An artificial intelligence-enabled smartphone app for real-time pressure injury assessment

Chun Hon Lau, Ken Hung On Yu, Tsz Fung Yip, Luke Yik Fung Luk, Abraham Ka Chung Wai, Tin Yan Sit, Janet Yuen Ha Wong, Joshua Wing Kei Ho

Research output: Contribution to journalArticlepeer-review

18 Citations (Scopus)

Abstract

The management of chronic wounds in the elderly such as pressure injury (also known as bedsore or pressure ulcer) is increasingly important in an ageing population. Accurate classification of the stage of pressure injury is important for wound care planning. Nonetheless, the expertise required for staging is often not available in a residential care home setting. Artificial-intelligence (AI)-based computer vision techniques have opened up opportunities to harness the inbuilt camera in modern smartphones to support pressure injury staging by nursing home carers. In this paper, we summarise the recent development of smartphone or tablet-based applications for wound assessment. Furthermore, we present a new smartphone application (app) to perform real-time detection and staging classification of pressure injury wounds using a deep learning-based object detection system, YOLOv4. Based on our validation set of 144 photos, our app obtained an overall prediction accuracy of 63.2%. The per-class prediction specificity is generally high (85.1%–100%), but have variable sensitivity: 73.3% (stage 1 vs. others), 37% (stage 2 vs. others), 76.7 (stage 3 vs. others), 70% (stage 4 vs. others), and 55.6% (unstageable vs. others). Using another independent test set, 8 out of 10 images were predicted correctly by the YOLOv4 model. When deployed in a real-life setting with two different ambient brightness levels with three different Android phone models, the prediction accuracy of the 10 test images ranges from 80 to 90%, which highlight the importance of evaluation of mobile health (mHealth) application in a simulated real-life setting. This study details the development and evaluation process and demonstrates the feasibility of applying such a real-time staging app in wound care management.

Original languageEnglish
Article number905074
JournalFrontiers in Medical Technology
Volume4
DOIs
Publication statusPublished - 2022
Externally publishedYes

Keywords

  • artificial intelligence
  • bedsore
  • deep learning
  • digital health
  • mHealth
  • object detection
  • pressure injury
  • wound assessment

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