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Comparative analysis of binary logistic regression to artificial neural networks in predicting precursor sequence cleavage

机译:预测人工前体序列裂解的二元逻辑回归到人工神经网络的比较分析

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Bioinformatic predictions of neuropeptides resulting from enzymatic cleavages of precursors enable a range of follow-up studies that are aided by accurate predictions. A comparative study of the performance of complementary cleavage prediction models has been undertaken. Binary logistic and artificial neural network (ANN) models were created using various strategies and trained and tested on bovine and rat precursors with experimental cleavage information. Multiple criteria were used to compare 4 logistic regression models with varying properties and 8 ANN with varying structures. All models had high specificity (90%) and sensitivity ranged from 68% to 100%. ANN based on well-represented amino acid locations performed similarly or slightly worse than networks based on all amino acid locations. Logistic parameter estimates aided in the identification of amino acids associated with cleavage. No model was superior across data sets and thus, prediction of neuropeptides should rely on multiple model specifications and comprehensive training data sets.
机译:由前体的酶促裂解产生的神经肽的生物信息学预测可以进行一系列后续研究,这些研究都需要准确的预测。进行了互补切割预测模型性能的比较研究。使用各种策略创建了二进制逻辑和人工神经网络(ANN)模型,并在牛和大鼠前体上通过实验裂解信息对其进行了训练和测试。使用多个标准比较具有不同属性的4个逻辑回归模型和具有不同结构的8个ANN。所有模型均具有高特异性(> 90%),灵敏度范围为68%至100%。基于良好表示的氨基酸位置的人工神经网络的性能与基于所有氨基酸位置的网络相似或稍差。逻辑参数估计有助于识别与裂解相关的氨基酸。没有模型在数据集中具有优势,因此,神经肽的预测应依赖于多种模型规范和全面的训练数据集。

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