Department of Anesthesiology, The First Affiliated Hospital, Zhejiang University School of Medicine, 79 Qingchun Road, Hangzhou, China.
Division of Anaesthetics, Pain Medicine and Intensive Care, Department of Surgery and Cancer, Faculty of Medicine, Imperial College London, Chelsea and Westminster Hospital, London, UK.
Aging Clin Exp Res. 2023 Mar;35(3):639-647. doi: 10.1007/s40520-022-02325-3. Epub 2023 Jan 4.
Elderly patients are susceptible to postoperative infections with increased mortality. Analyzing with a deep learning model, the perioperative factors that could predict and/or contribute to postoperative infections may improve the outcome in elderly. This was an observational cohort study with 2014 elderly patients who had elective surgery from 28 hospitals in China from April to June 2014. We aimed to develop and validate deep learning-based predictive models for postoperative infections in the elderly. 1510 patients were randomly assigned to be training dataset for establishing deep learning-based models, and 504 patients were used to validate the effectiveness of these models. The conventional model predicted postoperative infections was 0.728 (95% CI 0.688-0.768) with the sensitivity of 66.2% (95% CI 58.2-73.6) and specificity of 66.8% (95% CI 64.6-68.9). The deep learning model including risk factors relevant to baseline clinical characteristics predicted postoperative infections was 0.641 (95% CI 0.545-0.737), and sensitivity and specificity were 34.2% (95% CI 19.6-51.4) and 88.8% (95% CI 85.6-91.6), respectively. Including risk factors relevant to baseline variables and surgery, the deep learning model predicted postoperative infections was 0.763 (95% CI 0.681-0.844) with the sensitivity of 63.2% (95% CI 46-78.2) and specificity of 80.5% (95% CI 76.6-84). Our feasibility study indicated that a deep learning model including risk factors for the prediction of postoperative infections can be achieved in elderly. Further study is needed to assess whether this model can be used to guide clinical practice to improve surgical outcomes in elderly.
老年患者术后易发生感染,死亡率增加。通过深度学习模型分析,预测和/或有助于术后感染的围手术期因素可能会改善老年患者的预后。这是一项观察性队列研究,纳入了 2014 年 4 月至 6 月期间中国 28 家医院接受择期手术的 2014 名老年患者。我们旨在开发和验证基于深度学习的老年患者术后感染预测模型。1510 名患者被随机分配到训练数据集,用于建立基于深度学习的模型,504 名患者用于验证这些模型的有效性。传统的预测术后感染的模型为 0.728(95%置信区间 0.688-0.768),敏感性为 66.2%(95%置信区间 58.2-73.6),特异性为 66.8%(95%置信区间 64.6-68.9)。包括与基线临床特征相关的危险因素的深度学习模型预测术后感染的概率为 0.641(95%置信区间 0.545-0.737),敏感性和特异性分别为 34.2%(95%置信区间 19.6-51.4)和 88.8%(95%置信区间 85.6-91.6)。包括与基线变量和手术相关的危险因素的深度学习模型预测术后感染的概率为 0.763(95%置信区间 0.681-0.844),敏感性为 63.2%(95%置信区间 46-78.2),特异性为 80.5%(95%置信区间 76.6-84)。我们的可行性研究表明,一种包括预测术后感染危险因素的深度学习模型可以在老年患者中实现。需要进一步研究以评估该模型是否可用于指导临床实践,以改善老年患者的手术结局。