Department of Computer Science, University of Sheffield, Sheffield S1 4DP, UK.
Insigneo Institute for In Silico Medicine, Sheffield S1 3JD, UK.
Sensors (Basel). 2024 Mar 29;24(7):2198. doi: 10.3390/s24072198.
Electrical impedance spectroscopy (EIS) has been proposed as a promising noninvasive method to differentiate healthy thyroid from parathyroid tissues during thyroidectomy. However, previously reported similarities in the in vivo measured spectra of these tissues during a pilot study suggest that this separation may not be straightforward. We utilise computational modelling as a method to elucidate the distinguishing characteristics in the EIS signal and explore the features of the tissue that contribute to the observed electrical behaviour. Firstly, multiscale finite element models (or 'virtual tissue constructs') of thyroid and parathyroid tissues were developed and verified against in vivo tissue measurements. A global sensitivity analysis was performed to investigate the impact of physiological micro-, meso- and macroscale tissue morphological features of both tissue types on the computed macroscale EIS spectra and explore the separability of the two tissue types. Our results suggest that the presence of a surface fascia layer could obstruct tissue differentiation, but an analysis of the separability of simulated spectra without the surface fascia layer suggests that differentiation of the two tissue types should be possible if this layer is completely removed by the surgeon. Comprehensive in vivo measurements are required to fully determine the potential for EIS as a method in distinguishing between thyroid and parathyroid tissues.
电化学阻抗谱(EIS)已被提议作为一种有前途的非侵入性方法,用于在甲状腺切除术中区分健康的甲状腺和甲状旁腺组织。然而,之前在一项试点研究中报告的这些组织在体内测量的光谱相似性表明,这种分离可能并不简单。我们利用计算建模作为一种方法来阐明 EIS 信号中的区别特征,并探索导致观察到的电行为的组织特征。首先,开发了甲状腺和甲状旁腺组织的多尺度有限元模型(或“虚拟组织构建体”),并针对体内组织测量进行了验证。进行了全局敏感性分析,以研究两种组织类型的生理微观、中观和宏观组织形态特征对计算的宏观 EIS 光谱的影响,并探索两种组织类型的可分离性。我们的结果表明,表面筋膜层的存在可能会阻碍组织分化,但对没有表面筋膜层的模拟光谱的可分离性进行分析表明,如果外科医生完全切除该层,两种组织类型的分化应该是可能的。需要进行全面的体内测量,以充分确定 EIS 作为区分甲状腺和甲状旁腺组织的方法的潜力。