Perlin Mark W, Dormer Kiersten, Hornyak Jennifer, Schiermeier-Wood Lisa, Greenspoon Susan
Cybergenetics, Pittsburgh, Pennsylvania, United States of America.
Department of Forensic Science, Richmond, Virginia, United States of America.
PLoS One. 2014 Mar 25;9(3):e92837. doi: 10.1371/journal.pone.0092837. eCollection 2014.
Mixtures are a commonly encountered form of biological evidence that contain DNA from two or more contributors. Laboratory analysis of mixtures produces data signals that usually cannot be separated into distinct contributor genotypes. Computer modeling can resolve the genotypes up to probability, reflecting the uncertainty inherent in the data. Human analysts address the problem by simplifying the quantitative data in a threshold process that discards considerable identification information. Elevated stochastic threshold levels potentially discard more information. This study examines three different mixture interpretation methods. In 72 criminal cases, 111 genotype comparisons were made between 92 mixture items and relevant reference samples. TrueAllele computer modeling was done on all the evidence samples, and documented in DNA match reports that were provided as evidence for each case. Threshold-based Combined Probability of Inclusion (CPI) and stochastically modified CPI (mCPI) analyses were performed as well. TrueAllele's identification information in 101 positive matches was used to assess the reliability of its modeling approach. Comparison was made with 81 CPI and 53 mCPI DNA match statistics that were manually derived from the same data. There were statistically significant differences between the DNA interpretation methods. TrueAllele gave an average match statistic of 113 billion, CPI averaged 6.68 million, and mCPI averaged 140. The computer was highly specific, with a false positive rate under 0.005%. The modeling approach was precise, having a factor of two within-group standard deviation. TrueAllele accuracy was indicated by having uniformly distributed match statistics over the data set. The computer could make genotype comparisons that were impossible or impractical using manual methods. TrueAllele computer interpretation of DNA mixture evidence is sensitive, specific, precise, accurate and more informative than manual interpretation alternatives. It can determine DNA match statistics when threshold-based methods cannot. Improved forensic science computation can affect criminal cases by providing reliable scientific evidence.
混合物是常见的生物证据形式,包含来自两个或更多贡献者的DNA。对混合物进行实验室分析会产生通常无法分离为不同贡献者基因型的数据信号。计算机建模可以将基因型解析到概率水平,反映数据中固有的不确定性。人工分析人员通过在阈值过程中简化定量数据来解决这个问题,而这一过程会丢弃大量识别信息。提高随机阈值水平可能会丢弃更多信息。本研究考察了三种不同的混合物解释方法。在72起刑事案件中,对92个混合物样本与相关参考样本进行了111次基因型比较。对所有证据样本都进行了TrueAllele计算机建模,并记录在作为每个案件证据提供的DNA匹配报告中。还进行了基于阈值的包含联合概率(CPI)和随机修正的CPI(mCPI)分析。利用TrueAllele在101个阳性匹配中的识别信息来评估其建模方法的可靠性。将其与从相同数据中手动得出的81个CPI和53个mCPI DNA匹配统计数据进行了比较。DNA解释方法之间存在统计学上的显著差异。TrueAllele给出的平均匹配统计值为1130亿,CPI平均为668万,mCPI平均为140。该计算机具有高度特异性,误报率低于0.005%。建模方法精确,组内标准差在2倍以内。数据集上匹配统计值的均匀分布表明了TrueAllele的准确性。该计算机能够进行使用人工方法不可能或不切实际的基因型比较。TrueAllele对DNA混合物证据的计算机解释比人工解释方法更灵敏、更具特异性、更精确、更准确且信息更丰富。当基于阈值的方法无法确定时,它可以确定DNA匹配统计值。改进的法医学计算通过提供可靠的科学证据可以影响刑事案件。