Laboratory diagnosis of central nervous system infection Journal Article


Authors: He, T.; Kaplan, S.; Kamboj, M.; Tang, Y. W.
Article Title: Laboratory diagnosis of central nervous system infection
Abstract: Central nervous system (CNS) infections are potentially life threatening if not diagnosed and treated early. The initial clinical presentations of many CNS infections are non-specific, making a definitive etiologic diagnosis challenging. Nucleic acid in vitro amplification-based molecular methods are increasingly being applied for routine microbial detection. These methods are a vast improvement over conventional techniques with the advantage of rapid turnaround and higher sensitivity and specificity. Additionally, molecular methods performed on cerebrospinal fluid samples are considered the new gold standard for diagnosis of CNS infection caused by pathogens, which are otherwise difficult to detect. Commercial diagnostic platforms offer various monoplex and multiplex PCR assays for convenient testing of targets that cause similar clinical illness. Pan-omic molecular platforms possess potential for use in this area. Although molecular methods are predicted to be widely used in diagnosing and monitoring CNS infections, results generated by these methods need to be carefully interpreted in combination with clinical findings. This review summarizes the currently available armamentarium of molecular assays for diagnosis of central nervous system infections, their application, and future approaches. © 2016, Springer Science+Business Media New York.
Keywords: laboratory diagnosis; encephalitis; meningitis; serology; culture; central nervous system infections; microscopic morphology; molecular methods; pan-omic techniques; rapid antigen testing
Journal Title: Current Infectious Disease Reports
Volume: 18
Issue: 11
ISSN: 1523-3847
Publisher: Springer  
Date Published: 2016-11-01
Start Page: 35
Language: English
DOI: 10.1007/s11908-016-0545-6
PROVIDER: scopus
PUBMED: 27686677
PMCID: PMC5612431
DOI/URL:
Notes: Review -- Export Date: 2 November 2016 -- Source: Scopus
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MSK Authors
  1. Mini Kamboj
    158 Kamboj
  2. Yi-Wei Tang
    188 Tang
  3. Taojun   He
    5 He
  4. Samuel Eliot Kaplan
    9 Kaplan