Haber Philipp K, Maier Christoph, Kästner Anika, Feldbrügge Linda, Ortiz Galindo Santiago Andres, Geisel Dominik, Fehrenbach Uli, Biebl Matthias, Krenzien Felix, Benzing Christian, Schöning Wenzel, Pratschke Johann, Schmelzle Moritz
Department of Surgery, Campus Charité Mitte and Campus Virchow-Klinikum, Charité-Universitätsmedizin Berlin, Augustenburger Platz 1, 13353 Berlin, Germany.
Department of Radiology, Charité-Universitätsmedizin Berlin, Augustenburger Platz 1, 13353 Berlin, Germany.
J Clin Med. 2021 Feb 10;10(4):685. doi: 10.3390/jcm10040685.
Minimal-invasive techniques are increasingly applied in clinical practice and have contributed towards improving postoperative outcomes. While comparing favorably with open surgery in terms of safety, the occurrence of severe complications remains a grave concern. To date, no objective predictive system has been established to guide clinicians in estimating complication risks as the relative contribution of general patient health, liver function and surgical parameters remain unclear. Here, we perform a single-center analysis of all consecutive patients undergoing laparoscopic liver resection for primary hepatic malignancies since 2010. Among the 210 patients identified, 32 developed major complications. Several independent predictors were identified through a multivariate analysis, defining a preoperative model: diabetes, history of previous hepatectomy, surgical approach, alanine aminotransferase levels and lesion entity. The addition of operative time and whether conversion was required significantly improved predictions and were thus incorporated into the postoperative model. Both models were able to identify patients with major complications with acceptable performance (area under the receiver-operating characteristic curve (AUC) for a preoperative model = 0.77 vs. postoperative model = 0.80). Internal validation was performed and confirmed the discriminatory ability of the models. An easily accessible online tool was deployed in order to estimate probabilities of severe complication without the need for manual calculation.
微创技术在临床实践中的应用日益广泛,并有助于改善术后结果。虽然在安全性方面与开放手术相比具有优势,但严重并发症的发生仍然是一个严重问题。迄今为止,由于患者总体健康状况、肝功能和手术参数的相对贡献尚不清楚,尚未建立客观的预测系统来指导临床医生评估并发症风险。在此,我们对自2010年以来接受腹腔镜肝切除术治疗原发性肝癌的所有连续患者进行了单中心分析。在确定的210例患者中,32例发生了严重并发症。通过多变量分析确定了几个独立预测因素,从而定义了一个术前模型:糖尿病、既往肝切除术史、手术方式、丙氨酸转氨酶水平和病变类型。增加手术时间和是否需要中转手术显著改善了预测效果,因此将其纳入术后模型。两个模型都能够以可接受的表现识别出发生严重并发症的患者(术前模型的受试者操作特征曲线下面积(AUC)=0.77,术后模型=0.80)。进行了内部验证并证实了模型的鉴别能力。部署了一个易于访问的在线工具,以便无需人工计算即可估计严重并发症的概率。