Author:
Kim Denisse,Canovas-Segura Bernardo,Jimeno-Almazán Amaya,Campos Manuel,Juarez Jose M.
Abstract
AbstractValidated and curated datasets are essential for studying the spread and control of infectious diseases in hospital settings, requiring clinical information on patients’ evolution and their location. The literature shows that approaches based on Artificial Intelligence (AI) in the development of clinical-support systems have benefits that are increasingly recognized. However, there is a lack of available high-volume data, necessary for trusting such AI models. One effective method in this situation involves the simulation of realistic data. Existing simulators primarily focus on implementing compartmental epidemiological models and contact networks to validate epidemiological hypotheses. Nevertheless, other practical aspects such as the hospital building distribution, shifts or safety policies on infections has received minimal attention. In this paper, we propose a novel approach for a simulator of nosocomial infection spread, combining agent-based patient description, spatial-temporal constraints of the hospital settings, and microorganism behavior driven by epidemiological models. The predictive validity of the model was analyzed considering micro and macro-face validation, parameter calibration based on literature review, model alignment, and sensitive analysis with an expert. This simulation model is useful in monitoring infections and in the decision-making process in a hospital, by helping to detect spatial-temporal patterns and predict statistical data about the disease.
Publisher
Springer Science and Business Media LLC
Reference52 articles.
1. Esteva, A. et al. Dermatologist-level classification of skin cancer with deep neural networks. Nature 542, 115–118. https://doi.org/10.1038/nature21056 (2017).
2. Macesic, N., Polubriaginof, F. & Tatonetti, N. P. Machine learning: Novel bioinformatics approaches for combating antimicrobial resistance. Curr. Opin. Infect. Dis. 30, 511. https://doi.org/10.1097/QCO.0000000000000406 (2017).
3. Reddy, S. Explainability and artificial intelligence in medicine. Lancet Digit. Health 4, e214–e215. https://doi.org/10.1016/S2589-7500(22)00029-2 (2022).
4. Ghassemi, M., Oakden-Rayner, L. & Beam, A. L. The false hope of current approaches to explainable artificial intelligence in health care. Lancet Digit. Health 3, e745–e750. https://doi.org/10.1016/S2589-7500(21)00208-9 (2021).
5. EPRS. 2023. EU AI Act: first regulation on artificial intelligence | News | European Parliament. https://www.europarl.europa.eu/news/en/headlines/society/20230601STO93804/eu-ai-act-first-regulation-on-artificial-intelligence. Accessed 4 July 2023.