Real Time Battlefield Casualty Care Decision Support

C. Nemeth, A. Amos-Binks, G. Rule, Dawn Laufersweiler, Natalie Keeney, Yuliya Pinevich, V. Herasevich
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引用次数: 1

Abstract

Tactical combat casualty care (TCCC) involves care for casualties in armed conflict from one’s own service (e.g., U.S. Marine Corps), other services (i.e., U.S. Army, Air Force,), allied forces, adversaries, and civilians. To minimize injury and preserve life, medics perform TCCC which includes casualty retrieval, stabilization and documentation, transport, triage, and treatment. In future scenarios, delays in evacuation are expected to require extended care including prolonged field care (PFC) over hours to days, increasing the potential for complications such as bloodstream infection (sepsis). Most medics have only simple equipment and essential medications and will need assistance at point of care to make decisions on how to treat more complex cases and perform procedures in an austere setting.We describe a project for the Defense Health Agency (DHA) over 3 years to develop and evaluate the Trauma Triage Treatment and Training Decision Support (4TDS), a real-time decision support system (DSS) to monitor casualty health. The operating 4TDS prototype uses the Samsung smart phone and tablet certified for use in the Department of Defense (DoD) Nett Warrior program. Connection to a simple VitalTag (Pacific Northwest National Laboratory, Richland, WA) vital signs monitor placed on a casualty at point of injury (PoI) will stream patient data including heart rate, respiration rate, peripheral oxygen saturation (SpO2), and diastolic and systolic blood pressure. Nurses, technicians, and physicians can use the tablet to display an expanded data set including lab values while providing care at a Battalion Aid Station (BAS) and Field Hospital (FH).4TDS includes a Machine Learning (ML) model to indicate shock probability, risk of internal hemorrhage, and probability of the need for a massive transfusion. The shock model was trained on Mayo Clinic Intensive Care Unit (ICU) patient data, then evaluated in a 6-month “silent test” comparing shock prediction with actual clinician diagnoses. The model only uses 6 vital signs, which is suited to battlefield care, while other published results include lab tests (e.g., lactate), and produces a Receiver Operator Characteristic Curve (ROC) of 0.83 for shock detection. The model only decreases by 0.05 90 minutes, identifying shock probability well before its onset. Medic reviews indicate a 30-minute advanced warning would be more than sufficient to initiate treatment.Medics who provide PFC may need to perform life-critical procedures such as shock management, cricothyroidotomy intubation, and transfusion that may not have been used for an extended period. 4TDS includes refresher training in how to perform such a procedure, as well as whether to perform the procedure. Usability assessments with healthcare providers from the Army, Navy, and Air Force at Joint Base San Antonio, TX have demonstrated 4TDS and its capabilities align with TCCC practice. This work is supported by the US Army Medical Research and Materiel Command under Contract No. W81XWH‐15‐9‐0001.
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实时战场伤亡护理决策支持
战术战斗伤亡护理(TCCC)涉及对武装冲突中来自己方军种(如美国海军陆战队)、其他军种(如美国陆军、空军)、盟军、对手和平民的伤亡人员的护理。为了尽量减少伤害和保护生命,医务人员执行TCCC,包括伤员检索、稳定和记录、运输、分诊和治疗。在未来的情况下,预计撤离延误需要延长护理时间,包括延长现场护理时间(PFC),时间长达数小时至数天,增加了血液感染(败血症)等并发症的可能性。大多数医务人员只有简单的设备和基本的药物,并且在护理点需要帮助来决定如何治疗更复杂的病例和在严峻的环境中执行程序。我们描述了国防卫生局(DHA)在3年内开发和评估创伤分诊治疗和培训决策支持(4TDS)的项目,这是一个实时决策支持系统(DSS),用于监测伤员健康。正在运行的4TDS原型机使用了三星智能手机和平板电脑,该手机和平板电脑已获得美国国防部“奈特勇士”项目的认证。连接一个简单的VitalTag(太平洋西北国家实验室,Richland, WA)生命体征监测仪,放置在伤员受伤点(PoI)上,将传输患者数据,包括心率、呼吸率、外周氧饱和度(SpO2)、舒张压和收缩压。护士、技术人员和医生在营救护站(BAS)和野战医院(FH)提供护理时,可以使用平板电脑显示扩展的数据集,包括实验室值。4TDS包括一个机器学习(ML)模型来指示休克概率、内出血风险和需要大量输血的概率。休克模型根据梅奥诊所重症监护病房(ICU)患者数据进行训练,然后通过为期6个月的“沉默测试”对休克预测与实际临床诊断进行比较。该模型仅使用6个生命体征,适用于战场护理,而其他已发表的结果包括实验室测试(例如乳酸),并产生0.83的接收器操作员特征曲线(ROC)用于冲击检测。模型在90分钟内仅下降0.05,能较好地在冲击发生前识别出冲击概率。医学评估表明,提前30分钟发出警告就足以启动治疗。提供PFC的医务人员可能需要执行生命危重的程序,如休克管理、环甲状腺切开术插管和可能长期未使用的输血。tds包括关于如何执行该程序以及是否执行该程序的进修培训。在德克萨斯州圣安东尼奥联合基地,对来自陆军、海军和空军的医疗保健提供者进行可用性评估,证明了4TDS及其与TCCC实践一致的能力。这项工作得到了美国陆军医学研究和物资司令部的支持。W81XWH量15 0001量。
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