Software-Based Method for Automated Segmentation and Measurement of Wounds on Photographs Using Mask R-CNN: a Validation Study.

Journal: Journal of digital imaging
Published Date:

Abstract

In clinical routine, wound documentation is one of the most important contributing factors to treating patients with acute or chronic wounds. The wound documentation process is currently very time-consuming, often examiner-dependent, and therefore imprecise. This study aimed to validate a software-based method for automated segmentation and measurement of wounds on photographic images using the Mask R-CNN (Region-based Convolutional Neural Network). During the validation, five medical experts manually segmented an independent dataset with 35 wound photographs at two different points in time with an interval of 1 month. Simultaneously, the dataset was automatically segmented using the Mask R-CNN. Afterwards, the segmentation results were compared, and intra- and inter-rater analyses performed. In the statistical evaluation, an analysis of variance (ANOVA) was carried out and dice coefficients were calculated. The ANOVA showed no statistically significant differences throughout all raters and the network in the first segmentation round (F = 1.424 and p > 0.228) and the second segmentation round (F = 0.9969 and p > 0.411). The repeated measure analysis demonstrated no statistically significant differences in the segmentation quality of the medical experts over time (F = 6.05 and p > 0.09). However, a certain intra-rater variability was apparent, whereas the Mask R-CNN consistently provided identical segmentations regardless of the point in time. Using the software-based method for segmentation and measurement of wounds on photographs can accelerate the documentation process and improve the consistency of measured values while maintaining quality and precision.

Authors

  • Maxim Privalov
    Medical Imaging and Navigation in Trauma and Orthopedic Suregery Research group, BG Trauma Center, Ludwigshafen, Germany.
  • Nils Beisemann
    BG Trauma Center Ludwigshafen, Trauma and Orthopaedic Surgery, Ludwigshafen am Rhein, Germany.
  • Jan El Barbari
    BG Trauma Center Ludwigshafen, Trauma and Orthopaedic Surgery, Ludwigshafen am Rhein, Germany.
  • Eric Mandelka
    BG Trauma Center Ludwigshafen, Trauma and Orthopaedic Surgery, Ludwigshafen am Rhein, Germany.
  • Michael Müller
    Department of Ophthalmology, Ludwig-Maximilians-University Munich, Germany.
  • Hannah Syrek
    Mbits Imaging GmbH, Heidelberg, Germany.
  • Paul Alfred Grützner
    BG Trauma Center Ludwigshafen, Trauma and Orthopaedic Surgery, Ludwigshafen am Rhein, Germany.
  • Sven Yves Vetter
    BG Trauma Center Ludwigshafen, Trauma and Orthopaedic Surgery, Ludwigshafen am Rhein, Germany. sven.vetter@bgu-ludwigshafen.de.