Jin David X, Lacson Ronilda, Cochon Laila R, Alper Emily C, McNabb-Baltar Julia, Banks Peter A, Khorasani Ramin
From the Center for Pancreatic Disease, Division of Gastroenterology, Hepatology and Endoscopy, and.
Center for Evidence Based Imaging, Department of Radiology, Brigham and Women's Hospital, Harvard Medical School, Boston MA.
Pancreas. 2018 Aug;47(7):871-879. doi: 10.1097/MPA.0000000000001102.
This study aimed to develop a diagnostic model that predicts acute pancreatitis (AP) risk before imaging.
Emergency department patients with serum lipase elevated to 3 times the upper limit of normal or greater were identified retrospectively (September 1, 2013-August 31, 2015). An AP diagnosis was established by expert review of full hospitalization records. Candidate predictors included demographic and clinical characteristics at presentation. Using a derivation set, a multivariable logistic regression model and corresponding point-based scoring system was developed to predict AP. Discrimination accuracy and calibration were assessed in a separate validation set.
In 319 eligible patients, 182 (57%) had AP. The final model (area under curve, 0.92) included 8 predictors: number of prior AP episodes; history of cholelithiasis; no abdominal surgery (prior 2 months); time elapsed from symptom onset; pain localized to epigastrium, of progressively worsening severity, and severity level at presentation; and extent of lipase elevation. At a diagnostic risk threshold of 8 points or higher (≥99%), the model identified AP with a sensitivity of 45%, and a specificity and a positive predictive value of 100%.
In emergency department patients with lipase elevated to 3 times the upper limit of normal or greater, this model helps identify AP risk before imaging. Prospective validation studies are needed to confirm diagnostic accuracy.
本研究旨在开发一种在进行影像学检查之前预测急性胰腺炎(AP)风险的诊断模型。
对血清脂肪酶升高至正常上限3倍及以上的急诊科患者进行回顾性研究(2013年9月1日至2015年8月31日)。通过对完整住院记录的专家审查确定AP诊断。候选预测因素包括就诊时的人口统计学和临床特征。使用一个推导集,开发了一个多变量逻辑回归模型和相应的基于点的评分系统来预测AP。在一个单独的验证集中评估辨别准确性和校准情况。
在319例符合条件的患者中,182例(57%)患有AP。最终模型(曲线下面积为0.92)包括8个预测因素:既往AP发作次数;胆石症病史;无腹部手术史(过去2个月内);症状发作后的时间;疼痛定位于上腹部、严重程度逐渐加重以及就诊时的严重程度级别;以及脂肪酶升高的程度。在诊断风险阈值为8分或更高(≥99%)时,该模型识别AP的灵敏度为45%,特异度和阳性预测值为100%。
对于血清脂肪酶升高至正常上限3倍及以上的急诊科患者,该模型有助于在进行影像学检查之前识别AP风险。需要进行前瞻性验证研究以确认诊断准确性。