Department of Radiology and Hebei Key Laboratory of Precise Imaging of Inflammation Related Tumors, The Affiliated Hospital of Hebei University, 212 Eastern Yuhua Road, Baoding, 071000, Hebei Province, China.
Department of Critical Care Medicine, Baoding First Central Hospital, Lianchi District, No. 320, Changcheng North Street (Qianwei Road), Baoding, 071000, China.
Sci Rep. 2024 Oct 3;14(1):22978. doi: 10.1038/s41598-024-74251-5.
The purpose of this study is to develop a nomogram model for early prediction of the severe mycoplasma pneumoniae pneumonia (SMPP) in Pediatric and Adult Patients. A retrospective analysis was conducted on patients with MPP, classifying them into SMPP and non-severe MPP (NSMPP) groups. A total of 550 patients (NSMPP 374 and SMPP 176) were enrolled in the study and allocated to training, validation cohorts. 278 patients (NSMPP 224 and SMPP 54) were retrospectively collected from two institutions and allocated to testing cohort. The risk factors for SMPP were identified using univariate analysis. For radiomic feature selection, Spearman's correlation and the least absolute shrinkage and selection operator (LASSO) were utilized. Logistic regression was used to build different models, including clinical, imaging, radiomics, and integrated models (combining clinical, imaging, and radiomics features selected). The model's discrimination was evaluated using a receiver operating characteristic curve, its calibration with a calibration curve, and the results were visualized using the Hosmer-Lemeshow goodness-of-fit test. Thirteen clinical features and fourteen imaging features were selected for constructing the clinical and imaging models. Simultaneously, a set of twenty-five radiomics features were utilized to build the radiomics model. The integrated model demonstrated good calibration and discrimination in the training cohorts (AUC, 0.922; 95% CI: 0.900, 0.942), validation cohorts (AUC, 0.879; 95% CI: 0.806, 0.920), and testing cohorts (AUC, 0.877; 95% CI: 0.836, 0.916). The discriminatory and predictive efficacy of the clinical model in testing cohorts increased further after clinical and radiological features were incorporated (AUC, 0.849 vs. 0.922, P = 0.002). The model demonstrated exemplary predictive efficacy for SMPP by leveraging a comprehensive set of inputs, encompassing clinical data, quantitative and qualitative radiological features, along with radiomics features. The integration of these three aspects in the predictive model further enhanced the performance of the clinical model, indicating the potential for extensive clinical applications.
本研究旨在开发一种列线图模型,用于早期预测儿科和成人患者的严重肺炎支原体肺炎(SMPP)。对 MPP 患者进行回顾性分析,将其分为 SMPP 和非严重 MPP(NSMPP)组。共纳入 550 例患者(NSMPP 374 例,SMPP 176 例),并将其分为训练队列和验证队列。回顾性收集了来自 2 个机构的 278 例患者(NSMPP 224 例,SMPP 54 例),并将其分为测试队列。采用单因素分析确定 SMPP 的危险因素。对于放射组学特征选择,采用 Spearman 相关分析和最小绝对值收缩和选择算子(LASSO)。采用 Logistic 回归构建不同的模型,包括临床、影像、放射组学和综合模型(结合临床、影像和放射组学特征选择)。采用受试者工作特征曲线评估模型的判别能力,采用校准曲线评估模型的校准能力,采用 Hosmer-Lemeshow 拟合优度检验评估结果的可视化。选择了 13 个临床特征和 14 个影像特征来构建临床和影像模型。同时,利用一组 25 个放射组学特征构建放射组学模型。综合模型在训练队列(AUC,0.922;95%CI:0.900,0.942)、验证队列(AUC,0.879;95%CI:0.806,0.920)和测试队列(AUC,0.877;95%CI:0.836,0.916)中具有良好的校准和判别能力。在纳入临床和影像学特征后,临床模型在测试队列中的判别和预测效能进一步提高(AUC,0.849 比 0.922,P=0.002)。该模型通过利用一组全面的输入,包括临床数据、定量和定性的放射学特征以及放射组学特征,对 SMPP 具有出色的预测效果。将这三个方面整合到预测模型中进一步提高了临床模型的性能,表明其具有广泛的临床应用潜力。