Spectral MD, Inc., Dallas, TX, USA.
Wake Forest University School of Medicine, Plastic and Reconstructive Surgery, Winston-Salem, NC, USA.
Burns. 2024 Feb;50(1):115-122. doi: 10.1016/j.burns.2023.07.005. Epub 2023 Jul 26.
Exposing a healthy wound bed for skin grafting is an important step during burn surgery to ensure graft take and maintain good functional outcomes. Currently, the removal of non-viable tissue in the burn wound bed during excision is determined by expert clinician judgment. Using a porcine model of tangential burn excision, we investigated the effectiveness of an intraoperative multispectral imaging device combined with artificial intelligence to aid clinician judgment for the excision of non-viable tissue.
Multispectral imaging data was obtained from serial tangential excisions of thermal burn injuries and used to train a deep learning algorithm to identify the presence and location of non-viable tissue in the wound bed. Following algorithm development, we studied the ability of two surgeons to estimate wound bed viability, both unaided and aided by the imaging device.
The deep learning algorithm was 87% accurate in identifying the viability of a burn wound bed. When paired with the surgeons, this device significantly improved their abilities to determine the viability of the wound bed by 25% (p = 0.03). Each time a surgeon changed their decision after seeing the AI model output, it was always a change from an incorrect decision to excise more tissue to a correct decision to stop excision.
This study provides insight into the feasibility of image-guided burn excision, its effect on surgeon decision making, and suggests further investigation of a real-time imaging system for burn surgery could reduce over-excision of burn wounds.
在烧伤手术中,暴露健康的创面床是移植皮肤的重要步骤,以确保移植物的存活并保持良好的功能结果。目前,在切除过程中烧伤创面床中非存活组织的去除是由临床专家判断决定的。本研究通过猪的切线烧伤切除模型,研究术中多光谱成像设备与人工智能相结合,辅助临床医生判断切除非存活组织的效果。
从热烧伤的连续切线切除中获取多光谱成像数据,并用于训练深度学习算法,以识别创面床中非存活组织的存在和位置。在开发算法后,我们研究了两位外科医生在没有和有成像设备辅助的情况下,估计创面床活力的能力。
深度学习算法在识别烧伤创面床的活力方面准确率为 87%。当与外科医生结合使用时,该设备可显著提高他们确定创面床活力的能力,提高 25%(p=0.03)。每次外科医生在看到人工智能模型输出后改变他们的决策时,总是从切除更多组织的错误决策转变为停止切除的正确决策。
本研究为图像引导烧伤切除的可行性、其对外科医生决策的影响提供了深入的了解,并表明进一步研究烧伤手术中的实时成像系统可以减少烧伤创面的过度切除。