动态和静态循环癌症 microRNA 生物标记物--一项验证研究。

IF 3.6 3区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY RNA Biology Pub Date : 2023-01-01 DOI:10.1080/15476286.2022.2154470
Masood Abu-Halima, Andreas Keller, Lea Simone Becker, Ulrike Fischer, Annika Engel, Nicole Ludwig, Fabian Kern, Trine B Rounge, Hilde Langseth, Eckart Meese, Verena Keller
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引用次数: 0

摘要

对于癌症和其他病症而言,早期诊断仍然是最有希望获得生存的途径。对纵向队列进行分析有助于深入了解生物标志物的轨迹。我们测量了结肠癌、肺癌和乳腺癌患者以及无癌症对照组 240 份血清样本中 microRNA 的表达。每位患者至少提供两份血清样本,一份在确诊前,一份在确诊后。样本之间的中位时间间隔为 11.6 年。我们利用计算模型评估了 21 种 microRNA 的循环图谱。分析得出了两组生物标志物,一组是静态生物标志物,它们显示了某些癌症类型与对照组之间的绝对差异;另一组是动态生物标志物,它们随时间变化的水平提供了更高的诊断信息含量。在第一组中,miR-99a-5p 在所有三种癌症类型中都很突出。在第二组中,miR-155-5p 可以预测肺癌和结肠癌。使用梯度增强树对癌症和非癌症患者样本进行分类,平均准确率达到 79.9%。结果表明,个体随时间的变化或某个时间点的绝对值可以预测疾病,并具有较高的特异性和灵敏度。
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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Dynamic and static circulating cancer microRNA biomarkers - a validation study.

For cancers and other pathologies, early diagnosis remains the most promising path to survival. Profiling of longitudinal cohorts facilitates insights into trajectories of biomarkers. We measured microRNA expression in 240 serum samples from patients with colon, lung, and breast cancer and from cancer-free controls. Each patient provided at least two serum samples, one prior to diagnosis and one following diagnosis. The median time interval between the samples was 11.6 years. Using computational models, we evaluated the circulating profiles of 21 microRNAs. The analysis yielded two sets of biomarkers, static ones that show an absolute difference between certain cancer types and controls and dynamic ones where the level over time provided higher diagnostic information content. In the first group, miR-99a-5p stands out for all three cancer types. In the second group, miR-155-5p allows to predict lung cancers and colon cancers. Classification in samples from cancer and non-cancer patients using gradient boosted trees reached an average accuracy of 79.9%. The results suggest that individual change over time or an absolute value at one time point may predict a disease with high specificity and sensitivity.

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来源期刊
RNA Biology
RNA Biology 生物-生化与分子生物学
CiteScore
8.60
自引率
0.00%
发文量
82
审稿时长
1 months
期刊介绍: RNA has played a central role in all cellular processes since the beginning of life: decoding the genome, regulating gene expression, mediating molecular interactions, catalyzing chemical reactions. RNA Biology, as a leading journal in the field, provides a platform for presenting and discussing cutting-edge RNA research. RNA Biology brings together a multidisciplinary community of scientists working in the areas of: Transcription and splicing Post-transcriptional regulation of gene expression Non-coding RNAs RNA localization Translation and catalysis by RNA Structural biology Bioinformatics RNA in disease and therapy
期刊最新文献
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