Biocomputing Group, BiGeA - CIG, Interdepartmental Center «Luigi Galvani» for Integrated Studies of Bioinformatics, Biophysics and Biocomplexity, University of Bologna, Bologna, Italy.
Department of Comparative Biomedicine and Food Science (BCA), University of Padova, Padova, Italy.
Bioinformatics. 2017 Feb 1;33(3):347-353. doi: 10.1093/bioinformatics/btw656.
Chloroplasts are organelles found in plants and involved in several important cell processes. Similarly to other compartments in the cell, chloroplasts have an internal structure comprising several sub-compartments, where different proteins are targeted to perform their functions. Given the relation between protein function and localization, the availability of effective computational tools to predict protein sub-organelle localizations is crucial for large-scale functional studies.
In this paper we present SChloro, a novel machine-learning approach to predict protein sub-chloroplastic localization, based on targeting signal detection and membrane protein information. The proposed approach performs multi-label predictions discriminating six chloroplastic sub-compartments that include inner membrane, outer membrane, stroma, thylakoid lumen, plastoglobule and thylakoid membrane. In comparative benchmarks, the proposed method outperforms current state-of-the-art methods in both single- and multi-compartment predictions, with an overall multi-label accuracy of 74%. The results demonstrate the relevance of the approach that is eligible as a good candidate for integration into more general large-scale annotation pipelines of protein subcellular localization.
The method is available as web server at http://schloro.biocomp.unibo.it
叶绿体是存在于植物中的细胞器,参与了几个重要的细胞过程。与细胞内的其他隔室类似,叶绿体具有由几个亚隔室组成的内部结构,不同的蛋白质被靶向到这些亚隔室中以发挥其功能。鉴于蛋白质功能与定位之间的关系,提供有效的计算工具来预测蛋白质亚细胞器定位对于大规模功能研究至关重要。
在本文中,我们提出了 SChloro,这是一种基于靶向信号检测和膜蛋白信息来预测蛋白质亚叶绿体定位的新型机器学习方法。所提出的方法执行多标签预测,区分六个叶绿体亚隔室,包括内膜、外膜、基质、类囊体腔、质体小球和类囊体膜。在比较基准测试中,与当前最先进的方法相比,该方法在单隔室和多隔室预测中均表现出色,总体多标签准确率为 74%。结果表明该方法的相关性,它有资格成为更一般的蛋白质亚细胞定位大规模注释管道的良好候选者。
该方法可作为网络服务器在 http://schloro.biocomp.unibo.it 上使用。