Abstract
Burn injury remains a major global health challenge, causing an estimated 180 000 deaths annually. The marked heterogeneity in burn severity, complications, and outcomes highlights the need for more objective and efficient evaluation strategies. Artificial intelligence (AI) has emerged as a promising approach to support clinical decision-making and improve patient care in this field. In this narrative review, we summarize the growing applications of AI in burn care, including the assessment of burn depth and total body surface area, monitoring of wound healing, prediction of postburn complications, and estimation of clinical outcomes. AI-based models have demonstrated strong performance in automating wound assessment, optimizing fluid resuscitation, and predicting complications such as sepsis, inhalation injury, and acute kidney injury. Furthermore, AI-driven prediction of mortality risk and hospital length of stay has shown potential to inform early interventions and improve resource allocation. Despite encouraging progress, most studies to date rely on small, single-center datasets and limited model validation, underscoring the need for larger, multi-institutional efforts, and standardized data sharing. Integrating AI into burn management holds great promise for enhancing diagnostic precision, forecasting outcomes, and personalizing treatment strategies. As these technologies advance, clinician familiarity and collaboration with AI tools will be critical to fully realize their potential in transforming burn care.