Towards development of clustering applications for large-scale comparative genotyping and kinship analysis using Y-short tandem repeats

Y-chromosome short tandem repeats (Y-STRs) are genetic markers with practical applications in human identification. However, where mass identification is required (e.g., in the aftermath of disasters with significant fatalities), the efficiency of the process could be improved with new statistical a...

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Bibliographic Details
Published in:OMICS A Journal of Integrative Biology
Main Author: Seman A.; Sapawi A.M.; Salleh M.Z.
Format: Article
Language:English
Published: Mary Ann Liebert Inc. 2015
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-84930578698&doi=10.1089%2fomi.2014.0136&partnerID=40&md5=ed5e9921a6b98f34903609f098d3df16
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Summary:Y-chromosome short tandem repeats (Y-STRs) are genetic markers with practical applications in human identification. However, where mass identification is required (e.g., in the aftermath of disasters with significant fatalities), the efficiency of the process could be improved with new statistical approaches. Clustering applications are relatively new tools for large-scale comparative genotyping, and the k-Approximate Modal Haplotype (k-AMH), an efficient algorithm for clustering large-scale Y-STR data, represents a promising method for developing these tools. In this study we improved the k-AMH and produced three new algorithms: the Nk-AMH I (including a new initial cluster center selection), the Nk-AMH II (including a new dominant weighting value), and the Nk-AMH III (combining I and II). The Nk-AMH III was the superior algorithm, with mean clustering accuracy that increased in four out of six datasets and remained at 100% in the other two. Additionally, the Nk-AMH III achieved a 2% higher overall mean clustering accuracy score than the k-AMH, as well as optimal accuracy for all datasets (0.84-1.00). With inclusion of the two new methods, the Nk-AMH III produced an optimal solution for clustering Y-STR data; thus, the algorithm has potential for further development towards fully automatic clustering of any large-scale genotypic data. © Copyright 2015, Mary Ann Liebert, Inc. 2015.
ISSN:15362310
DOI:10.1089/omi.2014.0136