Pamplin Jeremy C, Remondelli Mason H, Thota Darshan, Trapier Jeremy, Davis William T, Fisher Nathan, Kwon Paul, Quinn Matthew T
The Telemedicine and Advanced Technology Research Center, Frederick, MD, 21702 USA.
Department of Medicine, Department of Emergency and Operational Medicine, The Uniformed Services University of the Health Sciences, Bethesda, MD 20814, USA.
Mil Med. 2025 Jan 16;190(1-2):27-32. doi: 10.1093/milmed/usae249.
The potential impact of large-scale combat operations and multidomain operations against peer adversaries poses significant challenges to the Military Health System including large volumes of critically ill and injured casualties, prolonged care times in austere care contexts, limited movement, contested logistics, and denied communications. These challenges contribute to the probability of higher casualty mortality and risk that casualty care hinders commanders' forward momentum or opportunities for overmatch on the battlefield. Novel technical solutions and associated concepts of operation that fundamentally change the delivery of casualty care are necessary to achieve desired medical outcomes that include maximizing Warfighter battle-readiness, minimizing return-to-duty time, optimizing medical evacuation that clears casualties from the battlefield while minimizing casualty morbidity and mortality, and minimizing resource consumption across the care continuum. These novel solutions promise to "automate" certain aspects of casualty care at the level of the individual caregiver and the system level, to unburden our limited number of providers to do more and make better (data-driven) decisions. In this commentary, we describe concepts of casualty digital twins-virtual representations of a casualty's physical journey through the roles of care-and how they, combined with passive data collection about casualty status, caregiver actions, and real-time resource use, can lead to human-machine teaming and increasing automation of casualty care across the care continuum while maintaining or improving outcomes. Our path to combat casualty care automation starts with mapping and modeling the context of casualty care in realistic environments through passive data collection of large amounts of unstructured data to inform machine learning models. These context-aware models will be matched with patient physiology models to create casualty digital twins that better predict casualty needs and resources required and ultimately inform and accelerate decision-making across the continuum of care. We will draw from the experience of the automotive industry as an exemplar for achieving automation in health care and inculcate automation as a mechanism for optimizing the casualty care survival chain.
针对同等对手开展的大规模作战行动和多域作战的潜在影响,给军事卫生系统带来了重大挑战,包括大量危重伤员、在简陋救治环境下的较长救治时间、行动受限、后勤补给受阻以及通信中断。这些挑战增加了伤亡人员更高死亡率的可能性,以及伤亡救治阻碍指挥官前进势头或在战场上取得优势机会的风险。为实现理想的医疗成果,包括最大限度提高作战人员的战斗准备状态、尽量缩短重返岗位时间、优化医疗后送以便将伤员撤离战场同时尽量降低伤员的发病率和死亡率,以及在整个救治过程中尽量减少资源消耗,必须采用从根本上改变伤亡救治方式的新型技术解决方案及相关作战概念。这些新型解决方案有望在个体护理人员和系统层面 “自动化” 伤亡救治的某些方面,使我们数量有限的医疗人员能够减轻负担,从而能够做更多工作并做出更好(基于数据的)决策。在本评论中,我们描述了伤亡数字孪生体的概念——即通过护理角色对伤员身体救治过程的虚拟呈现——以及它们如何与关于伤员状况、护理人员行动和实时资源使用的被动数据收集相结合,从而在整个救治过程中实现人机协作并提高伤亡救治的自动化程度,同时保持或改善救治效果。我们实现战斗伤亡救治自动化的途径始于通过对大量非结构化数据进行被动数据收集,在现实环境中对伤亡救治情况进行映射和建模,为机器学习模型提供信息。这些情境感知模型将与患者生理模型相匹配,以创建能够更好预测伤员需求和所需资源的伤亡数字孪生体,并最终为整个救治过程中的决策提供信息并加速决策过程。我们将借鉴汽车行业在实现医疗保健自动化方面的经验,并将自动化作为优化伤亡救治生存链的一种机制加以应用。