Assessing artificial intelligence ability in predicting hospitalization duration for pleural empyema patients managed with uniportal video‑assisted thoracoscopic surgery: a retrospective observational study

dc.contributor.authorIssa Alnajjar
dc.contributor.authorBaraa Alshakarnah
dc.contributor.authorTasneem AbuShaikha
dc.contributor.authorTareq Jarrar
dc.contributor.authorAbed Al‑Raheem Ozrail
dc.contributor.authorYousef Abu Asbeh
dc.date.accessioned2026-01-28T07:47:13Z
dc.date.available2026-01-28T07:47:13Z
dc.date.issued2025-05-09
dc.descriptionThis retrospective observational study evaluates the performance of artificial intelligence models in predicting hospital length of stay among pleural empyema patients undergoing uniportal VATS. The findings demonstrate current limitations of AI-based predictive tools and emphasize the need for larger multicenter datasets and improved machine-learning strategies to enhance clinical applicability.
dc.description.abstractThis retrospective observational study evaluated the ability of artificial intelligence and machine-learning models to predict hospital length of stay in patients with pleural empyema managed with uniportal video-assisted thoracoscopic surgery. Data from 56 patients were analyzed using two predictive models: a Random Forest Regressor and a literature-informed weighted model. Both models demonstrated poor predictive accuracy, with mean absolute errors exceeding four days and negative R-squared values. These findings highlight the challenges of length-of-stay prediction in pleural empyema due to significant clinical variability and current limitations of AI-based models. Future multicenter studies with larger datasets and more advanced modeling approaches are recommended to improve predictive performance.
dc.description.sponsorshipNone
dc.identifier.citationAlnajjar I, Alshakarnah B, AbuShaikha T, Jarrar T, Ozrail AA, Abu Asbeh Y. Assessing artificial intelligence ability in predicting hospitalization duration for pleural empyema patients managed with uniportal video-assisted thoracoscopic surgery: a retrospective observational study. BMC Surg. 2025;25:218. doi:10.1186/s12893-025-02959-w.
dc.identifier.issn1471-2482
dc.identifier.urihttps://dspace.alquds.edu/handle/20.500.12213/10473
dc.language.isoen
dc.publisherSpringer Nature (BioMed Central)
dc.relation.ispartofseriesVolume 25 : Article 218; Volume 25 : Article 218; Volume 25 : Article 218; Volume 25 : Article 218
dc.titleAssessing artificial intelligence ability in predicting hospitalization duration for pleural empyema patients managed with uniportal video‑assisted thoracoscopic surgery: a retrospective observational study
dc.typeArticle
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