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Automatic variable extraction from 3D coxal bone models for sex estimation using the DSP2 method.

Authors :
Kuchař, Michal
Pilmann Kotěrová, Anežka
Morávek, Alexander
Santos, Frédéric
Harnádková, Katarína
Henyš, Petr
Cunha, Eugénia
Brůžek, Jaroslav
Source :
International Journal of Legal Medicine. Nov2024, Vol. 138 Issue 6, p2647-2658. 12p.
Publication Year :
2024

Abstract

Thanks to technical progress and the availability of virtual data, sex estimation methods as part of a biological profile are undergoing an inevitable evolution. Further reductions in subjectivity, but potentially also in measurement errors, can be brought by approaches that automate the extraction of variables. Such automatization also significantly accelerates and facilitates the specialist's work. The aim of this study is (1) to apply a previously proposed algorithm (Kuchař et al. 2021) to automatically extract 10 variables used for the DSP2 sex estimation method, and (2) to test the robustness of the new automatic approach in a current heterogeneous population. For the first aim, we used a sample of 240 3D scans of pelvic bones from the same individuals, which were measured manually for the DSP database. For the second aim a sample of 108 pelvic bones from the New Mexico Decedent Image Database was used. The results showed high agreement between automatic and manual measurements with rTEM below 5% for all dimensions except two. The accuracy of final sex estimates based on all 10 variables was excellent (error rate 0.3%). However, we observed a higher number of undetermined individuals in the Portuguese sample (25% of males) and the New Mexican sample (36.5% of females). In conclusion, the procedure for automatic dimension extraction was successfully applied both to a different type of data and to a heterogeneous population. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09379827
Volume :
138
Issue :
6
Database :
Academic Search Index
Journal :
International Journal of Legal Medicine
Publication Type :
Academic Journal
Accession number :
180373274
Full Text :
https://doi.org/10.1007/s00414-024-03301-4