Machine learning-based identification of general transcriptional predictors for plant disease

IF 8.3 1区 生物学 Q1 PLANT SCIENCES New Phytologist Pub Date : 2024-11-21 DOI:10.1111/nph.20264
Jayson Sia, Wei Zhang, Mingxi Cheng, Paul Bogdan, David E. Cook
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引用次数: 0

Abstract

  • This study investigated the generalizability of Arabidopsis thaliana immune responses across diverse pathogens, including Botrytis cinerea, Sclerotinia sclerotiorum, and Pseudomonas syringae, using a data-driven, machine learning approach.
  • Machine learning models were trained to predict disease development from early transcriptional responses. Feature selection techniques based on network science and topology were used to train models employing only a fraction of the transcriptome. Machine learning models trained on one pathosystem where then validated by predicting disease development in new pathosystems.
  • The identified feature selection gene sets were enriched for pathways related to biotic, abiotic, and stress responses, though the specific genes involved differed between feature sets. This suggests common immune responses to diverse pathogens that operate via different gene sets.
  • The study demonstrates that machine learning can uncover both established and novel components of the plant's immune response, offering insights into disease resistance mechanisms. These predictive models highlight the potential to advance our understanding of multigenic outcomes in plant immunity and can be further refined for applications in disease prediction.
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基于机器学习的植物病害一般转录预测因子的识别。
本研究采用数据驱动的机器学习方法,研究了拟南芥对不同病原体(包括灰霉病菌、硬粒菌和丁香假单胞菌)的免疫反应的通用性。对机器学习模型进行了训练,以便从早期转录反应预测疾病的发展。基于网络科学和拓扑学的特征选择技术被用来训练仅使用部分转录组的模型。在一个病理系统中训练出来的机器学习模型,通过预测新病理系统中的疾病发展进行验证。确定的特征选择基因集富含与生物、非生物和应激反应相关的通路,尽管不同特征集所涉及的特定基因有所不同。这表明,针对不同病原体的共同免疫反应是通过不同的基因组进行的。这项研究表明,机器学习可以发现植物免疫反应中既有的既定成分,也有新的成分,从而深入了解抗病机制。这些预测模型凸显了推进我们对植物免疫多基因结果的理解的潜力,并可进一步完善以应用于疾病预测。
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来源期刊
New Phytologist
New Phytologist 生物-植物科学
自引率
5.30%
发文量
728
期刊介绍: New Phytologist is an international electronic journal published 24 times a year. It is owned by the New Phytologist Foundation, a non-profit-making charitable organization dedicated to promoting plant science. The journal publishes excellent, novel, rigorous, and timely research and scholarship in plant science and its applications. The articles cover topics in five sections: Physiology & Development, Environment, Interaction, Evolution, and Transformative Plant Biotechnology. These sections encompass intracellular processes, global environmental change, and encourage cross-disciplinary approaches. The journal recognizes the use of techniques from molecular and cell biology, functional genomics, modeling, and system-based approaches in plant science. Abstracting and Indexing Information for New Phytologist includes Academic Search, AgBiotech News & Information, Agroforestry Abstracts, Biochemistry & Biophysics Citation Index, Botanical Pesticides, CAB Abstracts®, Environment Index, Global Health, and Plant Breeding Abstracts, and others.
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