conditions of subsequent subjects.
We observed robust, pathogen-specific gene expression patterns as early as 2 h after infection. Use of an algorithmic decision tree revealed 94.4% diagnostic accuracy when discerning the presence of bacterial infection. The model subsequently differentiated between bacterial pathogens with 71.4% accuracy and between non-bacterial conditions with 70.0% accuracy, both far exceeding the expected diagnostic yield of standard culture-based bronchoscopy with bronchoalveolar lavage.
These data substantiate the specificity of the pulmonary innate immune response and support the feasibility of a gene expression-based clinical tool for pneumonia diagnosis.
下呼吸道感染仍然在全球造成不可接受的高死亡率,这往往是因为无法确定感染病原体的具体种类。呼吸道上皮组织通过产生特定于病原体的抗菌物质来提供针对肺炎的保护,这为确定感染病原体的身份提供了潜在的线索。本研究评估了宿主基因表达反应在不依赖培养数据的情况下预测下呼吸道病原体存在和身份的能力。
在对肺部实质进行全基因组基因表达微阵列分析之前,通过吸入方式使小鼠受到肺炎链球菌、铜绿假单胞菌、烟曲霉或生理盐水的挑战。确定了每种情况下的特征性基因表达模式,从而为每种病原体制定了预测规则。在确认了基因表达数据在盲法挑战中的预测能力后,设计了一种计算机算法来预测后续患者的感染情况。
我们观察到感染后 2 小时即可出现强大的、具有病原体特异性的基因表达模式。使用算法决策树可以在辨别细菌感染的存在时达到 94.4%的诊断准确性。该模型随后可以区分细菌性病原体,准确率为 71.4%,区分非细菌性疾病,准确率为 70.0%,均远高于标准基于培养的支气管镜检查和支气管肺泡灌洗的预期诊断率。
这些数据证实了肺部固有免疫反应的特异性,并支持基于基因表达的肺炎诊断临床工具的可行性。