Shibutani Kazu, Okada Masahiro, Tsukada Jitsuro, Hyodo Tomoko, Ibukuro Kenji, Abe Hayato, Matsumoto Naoki, Midorikawa Yutaka, Moriyama Mitsuhiko, Takayama Tadatoshi
Department of Radiology, Nihon University School of Medicine, Tokyo, Japan.
Department of Radiology, Kindai University school of medicine, Osaka, Japan.
BJR Open. 2021 Nov 24;3(1):20210019. doi: 10.1259/bjro.20210019. eCollection 2021.
To develop a model for predicting post-operative major complications in patients with hepatocellular carcinoma (HCC).
In all, 186 consecutive patients with pre-operative MR elastography were included. Complications were categorised using Clavien‒Dindo classification, with major complications defined as ≥Grade 3. Liver-stiffness measurement (LSM) values were measured on elastogram. The indocyanine green clearance rate of liver remnant (ICG-Krem) was based on the results of CT volumetry, intraoperative data, and ICG-K value. For an easy application to the prediction model, the continuous variables were converted to categories. Moreover, logistic regression analysis and fivefold cross-validation were performed. The prediction model's discriminative performance was evaluated using the area under the receiver operating characteristic curve (AUC), and the calibration of the model was assessed by the Hosmer‒Lemeshow test.
43 of 186 patients (23.1%) had major complications. The multivariate analysis demonstrated that LSM, albumin-bilirubin (ALBI) score, intraoperative blood loss, and ICG-Krem were significantly associated with major complications. The median AUC of the five validation subsets was 0.878. The Hosmer-Lemeshow test confirmed no evidence of inadequate fit ( = 0.13, 0.19, 0.59, 0.59, and 0.73) on the fivefold cross-validation. The prediction model for major complications was as follows: -2.876 + 2.912 [LSM (>5.3 kPa)]+1.538 [ALBI score (>-2.28)]+0.531 [Intraoperative blood loss (>860 ml)]+0.257 [ICG-Krem (<0.10)].
The proposed prediction model can be used to predict post-operative major complications in patients with HCC.
The proposed prediction model can be used in routine clinical practice to identify post-operative major complications in patients with HCC and to strategise appropriate treatments of HCC.
建立肝细胞癌(HCC)患者术后主要并发症的预测模型。
共纳入186例术前行磁共振弹性成像检查的连续患者。并发症采用Clavien-Dindo分类法进行分类,主要并发症定义为≥3级。在弹性图上测量肝脏硬度值(LSM)。肝残余吲哚菁绿清除率(ICG-Krem)基于CT容积测量、术中数据和ICG-K值的结果。为便于应用于预测模型,将连续变量转换为分类变量。此外,进行了逻辑回归分析和五重交叉验证。使用受试者操作特征曲线下面积(AUC)评估预测模型的判别性能,并通过Hosmer-Lemeshow检验评估模型的校准情况。
186例患者中有43例(23.1%)发生主要并发症。多因素分析表明,LSM、白蛋白-胆红素(ALBI)评分、术中失血量和ICG-Krem与主要并发症显著相关。五个验证子集的中位AUC为0.878。Hosmer-Lemeshow检验证实,在五重交叉验证中没有证据表明拟合不足(分别为0.13、0.19、0.59、0.59和0.73)。主要并发症的预测模型如下:-2.876 + 2.912 [LSM(>5.3kPa)]+1.538 [ALBI评分(>-2.28)]+0.531 [术中失血量(>860ml)]+0.257 [ICG-Krem(<0.10)]。
所提出的预测模型可用于预测HCC患者术后主要并发症。
所提出的预测模型可用于常规临床实践,以识别HCC患者术后主要并发症并制定适当的HCC治疗策略。