Li Weiping, Bunch Connor M, Zackariya Sufyan, Patel Shivani S, Buckner Hallie, Condon Shaun, Walsh Matthew R, Miller Joseph B, Walsh Mark M, Hall Timothy L, Jin Jionghua, Stegemann Jan P, Deng Cheri X
Department of Biomedical Engineering, University of Michigan, Ann Arbor, MI, USA.
Department of Emergency Medicine, Henry Ford Hospital, Detroit, MI, USA.
Sci Rep. 2025 Feb 11;15(1):5124. doi: 10.1038/s41598-025-89737-z.
Disordered hemostasis associated with life-threatening hemorrhage commonly afflicts patients in the emergency department, critical care unit, and perioperative settings. Rapid and sensitive hemostasis phenotyping is needed to guide administration of blood components and hemostatic adjuncts to reverse aberrant hemostasis. Here, we report the use of resonant acoustic rheometry (RAR), a technique that quantifies the viscoelastic properties of soft biomaterials, for assessing plasma coagulation in a cohort of 38 bleeding patients admitted to the hospital. RAR captured the dynamic characteristics of plasma coagulation that were dependent on coagulation activators or reagent conditions. RAR coagulation parameters correlated with TEG reaction time and TEG functional fibrinogen, especially when stratified by comorbidities. A quadratic classifier trained on selective RAR parameters predicted transfusion of fresh frozen plasma and cryoprecipitate with modest to high overall accuracy. While these results demonstrate the feasibility of RAR for plasma coagulation and utility of a machine learning model, the relative small number of patients, especially the small number of patients who received transfusion, is a limitation of this study. Further studies are need to test a larger number of patients to further validate the capability of RAR as a cost-effective and sensitive hemostasis assay to obtain quantitative data to guide clinical-decision making in managing severely hemorrhaging patients.
与危及生命的出血相关的止血功能紊乱常见于急诊科、重症监护病房和围手术期的患者。需要快速且灵敏的止血表型分析来指导血液成分和止血辅助剂的使用,以逆转异常止血。在此,我们报告了使用共振声学流变学(RAR)这一量化软生物材料粘弹性特性的技术,对38名入院的出血患者的血浆凝血情况进行评估。RAR捕捉到了依赖于凝血激活剂或试剂条件的血浆凝血动态特征。RAR凝血参数与血栓弹力图反应时间和血栓弹力图功能性纤维蛋白原相关,尤其是在按合并症分层时。基于选择性RAR参数训练的二次分类器预测新鲜冰冻血浆和冷沉淀的输注,总体准确率从中等到较高。虽然这些结果证明了RAR用于血浆凝血的可行性以及机器学习模型的实用性,但患者数量相对较少,尤其是接受输血的患者数量较少,是本研究的一个局限性。需要进一步的研究来测试更多患者,以进一步验证RAR作为一种经济有效且灵敏的止血检测方法获取定量数据以指导严重出血患者临床决策的能力。