IEEE J Biomed Health Inform. 2023 Nov;27(11):5634-5643. doi: 10.1109/JBHI.2023.3299028. Epub 2023 Nov 7.
Although the concept of digital twin technology has been in existence for nearly half a century, its application in healthcare is a relatively recent development. In healthcare, the utilization of digital twin and data-driven models has proven to enhance clinical decision support, particularly in the treatment and assessment of chronic wounds, leading to improved clinical outcomes. This article proposes the implementation of a digital twin in the domain of healthcare, specifically in the management of chronic wounds, by leveraging artificial intelligence techniques. The digital twin is composed of data collection, data processing, and AI models dedicated to wound healing. A novel AI pipeline is utilized to track the healing of chronic wounds. The digital twin, serving as a virtual representation of the actual wound, simulates and replicates the healing process. Furthermore, the proposed wound-healing prediction model effectively guides the treatment of chronic wounds. Additionally, by comparing the actual wound with its digital twin, the system enables early identification of non-healing wounds, facilitating timely adjustments and modifications to the treatment plan. By incorporating a digital twin in healthcare, the proposed system enables personalized and tailored treatments, potentially playing a crucial role in proactive problem identification.
虽然数字孪生技术的概念已经存在了近半个世纪,但它在医疗保健领域的应用是一个相对较新的发展。在医疗保健中,数字孪生和数据驱动模型的利用已被证明可以增强临床决策支持,特别是在慢性伤口的治疗和评估方面,从而改善临床结果。本文提出在医疗保健领域实施数字孪生,特别是在慢性伤口管理中,利用人工智能技术。数字孪生由数据收集、数据处理和专门用于伤口愈合的 AI 模型组成。利用一种新颖的 AI 管道来跟踪慢性伤口的愈合情况。数字孪生作为实际伤口的虚拟表示,模拟并复制愈合过程。此外,所提出的伤口愈合预测模型可有效指导慢性伤口的治疗。此外,通过将实际伤口与其数字孪生进行比较,该系统可以及早识别未愈合的伤口,从而及时调整和修改治疗计划。通过将数字孪生纳入医疗保健,所提出的系统可以实现个性化和定制化的治疗,有可能在主动识别问题方面发挥关键作用。