A mapping-free NLP-based technique for sequence search in Nanopore long-reads

Tomasz Strzoda, Lourdes Cruz-Garcia, Mustafa Najim, Christophe Badie, Joanna Polanska
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Abstract

In unforeseen situations, such as nuclear power plant's or civilian radiation accidents, there is a need for effective and computationally inexpensive methods to determine the expression level of a selected gene panel, allowing for rough dose estimates in thousands of donors. The new generation in-situ mapper, fast and of low energy consumption, working at the level of single nanopore output, is in demand. We aim to create a sequence identification tool that utilizes Natural Language Processing (NLP) techniques and ensures a high level of negative predictive value (NPV) compared to the classical approach. The training dataset consisted of RNASeq data from 6 samples. Having tested multiple NLP models, the best configuration analyses the entire sequence and uses a word length of 3 base pairs with one-word neighbor on each side. For the considered FDXR gene, the achieved mean balanced accuracy (BACC) was 98.29% and NPV 99.25%, compared to minimap2's performance in a cross-validation scenario. Reducing the dictionary from 1024 to 145 changed BACC to 96.49% and the NPV to 98.15%. Obtained NLP model, validated on an external independent genome sequencing dataset, gave NPV of 99.64% for complete and 95.87% for reduced dictionary. The salmon-estimated read counts differed from the classical approach on average by 3.48% for the complete dictionary and by 5.82% for the reduced one. We conclude that for long Oxford Nanopore reads, an NLP-based approach can successfully replace classical mapping in case of emergency. The developed NLP model can be easily retrained to identify selected transcripts and/or work with various long-read sequencing techniques. Our results of the study clearly demonstrate the potential of applying techniques known from classical text processing to nucleotide sequences and represent a significant advancement in this field of science.
基于无映射 NLP 技术的 Nanopore 长读数序列搜索技术
在不可预见的情况下,如核电站或民用辐射事故,需要有效且计算成本低廉的方法来确定所选基因面板的表达水平,以便对成千上万供体的剂量进行粗略估计。新一代体外成像仪速度快、能耗低、可在单个核孔输出的水平上工作,是目前所需要的。我们的目标是创建一种序列识别工具,利用自然语言处理(NLP)技术,确保与传统方法相比具有较高的阴性预测值(NPV)。训练数据集由来自 6 个样本的 RNASeq 数据组成。在测试了多个 NLP 模型后,最佳配置分析了整个序列,并使用了 3 个碱基对的字长,每边相邻一个字。将字典从 1024 个减少到 145 个后,BACC 为 96.49%,NPV 为 98.15%。在外部独立基因组测序数据集上验证获得的 NLP 模型后,完整字典的 NPV 为 99.64%,缩减字典的 NPV 为 95.87%。对于完整字典,鲑鱼估计的读数与经典方法平均相差 3.48%,对于缩减字典则相差 5.82%。我们的结论是,对于牛津纳米孔的长读数,基于 NLP 的方法可以在紧急情况下成功取代经典映射。开发的 NLP 模型可以很容易地进行再训练,以识别选定的转录本和/或与各种长读数测序技术配合使用。我们的研究结果清楚地证明了将经典文本处理技术应用于核苷酸序列的潜力,是这一科学领域的重大进步。
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