Literature DB >> 8951542

Simulated biologic intelligence used to predict length of stay and survival of burns.

K E Frye1, S D Izenberg, M D Williams, A Luterman.   

Abstract

From July 13, 1988, to May 14, 1995, 1585 patients with burns and no other injuries besides inhalation were treated; 4.5% did not survive. Artificial neural networks were trained on patient presentation data with known outcomes on 90% of the randomized cases. The remaining cases were then used to predict survival and length of stay in cases not trained on. Survival was predicted with more than 98% accuracy and length of stay to within a week with 72% accuracy in these cases. For anatomic area involved by burn, burns involving the feet, scalp, or both had the largest negative effect on the survival prediction. In survivors burns involving the buttocks, transport to this burn center by the military or by helicopter, electrical burns, hot tar burns, and inhalation were associated with increasing the length of stay prediction. Neural networks can be used to accurately predict the clinical outcome of a burn. What factors affect that prediction can be investigated.

Entities:  

Mesh:

Year:  1996        PMID: 8951542     DOI: 10.1097/00004630-199611000-00011

Source DB:  PubMed          Journal:  J Burn Care Rehabil        ISSN: 0273-8481


  7 in total

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3.  Artificial intelligence in the management and treatment of burns: a systematic review.

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6.  Predicting risk for trauma patients using static and dynamic information from the MIMIC III database.

Authors:  Evan J Tsiklidis; Talid Sinno; Scott L Diamond
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  7 in total

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