Cancer Medicine (Aug 2023)

A nomogram model for predicting the risk of checkpoint inhibitor‐related pneumonitis for patients with advanced non‐small‐cell lung cancer

  • Yao Zhang,
  • Lincheng Zhang,
  • Shuhui Cao,
  • Yue Wang,
  • Xuxinyi Ling,
  • Yan Zhou,
  • Hua Zhong

DOI
https://doi.org/10.1002/cam4.6244
Journal volume & issue
Vol. 12, no. 15
pp. 15998 – 16010

Abstract

Read online

Abstract Objective Immunotherapy extensively treats advanced non‐small‐cell lung cancer (NSCLC). Although immunotherapy is generally better tolerated than chemotherapy, it can cause multiple immune‐related adverse events (irAEs) involving multiple organs. Checkpoint inhibitor‐related pneumonitis (CIP) is a relatively uncommon irAE that, in severe cases, can be fatal. Potential risk factors for the occurrence of CIP are currently poorly understood. This study sought to develop a novel scoring system for predicting the risk of CIP based on a nomogram model. Methods We retrospectively collected advanced NSCLC patients who received immunotherapy at our institution between January 1, 2018, and December 30, 2021. All patients who met the criteria were randomly divided into the training set and testing set (in a ratio of 7:3), and cases fulfilling the CIP diagnostic criteria were screened. The patients' baseline clinical characteristics, laboratory tests, imaging, and treatment information were extracted from the electronic medical records. The risk factors associated with the occurrence of CIP were identified based on the results of logistic regression analysis on the training set, and a nomogram prediction model was developed. The discrimination and prediction accuracy of the model was evaluated using the receiver operating characteristic (ROC) curve, the concordance index (C‐index), and the calibration curve. Decision curve analysis (DCA) was used to evaluate the clinical applicability of the model. Results The training set comprised 526 (CIP: 42 cases), and the testing set comprised 226 (CIP: 18 cases) patients, respectively. In the training set, the final multivariate regression analysis revealed that age (p = 0.014; odds ratio [OR] = 1.056; 95% Confidence Interval [CI] =1.011–1.102), Eastern Cooperative Oncology Group performance status (p = 0.002; OR = 6.170; 95% CI = 1.943–19.590), history of prior radiotherapy (p < 0.001; OR = 4.005; 95% CI = 1.920–8.355), baseline white blood cell count (WBC) (p < 0.001; OR = 1.604; 95% CI = 1.250–2.059), and baseline absolute lymphocyte count (ALC) (p = 0.034; OR = 0.288; 95% CI = 0.091–0.909) were identified as independent risk factors for the occurrence of CIP. A prediction nomogram model was developed based on these five parameters. The area under the ROC curve and C‐index of the prediction model in the training set and testing set were 0.787 (95% CI: 0.716–0.857) and 0.874 (95% CI: 0.792–0.957), respectively. The calibration curves are in good agreement. The DCA curves indicate that the model has good clinical utility. Conclusion We developed a nomogram model that proved to be a good assistant tool for predicting the risk of CIP in advanced NSCLC. This model has the potential power to help clinicians in making treatment decisions.

Keywords