Frigerio Isabella, Bao Quoc Riccardo, Bannone Elisa, Giardino Alessandro, Spolverato Gaya, Lorenzoni Giulia, Scopelliti Filippo, Girelli Roberto, Martignoni Guido, Regi Paolo, Azzolina Danila, Gregori Dario, Butturini Giovanni
Hepato-Biliary and Pancreatic Surgery Unit, Pederzoli Hospital, 37109 Peschiera del Garda, Italy.
Collegium Medicum, University of Social Sciences, 90-136 Łodz, Poland.
Cancers (Basel). 2024 Dec 7;16(23):4106. doi: 10.3390/cancers16234106.
To build a Bayesian approach-based model to predict the success of surgical exploration post-neoadjuvant treatment.
Pancreatic cancer (PDAC) is best treated with radical surgery and chemotherapy, offering the greatest chance of survival. Surgery after neoadjuvant treatment (NAT) is indicated in the absence of progression, knowing the limits in accurately predicting resectability with traditional radiology. R Status being a pathological parameter, it can be assessed only after surgery.
Patients successfully resected for histologically confirmed PDAC after NAT for BR and LA disease were included, with attention to the predictors of R status from the existing literature. The Bayesian logistic regression model was estimated for predicting the R1 status. The area under curve (AUC) of the average posterior probability of R1 was calculated and results were reported considering the 95% posterior credible intervals for the odds ratios, along with the probability of direction.
The final model demonstrated a commendable AUC value of 0.72, indicating good performance. The likelihood of positive margins was associated with older age, higher ASA score, the presence of venous and/or arterial involvement at preoperative radiology, tumor location within the pancreatic body, a lack of tumor size reduction post-NAT, and the persistence of an elevated Ca19.9 value.
A Bayesian approach using only preoperative items is firstly used with good performance to predict R Status in pancreatic cancer patients who underwent resection after neoadjuvant therapy.
构建一种基于贝叶斯方法的模型,以预测新辅助治疗后手术探查的成功率。
胰腺癌(PDAC)最好通过根治性手术和化疗进行治疗,这提供了最大的生存机会。在无疾病进展的情况下,新辅助治疗(NAT)后可进行手术,但传统放射学在准确预测可切除性方面存在局限性。R状态作为一个病理参数,只能在手术后进行评估。
纳入经组织学证实为BR和LA疾病的NAT后成功切除的PDAC患者,并关注现有文献中R状态的预测因素。估计贝叶斯逻辑回归模型以预测R1状态。计算R1平均后验概率的曲线下面积(AUC),并报告结果,同时考虑比值比的95%后验可信区间以及方向概率。
最终模型显示出值得称赞的AUC值为0.72,表明性能良好。切缘阳性的可能性与年龄较大、ASA评分较高、术前放射学检查存在静脉和/或动脉受累、肿瘤位于胰体、NAT后肿瘤大小未缩小以及Ca19.9值持续升高有关。
首次使用仅基于术前指标的贝叶斯方法,对新辅助治疗后接受手术的胰腺癌患者的R状态进行预测,性能良好。