Litcius/Paper detail

Image Based Artificial Intelligence in Wound Assessment: A Systematic Review

DM Anisuzzaman, Chuanbo Wang, Behrouz Rostami, Sandeep Gopalakrishnan, Jeffrey Niezgoda, Zeyun Yu

2020arXiv (Cornell University)128 citationsDOIOpen Access PDF

Abstract

Efficient and effective assessment of acute and chronic wounds can help wound care teams in clinical practice to greatly improve wound diagnosis, optimize treatment plans, ease the workload and achieve health related quality of life to the patient population. While artificial intelligence (AI) has found wide applications in health-related sciences and technology, AI-based systems remain to be developed clinically and computationally for high-quality wound care. To this end, we have carried out a systematic review of intelligent image-based data analysis and system developments for wound assessment. Specifically, we provide an extensive review of research methods on wound measurement (segmentation) and wound diagnosis (classification). We also reviewed recent work on wound assessment systems (including hardware, software, and mobile apps). More than 250 articles were retrieved from various publication databases and online resources, and 115 of them were carefully selected to cover the breadth and depth of most recent and relevant work to convey the current review to its fulfillment.

Topics & Concepts

WorkflowWound careArtificial intelligenceHealth careMedicineMedical physicsApplications of artificial intelligenceBig dataComputer scienceIntensive care medicineData scienceData miningDatabaseEconomicsEconomic growthWound Healing and TreatmentsDiabetic Foot Ulcer Assessment and ManagementPressure Ulcer Prevention and Management