利用匹配统计跳变快速灵敏地选择DNA芯片探针。

Sven Rahmann
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引用次数: 0

摘要

大规模DNA微阵列的设计是一个具有挑战性的问题。到目前为止,探针选择算法必须以处理大规模问题的能力为代价,以损失对探针质量估计的准确性为代价。我们提出了一种基于跳跃匹配统计的方法,结合了两者的优点。本文由两部分组成。第一部分是理论部分。我们在两个字符串之间的匹配统计中引入了跳跃的概念,并推导了它们的性质。我们估计了非均匀伯努利模型中随机字符串的跳跃频率,并提出了一种新的启发式论证来寻找两个随机字符串共有的最长子串长度分布的中心。结果被推广到接近完美匹配和少量不匹配。在第二部分中,我们使用跳跃的概念,通过从基于字符串的特异性度量转移到基于能量的特异性度量,来提高最长公因子方法用于探针选择的准确性,而选择时间仅略多于两倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast and sensitive probe selection for DNA chips using jumps in matching statistics.

The design of large scale DNA microarrays is a challenging problem. So far, probe selection algorithms must trade the ability to cope with large scale problems for a loss of accuracy in the estimation of probe quality. We present an approach based on jumps in matching statistics that combines the best of both worlds. This article consists of two parts. The first part is theoretical. We introduce the notion of jumps in matching statistics between two strings and derive their properties. We estimate the frequency of jumps for random strings in a non-uniform Bernoulli model and present a new heuristic argument to find the center of the length distribution of the longest substring that two random strings have in common. The results are generalized to near-perfect matches with a small number of mismatches. In the second part, we use the concept of jumps to improve the accuracy of the longest common factor approach for probe selection by moving from a string-based to an energy-based specificity measure, while only slightly more than doubling the selection time.

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