Lai Rui-Min, Wang Miao-Miao, Lin Xiao-Yu, Zheng Qi, Chen Jing
Department of Hepatology, Hepatology Research Institute, The First Affiliated Hospital, Fujian Medical University, Fuzhou 350005, Fujian Province, China.
Department of Endocrinology, The 910Hospital of The Joint Service Support Force, Quanzhou 362000, Fujian Province, China.
World J Gastroenterol. 2022 Nov 14;28(42):6045-6055. doi: 10.3748/wjg.v28.i42.6045.
Assessment of liver reserve function (LRF) is essential for predicting the prognosis of patients with chronic liver disease (CLD) and determines the extent of liver resection in patients with hepatocellular carcinoma.
To establish noninvasive models for LRF assessment based on liver stiffness measurement (LSM) and to evaluate their clinical performance.
A total of 360 patients with compensated CLD were retrospectively analyzed as the training cohort. The new predictive models were established through logistic regression analysis and were validated internally in a prospective cohort (132 patients).
Our study defined indocyanine green retention rate at 15 min (ICGR15) ≥ 10% as mildly impaired LRF and ICGR15 ≥ 20% as severely impaired LRF. We constructed predictive models of LRF, named the mLPaM and sLPaM, which involved only LSM, prothrombin time international normalized ratio to albumin ratio (PTAR), age and model for end-stage liver disease (MELD). The area under the curve of the mLPaM model (0.855, 0.872, respectively) and sLPaM model (0.869, 0.876, respectively) were higher than that of the methods for MELD, albumin-bilirubin grade and PTAR in the two cohorts, and their sensitivity and negative predictive value were the highest among these methods in the training cohort. In addition, the new models showed good sensitivity and accuracy for the diagnosis of LRF impairment in the validation cohort.
The new models had a good predictive performance for LRF and could replace the indocyanine green (ICG) clearance test, especially in patients who are unable to undergo ICG testing.
评估肝脏储备功能(LRF)对于预测慢性肝病(CLD)患者的预后以及确定肝细胞癌患者的肝切除范围至关重要。
基于肝脏硬度测量(LSM)建立用于LRF评估的无创模型,并评估其临床性能。
回顾性分析360例代偿期CLD患者作为训练队列。通过逻辑回归分析建立新的预测模型,并在一个前瞻性队列(132例患者)中进行内部验证。
我们的研究将15分钟吲哚菁绿滞留率(ICGR15)≥10%定义为LRF轻度受损,ICGR15≥20%定义为LRF严重受损。我们构建了LRF预测模型,命名为mLPaM和sLPaM,其仅涉及LSM、凝血酶原时间国际标准化比值与白蛋白比值(PTAR)、年龄和终末期肝病模型(MELD)。在两个队列中,mLPaM模型(分别为0.855、0.872)和sLPaM模型(分别为0.869、0.876)的曲线下面积高于MELD、白蛋白 - 胆红素分级和PTAR方法,且在训练队列中其敏感性和阴性预测值在这些方法中最高。此外,新模型在验证队列中对LRF损伤的诊断显示出良好的敏感性和准确性。
新模型对LRF具有良好的预测性能,可替代吲哚菁绿(ICG)清除试验,尤其是对于无法进行ICG检测的患者。