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A Modified Statistically Optimal Null Filter Method for Recognizing Protein-coding Regions

机译:识别蛋白质编码区的改进的统计最优Null滤波方法

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Computer-aided protein-coding gene prediction in uncharacterized genomic DNA sequences is one of the most important issues of biological signal processing. A modified filter method based on a statistically optimal null filter (SONF) theory is proposed for recognizing protein-coding regions. The square deviation gain (SDG) between the input and output of the model is used to identify the coding regions. The effective SDG amplification model with Class I and Class II enhancement is designed to suppress the non-coding regions. Also, an evaluation algorithm has been used to compare the modified model with most gene prediction methods currently available in terms of sensitivity, specificity and precision. The performance for identification of protein-coding regions has been evaluated at the nucleotide level using benchmark datasets and 91.4%, 96%, 93.7% were obtained for sensitivity, specificity and precision, respectively. These results suggest that the proposed model is potentially useful in gene finding field, which can help recognize protein-coding regions with higher precision and speed than present algorithms.
机译:未表征的基因组DNA序列中的计算机辅助蛋白质编码基因预测是生物信号处理的最重要问题之一。提出了一种基于统计最优零值滤波(SONF)理论的改进的滤波方法来识别蛋白质编码区域。模型输入和输出之间的平方偏差增益(SDG)用于标识编码区域。具有I类和II类增强功能的有效SDG放大模型旨在抑制非编码区域。此外,就敏感性,特异性和精确度而言,评估算法已被用于将修改后的模型与目前可用的大多数基因预测方法进行比较。已使用基准数据集在核苷酸水平上评估了蛋白质编码区的鉴定性能,灵敏度,特异性和精密度分别达到91.4%,96%,93.7%。这些结果表明,所提出的模型在基因发现领域中可能是有用的,它可以帮助以比现有算法更高的精度和速度来识别蛋白质编码区域。

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