Literature DB >> 15896502

Prediction of burn healing time using artificial neural networks and reflectance spectrometer.

Eng-Kean Yeong1, Tzu-Chien Hsiao, Huihua Kenny Chiang, Chii-Wann Lin.   

Abstract

BACKGROUND: Burn depth assessment is important as early excision and grafting is the treatment of choice for deep dermal burn. Inaccurate assessment causes prolonged hospital stay, increased medical expenses and morbidity. Based on reflected burn spectra, we have developed an artificial neural network to predict the burn healing time.
PURPOSE: Our study is to develop a non-invasive objective method to predict burn-healing time. METHODS AND MATERIALS: Burns less than 20% TBSA was included. Burn spectra taken on the third postburn day using reflectance spectrometer were analyzed by an artificial neural network system.
RESULTS: Forty-one spectra were collected. With the newly developed method, the predictive accuracy of burns healed in less than 14 days was 96%, and that in more than 14 days was 75%.
CONCLUSIONS: Using reflectance spectrometer, we have developed an artificial neural network to determine the burn healing time with 86% overall predictive accuracy.

Mesh:

Year:  2005        PMID: 15896502     DOI: 10.1016/j.burns.2004.12.003

Source DB:  PubMed          Journal:  Burns        ISSN: 0305-4179            Impact factor:   2.744


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