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Prediction of hot-spots in protein sequences using statistically optimal null filters

机译:使用统计上最优化的零值滤波器预测蛋白质序列中的热点

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The knowledge of hot-spots locations in protein sequences is crucial for understanding protein functionality. It is known that the hot-spots exhibit a characteristic frequency corresponding to their biological function. In this paper, a new technique using a statistically optimal null filter (SONF) is proposed to predict the locations of hot-spots in proteins. The technique involves detecting the characteristic frequency corresponding to hot-spots of interest. This is achieved using an instantaneous matched filter in SONF which increases the signal-to-noise ratio and the estimation is further improved by using a least squared optimization. Through examples it is shown that the proposed technique is more accurate and reliable as compared to the popular modified Morlet wavelet technique.
机译:蛋白质序列中热点位置的知识对于理解蛋白质功能至关重要。已知热点表现出与其生物学功能相对应的特征频率。在本文中,提出了一种使用统计最优零值滤波器(SONF)的新技术来预测蛋白质中热点的位置。该技术涉及检测与感兴趣热点相对应的特征频率。这可以通过使用SONF中的瞬时匹配滤波器来实现,该滤波器可以提高信噪比,并且可以通过使用最小二乘优化来进一步改善估计。通过实例表明,与流行的改进的Morlet小波技术相比,所提出的技术更加准确可靠。

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