Deep learning versus human assessors: forensic sex estimation from three-dimensional computed tomography scans.

Journal: Scientific reports
PMID:

Abstract

Cranial sex estimation often relies on visual assessments made by a forensic anthropologist following published standards. However, these methods are prone to human bias and may be less accurate when applied to populations other than those for which they were originally developed with. This study explores an automatic deep learning (DL) framework to enhance sex estimation accuracy and reduce bias. Utilising 200 cranial CT scans of Indonesian individuals, various DL network configurations were evaluated against a human observer. The most accurate DL network, which learned to estimate sex and cranial traits as an auxiliary task, achieved a classification accuracy of 97%, outperforming the human observer at 82%. Grad-CAM visualisations indicated that the DL model appears to focus on certain cranial traits, while also considering overall size and shape. This study demonstrates the potential of using DL to assist forensic anthropologists in providing more accurate and less biased estimations of skeletal sex.

Authors

  • Ridhwan Lye
    Centre for Forensic Anthropology, School of Social Sciences, The University of Western Australia, Perth, Australia. ridhwan.dawudlye@research.uwa.edu.au.
  • Hang Min
    South Western Sydney Clinical School, University of New South Wales, Sydney, New South Wales, Australia.
  • Jason Dowling
    Australian e-Health Research Centre, CSIRO, Digital Productivity Flagship.
  • Zuzana Obertová
    Centre for Forensic Anthropology, School of Social Sciences, The University of Western Australia, Perth, Australia.
  • Mohamed Estai
    The Australian e-Health Research Centre, CSIRO, Floreat, Australia.
  • Nur Amelia Bachtiar
    Radiology Department, Hasanuddin University, Makassar, Indonesia.
  • Daniel Franklin
    School of Electrical and Data Engineering, University of Technology Sydney, Sydney, Australia.