| Literature DB >> 35062152 |
Jens Hüsers1, Guido Hafer2, Jan Heggemann2, Stefan Wiemeyer2, Mareike Przysucha1, Joachim Dissemond3, Maurice Moelleken3, Cornelia Erfurt-Berge4, Ursula Hübner1.
Abstract
Diabetic foot ulcer (DFU) is a chronic wound and a common diabetic complication as 2% - 6% of diabetic patients witness the onset thereof. The DFU can lead to severe health threats such as infection and lower leg amputations, Coordination of interdisciplinary wound care requires well-written but time-consuming wound documentation. Artificial intelligence (AI) systems lend themselves to be tested to extract information from wound images, e.g. maceration, to fill the wound documentation. A convolutional neural network was therefore trained on 326 augmented DFU images to distinguish macerated from unmacerated wounds. The system was validated on 108 unaugmented images. The classification system achieved a recall of 0.69 and a precision of 0.67. The overall accuracy was 0.69. The results show that AI systems can classify DFU images for macerations and that those systems could support clinicians with data entry. However, the validation statistics should be further improved for use in real clinical settings. In summary, this paper can contribute to the development of methods to automatic wound documentation.Entities:
Keywords: Clinical Decision Support System; Convolutional Neural Networks; Diabetic Foot Ulcer; Health Information Technology; Image Classification; Transfer Learning; Wound Care
Mesh:
Year: 2022 PMID: 35062152 DOI: 10.3233/SHTI210919
Source DB: PubMed Journal: Stud Health Technol Inform ISSN: 0926-9630