Department of Medical Informatics, College of Medicine, The Catholic University of Korea, 06591, Seoul, Korea.
Department of Biomedicine & Health Sciences, The Catholic University of Korea, 06591, Seoul, Korea.
BMC Med Inform Decis Mak. 2024 Mar 22;24(1):85. doi: 10.1186/s12911-024-02473-8.
Patients with renal cell carcinoma (RCC) have an elevated risk of chronic kidney disease (CKD) following nephrectomy. Therefore, continuous monitoring and subsequent interventions are necessary. It is recommended to evaluate renal function postoperatively. Therefore, a tool to predict CKD onset is essential for postoperative follow-up and management.
We constructed a cohort using data from eight tertiary hospitals from the Korean Renal Cell Carcinoma (KORCC) database. A dataset of 4389 patients with RCC was constructed for analysis from the collected data. Nine machine learning (ML) models were used to classify the occurrence and nonoccurrence of CKD after surgery. The final model was selected based on the area under the receiver operating characteristic (AUROC), and the importance of the variables constituting the model was confirmed using the shapley additive explanation (SHAP) value and Kaplan-Meier survival analyses.
The gradient boost algorithm was the most effective among the various ML models tested. The gradient boost model demonstrated superior performance with an AUROC of 0.826. The SHAP value confirmed that preoperative eGFR, albumin level, and tumor size had a significant impact on the occurrence of CKD after surgery.
We developed a model to predict CKD onset after surgery in patients with RCC. This predictive model is a quantitative approach to evaluate post-surgical CKD risk in patients with RCC, facilitating improved prognosis through personalized postoperative care.
肾细胞癌 (RCC) 患者在肾切除术后发生慢性肾脏病 (CKD) 的风险增加。因此,需要进行持续监测和后续干预。建议术后评估肾功能。因此,对于术后随访和管理,预测 CKD 发病的工具是必不可少的。
我们使用来自韩国肾细胞癌 (KORCC) 数据库的 8 家三级医院的数据构建了一个队列。从收集的数据中构建了一个包含 4389 例 RCC 患者的数据集进行分析。使用 9 种机器学习 (ML) 模型对术后 CKD 的发生和未发生进行分类。根据接收者操作特征曲线 (AUROC) 选择最终模型,并使用 shapley 加性解释 (SHAP) 值和 Kaplan-Meier 生存分析确认构成模型的变量的重要性。
梯度提升算法是测试的各种 ML 模型中最有效的。梯度提升模型表现出色,AUROC 为 0.826。SHAP 值证实术前 eGFR、白蛋白水平和肿瘤大小对术后 CKD 的发生有重大影响。
我们开发了一种用于预测 RCC 患者手术后 CKD 发病的模型。该预测模型是一种定量方法,可评估 RCC 患者术后 CKD 风险,通过个性化的术后护理改善预后。