Huang Yujie, Han Guang
Department of Radiation Oncology, Hubei Cancer Hospital, Tongji Medical College, Huazhong University of Science and Technology Wuhan 430079, Hubei, China.
Am J Cancer Res. 2025 Feb 15;15(2):781-796. doi: 10.62347/MQQB5184. eCollection 2025.
To develop an accurate predictive model for identifying patients at high risk of pulmonary infection during radiochemotherapy.
We retrospectively analyzed data from 544 lung cancer patients treated at Hubei Cancer Hospital between May 2019 and October 2022. The patients were divided into training and validation groups (7:3 ratio). An external validation cohort of 100 patients treated from November 2022 to January 2024 was also included. Feature selection and model development were performed using machine learning algorithms, including Lasso regression, Random Forest, XGBoost, and Support Vector Machine (SVM). Model performance was evaluated using Receiver Operating Characteristic (ROC) curves, calibration curves, and decision curve analysis.
Key predictive factors for pulmonary infection risk were identified, including diabetes, chronic obstructive pulmonary disease, chemotherapy intensity, chemotherapy cycles, antibiotic use, age, Karnofsky Performance Status score, systemic inflammation index, prognostic nutritional index, and C-reactive protein. A nomogram-based prediction model was constructed, achieving ROC curve Area Under the Curve values of 0.889 in the training set, 0.897 in the validation set, and 0.875 in the external validation set, demonstrating strong classification ability and stability.
We developed a robust nomogram-based model incorporating eight key factors to predict the risk of pulmonary infection in lung cancer patients undergoing radiochemotherapy. This model can assist clinicians in early identification of high-risk patients, enabling timely interventions to improve patient outcomes and quality of life.
建立一种准确的预测模型,以识别接受放化疗的肺部感染高危患者。
我们回顾性分析了2019年5月至2022年10月期间在湖北省肿瘤医院接受治疗的544例肺癌患者的数据。将患者分为训练组和验证组(比例为7:3)。还纳入了2022年11月至2024年1月期间接受治疗的100例患者的外部验证队列。使用机器学习算法(包括套索回归、随机森林、XGBoost和支持向量机(SVM))进行特征选择和模型开发。使用受试者工作特征(ROC)曲线、校准曲线和决策曲线分析来评估模型性能。
确定了肺部感染风险的关键预测因素,包括糖尿病、慢性阻塞性肺疾病、化疗强度、化疗周期、抗生素使用、年龄、卡氏功能状态评分、全身炎症指数、预后营养指数和C反应蛋白。构建了基于列线图的预测模型,训练集的ROC曲线下面积值为0.889,验证集为0.897,外部验证集为0.875,显示出较强的分类能力和稳定性。
我们开发了一种强大的基于列线图的模型,纳入八个关键因素来预测接受放化疗的肺癌患者的肺部感染风险。该模型可帮助临床医生早期识别高危患者,从而能够及时进行干预,以改善患者的预后和生活质量。