GigaByte (Hong Kong, China) Pub Date : 2025-02-14 eCollection Date: 2025-01-01 DOI:10.46471/gigabyte.148
Zhongxu Zhu
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引用次数: 0

摘要

纳米孔测序是第三代测序技术,可实现直接 RNA 测序、实时分析和长读数长度。纳米孔测序仪测量核苷酸通过纳米孔时的电流变化;基数呼应器根据原始电流测量值识别基数序列。然而,由于分子变异和测序噪音,准确的碱基识别仍然具有挑战性。在此,我们介绍一种基于 Squeezeformer 的新型模型 SqueezeCall,用于精确的纳米孔基数调用。SqueezeCall 使用卷积层对原始信号进行下采样,并对局部依赖性进行建模。一个 Squeezeformer 网络捕捉全局上下文,一个带有波束搜索功能的连接时序分类(CTC)解码器生成 DNA 序列。实验结果表明,SqueezeCall 具有抗噪能力,从而提高了基呼准确率。我们结合三种损失类型对 SqueezeCall 进行了训练,发现所有三种损失类型都有助于提高基呼准确率。多个物种的实验证明,基于 Squeezeformer 的模型具有提高基呼准确率的潜力,而且比基于递归神经网络的模型和基于 Transformer 的模型更有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SqueezeCall: nanopore basecalling using a Squeezeformer network.

Nanopore sequencing, a third-generation sequencing technique, enables direct RNA sequencing, real-time analysis, and long-read length. Nanopore sequencers measure electrical current changes as nucleotides pass through nanopores; a basecaller identifies base sequences according to the raw current measurements. However, accurate basecalling remains challenging due to molecular variations and sequencing noise. Here, we introduce SqueezeCall, a novel Squeezeformer-based model for accurate nanopore basecalling. SqueezeCall uses convolution layers to down-sample raw signals and model local dependencies. A Squeezeformer network captures the global context, and a connectionist temporal classification (CTC) decoder with beam search generates DNA sequences. Experimental results demonstrated SqueezeCall's ability to resist noise, improving basecalling accuracy. We trained SqueezeCall combining three types of loss, and found that all three loss types contribute to basecalling accuracy. Experiments across multiple species demonstrated the potential of a Squeezeformer-based model to improve basecalling accuracy and its superiority over recurrent neural network-based models and Transformer-based models.

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CiteScore
2.60
自引率
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审稿时长
5 weeks
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