一种用于评估患者伤口愈合情况的深度多模态方法 / A Deep Multi-Modal Method for Patient Wound Healing Assessment
1️⃣ 一句话总结
这篇论文提出了一种结合伤口图像和临床变量的深度多模态模型,旨在预测患者的伤口恶化风险及住院可能性,以帮助医生早期发现复杂情况并减少诊断时间。
Hospitalization of patients is one of the major factors for high wound care costs. Most patients do not acquire a wound which needs immediate hospitalization. However, due to factors such as delay in treatment, patient's non-compliance or existing co-morbid conditions, an injury can deteriorate and ultimately lead to patient hospitalization. In this paper, we propose a deep multi-modal method to predict the patient's risk of hospitalization. Our goal is to predict the risk confidently by collectively using the wound variables and wound images of the patient. Existing works in this domain have mainly focused on healing trajectories based on distinct wound types. We developed a transfer learning-based wound assessment solution, which can predict both wound variables from wound images and their healing trajectories, which is our primary contribution. We argue that the development of a novel model can help in early detection of the complexities in the wound, which might affect the healing process and also reduce the time spent by a clinician to diagnose the wound.
一种用于评估患者伤口愈合情况的深度多模态方法 / A Deep Multi-Modal Method for Patient Wound Healing Assessment
这篇论文提出了一种结合伤口图像和临床变量的深度多模态模型,旨在预测患者的伤口恶化风险及住院可能性,以帮助医生早期发现复杂情况并减少诊断时间。
源自 arXiv: 2602.09315