Prospects and perils of antimicrobial resistance cluster detection using routinely collected data: an illustration from tertiary hospitals in Thailand representing different data contexts
Issued Date
2026-04-01
Resource Type
ISSN
01956701
eISSN
15322939
Scopus ID
2-s2.0-105029920561
Pubmed ID
41581612
Journal Title
Journal of Hospital Infection
Volume
170
Start Page
48
End Page
59
Rights Holder(s)
SCOPUS
Bibliographic Citation
Journal of Hospital Infection Vol.170 (2026) , 48-59
Suggested Citation
Rangsiwutisak C., Klaytong P., Wannapinij P., Aramrueang P., Boonlao C., Khusuwan S., Srisawai K., Kitsaran S., Karnjanawat P., Turner P., Stelling J., Limmathurotsakul D., Lim C. Prospects and perils of antimicrobial resistance cluster detection using routinely collected data: an illustration from tertiary hospitals in Thailand representing different data contexts. Journal of Hospital Infection Vol.170 (2026) , 48-59. 59. doi:10.1016/j.jhin.2026.01.005 Retrieved from: https://repository.li.mahidol.ac.th/handle/123456789/115183
Title
Prospects and perils of antimicrobial resistance cluster detection using routinely collected data: an illustration from tertiary hospitals in Thailand representing different data contexts
Corresponding Author(s)
Other Contributor(s)
Abstract
Background: There are limited resources to detect and interpret cluster signals in resource-limited hospitals. The aim was to improve the interpretation of pathogen spatiotemporal clustering detected using the SaTScan algorithm – a method that uses space-time scan statistics to detect cluster signals that occur more often than expected. Methods: Analysis of electronic data of inpatients with clinical specimens culture positive for seven antimicrobial-resistant pathogens in two tertiary hospitals in Thailand from January to December 2022 was performed. Space-time uniform scan statistics were applied in SaTScan. Four analyses were performed. Analysis 1 did not include antimicrobial susceptibility test (AST) result profiles. Analyses 2, 3, and 4 included AST results of antibiotics that had ≥70%, ≥80%, and ≥90% of available results among the included patients, respectively. Findings: There were 125,848 microbiology data records collected from a 1188-bed hospital and 54,069 records from a 773-bed hospital in 2022. Multiple cluster signals were detected in both hospitals, including clusters of carbapenem-resistant Gram-negative organisms across different wards over different time periods. The number of cluster signals detected decreased with increasing thresholds used to select antibiotics to be included in the analysis. For instance, Analysis 2 detected 33 clusters, which reduced to 4 clusters in Analysis 4 in the 1188-bed hospital data. Similar patterns were also observed in the 773-bed hospital data. The temporal occurrence of detected cluster signals coincided with the period during which AST results were unavailable in Analyses 2 and 3. Conclusion: The findings suggest that SaTScan is applicable to detect potential cluster signals in resource-limited settings, and the interpretation of detected signals could be supported by graphical presentations of temporal changes in the availability of AST data.
