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Enhanced Prediction of Cleavage in Bovine Precursor Sequences

机译:增强预测牛前体序列中的卵裂。

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Neuropeptides are important signaling molecules that influence a wide variety of biological processes. The prediction of neuropeptides from precursor proteins is difficult due to the numerous and complex series of enzymatic processing and posttranslational modification steps. Bioinformatics prediction of cleavage sites using statistical models was used to overcome the challenge of identifying neuropeptides. Binary logistic models were trained on a bovine dataset and validated on a mammalian dataset that contained no bovine precursors. A model that incorporated amino acid locations and properties provided more accurate and precise cleavage predictions than one using amino acid locations alone. All models consistently resulted in highly accurate predictions of cleavage sites in both datasets. The logistic model proposed can accurately predict cleavage sites in mammalian species and minimize the time consuming and costly experimental validation of neuropeptides.
机译:神经肽是影响多种生物过程的重要信号分子。由于前体蛋白的酶处理和翻译后修饰步骤繁多而复杂,因此很难从前体蛋白预测神经肽。使用统计模型的切割位点的生物信息学预测被用来克服鉴定神经肽的挑战。在牛数据集上训练了二进制逻辑模型,并在不含牛前体的哺乳动物数据集上进行了验证。与仅使用氨基酸位置的模型相比,结合了氨基酸位置和属性的模型可提供更精确的切割预测。所有模型均一致地在两个数据集中对切割位点进行了高度准确的预测。提出的逻辑模型可以准确预测哺乳动物物种中的切割位点,并最大程度地减少神经肽的耗时和昂贵的实验验证。

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