Literature DB >> 32789676

Automated diatom searching in the digital scanning electron microscopy images of drowning cases using the deep neural networks.

Weimin Yu1, Ye Xue2, Rob Knoops3, Danyuan Yu4, Evgeniya Balmashnova3, Xiaodong Kang2, Pietro Falgari3, Dongyun Zheng2, Pengfei Liu5, Hui Chen5, He Shi2, Chao Liu6,7, Jian Zhao8,9.   

Abstract

Forensic diatom test has been widely accepted as a way of providing supportive evidences in the diagnosis of drowning. The current workflow is primarily based on the observation of diatoms by forensic pathologists under a microscopy, and this process can be very time-consuming. In this paper, we demonstrate a deep learning-based approach for automatically searching diatoms in scanning electron microscopic images. Cross-validation studies were performed to evaluate the influence of magnification on performance. Moreover, various training strategies were tested to improve the performance of detection. The conclusion shows that our approach can satisfy the necessary requirements to be integrated as part of an automatic forensic diatom test.

Keywords:  Artificial intelligence; Diatom test; Forensic science; Object detection; Scanning electron microscopy

Year:  2020        PMID: 32789676     DOI: 10.1007/s00414-020-02392-z

Source DB:  PubMed          Journal:  Int J Legal Med        ISSN: 0937-9827            Impact factor:   2.686


  1 in total

1.  An improved automated diatom detection method based on YOLOv5 framework and its preliminary study for taxonomy recognition in the forensic diatom test.

Authors:  Weimin Yu; Qingqing Xiang; Yingchao Hu; Yukun Du; Xiaodong Kang; Dongyun Zheng; He Shi; Quyi Xu; Zhigang Li; Yong Niu; Chao Liu; Jian Zhao
Journal:  Front Microbiol       Date:  2022-08-19       Impact factor: 6.064

  1 in total

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