Schütte Friedrich, Friebe Sabrina, Böttcher Denny, Borger Michael Andrew, Uhlemann Madlen, Mayr Stefan G
Leibniz Institute of Surface Engineering (IOM), Leipzig, Germany.
Division of Surface Physics, Department of Physics and Earth System Sciences, University of Leipzig, Leipzig, Germany.
Commun Med (Lond). 2025 May 24;5(1):197. doi: 10.1038/s43856-025-00897-5.
A plethora of medical conditions, ranging from torn ligaments to aneurysmic blood vessels, are caused by failure of mechanically stressed biological tissues until rupture. Clearly prediction of the potential loci of tissue failure prior to rupture is highly desirable for prophylactic measures, preferentially in sufficiently early stages of the disease.
Mechanical heterogeneities are identified from local mechanical strains obtained from image sequences recorded during uniaxial tensile testing of reconstituted collagen (both, in experiments and finite element model (FEM) calculations) and horse aorta explants, respectively, as well as of the pulsating aorta using magnetic resonance imaging (MRI).
Within this work we present a comprehensive study on the biomechanical concept that percolated local mechanical strain heterogeneities can serve as valid indicators to predict the loci of tissue rupture already from straining behavior within the elastic regime. While we first experimentally validate the predictive capabilities of our strain percolation analysis for reconstituted rat tail collagen fibers and horse aorta explants, we unveil the structural origins of mechanical heterogeneities on the network level using FEM calculations based on digitized confocal laser scanning microscopy (CLSM) measurements. To demonstrate the diagnostic capabilities, we successfully predict potential occurrence and location of an aortic aneurysm in a patient with documented Marfan syndrome from MRI video sequences recorded of the pulsating aorta six years prior to surgery.
Detection of local mechanical heterogeneities and their percolation behavior bears predictive capabilities for tissue failure before it actually has occurred and thus promises large potential for diagnostics and therapy.
从韧带撕裂到动脉瘤血管等众多医学病症,都是由机械应力作用下的生物组织直至破裂失效所导致的。显然,对于预防性措施而言,在破裂前预测组织潜在的失效位点是非常有必要的,最好是在疾病的足够早期阶段。
分别从重构胶原蛋白单轴拉伸试验(包括实验和有限元模型(FEM)计算)以及马主动脉外植体的图像序列记录中获得的局部机械应变,以及利用磁共振成像(MRI)对搏动主动脉获得的局部机械应变,来识别机械不均匀性。
在这项工作中,我们对生物力学概念进行了全面研究,即渗透的局部机械应变不均匀性可以作为有效的指标,从弹性范围内的应变行为就预测组织破裂的位点。我们首先通过实验验证了应变渗透分析对重构大鼠尾胶原纤维和马主动脉外植体的预测能力,然后利用基于数字化共聚焦激光扫描显微镜(CLSM)测量的有限元计算,揭示了网络层面机械不均匀性的结构起源。为了证明诊断能力,我们从手术前六年记录的搏动主动脉的MRI视频序列中,成功预测了一名患有记录在案的马凡综合征患者主动脉瘤的潜在发生和位置。
检测局部机械不均匀性及其渗透行为对组织实际发生失效之前具有预测能力,因此在诊断和治疗方面具有巨大潜力。