MycoAI:对真菌 ITS 序列进行快速准确的分类。

IF 5.5 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Molecular Ecology Resources Pub Date : 2024-08-16 DOI:10.1111/1755-0998.14006
Luuk Romeijn, Andrius Bernatavicius, Duong Vu
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引用次数: 0

摘要

对 DNA 条形码数据进行高效准确的分类对大规模真菌生物多样性研究至关重要。然而,现有的方法要么计算成本高昂,要么缺乏准确性。以前的研究已经证明了深度学习在这一领域的潜力,成功地训练了用于生物序列分类的神经网络。我们介绍了 MycoAI Python 软件包,其中包含各种深度学习模型,如针对真菌内部转录间隔(ITS)序列定制的 BERT 和 CNN。我们探索了不同的神经架构设计和编码方法,以确定最佳模型。通过采用多头输出架构和多级分层标签平滑,MycoAI 可以有效地在分类学层次中进行泛化。我们利用 UNITE 数据库中超过 500 万个标记序列,开发了两个模型:MycoAI-BERT 和 MycoAI-CNN。我们强调,由于参考数据不足,必须对人工智能模型的分类结果进行验证,但 MycoAI 仍然表现出巨大的潜力。与现有的分类器(如 DNABarcoder 和 RDP)相比,MycoAI 模型在两个独立的测试集(训练数据集中存在标签)上表现出较高的属和更高分类级别的准确性,其中 MycoAI-CNN 的速度最快、准确性最高。就效率而言,MycoAI 模型可在 5 分钟内对 30 多万个序列进行分类。我们公开发布了 MycoAI 模型,使真菌学家能够高效地对其 ITS 条形码数据进行分类。此外,MycoAI 还是进一步开发基于深度学习的分类方法的平台。MycoAI 的源代码在 MIT 许可下可在 https://github.com/MycoAI/MycoAI 网站上获取。
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MycoAI: Fast and accurate taxonomic classification for fungal ITS sequences.

Efficient and accurate classification of DNA barcode data is crucial for large-scale fungal biodiversity studies. However, existing methods are either computationally expensive or lack accuracy. Previous research has demonstrated the potential of deep learning in this domain, successfully training neural networks for biological sequence classification. We introduce the MycoAI Python package, featuring various deep learning models such as BERT and CNN tailored for fungal Internal Transcribed Spacer (ITS) sequences. We explore different neural architecture designs and encoding methods to identify optimal models. By employing a multi-head output architecture and multi-level hierarchical label smoothing, MycoAI effectively generalizes across the taxonomic hierarchy. Using over 5 million labelled sequences from the UNITE database, we develop two models: MycoAI-BERT and MycoAI-CNN. While we emphasize the necessity of verifying classification results by AI models due to insufficient reference data, MycoAI still exhibits substantial potential. When benchmarked against existing classifiers such as DNABarcoder and RDP on two independent test sets with labels present in the training dataset, MycoAI models demonstrate high accuracy at the genus and higher taxonomic levels, with MycoAI-CNN being the fastest and most accurate. In terms of efficiency, MycoAI models can classify over 300,000 sequences within 5 min. We publicly release the MycoAI models, enabling mycologists to classify their ITS barcode data efficiently. Additionally, MycoAI serves as a platform for developing further deep learning-based classification methods. The source code for MycoAI is available under the MIT Licence at https://github.com/MycoAI/MycoAI.

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来源期刊
Molecular Ecology Resources
Molecular Ecology Resources 生物-进化生物学
CiteScore
15.60
自引率
5.20%
发文量
170
审稿时长
3 months
期刊介绍: Molecular Ecology Resources promotes the creation of comprehensive resources for the scientific community, encompassing computer programs, statistical and molecular advancements, and a diverse array of molecular tools. Serving as a conduit for disseminating these resources, the journal targets a broad audience of researchers in the fields of evolution, ecology, and conservation. Articles in Molecular Ecology Resources are crafted to support investigations tackling significant questions within these disciplines. In addition to original resource articles, Molecular Ecology Resources features Reviews, Opinions, and Comments relevant to the field. The journal also periodically releases Special Issues focusing on resource development within specific areas.
期刊最新文献
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