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Fungal biomarker discovery by integration of classifiers

机译:通过分类器整合发现真菌生物标志物

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Background The human immune system is responsible for protecting the host from infection. However, in immunocompromised individuals the risk of infection increases substantially with possible drastic consequences. In extreme, systemic infection can lead to sepsis which is responsible for innumerous deaths worldwide. Amongst its causes are infections by bacteria and fungi. To increase survival, it is mandatory to identify the type of infection rapidly. Discriminating between fungal and bacterial pathogens is key to determine if antifungals or antibiotics should be administered, respectively. For this, in situ experiments have been performed to determine regulation mechanisms of the human immune system to identify biomarkers. However, these studies led to heterogeneous results either due different laboratory settings, pathogen strains, cell types and tissues, as well as the time of sample extraction, to name a few. Methods To generate a gene signature capable of discriminating between fungal and bacterial infected samples, we employed Mixed Integer Linear Programming (MILP) based classifiers on several datasets comprised of the above mentioned pathogens. Results When combining the classifiers by a joint optimization we could increase the consistency of the biomarker gene list independently of the experimental setup. An increase in pairwise overlap (the number of genes that overlap in each cross-validation) of 43% was obtained by this approach when compared to that of single classifiers. The refined gene list was composed of 19 genes and ranked according to consistency in expression (up- or down-regulated)?and most of them were linked either directly or indirectly to the ERK-MAPK signalling pathway, which has been shown to play a key role in the immune response to infection. Testing of the identified 12 genes on an unseen dataset yielded an average accuracy of 83%. Conclusions In conclusion, our method allowed the combination of independent classifiers and increased consistency and reliability of the generated gene signatures.
机译:背景技术人的免疫系统负责保护宿主免于感染。但是,在免疫受损的个体中,感染的风险会大大增加,并可能带来严重后果。在极端情况下,全身感染可导致败血症,而败血症是导致全球范围内大量死亡的原因。其原因之一是细菌和真菌感染。为了提高生存率,必须快速识别感染类型。区分真菌和细菌病原体是确定应分别施用抗真菌药还是抗生素的关键。为此,已经进行了原位实验以确定人类免疫系统的调控机制以鉴定生物标志物。但是,这些研究导致不同的结果,原因可能是实验室设置不同,病原菌菌株,细胞类型和组织以及样品提取时间等等。方法为了生成能够区分真菌和细菌感染样本的基因签名,我们在由上述病原体组成的几个数据集上采用了基于混合整数线性规划(MILP)的分类器。结果当通过联合优化将分类器组合在一起时,我们可以独立于实验设置而增加生物标记基因列表的一致性。与单个分类器相比,通过这种方法可获得成对重叠(每次交叉验证中重叠的基因数量)增加了43%。精炼的基因列表由19个基因组成,并根据表达的一致性(上调或下调)进行排序-它们中的大多数直接或间接地与ERK-MAPK信号通路相连,这已显示出其作用在对感染的免疫反应中起关键作用。在一个看不见的数据集上对鉴定出的12个基因进行测试,得出的平均准确度为83%。结论总之,我们的方法允许独立分类器的组合,并增加了所生成基因签名的一致性和可靠性。

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