Chen Yiqun, Ma Mingxuan, Qu Dandan, Xu Chunxiang
Department of Respiratory and Critical Care Medicine, Affiliated Hospital of Nantong University, Medical School of Nantong University, Nantong, 226001, China.
Department of Respiratory and Critical Care Medicine, The Second Affiliated Hospital of Nantong University, Nantong, 226001, China.
Sci Rep. 2025 Jul 1;15(1):22409. doi: 10.1038/s41598-025-04623-y.
Postoperative pneumonia, a prevalent complication arising from lower limb fracture surgery, can significantly prolong hospitalization periods and elevate mortality rates. Consequently, early prevention and identification of this condition are crucial in improving patient prognosis. In this study, clinical indicators pertaining to postoperative pneumonia in patients with lower limb fractures at Nantong University Hospital, spanning the years 2016 to 2023, were subjected to a analysis. The patients who encountered postoperative pneumonia subsequent to their lower limb fracture surgeries during hospitalization were categorized as the case group, whereas those who did not develop such a complication served as the control group. To forecast the likelihood of postoperative pneumonia occurrence, both machine learning and deep learning algorithms were employed. The study identified Age, Gender, Fracture type, Venous thromboembolism (VTE), Hypertension, Chronic obstructive pulmonary disease (COPD), Cancer, Atrial fibrillation, Cerebrovascular disease, Hypoalbuminemia, Free fatty acid, Albumin, Albumin to globulin ratio, Calcium, Fibrinogen, D-dimer, Alcohol, Surgical grade and C-reactive protein as significant predictors of postoperative pneumonia. XGBoost and Transformer models have better performance (AUC 0.866 VS 0.946, F1 0.807 VS 0.889), and both models have better substantial prediction ability for the occurrence of postoperative pneumonia. In conclusion, XGBoost and Transformer models serve as potential tools for the prevention and treatment of postoperative pneumonia in patients with lower-extremity fractures. By adopting appropriate health management practices, the risk of developing postoperative pneumonia in this patient population may be reduced.
术后肺炎是下肢骨折手术常见的并发症,可显著延长住院时间并提高死亡率。因此,早期预防和识别这种情况对于改善患者预后至关重要。本研究对南通大学附属医院2016年至2023年下肢骨折患者术后肺炎的临床指标进行了分析。将住院期间下肢骨折手术后发生术后肺炎的患者归为病例组,未发生该并发症的患者作为对照组。为预测术后肺炎发生的可能性,采用了机器学习和深度学习算法。该研究确定年龄、性别、骨折类型、静脉血栓栓塞(VTE)、高血压、慢性阻塞性肺疾病(COPD)、癌症、心房颤动、脑血管疾病、低白蛋白血症、游离脂肪酸、白蛋白、白蛋白与球蛋白比值、钙、纤维蛋白原、D-二聚体、酒精、手术分级和C反应蛋白是术后肺炎的重要预测因素。XGBoost和Transformer模型具有更好的性能(AUC 0.866对0.946,F1 0.807对0.889),且两种模型对术后肺炎的发生均具有较好的实际预测能力。总之,XGBoost和Transformer模型可作为预防和治疗下肢骨折患者术后肺炎的潜在工具。通过采取适当的健康管理措施,可降低该患者群体发生术后肺炎的风险。