Southey Bruce R, Amare Andinet, Zimmerman Tyler A, Rodriguez-Zas Sandra L, Sweedler Jonathan V
Department of Animal Sciences, University of Illinois, Urbana, IL, USA.
Nucleic Acids Res. 2006 Jul 1;34(Web Server issue):W267-72. doi: 10.1093/nar/gkl161.
NeuroPred is a web application designed to predict cleavage sites at basic amino acid locations in neuropeptide precursor sequences. The user can study one amino acid sequence or multiple sequences simultaneously, selecting from several prediction models and optional, user-defined functions. Logistic regression models are trained on experimentally verified or published cleavage data from mollusks, mammals and insects, and amino acid motifs reported to be associated with cleavage. Confidence interval limits of the probabilities of cleavage indicate the precision of the predictions; these predictions are transformed into cleavage or non-cleavage events according to user-defined thresholds. In addition to the precursor sequence, NeuroPred accepts user-specified cleavage information, providing model accuracy statistics based on observed and predicted cleavages. Neuropred also computes the mass of the predicted peptides, including user-selectable post-translational modifications. The resulting mass list aids the discovery and confirmation of new neuropeptides using mass spectrometry techniques. The NeuroPred application, manual, reference manuscripts and training sequences are available at http://neuroproteomics.scs.uiuc.edu/neuropred.html.
NeuroPred是一个网络应用程序,旨在预测神经肽前体序列中碱性氨基酸位置的切割位点。用户可以同时研究一个氨基酸序列或多个序列,从几种预测模型和可选的用户定义功能中进行选择。逻辑回归模型是根据来自软体动物、哺乳动物和昆虫的经实验验证或已发表的切割数据以及据报道与切割相关的氨基酸基序进行训练的。切割概率的置信区间界限表明了预测的精度;这些预测根据用户定义的阈值转换为切割或非切割事件。除了前体序列外,NeuroPred还接受用户指定的切割信息,并根据观察到的和预测的切割提供模型准确性统计数据。NeuroPred还计算预测肽段的质量,包括用户可选择的翻译后修饰。所得的质量列表有助于使用质谱技术发现和确认新的神经肽。NeuroPred应用程序、手册、参考文献和训练序列可在http://neuroproteomics.scs.uiuc.edu/neuropred.html获取。