基于可重构贝叶斯网络的DNA焦磷酸测序碱基调用

Mingjie Lin, Yaling Ma
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引用次数: 0

摘要

提出了一种基于动态贝叶斯学习网络的可重构计算方法,用于焦磷酸测序中基因表达数据的碱基调用。由于焦焦测序过程中的长记忆和随机非理想性,在合理的问题规模下,对所提出的动态贝叶斯学习网络进行精确推断在运行时间和内存使用上都是计算上禁止的。为了规避这些问题,我们设计了一个可重构的贝叶斯学习网络,处理节点并行评估所有状态的后验概率,交叉开关实现了所有处理节点互连的网络拓扑结构。采用伯克利仿真引擎3 (BEE3)板实现的原型系统证明了该方法的成功,在实验和模拟焦磷酸测序数据中,读取长度比先前报道的增加了近2倍,运行时间减少了约3个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Base-Calling in DNA Pyrosequencing with Reconfigurable Bayesian Network
A reconfigurable computing method based on dynamic Bayesian learning network is proposed for base-calling in pyrosequencing from microarray gene expression data. Due to long memory and stochastic non-idealities in the pyrosequencing process, exact inference on the proposed dynamic Bayesian learning network is computationally prohibitive in both run-time and memory usage for reasonable problem sizes. To circumvent these issues, we design a reconfigurable Bayesian learning network, whereby processing nodes evaluate posterior probabilities of all states in parallel and crossbar switch realizes network topology that interconnects all processing nodes. The success of the proposed method is demonstrated by a prototype system implemented with Berkeley Emulation Engine 3 (BEE3) board, which achieves close to 2 times increase in read length and about 3 orders of reduction in run-time than previously reported for both experimental and simulated pyrosequencing data.
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