PhageScanner:用于噬菌体基因组和元基因组特征注释的可重构机器学习框架

IF 4 2区 生物学 Q2 MICROBIOLOGY Frontiers in Microbiology Pub Date : 2024-09-18 DOI:10.3389/fmicb.2024.1446097
Dreycey Albin, Michelle Ramsahoye, Eitan Kochavi, Mirela Alistar
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引用次数: 0

摘要

噬菌体是地球上最多产的生物,但它们的许多基因组和来自元基因组的组装体都缺乏已确定功能的蛋白质序列。虽然大多数噬菌体蛋白都是结构蛋白,被归类为噬菌体病毒蛋白(PVP),但仍有相当数量的噬菌体蛋白未被归类。使问题更加复杂的是,基于实验室的传统 PVP 鉴定方法可能非常繁琐。为了加快 PVP 的鉴定过程,人们越来越多地采用机器学习模型。现有的工具已经开发出了根据蛋白质序列作为输入来预测 PVP 的模型。但是,这些工具都没有开发出能同时将基因组和元基因组数据作为输入的软件。此外,目前还没有一个框架可用于轻松整理数据和创建新型机器学习模型。为此,我们推出了 PhageScanner,这是一个开源平台,可简化基因组和元基因组数据集的数据收集、模型训练和测试,还包括一个用于注释基因组和元基因组数据的预测管道。PhageScanner 还具有图形用户界面 (GUI),用于可视化基因组和元基因组数据的注释。我们进一步介绍了一种基于 BLAST 的分类器,其性能优于基于 ML 的模型和一种高效的长短期记忆(LSTM)分类器。然后,我们通过预测六个以前未表征的噬菌体基因组中的 PVPs,展示了 PhageScanner 的能力。此外,我们还创建了一个新模型来预测噬菌体基因组中的噬菌体编码毒素,从而展示了该框架的实用性。
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PhageScanner: a reconfigurable machine learning framework for bacteriophage genomic and metagenomic feature annotation
Bacteriophages are the most prolific organisms on Earth, yet many of their genomes and assemblies from metagenomic sources lack protein sequences with identified functions. While most bacteriophage proteins are structural proteins, categorized as Phage Virion Proteins (PVPs), a considerable number remain unclassified. Complicating matters further, traditional lab-based methods for PVP identification can be tedious. To expedite the process of identifying PVPs, machine-learning models are increasingly being employed. Existing tools have developed models for predicting PVPs from protein sequences as input. However, none of these efforts have built software allowing for both genomic and metagenomic data as input. In addition, there is currently no framework available for easily curating data and creating new types of machine learning models. In response, we introduce PhageScanner, an open-source platform that streamlines data collection for genomic and metagenomic datasets, model training and testing, and includes a prediction pipeline for annotating genomic and metagenomic data. PhageScanner also features a graphical user interface (GUI) for visualizing annotations on genomic and metagenomic data. We further introduce a BLAST-based classifier that outperforms ML-based models and an efficient Long Short-Term Memory (LSTM) classifier. We then showcase the capabilities of PhageScanner by predicting PVPs in six previously uncharacterized bacteriophage genomes. In addition, we create a new model that predicts phage-encoded toxins within bacteriophage genomes, thus displaying the utility of the framework.
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来源期刊
CiteScore
7.70
自引率
9.60%
发文量
4837
审稿时长
14 weeks
期刊介绍: Frontiers in Microbiology is a leading journal in its field, publishing rigorously peer-reviewed research across the entire spectrum of microbiology. Field Chief Editor Martin G. Klotz at Washington State University is supported by an outstanding Editorial Board of international researchers. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics, clinicians and the public worldwide.
期刊最新文献
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