Institute of Molecular Biology and Biotechnology-FORTH and Department of Biology-University of Crete, PO Box 1385, Heraklion, Crete, Greece.
Computer Science Department, University of Crete, Heraklion, Greece.
Sci Rep. 2017 Jun 12;7(1):3263. doi: 10.1038/s41598-017-03557-4.
More than a third of the cellular proteome is non-cytoplasmic. Most secretory proteins use the Sec system for export and are targeted to membranes using signal peptides and mature domains. To specifically analyze bacterial mature domain features, we developed MatureP, a classifier that predicts secretory sequences through features exclusively computed from their mature domains. MatureP was trained using Just Add Data Bio, an automated machine learning tool. Mature domains are predicted efficiently with ~92% success, as measured by the Area Under the Receiver Operating Characteristic Curve (AUC). Predictions were validated using experimental datasets of mutated secretory proteins. The features selected by MatureP reveal prominent differences in amino acid content between secreted and cytoplasmic proteins. Amino-terminal mature domain sequences have enhanced disorder, more hydroxyl and polar residues and less hydrophobics. Cytoplasmic proteins have prominent amino-terminal hydrophobic stretches and charged regions downstream. Presumably, secretory mature domains comprise a distinct protein class. They balance properties that promote the necessary flexibility required for the maintenance of non-folded states during targeting and secretion with the ability of post-secretion folding. These findings provide novel insight in protein trafficking, sorting and folding mechanisms and may benefit protein secretion biotechnology.
细胞蛋白质组的三分之一以上是非细胞质的。大多数分泌蛋白使用 Sec 系统进行输出,并使用信号肽和成熟结构域靶向到膜上。为了专门分析细菌成熟结构域的特征,我们开发了 MatureP,这是一种通过仅从其成熟结构域计算得出的特征来预测分泌序列的分类器。MatureP 使用 Just Add Data Bio 进行训练,这是一种自动化机器学习工具。通过接收者操作特征曲线 (AUC) 的测量,成熟域的预测效率约为 92%。使用突变分泌蛋白的实验数据集验证了预测。MatureP 选择的特征揭示了分泌蛋白和细胞质蛋白之间在氨基酸含量上的明显差异。氨基末端成熟结构域序列具有增强的无序性、更多的羟基和极性残基以及更少的疏水性残基。细胞质蛋白在氨基末端下游具有明显的疏水性延伸和带电荷区域。推测分泌成熟结构域包含一个独特的蛋白质类别。它们平衡了在靶向和分泌过程中维持未折叠状态所需的灵活性和分泌后折叠能力的特性。这些发现为蛋白质运输、分拣和折叠机制提供了新的见解,并可能有益于蛋白质分泌生物技术。