Meng Zhao Wu, Ruan Yibing, Fisher Stacey, Bishay Kirles, Chau Millie, Howarth Megan, Cartwright Shane, Chen Yen-I, Dixon Elijah, Heitman Steven J, Brenner Darren R, Forbes Nauzer
Department of Community Health Sciences University of Calgary Calgary Canada.
Department of Medicine Division of Gastroenterology and Hepatology University of Calgary Calgary Canada.
DEN Open. 2024 Mar 25;4(1):e355. doi: 10.1002/deo2.355. eCollection 2024 Apr.
Pancreatitis following endoscopic retrograde cholangiopancreatography (ERCP) can lead to significant morbidity and mortality. We aimed to develop an accurate post-ERCP pancreatitis risk prediction model using easily obtainable variables.
Using prospective multi-center ERCP data, we performed logistic regression using stepwise selection on several patient-, procedure-, and endoscopist-related factors that were determined a priori. The final model was based on a combination of the Bayesian information criterion and Akaike's information criterion performance, balancing the inclusion of clinically relevant variables and model parsimony. All available data were used for model development, with subsequent internal validation performed on bootstrapped data using 10-fold cross-validation.
Data from 3021 ERCPs were used to inform models. There were 151 cases of post-ERCP pancreatitis (5.0% incidence). Variables included in the final model included female sex, pancreatic duct cannulation, native papilla status, pre-cut sphincterotomy, increasing cannulation time, presence of biliary stricture, patient age, and placement of a pancreatic duct stent. The final model was discriminating, with a receiver operating characteristic curve statistic of 0.79, and well-calibrated, with a predicted risk-to-observed risk ratio of 1.003.
We successfully developed and internally validated a promising post-ERCP pancreatitis clinical prediction model using easily obtainable variables that are known at baseline or observed during the ERCP procedure. The model achieved an area under the curve of 0.79. External validation is planned as additional data becomes available.
内镜逆行胰胆管造影术(ERCP)后胰腺炎可导致显著的发病率和死亡率。我们旨在利用易于获取的变量开发一种准确的ERCP后胰腺炎风险预测模型。
使用前瞻性多中心ERCP数据,我们对事先确定的几个与患者、操作和内镜医师相关的因素进行逐步选择的逻辑回归分析。最终模型基于贝叶斯信息准则和赤池信息准则性能的结合,平衡了临床相关变量的纳入和模型的简约性。所有可用数据用于模型开发,随后使用10倍交叉验证对自抽样数据进行内部验证。
3021例ERCP数据用于构建模型。有151例ERCP后胰腺炎病例(发病率为5.0%)。最终模型纳入的变量包括女性、胰管插管、天然乳头状态、预切开括约肌切开术、插管时间增加、胆管狭窄、患者年龄以及胰管支架置入。最终模型具有鉴别能力,受试者工作特征曲线统计值为0.79,且校准良好,预测风险与观察风险之比为1.003。
我们成功开发并内部验证了一种有前景的ERCP后胰腺炎临床预测模型,该模型使用了在基线时已知或在ERCP操作过程中观察到的易于获取的变量。该模型的曲线下面积为0.79。计划在获得更多数据时进行外部验证。