CVSep 14, 2021

Multi-modal Wound Classification using Wound Image and Location by Deep Neural Network

arXiv:2109.06969v157 citations
Originality Incremental advance
AI Analysis

This work addresses wound classification for medical specialists, offering an incremental improvement by integrating location data to enhance diagnostic efficiency.

The study developed a deep neural network-based multi-modal classifier using wound images and location data to categorize wounds into diabetic, pressure, surgical, and venous ulcers, achieving accuracies ranging from 72.95% to 100% across different experiments.

Wound classification is an essential step of wound diagnosis. An efficient classifier can assist wound specialists in classifying wound types with less financial and time costs and help them decide an optimal treatment procedure. This study developed a deep neural network-based multi-modal classifier using wound images and their corresponding locations to categorize wound images into multiple classes, including diabetic, pressure, surgical, and venous ulcers. A body map is also developed to prepare the location data, which can help wound specialists tag wound locations more efficiently. Three datasets containing images and their corresponding location information are designed with the help of wound specialists. The multi-modal network is developed by concatenating the image-based and location-based classifier's outputs with some other modifications. The maximum accuracy on mixed-class classifications (containing background and normal skin) varies from 77.33% to 100% on different experiments. The maximum accuracy on wound-class classifications (containing only diabetic, pressure, surgical, and venous) varies from 72.95% to 98.08% on different experiments. The proposed multi-modal network also shows a significant improvement in results from the previous works of literature.

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