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A novel, fast, HMM-with-Duration implementation – for application with a new, pattern recognition informed, nanopore detector

机译:一种新颖,快速,持续时间较长的HMM实施方案-结合新型模式识别信息纳米孔检测器进行应用

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Background Hidden Markov Models (HMMs) provide an excellent means for structure identification and feature extraction on stochastic sequential data. An HMM-with-Duration (HMMwD) is an HMM that can also exactly model the hidden-label length (recurrence) distributions – while the regular HMM will impose a best-fit geometric distribution in its modeling/representation. Results A Novel, Fast, HMM-with-Duration (HMMwD) Implementation is presented, and experimental results are shown that demonstrate its performance on two-state synthetic data designed to model Nanopore Detector Data. The HMMwD experimental results are compared to (i) the ideal model and to (ii) the conventional HMM. Its accuracy is clearly an improvement over the standard HMM, and matches that of the ideal solution in many cases where the standard HMM does not. Computationally, the new HMMwD has all the speed advantages of the conventional (simpler) HMM implementation. In preliminary work shown here, HMM feature extraction is then used to establish the first pattern recognition-informed (PRI) sampling control of a Nanopore Detector Device (on a "live" data-stream). Conclusion The improved accuracy of the new HMMwD implementation, at the same order of computational cost as the standard HMM, is an important augmentation for applications in gene structure identification and channel current analysis, especially PRI sampling control, for example, where speed is essential. The PRI experiment was designed to inherit the high accuracy of the well characterized and distinctive blockades of the DNA hairpin molecules used as controls (or blockade "test-probes"). For this test set, the accuracy inherited is 99.9%.
机译:背景隐马尔可夫模型(HMM)为随机顺序数据的结构识别和特征提取提供了一种极好的方法。持续时间HMM(HMMwD)是一种HMM,它也可以精确地对隐藏标签长度(递归)分布进行建模-而常规HMM将在其建模/表示中施加最适合的几何分布。结果提出了一种新颖,快速,持续时间较长的HMMwD(HMMwD)实现,并显示了实验结果,证明了其在用于模拟纳米孔检测器数据的两态合成数据上的性能。将HMMwD实验结果与(i)理想模型和(ii)传统HMM进行比较。显然,它的精度是对标准HMM的改进,并且在许多标准HMM不能满足的情况下,可以与理想解决方案的精度相匹配。在计算上,新的HMMwD具有传统(更简单)的HMM实现的所有速度优势。在此处显示的初步工作中,HMM特征提取然后用于建立纳米孔检测器设备(在“实时”数据流上)的第一个模式识别通知(PRI)采样控制。结论以与标准HMM相同的计算成本,新的HMMwD实现的提高的精度是对基因结构识别和通道电流分析(尤其是PRI采样控制)中应用的重要补充,例如,速度是必不可少的。 PRI实验的设计是继承了作为对照的DNA发夹分子的特征明确且独特的封锁(或封锁“测试探针”)的高精度。对于此测试集,继承的准确性为99.9%。

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