Plasma microRNA-15a/16-1-based machine learning for early detection of hepatitis B virus-related hepatocellular carcinoma

Q2 Medicine
Huan Wei , Songhao Luo , Yanhua Bi , Chunhong Liao , Yifan Lian , Jiajun Zhang , Yuehua Huang
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Abstract

Background and aims

Hepatocellular carcinoma (HCC), which is prevalent worldwide and has a high mortality rate, needs to be effectively diagnosed. We aimed to evaluate the significance of plasma microRNA-15a/16-1 (miR-15a/16) as a biomarker of hepatitis B virus-related HCC (HBV-HCC) using the machine learning model. This study was the first large-scale investigation of these two miRNAs in HCC plasma samples.

Methods

Using quantitative polymerase chain reaction, we measured the plasma miR-15a/16 levels in a total of 766 participants, including 74 healthy controls, 335 with chronic hepatitis B (CHB), 47 with compensated liver cirrhosis, and 310 with HBV-HCC. The diagnostic performance of miR-15a/16 was examined using a machine learning model and compared with that of alpha-fetoprotein (AFP). Lastly, to validate the diagnostic efficiency of miR-15a/16, we performed pseudotemporal sorting of the samples to simulate progression from CHB to HCC.

Results

Plasma miR-15a/16 was significantly decreased in HCC than in all control groups (P < 0.05 for all). In the training cohort, the area under the receiver operating characteristic curve (AUC), sensitivity, and average precision (AP) for the detection of HCC were higher for miR-15a (AUC = 0.80, 67.3%, AP = 0.80) and miR-16 (AUC = 0.83, 79.0%, AP = 0.83) than for AFP (AUC = 0.74, 61.7%, AP = 0.72). Combining miR-15a/16 with AFP increased the AUC to 0.86 (sensitivity 85.9%) and the AP to 0.85 and was significantly superior to the other markers in this study (P < 0.05 for all), as further demonstrated by the detection error tradeoff curves. Moreover, miR-15a/16 impressively showed potent diagnostic power in early-stage, small-tumor, and AFP-negative HCC. A validation cohort confirmed these results. Lastly, the simulated follow-up of patients further validated the diagnostic efficiency of miR-15a/16.

Conclusions

We developed and validated a plasma miR-15a/16-based machine learning model, which exhibited better diagnostic performance for the early diagnosis of HCC compared to that of AFP.

Abstract Image

基于血浆 microRNA-15a/16-1 的机器学习用于早期检测乙型肝炎病毒相关肝细胞癌
背景和目的肝细胞癌(HCC)在全球流行,死亡率很高,需要得到有效诊断。我们旨在利用机器学习模型评估血浆 microRNA-15a/16-1 (miR-15a/16)作为乙型肝炎病毒相关 HCC(HBV-HCC)生物标志物的意义。这项研究是首次大规模调查 HCC 血浆样本中的这两种 miRNA。方法利用定量聚合酶链反应,我们测量了 766 名参与者的血浆 miR-15a/16 水平,其中包括 74 名健康对照者、335 名慢性乙型肝炎(CHB)患者、47 名代偿性肝硬化患者和 310 名 HBV-HCC 患者。利用机器学习模型检验了 miR-15a/16 的诊断性能,并与甲胎蛋白(AFP)的诊断性能进行了比较。最后,为了验证 miR-15a/16 的诊断效率,我们对样本进行了假时空分类,模拟从 CHB 发展到 HCC 的过程。在训练队列中,miR-15a(AUC = 0.80,67.3%,AP = 0.80)和 miR-16(AUC = 0.83,79.0%,AP = 0.83)检测 HCC 的接收器操作特征曲线下面积(AUC)、灵敏度和平均精确度(AP)均高于 AFP(AUC = 0.74,61.7%,AP = 0.72)。将 miR-15a/16 与 AFP 结合,AUC 提高到 0.86(灵敏度 85.9%),AP 提高到 0.85,明显优于本研究中的其他标记物(所有标记物的 P 均为 0.05),检测误差权衡曲线进一步证明了这一点。此外,miR-15a/16 对早期、小肿瘤和 AFP 阴性的 HCC 显示出强大的诊断能力,令人印象深刻。验证队列证实了这些结果。结论我们开发并验证了基于血浆 miR-15a/16 的机器学习模型,与 AFP 相比,该模型在早期诊断 HCC 方面表现出更好的诊断性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Liver Research
Liver Research Medicine-Gastroenterology
CiteScore
5.90
自引率
0.00%
发文量
27
审稿时长
13 weeks
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