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Analysis of the Accuracy of AncesTrees Software in Ancestry Estimation in Brazilian Identified Sample

机译:巴西鉴定样本祖先估算中祖先软件的准确性分析

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In the present study a software tool for craniometric ancestry estimation, AncesTrees, was evaluated in an identified Brazilian skeletal sample with known self-reported ancestry. Twenty-three craniometric measures were obtained from each skull and analyzed using AncesTrees software, with two classification strategies—tournamentForest and ancestralForest algorithm. The tournamentForest (53.54%) and ancestralForest algorithms with three ancestry groups (50.96%) were more accurate to classify Europeans, while the ancestralForest algorithm with six (50.00%) and two (67.64%) groups were more accurate to estimate the ancestry of African descents. Admixed ancestry specimens were classified predominantly as European descent. The use of the ancestralForest algorithm considering only European and African origin (58.42%) was the most accurate setup for ancestry estimation in Brazilian skulls. Supervised classification algorithms and tools such as the AncesTrees work based on data analysis and pattern matching, and there is no Brazilian sample in its database, the software showed a low accuracy Brazilian samples. The incorporation of representative craniometric data obtained from Brazilian skulls into the software database may significantly increase the accuracy of ancestry estimates.
机译:在本研究中的craniometric祖先估计,AncesTrees的软件工具,已知自报祖先的标识巴西骨骼样本进行了评价。从每个头骨获得二十三craniometric措施和使用AncesTrees软件分析,有两个分类的策略,tournamentForest和ancestralForest算法。该tournamentForest(53.54%)和ancestralForest算法有三个祖先群体(50.96%)是更准确的欧洲人进行分类,同时用六(50.00%)和两个(67.64%)的ancestralForest算法组分别估计非洲的祖先更准确下坡。混合血统标本主要划分为欧洲血统。使用该ancestralForest算法只考虑欧洲和非洲起源(58.42%)的是在巴西头骨祖先估计最准确的设置。监督分类算法和工具,如AncesTrees做工基于数据分析和模式匹配,并且在其数据库中没有巴西样品,软件表现出了低精度巴西样本。来自巴西的头骨获得到软件数据库代表craniometric数据的结合可以显著增加祖先估计的准确性。

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