Innovative Techniques for Infection Control and Surveillance in Hospital Settings and Long-Term Care Facilities: A Scoping Review.
Guglielmo Arzilli,E. De Vita,Milena Pasquale,Luca Marcello Carloni,Marzia Pellegrini,Martina Di Giacomo,Enrica Esposito,Andrea Davide Porretta,C. Rizzo +8 more
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TL;DR: While digital tools show promise in HAI surveillance, especially for SSIs, challenges persist in resource distribution and interdisciplinary integration in healthcare settings, highlighting the need for ongoing development and implementation strategies.
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Abstract: Healthcare-associated infections (HAIs) pose significant challenges in healthcare systems, with preventable surveillance playing a crucial role. Traditional surveillance, although effective, is resource-intensive. The development of new technologies, such as artificial intelligence (AI), can support traditional surveillance in analysing an increasing amount of health data or meeting patient needs. We conducted a scoping review, following the PRISMA-ScR guideline, searching for studies of new digital technologies applied to the surveillance, control, and prevention of HAIs in hospitals and LTCFs published from 2018 to 4 November 2023. The literature search yielded 1292 articles. After title/abstract screening and full-text screening, 43 articles were included. The mean study duration was 43.7 months. Surgical site infections (SSIs) were the most-investigated HAI and machine learning was the most-applied technology. Three main themes emerged from the thematic analysis: patient empowerment, workload reduction and cost reduction, and improved sensitivity and personalization. Comparative analysis between new technologies and traditional methods showed different population types, with machine learning methods examining larger populations for AI algorithm training. While digital tools show promise in HAI surveillance, especially for SSIs, challenges persist in resource distribution and interdisciplinary integration in healthcare settings, highlighting the need for ongoing development and implementation strategies.
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Additional file 1 of A qualitative, multi-centre approach to the current state of digitalisation and automation of surveillance in infection prevention and control in German hospitals
Spreckelsen Cord,Krone Manuel,Kampmeier Stefanie +2 more
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TL;DR: This supplementary material presents qualitative data on the current state of digitalisation and automation of surveillance in German hospitals, highlighting the challenges and opportunities in infection prevention and control through a multi-centre approach.
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References
A mobile app for postoperative wound care after arthroplasty: Ease of use and perceived usefulness.
TL;DR: Introduction of a woundcare app with an alert communication on possible wound problems resulted in a high perceived usefulness and ease of use.
64
Natural Language Processing for the Identification of Surgical Site Infections in Orthopaedics.
Caroline P. Thirukumaran,Anis Zaman,Paul T. Rubery,Casey Calabria,Yue Li,Benjamin F. Ricciardi,Wajeeh Bakhsh,Henry Kautz +7 more
TL;DR: NLP has the potential to automate and aid accurate surgical site infection identification and, thus, play an important role in their prevention.
54
Machine learning applications for the prediction of surgical site infection in neurological operations.
Thara Tunthanathip,Sakchai Saeheng,Thakul Oearsakul,Ittichai Sakarunchai,Anukoon Kaewborisutsakul,Chin Taweesomboonyat +5 more
TL;DR: The naive Bayes algorithm is highlighted as an accurate ML method for predicting SSI after neurosurgical operations because of its reasonable accuracy and close monitoring and allocation of treatment strategies can be informed by ML predictions in general practice.
Remote diagnosis of surgical-site infection using a mobile digital intervention: a randomised controlled trial in emergency surgery patients.
Kenneth A. McLean,Katie E. Mountain,Catherine A Shaw,Thomas M Drake,Riinu Pius,Stephen R Knight,Cameron J Fairfield,Alessandro Sgrò,Matt Bouamrane,William A. Cambridge,Mathew Lyons,Aya M Riad,Richard J E Skipworth,Stephen J. Wigmore,Mark A Potter,Ewen M Harrison,K. Baweja,W. A. Cambridge,V. Chauhan,K. Czyzykowska,M. Edirisooriya,A. Forsyth,B. Fox,J. Fretwell,C. Gent,A. Gherman,Laura E. Green,J. Grewar,S. Heelan,D E Henshall,C. Iiuoma,S. Jayasangaran,C. Johnston,E. Kennedy,D. Kremel,J. Kung,J. Kwong,C. Leavy,J. Liu,S. Mackay,A. MacNamara,S. Mowitt,E. Musenga,N. Ng,Z. H. Ng,Stephen O'Neill,M. Ramage,J. Reed,A. Riad,C. Scott,V. Sehgal,A. Sgrò,L. Steven,B. Stutchfield,S. Tominey,W. Wilson,M. Wojtowicz,J. Yang +57 more
- 18 Nov 2021
TL;DR: In this paper, the authors investigated whether a smartphone-delivered wound assessment tool can expedite diagnosis and treatment of surgical site infections after emergency abdominal surgery in two tertiary care hospitals.
41
Outbreak of Pseudomonas aeruginosa Infections from a Contaminated Gastroscope Detected by Whole Genome Sequencing Surveillance.
Alexander J. Sundermann,Jieshi Chen,James K. Miller,Melissa Saul,Kathleen A. Shutt,Marissa P. Griffith,Mustapha M. Mustapha,Chinelo Ezeonwuka,Kady Waggle,Vatsala R. Srinivasa,Praveen Kumar,A. William Pasculle,Ashley M Ayres,Graham M. Snyder,Vaughn S. Cooper,Daria Van Tyne,Jane W. Marsh,Artur Dubrawski,Lee H. Harrison +18 more
TL;DR: In this paper, a machine learning algorithm for the electronic health record (EHR) was used to detect previously unidentified outbreaks and to determine the responsible transmission routes for Pseudomonas aeruginosa infections.
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