一种自适应和通用的工具,用于消除大规模转录组的多种不希望的变异

IF 26.8 1区 医学 Q1 ENGINEERING, BIOMEDICAL
Mengji Zhang, Lei Yan, Xinbo Wang, Yi Yuan, Shimin Zou, Sichao Yao, Xinyu Wang, Bin Chen, Qinghui Li, Zhiyi Zhang, Yin Shan, Yuefan Zhang, Wenjie Wang, Huaixu Zhu, Weibin Song, Tian Xu, Dong Yang
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引用次数: 0

摘要

从大规模转录组中各种不希望的变异中准确识别真正的生物信号对于下游发现至关重要。在这里,我们开发了一个通用的深度神经网络,称为DeepAdapter,以消除转录组数据中各种不希望的变化,包括批次、平台、纯度和其他未知来源。我们的方法自动学习相应的去噪策略以适应不同的情况。数据驱动的策略是灵活的,并且高度适应转录组学数据,这些转录组学数据需要去噪,从而减少来自批次、测序平台和生物样品的不良变异,其纯度超出手动设计的方案。对多批次、不同RNA测量技术和异质生物样品的综合评估表明,DeepAdapter可以稳健地纠正各种不良变异,并准确保存生物信号、忠实的基因表达模式,从而促进可靠的生物标志物发现、转录组网络分析和全面的生物学表征。我们的研究结果表明,DeepAdapter可以作为一种通用工具,在各种应用场景中对大型异质转录组进行综合去噪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A self-adaptive and versatile tool for eliminating multiple undesirable variations from large-scale transcriptomes

A self-adaptive and versatile tool for eliminating multiple undesirable variations from large-scale transcriptomes

Accurate identification of true biological signals from diverse undesirable variations in large-scale transcriptomes is essential for downstream discoveries. Here we develop a universal deep neural network, called DeepAdapter, to eliminate various undesirable variations including batch, platform, purity and other unknown sources from transcriptomic data. Our approach automatically learns the corresponding denoising strategies to adapt to different situations. The data-driven strategies are flexible and highly attuned to the transcriptomic data that requires denoising, yielding reduced undesirable variation originating from batches, sequencing platforms and biosamples with varied purity beyond manually designed schemes. Comprehensive evaluations across multiple batches, different RNA measurement technologies and heterogeneous biosamples demonstrate that DeepAdapter can robustly correct diverse undesirable variations and accurately preserve biological signals, the faithful gene expression patterns that facilitate reliable biomarker discovery, transcriptomic network analysis and comprehensive biological characterization. Our findings indicate that DeepAdapter can act as a versatile tool for the comprehensive denoising of the large and heterogeneous transcriptome across a wide variety of application scenarios.

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来源期刊
Nature Biomedical Engineering
Nature Biomedical Engineering Medicine-Medicine (miscellaneous)
CiteScore
45.30
自引率
1.10%
发文量
138
期刊介绍: Nature Biomedical Engineering is an online-only monthly journal that was launched in January 2017. It aims to publish original research, reviews, and commentary focusing on applied biomedicine and health technology. The journal targets a diverse audience, including life scientists who are involved in developing experimental or computational systems and methods to enhance our understanding of human physiology. It also covers biomedical researchers and engineers who are engaged in designing or optimizing therapies, assays, devices, or procedures for diagnosing or treating diseases. Additionally, clinicians, who make use of research outputs to evaluate patient health or administer therapy in various clinical settings and healthcare contexts, are also part of the target audience.
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