Evaluation of low-template DNA profiles using peak heights.

Pub Date : 2016-10-01 DOI:10.1515/sagmb-2016-0038
Christopher D Steele, Matthew Greenhalgh, David J Balding
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引用次数: 28

Abstract

In recent years statistical models for the analysis of complex (low-template and/or mixed) DNA profiles have moved from using only presence/absence information about allelic peaks in an electropherogram, to quantitative use of peak heights. This is challenging because peak heights are very variable and affected by a number of factors. We present a new peak-height model with important novel features, including over- and double-stutter, and a new approach to dropin. Our model is incorporated in open-source R code likeLTD. We apply it to 108 laboratory-generated crime-scene profiles and demonstrate techniques of model validation that are novel in the field. We use the results to explore the benefits of modeling peak heights, finding that it is not always advantageous, and to assess the merits of pre-extraction replication. We also introduce an approximation that can reduce computational complexity when there are multiple low-level contributors who are not of interest to the investigation, and we present a simple approximate adjustment for linkage between loci, making it possible to accommodate linkage when evaluating complex DNA profiles.

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利用峰高评价低模板DNA谱。
近年来,用于分析复杂(低模板和/或混合)DNA谱的统计模型已经从仅使用电泳图中等位基因峰的存在/缺失信息转变为峰高的定量使用。这是具有挑战性的,因为高峰高度变化很大,受到许多因素的影响。我们提出了一个新的峰高模型,它具有重要的新特征,包括过卡顿和双卡顿,以及一种新的下降方法。我们的模型包含在开源的R代码中。我们将其应用于108个实验室生成的犯罪现场概况,并演示了该领域新颖的模型验证技术。我们使用这些结果来探索峰高建模的好处,发现它并不总是有利的,并评估预提取复制的优点。我们还引入了一个近似值,当存在多个对调查不感兴趣的低水平贡献者时,可以降低计算复杂性,并且我们提出了一个简单的基因座之间连锁的近似调整,使得在评估复杂DNA谱时可以容纳连锁。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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