Comparison of deep learning segmentation and multigrader-annotated mandibular canals of multicenter CBCT scans.

Journal: Scientific reports
PMID:

Abstract

Deep learning approach has been demonstrated to automatically segment the bilateral mandibular canals from CBCT scans, yet systematic studies of its clinical and technical validation are scarce. To validate the mandibular canal localization accuracy of a deep learning system (DLS) we trained it with 982 CBCT scans and evaluated using 150 scans of five scanners from clinical workflow patients of European and Southeast Asian Institutes, annotated by four radiologists. The interobserver variability was compared to the variability between the DLS and the radiologists. In addition, the generalisation of DLS to CBCT scans from scanners not used in the training data was examined to evaluate its out-of-distribution performance. The DLS had a statistically significant difference (p < 0.001) with lower variability to the radiologists with 0.74 mm than the interobserver variability of 0.77 mm and generalised to new devices with 0.63 mm, 0.67 mm and 0.87 mm (p < 0.001). For the radiologists' consensus segmentation, used as a gold standard, the DLS showed a symmetric mean curve distance of 0.39 mm, which was statistically significantly different (p < 0.001) compared to those of the individual radiologists with values of 0.62 mm, 0.55 mm, 0.47 mm, and 0.42 mm. These results show promise towards integration of DLS into clinical workflow to reduce time-consuming and labour-intensive manual tasks in implantology.

Authors

  • Jorma Järnstedt
    Medical Imaging Centre, Department of Radiology Tampere University Hospital, Teiskontie 35, 33520, Tampere, Finland.
  • Jaakko Sahlsten
    Dept. of Computer Science, Aalto University School of Science, Espoo, 00076, Finland.
  • Joel Jaskari
    Dept. of Computer Science, Aalto University School of Science, Espoo, 00076, Finland.
  • Kimmo Kaski
    Dept. of Computer Science, Aalto University School of Science, Espoo, 00076, Finland. kimmo.kaski@aalto.fi.
  • Helena Mehtonen
    Medical Imaging Centre, Department of Radiology Tampere University Hospital, Teiskontie 35, 33520, Tampere, Finland.
  • Ziyuan Lin
    Aalto University School of Science, Maarintie 8, 02150, Aalto, Finland.
  • Ari Hietanen
    Planmeca Oy, Asentajankatu 6, 00880, Helsinki, Finland.
  • Osku Sundqvist
    Planmeca Oy, Asentajankatu 6, 00880, Helsinki, Finland.
  • Vesa Varjonen
    Planmeca Oy, Asentajankatu 6, 00880, Helsinki, Finland.
  • Vesa Mattila
    Planmeca Oy, Asentajankatu 6, 00880, Helsinki, Finland.
  • Sangsom Prapayasotok
    Division of Oral and Maxillofacial Radiology, Faculty of Dentistry, Chiang Mai University, Suthep Rd., T. Suthep, A. Muang, Chiang Mai, Thailand.
  • Sakarat Nalampang
    Division of Oral and Maxillofacial Radiology, Faculty of Dentistry, Chiang Mai University, Suthep Rd., T. Suthep, A. Muang, Chiang Mai, Thailand.