Machine Learning Approaches for the Image-Based Identification of Surgical Wound Infections: Scoping Review.

machine learning mobile phone postoperative surveillance surgical site infection wound imaging

Journal

Journal of medical Internet research
ISSN: 1438-8871
Titre abrégé: J Med Internet Res
Pays: Canada
ID NLM: 100959882

Informations de publication

Date de publication:
18 Jan 2024
Historique:
received: 18 09 2023
accepted: 12 12 2023
revised: 09 11 2023
medline: 18 1 2024
pubmed: 18 1 2024
entrez: 18 1 2024
Statut: epublish

Résumé

Surgical site infections (SSIs) occur frequently and impact patients and health care systems. Remote surveillance of surgical wounds is currently limited by the need for manual assessment by clinicians. Machine learning (ML)-based methods have recently been used to address various aspects of the postoperative wound healing process and may be used to improve the scalability and cost-effectiveness of remote surgical wound assessment. The objective of this review was to provide an overview of the ML methods that have been used to identify surgical wound infections from images. We conducted a scoping review of ML approaches for visual detection of SSIs following the JBI (Joanna Briggs Institute) methodology. Reports of participants in any postoperative context focusing on identification of surgical wound infections were included. Studies that did not address SSI identification, surgical wounds, or did not use image or video data were excluded. We searched MEDLINE, Embase, CINAHL, CENTRAL, Web of Science Core Collection, IEEE Xplore, Compendex, and arXiv for relevant studies in November 2022. The records retrieved were double screened for eligibility. A data extraction tool was used to chart the relevant data, which was described narratively and presented using tables. Employment of TRIPOD (Transparent Reporting of a Multivariable Prediction Model for Individual Prognosis or Diagnosis) guidelines was evaluated and PROBAST (Prediction Model Risk of Bias Assessment Tool) was used to assess risk of bias (RoB). In total, 10 of the 715 unique records screened met the eligibility criteria. In these studies, the clinical contexts and surgical procedures were diverse. All papers developed diagnostic models, though none performed external validation. Both traditional ML and deep learning methods were used to identify SSIs from mostly color images, and the volume of images used ranged from under 50 to thousands. Further, 10 TRIPOD items were reported in at least 4 studies, though 15 items were reported in fewer than 4 studies. PROBAST assessment led to 9 studies being identified as having an overall high RoB, with 1 study having overall unclear RoB. Research on the image-based identification of surgical wound infections using ML remains novel, and there is a need for standardized reporting. Limitations related to variability in image capture, model building, and data sources should be addressed in the future.

Sections du résumé

BACKGROUND BACKGROUND
Surgical site infections (SSIs) occur frequently and impact patients and health care systems. Remote surveillance of surgical wounds is currently limited by the need for manual assessment by clinicians. Machine learning (ML)-based methods have recently been used to address various aspects of the postoperative wound healing process and may be used to improve the scalability and cost-effectiveness of remote surgical wound assessment.
OBJECTIVE OBJECTIVE
The objective of this review was to provide an overview of the ML methods that have been used to identify surgical wound infections from images.
METHODS METHODS
We conducted a scoping review of ML approaches for visual detection of SSIs following the JBI (Joanna Briggs Institute) methodology. Reports of participants in any postoperative context focusing on identification of surgical wound infections were included. Studies that did not address SSI identification, surgical wounds, or did not use image or video data were excluded. We searched MEDLINE, Embase, CINAHL, CENTRAL, Web of Science Core Collection, IEEE Xplore, Compendex, and arXiv for relevant studies in November 2022. The records retrieved were double screened for eligibility. A data extraction tool was used to chart the relevant data, which was described narratively and presented using tables. Employment of TRIPOD (Transparent Reporting of a Multivariable Prediction Model for Individual Prognosis or Diagnosis) guidelines was evaluated and PROBAST (Prediction Model Risk of Bias Assessment Tool) was used to assess risk of bias (RoB).
RESULTS RESULTS
In total, 10 of the 715 unique records screened met the eligibility criteria. In these studies, the clinical contexts and surgical procedures were diverse. All papers developed diagnostic models, though none performed external validation. Both traditional ML and deep learning methods were used to identify SSIs from mostly color images, and the volume of images used ranged from under 50 to thousands. Further, 10 TRIPOD items were reported in at least 4 studies, though 15 items were reported in fewer than 4 studies. PROBAST assessment led to 9 studies being identified as having an overall high RoB, with 1 study having overall unclear RoB.
CONCLUSIONS CONCLUSIONS
Research on the image-based identification of surgical wound infections using ML remains novel, and there is a need for standardized reporting. Limitations related to variability in image capture, model building, and data sources should be addressed in the future.

Identifiants

pubmed: 38236623
pii: v26i1e52880
doi: 10.2196/52880
doi:

Types de publication

Journal Article Review

Langues

eng

Sous-ensembles de citation

IM

Pagination

e52880

Informations de copyright

©Juan Pablo Tabja Bortesi, Jonathan Ranisau, Shuang Di, Michael McGillion, Laura Rosella, Alistair Johnson, PJ Devereaux, Jeremy Petch. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 18.01.2024.

Auteurs

Juan Pablo Tabja Bortesi (JP)

Centre for Data Science and Digital Health, Hamilton Health Sciences, Hamilton, ON, Canada.

Jonathan Ranisau (J)

Centre for Data Science and Digital Health, Hamilton Health Sciences, Hamilton, ON, Canada.

Shuang Di (S)

Centre for Data Science and Digital Health, Hamilton Health Sciences, Hamilton, ON, Canada.
Dalla Lana School of Public Health, University of Toronto, Toronto, ON, Canada.

Michael McGillion (M)

Population Health Research Institute, Hamilton, ON, Canada.

Laura Rosella (L)

Dalla Lana School of Public Health, University of Toronto, Toronto, ON, Canada.

Alistair Johnson (A)

SickKids Research Institute, Toronto, ON, Canada.

P J Devereaux (PJ)

Population Health Research Institute, Hamilton, ON, Canada.

Jeremy Petch (J)

Centre for Data Science and Digital Health, Hamilton Health Sciences, Hamilton, ON, Canada.
Population Health Research Institute, Hamilton, ON, Canada.
Institute for Health Policy, Management and Evaluation, University of Toronto, Toronto, ON, Canada.
Division of Cardiology, McMaster University, Hamilton, ON, Canada.

Classifications MeSH