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首页> 外文期刊>Journal of biomedical informatics. >SpliceIT: a hybrid method for splice signal identification based on probabilistic and biological inference.
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SpliceIT: a hybrid method for splice signal identification based on probabilistic and biological inference.

机译:SpliceIT:一种基于概率和生物学推断的混合信号识别方法。

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摘要

Splice sites define the boundaries of exonic regions and dictate protein synthesis and function. The splicing mechanism involves complex interactions among positional and compositional features of different lengths. Computational modeling of the underlying constructive information is especially challenging, in order to decipher splicing-inducing elements and alternative splicing factors. SpliceIT (Splice Identification Technique) introduces a hybrid method for splice site prediction that couples probabilistic modeling with discriminative computational or experimental features inferred from published studies in two subsequent classification steps. The first step is undertaken by a Gaussian support vector machine (SVM) trained on the probabilistic profile that is extracted using two alternative position-dependent feature selection methods. In the second step, the extracted predictions are combined with known species-specific regulatory elements, in order to induce a tree-based modeling. The performance evaluation on human and Arabidopsis thaliana splice site datasets shows that SpliceIT is highly accurate compared to current state-of-the-art predictors in terms of the maximum sensitivity, specificity tradeoff without compromising space complexity and in a time-effective way. The source code and supplementary material are available at: http://www.med.auth.gr/research/spliceit/.
机译:剪接位点定义外显子区域的边界,并决定蛋白质的合成和功能。拼接机制涉及不同长度的位置和构图特征之间的复杂相互作用。为了破译剪接诱发元件和替代剪接因子,对基础构造信息的计算建模尤其具有挑战性。 SpliceIT(剪接识别技术)引入了一种用于剪接位点预测的混合方法,该方法将概率模型与在两个后续分类步骤中从已发表的研究推断出的判别性计算或实验特征相结合。第一步由在概率分布图上训练的高斯支持向量机(SVM)进行,该概率分布图是使用两种替代的位置相关特征选择方法提取的。在第二步中,将提取的预测与已知的物种特定的调控元素进行组合,以进行基于树的建模。对人类和拟南芥剪接位点数据集的性能评估表明,与当前最新的预测指标相比,SpliceIT在最大灵敏度,特异性折衷方面不影响空间复杂性且以时间有效的方式具有很高的准确性。可从以下位置获得源代码和补充材料:http://www.med.auth.gr/research/spliceit/。

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