Department of Pathology, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA.
Department of Surgery, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA.
Hepatol Commun. 2022 Apr;6(4):710-727. doi: 10.1002/hep4.1846. Epub 2021 Nov 1.
Hepatocellular carcinoma (HCC) is one of the most lethal human cancers. Liver transplantation has been an effective approach to treat liver cancer. However, significant numbers of patients with HCC experience cancer recurrence, and the selection of suitable candidates for liver transplant remains a challenge. We developed a model to predict the likelihood of HCC recurrence after liver transplantation based on transcriptome and whole-exome sequencing analyses. We used a training cohort and a subsequent testing cohort based on liver transplantation performed before or after the first half of 2012. We found that the combination of transcriptome and mutation pathway analyses using a random forest machine learning correctly predicted HCC recurrence in 86.8% of the training set. The same algorithm yielded a correct prediction of HCC recurrence of 76.9% in the testing set. When the cohorts were combined, the prediction rate reached 84.4% in the leave-one-out cross-validation analysis. When the transcriptome analysis was combined with Milan criteria using the k-top scoring pairs (k-TSP) method, the testing cohort prediction rate improved to 80.8%, whereas the training cohort and the combined cohort prediction rates were 79% and 84.4%, respectively. Application of the transcriptome/mutation pathways RF model on eight tumor nodules from 3 patients with HCC yielded 8/8 consistency, suggesting a robust prediction despite the heterogeneity of HCC. Conclusion: The genome prediction model may hold promise as an alternative in selecting patients with HCC for liver transplant.
肝细胞癌(HCC)是人类最致命的癌症之一。肝移植是治疗肝癌的有效方法。然而,大量 HCC 患者经历癌症复发,选择合适的肝移植候选者仍然是一个挑战。我们开发了一种基于转录组和全外显子测序分析预测肝移植后 HCC 复发可能性的模型。我们使用了基于 2012 年上半年之前或之后进行肝移植的训练队列和后续测试队列。我们发现,使用随机森林机器学习进行转录组和突变途径分析的组合可正确预测训练集中 86.8%的 HCC 复发。相同的算法在测试集中正确预测 HCC 复发的比例为 76.9%。当将队列合并时,在留一法交叉验证分析中预测率达到 84.4%。当将转录组分析与米兰标准结合使用 k-最佳评分对(k-TSP)方法时,测试队列的预测率提高到 80.8%,而训练队列和合并队列的预测率分别为 79%和 84.4%。将转录组/突变途径 RF 模型应用于 3 名 HCC 患者的 8 个肿瘤结节,一致性为 8/8,尽管 HCC 存在异质性,但仍能进行稳健的预测。结论:基因组预测模型可能有希望成为选择 HCC 患者进行肝移植的替代方法。