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Addressing the Analytic Challenges of Cross-Sectional Pediatric Pneumonia Etiology Data

机译:应对横断面小儿肺炎病因学数据的分析挑战

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摘要

Despite tremendous advances in diagnostic laboratory technology, identifying the pathogen(s) causing pneumonia remains challenging because the infected lung tissue cannot usually be sampled for testing. Consequently, to obtain information about pneumonia etiology, clinicians and researchers test specimens distant to the site of infection. These tests may lack sensitivity (eg, blood culture, which is only positive in a small proportion of children with pneumonia) and/or specificity (eg, detection of pathogens in upper respiratory tract specimens, which may indicate asymptomatic carriage or a less severe syndrome, such as upper respiratory infection). While highly sensitive nucleic acid detection methods and testing of multiple specimens improve sensitivity, multiple pathogens are often detected and this adds complexity to the interpretation as the etiologic significance of results may be unclear (ie, the pneumonia may be caused by none, one, some, or all of the pathogens detected). Some of these challenges can be addressed by adjusting positivity rates to account for poor sensitivity or incorporating test results from controls without pneumonia to account for poor specificity. However, no classical analytic methods can account for measurement error (ie, sensitivity and specificity) for multiple specimen types and integrate the results of measurements for multiple pathogens to produce an accurate understanding of etiology. We describe the major analytic challenges in determining pneumonia etiology and review how the common analytical approaches (eg, descriptive, case-control, attributable fraction, latent class analysis) address some but not all challenges. We demonstrate how these limitations necessitate a new, integrated analytical approach to pneumonia etiology data.
机译:尽管诊断实验室技术取得了巨大进步,但是确定感染肺炎的病原体仍然具有挑战性,因为通常无法对受感染的肺组织进行采样以进行测试。因此,为了获得有关肺炎病因的信息,临床医生和研究人员应测试远离感染部位的标本。这些测试可能缺乏敏感性(例如血液培养,仅在小部分肺炎患儿中呈阳性)和/或特异性(例如,在上呼吸道标本中检测到病原体,这可能表明无症状携带或不太严重的综合征) (例如上呼吸道感染)。尽管高度灵敏的核酸检测方法和对多个标本的检测可以提高灵敏度,但通常会检测到多种病原体,这增加了解释的复杂性,因为结果的病因学意义可能尚不清楚(即,肺炎可能是由无,一,某些原因引起的) ,或检测到的所有病原体)。这些挑战中的某些挑战可以通过调整阳性率来解决敏感性低的问题,或者合并无肺炎的对照测试结果来解决特异性差的问题。但是,没有经典的分析方法可以解决多种标本类型的测量误差(即敏感性和特异性),并且无法对多种病原体的测量结果进行整合以准确了解病因。我们描述了确定肺炎病因的主要分析挑战,并回顾了常见的分析方法(例如描述性,病例对照,归因分数,潜在类别分析)如何解决了部分但并非全部挑战。我们证明了这些局限性如何导致需要针对肺炎病原学数据的新型综合分析方法。

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