Alnajjar Issa, Alshakarnah Baraa, AbuShaikha Tasneem, Jarrar Tareq, Ozrail Abed Al-Raheem, Asbeh Yousef Abu
Faculty of Medicine, Al-Quds University, Jerusalem, Palestine.
Faculty of Health Science, Al-Quds University, Jerusalem, Palestine.
BMC Surg. 2025 May 19;25(1):218. doi: 10.1186/s12893-025-02959-w.
This retrospective observational research evaluates the potential applicability of artificial intelligence models to predict the length of hospital stay for patients with pleural empyema who underwent uniportal video-assisted thoracoscopic surgery.
Data from 56 patients were analyzed using two artificial intelligence models. A Random Forest Regressor, the initial model, was trained using clinical data unique to each patient. Weighted factors from evidence-based research were incorporated into the second model, which was created using a prediction approach informed by the literature.
The two models tested showed poor prediction accuracy. The first one had a mean absolute error of 4.56 days and a negative R value. The literature-informed model performed similarly, with a mean absolute error of 4.53 days and an R below zero.
While artificial intelligence holds promise in supporting clinical decision-making, this study demonstrates the challenges of predicting length of stay in pleural empyema patients due to significant clinical variability and the current limitations of AI-based models. Future research should focus on integrating larger, multi-center datasets and more advanced machine learning approaches to enhance predictive accuracy.
这项回顾性观察性研究评估了人工智能模型预测接受单孔电视辅助胸腔镜手术的胸膜腔积液患者住院时间的潜在适用性。
使用两种人工智能模型对56例患者的数据进行分析。初始模型随机森林回归器使用每个患者独有的临床数据进行训练。基于循证研究的加权因素被纳入第二个模型,该模型采用文献中的预测方法创建。
测试的两种模型显示出较差的预测准确性。第一个模型的平均绝对误差为4.56天,R值为负。基于文献的模型表现类似,平均绝对误差为4.53天,R值低于零。
虽然人工智能在支持临床决策方面具有前景,但本研究表明,由于显著的临床变异性和基于人工智能的模型的当前局限性,预测胸膜腔积液患者的住院时间具有挑战性。未来的研究应侧重于整合更大的多中心数据集和更先进的机器学习方法,以提高预测准确性。