Li Bo, Zhao Youyun, Cai Wangxi, Ming Anping, Li Hanmin
Clinical Laboratory, Hubei Provincial Hospital of Traditional Chinese Medicine, Affiliated Hospital of Hubei University of Traditional Chinese Medicine, Hubei Province Academy of Traditional Chinese Medicine, Wuhan, China.
Institute of Hepatology, Hubei Provincial Hospital of Traditional Chinese Medicine, Affiliated Hospital of Hubei University of Traditional Chinese Medicine, Hubei Province Academy of Traditional Chinese Medicine, Wuhan, China.
Clin Proteomics. 2021 Aug 19;18(1):21. doi: 10.1186/s12014-021-09326-w.
A hepatocellular carcinoma (HCC) prediction model (ASAP), including age, sex, and the biomarkers alpha-fetoprotein and prothrombin induced by vitamin K absence-II, showed potential clinical value in the early detection of HCC. We validated and updated the model in a real-world cohort and promoted its transferability to daily clinical practice.
This retrospective cohort analysis included 1012 of the 2479 eligible patients aged 35 years or older undergoing surveillance for HCC. The data were extracted from the electronic medical records. Biomarker values within the test-to-diagnosis interval were used to validate the ASAP model. Due to its unsatisfactory calibration, three logistic regression models were constructed to recalibrate and update the model. Their discrimination, calibration, and clinical utility were compared. The performance statistics of the final updated model at several risk thresholds are presented. The outcomes of 855 non-HCC patients were further assessed during a median of 10.2 months of follow-up. Statistical analyses were performed using packages in R software.
The ASAP model had superior discriminative performance in the validation cohort [C-statistic = 0.982, (95% confidence interval 0.972-0.992)] but significantly overestimated the risk of HCC (intercept - 3.243 and slope 1.192 in the calibration plot), reducing its clinical usefulness. Recalibration-in-the-large, which exhibited performance comparable to that of the refitted model revision, led to the retention of the excellent discrimination and substantial improvements in the calibration and clinical utility, achieving a sensitivity of 100% at the median prediction probability of the absence of HCC (1.3%). The probability threshold of 1.3% and the incidence of HCC in the cohort (15.5%) were used to stratify the patients into low-, medium-, and high-risk groups. The cumulative HCC incidences in the non-HCC patients significantly differed among the risk groups (log-rank test, p-value < 0.001). The 3-month, 6-month and 18-month cumulative incidences in the low-risk group were 0.6%, 0.9% and 0.9%, respectively.
The ASAP model is an accurate tool for HCC risk estimation that requires recalibration before use in a new region because calibration varies with clinical environments. Additionally, rational risk stratification and risk-based management decision-making, e.g., 3-month follow-up recommendations for targeted individuals, helped improve HCC surveillance, which warrants assessment in larger cohorts.
一种肝细胞癌(HCC)预测模型(ASAP),包括年龄、性别以及生物标志物甲胎蛋白和维生素K缺乏诱导蛋白-II,在HCC的早期检测中显示出潜在的临床价值。我们在一个真实世界队列中对该模型进行了验证和更新,并提高了其在日常临床实践中的可转移性。
这项回顾性队列分析纳入了2479例符合条件的35岁及以上接受HCC监测的患者中的1012例。数据从电子病历中提取。检验至诊断间隔内的生物标志物值用于验证ASAP模型。由于其校准效果不理想,构建了三个逻辑回归模型来重新校准和更新该模型。比较了它们的区分度、校准度和临床实用性。给出了最终更新模型在几个风险阈值下的性能统计数据。在中位随访10.2个月期间,对855例非HCC患者的结局进行了进一步评估。使用R软件中的包进行统计分析。
ASAP模型在验证队列中具有卓越的区分性能[C统计量 = 0.982,(95%置信区间0.972 - 0.992)],但显著高估了HCC风险(校准图中的截距为 - 3.243,斜率为1.192),降低了其临床实用性。大样本重新校准表现出与重新拟合模型修订相当的性能,在保持卓越区分度的同时,校准度和临床实用性有了实质性改善,在预测无HCC的中位概率(1.3%)时灵敏度达到100%。使用1.3%的概率阈值和队列中HCC的发病率(15.5%)将患者分为低、中、高风险组。非HCC患者中不同风险组的累积HCC发病率有显著差异(对数秩检验,p值 < 0.001)。低风险组3个月、6个月和18个月的累积发病率分别为0.6%、0.9%和0.9%。
ASAP模型是一种用于HCC风险评估的准确工具,由于校准会因临床环境而异,在新地区使用前需要重新校准。此外,合理的风险分层和基于风险的管理决策,例如针对特定个体的3个月随访建议,有助于改善HCC监测,这值得在更大队列中进行评估。