Department of Mathematics and Computer Science, Universität Leipzig, Leipzig, Germany.
PLoS One. 2013 Jul 1;8(7):e62913. doi: 10.1371/journal.pone.0062913. Print 2013.
Quantifying changes in partial resistances of epithelial barriers in vitro is a challenging and time-consuming task in physiology and pathophysiology. Here, we demonstrate that electrical properties of epithelial barriers can be estimated reliably by combining impedance spectroscopy measurements, mathematical modeling and machine learning algorithms. Conventional impedance spectroscopy is often used to estimate epithelial capacitance as well as epithelial and subepithelial resistance. Based on this, the more refined two-path impedance spectroscopy makes it possible to further distinguish transcellular and paracellular resistances. In a next step, transcellular properties may be further divided into their apical and basolateral components. The accuracy of these derived values, however, strongly depends on the accuracy of the initial estimates. To obtain adequate accuracy in estimating subepithelial and epithelial resistance, artificial neural networks were trained to estimate these parameters from model impedance spectra. Spectra that reflect behavior of either HT-29/B6 or IPEC-J2 cells as well as the data scatter intrinsic to the used experimental setup were created computationally. To prove the proposed approach, reliability of the estimations was assessed with both modeled and measured impedance spectra. Transcellular and paracellular resistances obtained by such neural network-enhanced two-path impedance spectroscopy are shown to be sufficiently reliable to derive the underlying apical and basolateral resistances and capacitances. As an exemplary perturbation of pathophysiological importance, the effect of forskolin on the apical resistance of HT-29/B6 cells was quantified.
量化体外上皮屏障的部分电阻变化在生理学和病理生理学中是一项具有挑战性和耗时的任务。在这里,我们证明通过结合阻抗谱测量、数学建模和机器学习算法,可以可靠地估计上皮屏障的电特性。传统的阻抗谱通常用于估计上皮电容以及上皮和上皮下电阻。在此基础上,更精细的双路径阻抗谱使得进一步区分细胞间和旁细胞电阻成为可能。在下一步中,细胞间特性可以进一步分为顶端和基底外侧成分。然而,这些推导值的准确性在很大程度上取决于初始估计的准确性。为了在估计上皮下和上皮电阻时获得足够的准确性,人工神经网络被训练来从模型阻抗谱中估计这些参数。通过计算创建了反映 HT-29/B6 或 IPEC-J2 细胞行为以及所用实验设置固有数据分散的光谱。为了证明所提出的方法的可靠性,使用建模和测量的阻抗谱评估了估计的可靠性。通过这种神经网络增强的双路径阻抗谱获得的细胞间和旁细胞电阻被证明足够可靠,可以推导出潜在的顶端和基底外侧电阻和电容。作为病理生理学重要性的示例干扰,定量了 forskolin 对 HT-29/B6 细胞顶端电阻的影响。