Alhulaili Zahraa M, Pleijhuis Rick G, Hoogwater Frederik J H, Nijkamp Maarten W, Klaase Joost M
Department of Hepato-Pancreato- Biliary Surgery and Liver Transplantation University Medical Center Groningen, University of Groningen, 30001 9700 RB, Groningen, Netherlands.
Department of Internal Medicine University Medical Center Groningen, University of Groningen, Groningen, Netherlands.
Langenbecks Arch Surg. 2025 Feb 7;410(1):62. doi: 10.1007/s00423-024-03581-9.
Pancreatoduodenectomy (PD) is a challenging procedure which is associated with high morbidity rates. This study was performed to make an overview of risk factors included in risk stratification methods both logistic regression models and models based on artificial intelligence algorithms to predict postoperative pancreatic fistula (POPF) and other complications following PD and to provide insight in the extent to which these tools were validated.
Five databases were searched to identify relevant studies. Calculators, equations, nomograms, and artificial intelligence models that addressed POPF and other complications were included. Only PD resections were considered eligible. There was no exclusion of the minimally invasive techniques reporting PD resections. All other pancreatic resections were excluded.
90 studies were included. Thirty-five studies were related to POPF, thirty-five studies were related to other complications following PD and twenty studies were related to artificial intelligence predication models after PD. Among the identified risk factors, the most used factors for POPF risk stratification were the main pancreatic duct diameter (MPD) (80%) followed by pancreatic texture (51%), whereas for other complications the most used factors were age (34%) and ASA score (29.4%). Only 26% of the evaluated risk stratification tools for POPF and other complications were externally validated. This percentage was even lower for the risk models using artificial intelligence which was 20%.
The MPD was the most used factor when stratifying the risk of POPF followed by pancreatic texture. Age and ASA score were the most used factors for the stratification of other complications. Insight in clinically relevant risk factors could help surgeons in adapting their surgical strategy and shared decision-making. This study revealed that the focus of research still lies on developing new risk models rather than model validation, hampering clinical implementation of these tools for decision support.
胰十二指肠切除术(PD)是一项具有挑战性的手术,其发病率较高。本研究旨在概述风险分层方法中所包含的风险因素,包括逻辑回归模型和基于人工智能算法的模型,以预测PD术后胰瘘(POPF)及其他并发症,并深入了解这些工具的验证程度。
检索了五个数据库以识别相关研究。纳入了涉及POPF和其他并发症的计算器、方程式、列线图及人工智能模型。仅将PD切除术视为符合条件。不排除报告PD切除术的微创技术。排除所有其他胰腺切除术。
纳入90项研究。35项研究与POPF相关,35项研究与PD术后其他并发症相关,20项研究与PD术后人工智能预测模型相关。在已识别的风险因素中,用于POPF风险分层最常用的因素是主胰管直径(MPD)(80%),其次是胰腺质地(51%);而对于其他并发症,最常用的因素是年龄(34%)和美国麻醉医师协会(ASA)评分(29.4%)。仅26%的评估POPF和其他并发症的风险分层工具经过外部验证。使用人工智能的风险模型这一比例甚至更低,为20%。
在对POPF风险进行分层时,MPD是最常用的因素,其次是胰腺质地。年龄和ASA评分是用于其他并发症分层最常用的因素。了解临床相关风险因素有助于外科医生调整手术策略并进行共同决策。本研究表明,研究重点仍在于开发新的风险模型而非模型验证,这阻碍了这些工具在临床决策支持中的应用。