Journal
DIAGNOSTICS
Volume 13, Issue 2, Pages -Publisher
MDPI
DOI: 10.3390/diagnostics13020277
Keywords
antimicrobial resistance; sepsis; early diagnosis; conventional methods; modern methods; advanced methods
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Sepsis and antimicrobial resistance are major threats to human health, and early and accurate diagnosis is crucial for effective treatment. Conventional culture methods for diagnosing sepsis are time-consuming and often yield false negative results. Modern diagnostic techniques offer faster and more accurate results, helping identify pathogens and antimicrobial resistance in a shorter period.
Sepsis is one of the deadliest disorders in the new century due to specific limitations in early and differential diagnosis. Moreover, antimicrobial resistance (AMR) is becoming the dominant threat to human health globally. The only way to encounter the spread and emergence of AMR is through the active detection and identification of the pathogen along with the quantification of resistance. For better management of such disease, there is an essential requirement to approach many suitable diagnostic techniques for the proper administration of antibiotics and elimination of these infectious diseases. The current method employed for the diagnosis of sepsis relies on the conventional culture of blood suspected infection. However, this method is more time consuming and generates results that are false negative in the case of antibiotic pretreated samples as well as slow-growing microbes. In comparison to the conventional method, modern methods are capable of analyzing blood samples, obtaining accurate results from the suspicious patient of sepsis, and giving all the necessary information to identify the pathogens as well as AMR in a short period. The present review is intended to highlight the culture shift from conventional to modern and advanced technologies including their limitations for the proper and prompt diagnosing of bloodstream infections and AMR detection.
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