Patho-finder — A fast and accurate program for pathogen identification through RNA-seq

Chin-Ting Wu, T. Hsiao, Yu-Chiao Chiu, Yu-Ching Hsu, E. Chuang, Yidong Chen
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引用次数: 0

Abstract

Technology of next generation sequencing to detect pathogens of sample can impact human health by revealing pathogens which cause disease. Several workflow has developed in purposed to detect pathogens in next generation sequencing data. However, the requirement of computation power of these workflows limited the application. The time consuming problem make the workflow difficult to detect datasets with large sample size. Here we presented Patho-finder, a fast and accurate workflow designed for detecting pathogen in RNA sequencing data. We have evaluated performance of Patho-finder by three aspects. First, we evaluate performance by alter the data features, to see how Patho-finder work under different simulation conditions. Next, we compare the time consuming and accuracy between Patho-finder and existing workflow. At last, we used Patho-finder on the RNA-seq of cell lines with known virus-infected. The validation result demonstrated our approach could finish the task in real datasets.
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Patho-finder -通过RNA-seq快速准确的病原体鉴定程序
下一代测序检测样品病原体技术通过揭示致病病原体影响人类健康。为了检测下一代测序数据中的病原体,已经开发了几个工作流程。然而,这些工作流对计算能力的要求限制了其应用。耗时问题使得工作流难以检测大样本数据集。在这里,我们提出了一种快速、准确的工作流程,用于检测RNA测序数据中的病原体。我们从三个方面对寻病者的表现进行了评价。首先,我们通过改变数据特征来评估性能,以了解Patho-finder在不同模拟条件下的工作情况。接下来,我们比较了病理发现者和现有工作流程的耗时和准确性。最后,我们对已知病毒感染细胞系的RNA-seq进行了Patho-finder检测。验证结果表明,我们的方法可以在实际数据集上完成任务。
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