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首页> 外文期刊>BMC Infectious Diseases >Observational multi-centre, prospective study to characterize novel pathogen-and host-related factors in hospitalized patients with lower respiratory tract infections and/or sepsis - the “TAILORED-Treatment” study
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Observational multi-centre, prospective study to characterize novel pathogen-and host-related factors in hospitalized patients with lower respiratory tract infections and/or sepsis - the “TAILORED-Treatment” study

机译:观察多中心,前瞻性研究表征住院治疗患者的新型病原体和宿主相关因素及/或败血症 - “定制治疗”研究

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The emergence and spread of antibiotic resistant micro-organisms is a global concern, which is largely attributable to inaccurate prescribing of antibiotics to patients presenting with non-bacterial infections. The use of 'omics' technologies for discovery of novel infection related biomarkers combined with novel treatment algorithms offers possibilities for rapidly distinguishing between bacterial and viral infections. This distinction can be particularly important for patients suffering from lower respiratory tract infections (LRTI) and/or sepsis as they represent a significant burden to healthcare systems. Here we present the study details of the TAILORED-Treatment study, an observational, prospective, multi-centre study aiming to generate a multi-parametric model, combining host and pathogen data, for distinguishing between bacterial and viral aetiologies in children and adults with LRTI and/or sepsis. A total number of 1200 paediatric and adult patients aged 1?month and older with LRTI and/or sepsis or a non-infectious disease are recruited from Emergency Departments and hospital wards of seven Dutch and Israeli medical centres. A panel of three experienced physicians adjudicate a reference standard diagnosis for all patients (i.e., bacterial or viral infection) using all available clinical and laboratory information, including a 28-day follow-up assessment. Nasal swabs and blood samples are collected for multi-omics investigations including host RNA and protein biomarkers, nasal microbiota profiling, host genomic profiling and bacterial proteomics. Simplified data is entered into a custom-built database in order to develop a multi-parametric model and diagnostic tools for differentiating between bacterial and viral infections. The predictions from the model will be compared with the consensus diagnosis in order to determine its accuracy. The TAILORED-Treatment study will provide new insights into the interplay between the host and micro-organisms. New host- or pathogen-related biomarkers will be used to generate a multi-parametric model for distinguishing between bacterial and viral infections. This model will be helpful to better guide antimicrobial therapy for patients with LRTI and sepsis. This study has the potential to improve patient care, reduce unnecessary antibiotic prescribing and will contribute positively to institutional, national and international healthcare economics. NCT02025699 . Registration Date: January, 1, 2014.
机译:抗生素抗性微生物的出现和传播是一种全球担忧,这主要是由于患有非细菌感染的患者不准确的抗生素的不准确性问题。 “OMICS”技术用于发现新型感染相关的生物标志物的发现与新型治疗算法相结合,提供了在细菌和病毒感染之间迅速区分的可能性。这种区别对于患有低呼吸道感染(LRTI)和/或败血症的患者尤为重要,因为它们代表了医疗保健系统的重大负担。在这里,我们展示了定制治疗研究的研究细节,观察,前瞻性的多中心研究,旨在产生多参数模型,组合宿主和病原体数据,以区分儿童和成人的细菌和病毒疾病与LRTI和/或败血症。招募了1200名儿科和成年患者,患有LRTI和/或败血症或非传染性疾病的月龄和年龄较大的患者,从七荷兰和以色列医疗中心的急诊部门和医院病区招募。三个经验丰富的医生判断所有患者(即细菌或病毒感染)的参考标准诊断,使用所有可用的临床和实验室信息,包括28天的后续评估。收集鼻拭子和血液样本,用于多OMICS调查,包括宿主RNA和蛋白质生物标志物,鼻腔微生物瘤分析,宿主基因组分析和细菌蛋白质组学。简化数据被输入到自定义内置的数据库中,以便开发多参数模型和诊断工具,以区分细菌和病毒感染。与模型的预测将与共识诊断进行比较,以便确定其准确性。定制治疗研究将对宿主和微生物之间的相互作用提供新的见解。将使用新的主持人或病原体相关的生物标志物来产生用于区分细菌和病毒感染的多参数模型。该模型将有助于更好地指导LRTI和败血症患者的抗微生物治疗。本研究有可能改善患者护理,减少不必要的抗生素规定,并将积极贡献到机构,国家和国际医疗经济学。 nct02025699。注册日期:2014年1月1日。

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