- University Grenoble Alpes, CNRS, Grenoble INP, 3SR, Grenoble, France
Introduction: Modeling the mechanics of human vocal folds during phonation is a challenging task. This is partly due to the mechanics of their soft and highly anisotropic fibrous tissues, which undergoes finite strains with both elasticity and strain-rate sensitivity.
Methods: We propose a visco-hyperelastic micro-mechanical model capable of predicting the complex cyclic response of the vocal-fold fibrous tissues based on their histo-mechanical properties. For that purpose, we start from the hyperelastic micro-mechanical model proposed by Terzolo et al., J. Mech. Behav. Biomed. Mater. 128:105118 (2022). We include in the model non-linear viscoelastic contributions at the fibril scale to account for the dissipative and time-dependent response of vocal-fold tissues.
Results and Discussion: The relevance of the model is demonstrated and discussed through comparison with a comprehensive set of reference experimental data, within a wide range of loading modes, strains, and strain rates: cyclic and multi-axial loadings at finite strains (tension, compression and shear), along with small-amplitude oscillatory shear (SAOS) and large-amplitude oscillatory shear (LAOS) from low to high frequencies. This study elucidates how the viscoelasticity of vocal-fold tissues can result from combined time-dependent micro-mechanisms, such as the kinematics and the deformation of their fibril bundles, along with the mechanical interactions likely to develop among fibrils and the surrounding amorphous matrix.
1 Introduction
Human vocal folds are soft laryngeal structures with remarkable mechanical properties. During phonation, the vocal folds deform under the action of pulmonary airflow and laryngeal motions, sustaining vibrations in a wide range of amplitudes, frequencies (from 50 Hz to more than 1,500 Hz), and degrees of collisions. These multiple configurations involve complex and coupled multi-axial mechanical stresses (in tension, compression, and shear) that the tissues can withstand upon finite strains at various strain rates (Miri, 2014; Vampola et al., 2016). These properties are inherited from the composite and hierarchical structure of the vocal folds and surrounding laryngeal muscles. More specifically, the vocal folds are made up of two main load-bearing layers: the lamina propria, i.e., a loose connective tissue, and the vocalis muscle. Both layers are composed of networks of collagen, elastin, or skeletal muscle microfibrils, embedded in a soft hydrogel-like matrix (Figure 1, Hirano, 1974, Benboujja and Hartnick, 2021, Ferri-Angulo et al., 2023). However, to date, our knowledge is still insufficient to understand the relationship between the fibril-scale architecture of the vocal folds and their macroscale (tissue-scale) time-dependent performance.
Figure 1. Idealization of the vocal-fold layers. (a) The lamina propria (respectively the vocalis), displayed on microscopic image 1 (respectively 2), is considered a network of (orange) collagen fibrils [respectively (pink) myofibrils and (orange) collagen fibrils] embedded into a gel-like matrix. Fibrils are self-assembled as collagen fibril bundles (respectively myofibrils surrounded by a sheath of collagen fibrils). Each fibril (and its interaction with its neighboring) behaves as a non-linear visco-hyperelastic Zener model. (b) The fiber bundle microstructure of each layer is considered a periodic network of four orientated fiber bundles (brown) connected at one node
This is mainly due to the difficulty of characterizing vocal-fold mechanics at high physiological strain rates. Although recent progress has been made in time-resolved 3D micro-imaging of fast-vibrating structures (Klos et al., 2024), to date, the characterization of the mechanical behavior of vocal-fold tissues at high frequencies (e.g., from 100 Hz to 1 kHz) is still limited to the larynx or vocal-fold scale. High-speed videostroboscopy, used in clinical voice assessment, enabled the quantification of the time-decay of vocal-fold vibrations at phonation offset (DeJonckere and Lebacq, 2020; Radolf et al., 2022), and of their resonance properties obtained through external excitation of the larynx (Švec et al., 2000). Such in vivo approaches allowed the measurement of an average damping ratio
To better analyze these data and unveil the underlying mechanisms, several theoretical approaches were adopted. Some phenomenological approaches were first developed (Zhang et al., 2006; Zhang et al., 2007; Zhang et al., 2009). However, the constitutive parameters of these models can hardly be related to relevant histological descriptors of the vocal tissues. Since 2010, a few authors have purposely proposed micro-mechanical models, including the architecture of vocal tissues, to provide new insights into voice biomechanics. Two modeling routes have been adopted:
(i) Poroelastic formulations have been developed to describe the fluid/solid phases of vocal tissues and to predict their dynamics (Miri et al., 2014; Tao et al., 2009; Scholp et al., 2020). However, such approaches rely on parameters for which experimental measurements (e.g., permeability and in situ observations of fluid dynamics) are still lacking.
(ii) Other authors have idealized the architecture of the fibrous networks of the lamina propria and the vocalis (e.g., using structural descriptors such as the fibril volume fraction, diameter, and preferred orientations) to derive their mechanical contribution from microstructural and micro-mechanical measurements (Miri et al., 2013; Kelleher et al., 2013b; Terzolo et al., 2022). This enabled the identification of the progressive elongation and reorientation of collagen fibrils and myofibrils, along with mechanical interactions between micro-constituents, which modulate the non-linear and anisotropic mechanics of vocal tissues (Terzolo et al., 2022). However, these micro-mechanical formulations have been developed within a general hyperelastic framework, thus neglecting the important dissipative and time-dependent mechanisms likely to develop during the vibrations of vocal tissues.
Therefore, this work aims to provide a multiscale mechanical model capable of reproducing the non-linear macroscopic visco-hyperelastic mechanical behavior of the vocal fold layers (i.e., lamina propria and vocalis) across a range of frequencies and strains, based on the knowledge of their architecture and mechanics at the fibril scale. To achieve this, we introduce microstructural time-dependent effects to the hyperelastic formulation developed by Terzolo et al. (2022). Based on histological and biomechanical data available in the literature, covering a wide range of loading modes, strain levels, and rates, the relevance of the model for predicting the time-dependent, multiscale mechanics of the vocal-fold layers is highlighted and discussed.
2 Formulation of the micro-mechanical model
2.1 Structural assumptions
The structural assumptions of the model are identical to those reported by Terzolo et al. (2022). In brief, both the lamina propria and the vocalis are considered incompressible composite materials made of a gel-like matrix (composed of cells, elastin, and ground substance for the lamina propria; of elastin, proteoglycans, and glycoproteins for the vocalis) reinforced by a network of connected and oriented fibril bundles (Figure 1):
2.2 Micro-mechanical assumptions
Kinematics: When subjected to a macroscopic transformation gradient
Mechanics of the matrix: Regardless of the considered tissue, the mechanics of their matrix is modeled as an incompressible hyperelastic neo-Hookean medium, with a strain energy function
Mechanics of the fibrils: The stretch (or the compression) of each fibril of a bundle
where
when the fibril is stretched; only the first term of the bracket is kept when the fibril is compressed. This expression involves a curvature parameter
Moreover, in Equation 1,
where
where
Steric interactions between fibril bundle: For both tissues, once the distance
where the hyperelastic term
where
In analogy with Equation 4, the viscosity
where
2.3 Upscaling formulation: from micro- to macroscale mechanics
Given the structural and micro-mechanical features mentioned above, regardless of the tissue concerned, the macroscopic Cauchy stress tensor
where
and
for the lamina propria, where
and
for the vocalis. Thus, as an oversimplified representation, the proposed micro-mechanical model can be considered the imbrication of two anisotropic networks of non-linear Zener models embedded in an isotropic hyperelastic matrix (Figure 1): one for the mechanics of fibril bundles and another for their steric interactions. The mechanical response of the lamina propria (respectively vocalis) depends on 19 (respectively 25) histological and micro-mechanical parameters to be determined:
3 Model identification
3.1 Experimental database
The relevance of the model was evaluated by comparing its prediction with experimental data from the literature:
3.2 Optimization procedure
A protocol similar to that adopted by Terzolo et al. (2022) was applied to obtain optimized sets of histo-mechanical parameters:
Table 1. Optimized histological parameters for samples
A non-linear constraint optimization process based on a least-squared approach was used to minimize the discrepancies between the model prediction and the experimental macroscale stress–strain curves, as applied by Bailly et al. (2012) and Terzolo et al. (2022). The time integration of the implicit non-linear Maxwell differential Equations 3, 7 was achieved using the ode15i solver in
4 Results and discussion
4.1 Relevance of histo-mechanical parameters
The set of optimized histological parameters used to reproduce the macroscopic rheological data during SAOS (Chan and Rodriguez, 2008), LAOS (Chan, 2018), and multi-axial loadings (Cochereau et al., 2020) are reported in Table 1. Apart from the remarks already stated by Terzolo et al. (2022) regarding the relevance of these parameters for
In addition, the optimized micro-mechanical parameters used to reproduce the macroscopic rheological data during SAOS (Chan and Rodriguez, 2008), LAOS (Chan, 2018), and multi-axial loadings (Cochereau et al., 2020) are reported in Tables 2, 3 for hyperelastic and viscoelastic contributions, respectively. Terzolo et al. (2022) explained the relevance of the hyperelastic parameters in the cases of the
4.2 Relevance of the micro-mechanical model for SAOS
A comparison between the model predictions at macroscale and the SAOS experimental data is provided in Figure 2. In this figure, graphs (a) and (b) show the evolution of the shear storage and loss moduli
Figure 2. Experimental data (marks) vs. macroscale model predictions (lines) obtained for sample
4.3 Relevance of the micro-mechanical model for LAOS
In Figure 3a, we have reported a collection of Lissajous stress–strain curves predicted by the model. These curves are compared with those in LAOS experiments obtained at a frequency
Figure 3. LAOS results: (a) macroscale stress–strain data vs. model predictions obtained for sample
4.4 Relevance of the micro-mechanical model for finite strain multi-axial cyclic loadings
Macroscopic stress–strain predictions are compared with the reference experimental data in Figure 4 (respectively Figure 5), for the lamina propria and vocalis samples
Figure 4. Macroscopic viscoelastic stress–strain curves of vocal-fold sublayers under multi-axial cyclic loadings. Experimental data vs. model predictions obtained for the lamina propria sample
Figure 5. Same as Figure 4 for samples
Figure 6. Evolution of multiscale descriptors for the lamina propria
Figure 7. Evolution of multiscale descriptors for the lamina propria sample
The results for the first loading cycle are discussed below for each loading mode:
Finally, the relevance of the visco-hyperelastic model to simulate the sequential series of 10 load–unload cycles and the tissue response as a function of load history is assessed. Figure 8 shows the comparison of the theoretical predictions with the reference cyclic data for the three loading modes. If the decrease in stress hysteresis is qualitatively well captured by the model once the first cycle has been completed in tension, compression, and shear, the predictions fail to simulate the progressive decrease in peak stresses measured after repeated loading paths, along with the increase in residual strains after repeated unloading paths, which are particularly observed in tension and compression. According to the model, a steady state is reached practically after the first load/unload sequence, whereas the stabilized behavior is only really observed experimentally after the
Figure 8. Same as in Figure 4, albeit for 10 cycles: experimental data vs. model predictions. The experimental 10th cycle is displayed in green symbols for the lamina propria sample
4.5 Relevance of the model for predicting future patho/physiological variations and assisting biomedical developments
The micro-mechanical model developed in this work has been calibrated to reproduce the microstructural specificities and multiscale behavior of healthy human vocal-fold tissues, combining a wide range of histo-mechanical measurements collected from the available literature. By adjusting these input data, it could be adapted without major difficulties to predict the mechanics of pathological human vocal tissues (Hantzakos et al., 2009; Finck, 2008), animal vocal tissues (Li et al., 2024), or (bio)composites developed to replace/reconstruct the fibrous architecture and vibro-mechanical performance of the vocal folds after surgery (Heris et al., 2012; Li et al., 2016; Jiang et al., 2019; Latifi et al., 2018; Ravanbakhsh et al., 2019; Ferri-Angulo et al., 2023).
The model could also be used to predict the evolution of the mechanical properties of the same tissue following an alteration in its microstructural arrangement, due, for example, to (i) its growth and remodeling with age [by simulating, e.g., a progressive decrease in the volume fraction of elastin, an increase in that of collagen, and muscle atrophy (Roberts et al., 2011; Kuhn, 2014; Li et al., 2024)], (ii) scarring lesions [by simulating fibrosis and an increase in the collagen content, along with changes in fibril tortuosity compared to the healthy case (Heris et al., 2015; Li et al., 2016)], (iii) the appearance of a lesion following phonotrauma [by simulating damage mechanisms likely to occur at the fibril’s level (Miller and Gasser, 2022)], or (iv) a therapeutic treatment [by simulating the addition of a soft hydrogel to the matrix composite, for example (Li et al., 2016; Mora-Navarro et al., 2026)].
To better understand the impact of these histological variations on vocal-fold vibrations at the larynx level (in the case of native tissue but also injured, repaired, or replaced tissue), this original constitutive law should be implemented in a finite element code reproducing the vocal folds in their 3D anatomical geometry, as in current 3D phonation models (Döllinger et al., 2023). In doing so, microstructure-based simulations could improve the currently limited knowledge of the links between the specific microarchitecture of the vocal folds and their unique macroscale vibratory performance. Moreover, they should guide the design of fiber-reinforced biomaterials currently under development for functional voice restoration.
5 Conclusion
A better understanding of human phonation requires an in-depth study of the viscoelastic properties of vocal folds. To this end, this study proposes to enrich a recent 3D micro-mechanical model of vocal-fold tissues, which was hitherto capable of predicting their non-linear, elastic, and anisotropic mechanical behavior at various spatial scales (micro to macro) (Terzolo et al., 2022). This was achieved by adding viscoelastic mechanisms at the scale of their collagen fibril and myofibril bundles. These improvements now enable the model to capture the viscoelastic properties of vocal-fold tissues from small to finite strains, such as their non-linear strain-rate sensitivity—on which their damping and oscillation onset properties strongly depend; their stress-hysteretic response, and the inelastic deformations typically measured during cyclic loading. In addition, the model allows the microstructural rearrangements to be predicted, which are often very challenging to identify experimentally.
This model was successfully used to reproduce various sets of ex vivo data available in the literature and complement them with original theoretical data, providing specific micro-mechanism scenarios for each. This identification was carried out for a wide variety of loading conditions at different rates: low-frequency cyclic tension, compression, and shear in large deformations; and high-frequency oscillatory shear from small to large deformations (SAOS for the linear viscoelasticity regime and LAOS for the non-linear viscoelasticity regime). The model predictions are in quantitative agreement with macroscopic experimental trends and clearly highlight the key impact of microscopic histo-mechanical descriptors on vocal-fold dynamics, such as the volume fraction of collagen fibrils in the cover, their tortuosity at rest, their mechanics, and their interactions. This micro-mechanical model can be implemented in finite element codes to further simulate the transient dynamics of vocal folds with relevant histo-mechanical properties.
However, some model limitations should be improved. For example, coarse-grained atomistic/molecular simulations would probably provide relevant information to strengthen the physical links between the time-dependent nanostructural rearrangements and the phenomenological approach proposed herein at the fibril scale. Furthermore, the model does not allow the Mullins-like effects commonly observed in vocal tissues to be adequately described: combined with additional experiments focused on this aspect, the model could be improved based on formulations proposed for other materials, such as structured elastomers (Rebouah and Chagnon, 2014; Rebouah et al., 2017).
Data availability statement
The raw data supporting the conclusions of this article will be made available by the authors, without undue reservation.
Ethics statement
The studies involving humans were approved by the French ethical and safety laws related to body donation and the Institutional Review Board of the University of Texas Southwestern Medical Center (Willed Body Program). The studies were conducted in accordance with the local legislation and institutional requirements. Written informed consent for participation was not required from the participants or the participants’ legal guardians/next of kin in accordance with the national legislation and institutional requirements.
Author contributions
AT: Investigation, Methodology, Software, Writing – original draft, Writing – review and editing, Formal analysis, Visualization. LB: Conceptualization, Investigation, Funding acquisition, Methodology, Project administration, Supervision, Validation, Writing – review and editing, Formal Analysis, Resources. LO: Conceptualization, Investigation, Methodology, Supervision, Validation, Writing – review and editing, Formal Analysis.
Funding
The authors declare that financial support was received for the research and/or publication of this article. This work was funded by the ANR MicroVoice (Grant No. ANR-17-CE19-0015-01) and the LabEx Tec21 (Investissements d’Avenir—grant agreement no. ANR-11-LABX-0030). The 3SR Laboratory is part of the PolyNat Carnot Institute (Investissements d’Avenir—grant agreement no. ANR16-CARN0025-01).
Acknowledgements
The authors would like to thank Nathalie Henrich Bernardoni (CNRS, GIPSA-lab, Grenoble) for her helpful assistance in this work.
Conflict of interest
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
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The authors declare that no Generative AI was used in the creation of this manuscript.
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Supplementary material
The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fbioe.2025.1670567/full#supplementary-material
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Keywords: vocal folds, fibril, 3D microstructure, multiscale mechanical modeling, viscoelasticity, multi-axial loadings, SAOS, LAOS
Citation: Terzolo A, Bailly L and Orgéas L (2026) A fibril-scale visco-hyperelastic model for the mechanics of vocal-fold tissues. Front. Bioeng. Biotechnol. 13:1670567. doi: 10.3389/fbioe.2025.1670567
Received: 21 July 2025; Accepted: 31 October 2025;
Published: 05 January 2026.
Edited by:
Andrea Malandrino, Universitat Politecnica de Catalunya, SpainReviewed by:
Riccardo Gottardi, University of Pennsylvania, United StatesSean Peterson, University of Waterloo, Canada
Copyright © 2026 Terzolo, Bailly and Orgéas. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
*Correspondence: Lucie Bailly, bHVjaWUuYmFpbGx5QDNzci1ncmVub2JsZS5mcg==
Alberto Terzolo