转录组数据的机器学习和集成学习:原理和进展

Zijie Wang, Y. Jiang, Zhule Liu, Xinqiang Tang, Hongfu Li
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摘要

如今,随着下一代RNA-seq测序技术和机器学习算法的不断进步,越来越多的机器学习方法被用于植物转录组研究。机器学习中的集成学习框架具有鲁棒性强、泛化性能好、可解释性强等特点,在植物属性分类与预测、基因重要性评估、分子育种等方面都优于经典的线性统计方法。首先,本文将重点介绍集成学习的基本思想和前沿模型。此外,还将讨论RNA-seq技术的进展和转录组研究数据库的建立。此外,还将介绍机器学习在植物基因组和转录组分析方面的前沿研究,以及每种机器学习模型算法和转录组技术的创新点、优势和局限性。本文建立了人工智能与植物生物信息学跨学科、深度融合的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning and Ensemble Learning for Transcriptome Data: Principles and Advances
Nowadays, as the next-generation RNA-seq sequencing technology and machine learning algorithms continue to advance, an increasing number of machine learning methods are being used in plant transcriptome research. Because of its high robustness, good generalization performance and strong interpretability, the ensemble learning framework in machine learning outperforms classic linear statistical methods in the classification and prediction of plant attributes, gene importance evaluation, and molecular breeding. To begin, this article will focus on ensemble learning’s essential ideas and frontier models. Additionally, the advancement of RNA-seq technology and the establishment of databases for transcriptome research would be discussed. Furthermore, cutting-edge machine learning research in plant genome and transcriptome analysis will be given, together with the innovation points, benefits, and limitations of each machine learning model algorithm and transcriptome technology. The article establishes a framework for the integration of artificial intelligence and plant bioinformatics on an interdisciplinary and in-depth level.
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