smart phone based wound detection system for diebetes patient








Abstract

Diabetic foot ulcers represent a significant health issue. Currently clinicians and nurses mainly base their wound assessment on visual examination of wound size and healing status while the patients themselves seldom have an opportunity to play an active role. Hence a more quantitative and cost-effective examination method that enables the patients and their caregivers to take a more active role in daily wound care potentially can accelerate wound healing save travel cost and reduce healthcare expenses. Considering the prevalence of smartphones with a high resolution digital camera assessing wounds by analyzing images of chronic foot ulcers is an attractive option. In this paper we propose a novel wound image analysis system implemented solely on the Android smartphone. The wound image is captured by the camera on the smartphone with the assistance of an image capture box. After that the smartphone performs wound segmentation by applying the accelerated mean shift algorithm. Specifically the outline of the foot is determined based on skin color and the wound boundary is found using a simple connected region detection method. Within the wound boundary the healing status is next assessed based on red-yellow-black color evaluation model. Moreover the healing status is quantitatively assessed based on trend analysis of time records for a given patient. Experimental results on wound images collected in UMASS –Memorial Health Center Wound Clinic (Worcester MA) following an IRB (Institutional Review Board) approved protocol show that our system can be efficiently used to analyze the wound healing status with promising accuracy.


Modules


Algorithms

CNN


Modification

machine learning




Price

₹12000 (INR)


Year