Analytical validation and algorithm improvement of HepatoPredict kit to assess hepatocellular carcinoma prognosis before a liver transplantation

IF 1.7 Q3 MEDICAL LABORATORY TECHNOLOGY
Maria Gonçalves-Reis , Daniela Proença , Laura P. Frazão , João L. Neto , Sílvia Silva , Hugo Pinto-Marques , José B. Pereira-Leal , Joana Cardoso
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引用次数: 0

Abstract

Objectives

To verify the analytical performance of the HepatoPredict kit, a novel tool developed to stratify Hepatocellular Carcinoma (HCC) patients according to their risk of relapse after a Liver Transplantation (LT).

Methods

The HepatoPredict tool combines clinical variables and a gene expression signature in an ensemble of machine-learning algorithms to forecast the benefit of a LT in HCC patients. To ensure the accuracy and reliability of this method, extensive analytical validation was conducted to verify its specificity and robustness. The experiments were designed following the guidelines for multi-target genomic assays such as ISO201395-2019, MIQE, CLSI-MM16, CLSI-MM17, and CLSI-EP17-A. The validation process included reproducibility between operators and between RNA extractions and RT-qPCR runs, and interference of input RNA levels or varying reagent levels. A recently retrained version of the HepatoPredict algorithms was also tested.

Results

The validation process demonstrated that the HepatoPredict kit met the required standards for robustness (p > 0.05), analytical specificity (inclusivity of 95 %), and sensitivity (LoB, LoD, linear range, and amplification efficiency between 90 and 110 %). The operator, equipment, input RNA, and reagents used had no significant effect on the HepatoPredict results. Additionally, the testing of a recently retrained version of the HepatoPredict algorithm, showed that this new version further improved the accuracy of the kit and performed better than existing clinical criteria in accurately identifying HCC patients who are more likely to benefit LT.

Conclusions

Even with the introduced variations in molecular and clinical variables, the HepatoPredict kit's prognostic information remains consistent. It can accurately identify HCC patients who are more likely to benefit from a LT. Its robust performance also confirms that it can be easily integrated into standard diagnostic laboratories.

Abstract Image

肝移植前评估肝细胞癌预后的 HepatoPredict 套件的分析验证和算法改进
方法HepatoPredict工具将临床变量和基因表达特征结合在一组机器学习算法中,以预测肝细胞癌患者接受肝移植后的获益情况。为确保该方法的准确性和可靠性,我们进行了广泛的分析验证,以验证其特异性和稳健性。实验的设计遵循了 ISO201395-2019、MIQE、CLSI-MM16、CLSI-MM17 和 CLSI-EP17-A 等多靶点基因组检测指南。验证过程包括操作员之间、RNA 提取和 RT-qPCR 运行之间的可重复性,以及输入 RNA 水平或不同试剂水平的干扰。结果验证过程表明,HepatoPredict 试剂盒在稳健性(p > 0.05)、分析特异性(包容性 95%)和灵敏度(LoB、LoD、线性范围和扩增效率在 90% 和 110% 之间)方面均达到了要求的标准。操作者、设备、输入 RNA 和所用试剂对 HepatoPredict 结果无明显影响。此外,对最近重新训练的 HepatoPredict 算法版本进行的测试表明,新版本进一步提高了试剂盒的准确性,在准确识别更有可能从 LT 中获益的 HCC 患者方面的表现优于现有的临床标准。它能准确识别出更有可能从 LT 中获益的 HCC 患者。其强大的性能也证实了它可以很容易地集成到标准诊断实验室中。
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来源期刊
Practical Laboratory Medicine
Practical Laboratory Medicine Health Professions-Radiological and Ultrasound Technology
CiteScore
3.50
自引率
0.00%
发文量
40
审稿时长
7 weeks
期刊介绍: Practical Laboratory Medicine is a high-quality, peer-reviewed, international open-access journal publishing original research, new methods and critical evaluations, case reports and short papers in the fields of clinical chemistry and laboratory medicine. The objective of the journal is to provide practical information of immediate relevance to workers in clinical laboratories. The primary scope of the journal covers clinical chemistry, hematology, molecular biology and genetics relevant to laboratory medicine, microbiology, immunology, therapeutic drug monitoring and toxicology, laboratory management and informatics. We welcome papers which describe critical evaluations of biomarkers and their role in the diagnosis and treatment of clinically significant disease, validation of commercial and in-house IVD methods, method comparisons, interference reports, the development of new reagents and reference materials, reference range studies and regulatory compliance reports. Manuscripts describing the development of new methods applicable to laboratory medicine (including point-of-care testing) are particularly encouraged, even if preliminary or small scale.
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