Department of Biomedical Sciences, Humanitas University, Via Rita Levi Montalcini 4, Pieve Emanuele, 20090, Milan, Italy.
Pancreatic Surgery Unit, Humanitas Clinical and Research Center-IRCCS, Via Manzoni 56, 20089, Rozzano, MI, Italy.
Updates Surg. 2022 Feb;74(1):235-243. doi: 10.1007/s13304-021-01174-5. Epub 2021 Oct 1.
Clinically relevant postoperative pancreatic fistula (CR-POPF) is a life-threatening complication following pancreaticoduodenectomy (PD). Individualized preoperative risk assessment could improve clinical management and prevent or mitigate adverse outcomes. The aim of this study is to develop a machine learning risk model to predict occurrence of CR-POPF after PD from preoperative computed tomography (CT) scans. A total of 100 preoperative high-quality CT scans of consecutive patients who underwent pancreaticoduodenectomy in our institution between 2011 and 2019 were analyzed. Radiomic and morphological features extracted from CT scans related to pancreatic anatomy and patient characteristics were included as variables. These data were then assessed by a machine learning classifier to assess the risk of developing CR-POPF. Among the 100 patients evaluated, 20 had CR-POPF. The predictive model based on logistic regression demonstrated specificity of 0.824 (0.133) and sensitivity of 0.571 (0.337), with an AUC of 0.807 (0.155), PPV of 0.468 (0.310) and NPV of 0.890 (0.084). The performance of the model minimally decreased utilizing a random forest approach, with specificity of 0.914 (0.106), sensitivity of 0.424 (0.346), AUC of 0.749 (0.209), PPV of 0.502 (0.414) and NPV of 0.869 (0.076). Interestingly, using the same data, the model was also able to predict postoperative overall complications and a postoperative length of stay over the median with AUCs of 0.690 (0.209) and 0.709 (0.160), respectively. These findings suggest that preoperative CT scans evaluated by machine learning may provide a novel set of information to help clinicians choose a tailored therapeutic pathway in patients candidated to pancreatoduodenectomy.
临床相关的术后胰腺瘘(CR-POPF)是胰十二指肠切除术(PD)后的一种危及生命的并发症。个体化的术前风险评估可以改善临床管理,预防或减轻不良后果。本研究的目的是开发一种机器学习风险模型,以预测 PD 术后发生 CR-POPF 的可能性。分析了 2011 年至 2019 年间我院连续接受胰十二指肠切除术的 100 例高质量术前 CT 扫描患者。从 CT 扫描中提取与胰腺解剖和患者特征相关的放射组学和形态学特征作为变量。然后,使用机器学习分类器评估这些数据,以评估发生 CR-POPF 的风险。在评估的 100 例患者中,有 20 例发生 CR-POPF。基于逻辑回归的预测模型显示特异性为 0.824(0.133),敏感性为 0.571(0.337),AUC 为 0.807(0.155),PPV 为 0.468(0.310),NPV 为 0.890(0.084)。使用随机森林方法,模型的性能略有下降,特异性为 0.914(0.106),敏感性为 0.424(0.346),AUC 为 0.749(0.209),PPV 为 0.502(0.414),NPV 为 0.869(0.076)。有趣的是,使用相同的数据,该模型还能够预测术后总体并发症和术后中位住院时间,AUC 分别为 0.690(0.209)和 0.709(0.160)。这些发现表明,机器学习评估的术前 CT 扫描可能为临床医生在候选胰十二指肠切除术患者中提供一组新的信息,以帮助选择个体化的治疗途径。