癌症研究中大量转录组数据挖掘的技术和生物学偏差。

IF 3.3 3区 医学 Q2 ONCOLOGY Journal of Cancer Pub Date : 2025-01-01 DOI:10.7150/jca.100922
Hengrui Liu, Yiying Li, Miray Karsidag, Tiffany Tu, Panpan Wang
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引用次数: 0

摘要

通过RNA测序(RNA-seq)等高通量测序技术整合转录组学数据,癌症研究取得了显著进展。本文综述了转录组学对理解癌症生物学的变革性影响,重点介绍了广泛数据集的使用,如癌症基因组图谱(TCGA)和基因型组织表达(GTEx)。虽然转录组学数据为基因表达模式和疾病机制提供了至关重要的见解,但这种分析充满了技术和生物学上的偏见。技术偏差包括与微阵列、RNA-seq和纳米孔测序方法相关的问题,而生物学偏差则来自肿瘤异质性和样品纯度等因素。此外,当相关数据被错误地假定为暗示因果关系时,或者当大量数据被错误地归因于特定的单元格类型时,通常会发生误解。这篇综述强调研究人员需要理解和减轻这些偏见,以确保准确的数据解释和可靠的临床结果。通过解决这些挑战,本文旨在提高癌症研究的稳健性,并改善转录组学数据在开发有效治疗和诊断工具中的应用。
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Technical and Biological Biases in Bulk Transcriptomic Data Mining for Cancer Research.

Cancer research has been significantly advanced by the integration of transcriptomic data through high-throughput sequencing technologies like RNA sequencing (RNA-seq). This paper reviews the transformative impact of transcriptomics on understanding cancer biology, focusing on the use of extensive datasets such as The Cancer Genome Atlas (TCGA) and Genotype-Tissue Expression (GTEx). While transcriptomic data provides crucial insights into gene expression patterns and disease mechanisms, the analysis is fraught with technical and biological biases. Technical biases include issues related to microarray, RNA-seq, and nanopore sequencing methods, while biological biases arise from factors like tumor heterogeneity and sample purity. Additionally, misinterpretations often occur when correlational data is erroneously assumed to imply causality or when bulk data is misattributed to specific cell types. This review emphasizes the need for researchers to understand and mitigate these biases to ensure accurate data interpretation and reliable clinical outcomes. By addressing these challenges, the paper aims to enhance the robustness of cancer research and improve the application of transcriptomic data in developing effective therapies and diagnostic tools.

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来源期刊
Journal of Cancer
Journal of Cancer ONCOLOGY-
CiteScore
8.10
自引率
2.60%
发文量
333
审稿时长
12 weeks
期刊介绍: Journal of Cancer is an open access, peer-reviewed journal with broad scope covering all areas of cancer research, especially novel concepts, new methods, new regimens, new therapeutic agents, and alternative approaches for early detection and intervention of cancer. The Journal is supported by an international editorial board consisting of a distinguished team of cancer researchers. Journal of Cancer aims at rapid publication of high quality results in cancer research while maintaining rigorous peer-review process.
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