Matthew A Moffa, Dustin R Carr, Nathan R Shively, Adriana Betancourth, Nitin Bhanot, Zaw Min, Charmaine Abalos, Arshpal Gill, Salman Bangash, Thomas L Walsh
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引用次数: 0
Abstract
Objective: To evaluate the impact of implementing a multi-step Clostridioides difficile infection (CDI) testing algorithm on hospital-onset (HO)-CDI rates and clinical outcomes.
Setting: Two academic hospitals in Pittsburgh, Pennsylvania.
Methods: In the pre-intervention period, a standalone polymerase chain reaction (PCR) assay was used for diagnosing CDI. In the post-intervention period, positive PCR assays were reflexed to a glutamate dehydrogenase antigen test and an enzyme immunoassay for toxin A/B.
Results: The implementation of a multi-step testing algorithm resulted in a significant reduction in HO-CDI cases per 10,000 patient days from 5.92 to 2.36 (P < 0.001). Despite the decrease in reportable HO-CDI cases, there were no significant differences in clinical outcomes such as hospital length of stay, intensive care unit admissions, and treatment courses. In addition, there was a significant reduction in all-cause 30-day readmissions in the post-intervention group, though CDI-related readmissions remained similar.
Conclusions: The multi-step testing algorithm significantly reduced HO-CDI rates without compromising clinical outcomes. The study supports the use of a multi-step CDI testing algorithm to assist healthcare providers with CDI management decisions and potentially to reduce financial penalties burdened on healthcare systems.