RSLpred2:基于深度学习的水稻蛋白质组亚细胞定位注释集成Web服务器。

IF 4.8 1区 农林科学 Q1 AGRONOMY
Rice Pub Date : 2025-07-04 DOI:10.1186/s12284-025-00767-7
Naveen Duhan, Rakesh Kaundal
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引用次数: 0

摘要

水稻是最重要的主食作物之一,为全世界一半以上的人口提供食物。确定编码蛋白的定位是了解其功能特征和促进其纯化的关键。由于需要细致的实验、验证和数据分析,蛋白质定位的实验预测是耗时的;计算方法提供了一种快速而准确的替代方法。我们提出了RSLpred-2.0,这是我们之前开发并广泛使用的水稻蛋白质组注释工具RSLpred-1.0的扩展。RSLpred-2.0分四个层次实现,准确预测蛋白亚细胞定位。第一层次区分单一定位和双重定位的准确率(5倍训练/测试时为97.66%,独立数据时为98.12%)和马修斯相关系数(训练时为0.88,独立数据时为0.90)。在第二级将单个定位蛋白分为10类,准确率为98.33%(5倍训练/测试,98.46%独立数据),Matthews相关系数为0.95训练,0.95独立)。第三个层次将双定位蛋白分为6类,准确率(5倍训练/测试99.20%,独立数据96.75%)和马修斯相关系数(训练0.98,独立0.90)。第四个水平将第一级预测的膜蛋白分为单通和多通膜,准确率为99.83%(5倍训练/测试,独立数据为98.81%),马修斯相关系数为0.99(训练,独立数据为0.97)。RSLpred2工具将帮助研究人员了解植物生长、发育和对环境刺激的反应所必需的许多细胞器特异性功能、细胞过程和调节机制。从这项研究中开发的web服务器及其独立版本的软件可以在https://kaabil.net/RSLpred2/上免费获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RSLpred2: An Integrated Web Server for the Annotation of Rice Proteome Subcellular Localization Using Deep Learning.

Rice is one of the most important staple crops, providing food for more than one-half of the world's population worldwide. Identifying the localization of encoded proteins is the key to understanding their functional characteristics and facilitating their purification. The prediction of protein localization experimentally is time-consuming due to the need for meticulous experimentation, validation, and data analysis; computational methods provide a quick and accurate alternative. We propose RSLpred-2.0, an extension of our previously developed and widely used RSLpred-1.0 tool for annotating the rice proteome. RSLpred-2.0 is implemented in four levels to accurately predict protein subcellular localization. The first level differentiates between single and dual localization with accuracy (97.66% in 5-fold training/testing, 98.12% on an independent data) and Matthews correlation coefficient (0.88 training, 0.90 independent). Single localized proteins are classified into ten classes at the second level, with accuracy (98.33% in 5-fold training/testing, 98.46% on an independent data) and Matthews correlation coefficient (0.95 training, 0.95 independent). The third level categorizes dual localized proteins into six classes with accuracy (99.20% in 5-fold training/testing, 96.75% on an independent data) and Matthews correlation coefficient (0.98 training, 0.90 independent). The fourth level classifies membrane proteins predicted in level 1 into single-pass and multi-pass membranes with accuracy (99.83% in 5-fold training/testing, 98.81% on an independent data) and Matthews correlation coefficient (0.99 training, 0.97 independent). The RSLpred2 tool will help the researchers understand many organelle-specific functions, cellular processes, and regulatory mechanisms essential for plant growth, development, and response to environmental stimuli. The web server as well as its standalone version of the software developed from this study is available freely at https://kaabil.net/RSLpred2/ .

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来源期刊
Rice
Rice AGRONOMY-
CiteScore
10.10
自引率
3.60%
发文量
60
审稿时长
>12 weeks
期刊介绍: Rice aims to fill a glaring void in basic and applied plant science journal publishing. This journal is the world''s only high-quality serial publication for reporting current advances in rice genetics, structural and functional genomics, comparative genomics, molecular biology and physiology, molecular breeding and comparative biology. Rice welcomes review articles and original papers in all of the aforementioned areas and serves as the primary source of newly published information for researchers and students in rice and related research.
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