Department of Hepatopancreatobiliary Surgery, The First Affiliated Hospital of Wenzhou Medical University, China.
Department of Radiology, The First Affiliated Hospital of Wenzhou Medical University, China.
Pancreatology. 2024 May;24(3):350-356. doi: 10.1016/j.pan.2024.02.003. Epub 2024 Feb 6.
This study aimed to investigate and validate machine-learning predictive models combining computed tomography and clinical data to early predict organ failure (OF) in Hyperlipidemic acute pancreatitis (HLAP).
Demographics, laboratory parameters and computed tomography imaging data of 314 patients with HLAP from the First Affiliated Hospital of Wenzhou Medical University between 2017 and 2021, were retrospectively analyzed. Sixty-five percent of patients (n = 204) were assigned to the training group and categorized as patients with and without OF. Parameters were compared by univariate analysis. Machine-learning methods including random forest (RF) were used to establish model to predict OF of HLAP. Areas under the curves (AUCs) of receiver operating characteristic were calculated. The remaining 35% patients (n = 110) were assigned to the validation group to evaluate the performance of models to predict OF.
Ninety-three (45.59%) and fifty (45.45%) patients from the training and the validation cohort, respectively, developed OF. The RF model showed the best performance to predict OF, with the highest AUC value of 0.915. The sensitivity (0.828) and accuracy (0.814) of RF model were both the highest among the five models in the study cohort. In the validation cohort, RF model continued to show the highest AUC (0.820), accuracy (0.773) and sensitivity (0.800) to predict OF in HLAP, while the positive and negative likelihood ratios and post-test probability were 3.22, 0.267 and 72.85%, respectively.
Machine-learning models can be used to predict OF occurrence in HLAP in our pilot study. RF model showed the best predictive performance, which may be a promising candidate for further clinical validation.
本研究旨在探讨和验证结合计算机断层扫描和临床数据的机器学习预测模型,以早期预测高脂血症性急性胰腺炎(HLAP)的器官衰竭(OF)。
回顾性分析 2017 年至 2021 年温州医科大学第一附属医院 314 例 HLAP 患者的人口统计学、实验室参数和计算机断层扫描成像数据。将 65%的患者(n=204)分配到训练组,并分为有 OF 和无 OF 两组。通过单因素分析比较参数。使用随机森林(RF)等机器学习方法建立预测 HLAP OF 的模型。计算受试者工作特征曲线下的面积(AUCs)。将其余 35%的患者(n=110)分配到验证组,以评估模型预测 OF 的性能。
训练组和验证组分别有 93(45.59%)和 50(45.45%)例患者发生 OF。RF 模型在预测 OF 方面表现最佳,AUC 值最高为 0.915。RF 模型在研究队列中的敏感性(0.828)和准确性(0.814)均最高。在验证组中,RF 模型继续显示出最高的 AUC(0.820)、准确性(0.773)和敏感性(0.800),以预测 HLAP 中的 OF,阳性和阴性似然比和后验概率分别为 3.22、0.267 和 72.85%。
机器学习模型可用于预测本研究中 HLAP 患者 OF 的发生。RF 模型显示出最佳的预测性能,可能是进一步临床验证的有前途的候选者。