Abstract
Cells exert, sense, and respond to physical forces through an astounding diversity of mechanisms. Here we review recently developed tools to quantify the forces generated by cells. We first review technologies based on sensors of known or assumed mechanical properties, and discuss their applicability and limitations. We then proceed to draw an analogy between these human-made sensors and force sensing in the cell. As mechanics is increasingly revealed to play a fundamental role in cell function we envisage that tools to quantify physical forces may soon become widely applied in life-sciences laboratories.
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Main
The study of the interplay between physical forces and cell function dates back to well before the term 'mechanobiology' was coined. In 1917, D'Arcy Thompson published his celebrated work On Growth and Form, in which he discussed how physical forces contribute to determining the size and shape of living organisms1. Even earlier there was evidence that cells sense and adapt to physical forces; for instance, that shear stress controls the size of blood vessels2 and that mechanical loading causes bone to thicken3. Early studies also pioneered tools to apply and measure physical forces in biology at the cellular and subcellular levels. Also in 1917, Chambers developed a micro-needle system to conclude that churning a fertilized sand dollar egg resulted in the reversible disappearance of the aster4. A few decades later, Crick measured material properties of the cytoplasm by developing magnetocytometry tools to twist and drag internalized magnetic particles5.
Mechanobiology is thus not a new field but its far-reaching implications and the unexpected diversity of mechanisms have placed it at the forefront of current research6. We know today that cells probe their environment through physical forces sufficient to differentiate mesenchymal stem cells7, initiate transcriptional programs8, drive morphogenesis9, direct cell migration10, and control malignancy11. The mechanisms by which forces mediate these responses have been traditionally attributed to one-step mechanochemical switches located at cell–extracellular matrix (ECM) adhesions12, cell–cell adhesions13, the plasma membrane14, and the nucleus15. In analogy with ligand–receptor binding, activation of the mechanochemical switch would trigger a signalling cascade of pure biochemical nature that would leave no downstream role for mechanics. In contrast, current evidence indicates that there is constant cross-talk between biochemistry and mechanics during mechanotransduction16,17. Thus, a full understanding of mechanobiology requires the development of tools to measure cellular forces over multiple time and length scales.
We can intuitively understand the concept of force in cell biology in terms of cellular push and pull but we cannot measure force in cell biology as we measure length or time. In fact, we cannot measure force directly in any field of science because Newton's second law defines force as a quantity that can only be indirectly assessed through the direct measurement of other mechanical quantities, such as the material properties and deformations of physical bodies. Consequently, we may only quantify force through force measurement systems, which are made up of a force sensor and an associated measuring instrument. The force sensor is a physical device that receives a physical stimulus related to force as the input and transduces it to a physical quantity that is directly measurable through the associated instrument. The most familiar force measurement system may be Newton's dynamometer, which is essentially a spring scale (the force sensor) that transduces the weight of a mass into a length deformation that can be read through a simple ruler (the associated instrument).
Based on analogous principles, biophysicists have developed systems devised to work as force sensors in cell biology that transduce force into measurable physical quantities such as a mechanical deformation or light. Direct measurement of these physical quantities ultimately allows the quantification of force once the material properties of the force sensor are either known or assumed. In the first section of this Review, we focus on techniques based on quantifying the extent to which cellular forces deform inert materials of known mechanical properties (Fig. 1a–c,e–l; Table 1). In the second section, we review techniques that require assumptions of material properties, and we discuss their range of applicability (Fig. 1d,m–t; Table 1). Finally, we draw an analogy between force sensing in the cell and human-made tools to probe physical forces (Table 2). This Review focuses on techniques to quantify forces actively generated by cells, thus excluding techniques in which forces are exogenously applied. Hence, we do not discuss magnetic tweezers, optical tweezers, stretchable substrates, fluid flow, or micropipette aspiration, which are often used to either probe cellular responses to force or to measure mechanical quantities such as cell stiffness, rheology, adhesion, surface friction, and fracture stress. We refer the reader to excellent recent reviews on these methods18,19,20.
Force sensors based on known material properties
We begin by reviewing technologies in which forces are quantified from the deformation of materials of known mechanical properties. These technologies provide an exact readout within measurement noise, and they operate over several orders of magnitude in length, time and force; their detection range spans the few piconewtons required to quickly unfold a cryptic binding site, up to the hundreds of nanonewtons required to slowly remodel epithelial tissue.
Traction microscopy. The earliest technique to measure cellular forces is traction microscopy (Fig. 1a–c; Table 1)21. Traction microscopy maps stresses (force per unit area) at the cell surface by measuring deformations of the surrounding material. Virtually every adherent cell that has ever been probed exerts a contractile force upon its underlying 2D ECM-coated substrate. If the substrate is sufficiently soft, the applied force will deform it to a measurable extent. Traction microscopy is based on measuring this deformation by comparing two images of fiduciary markers embedded in the substrate or attached to its surface. The first image is obtained when the cell is applying a force on the substrate (loaded image) and the second when the substrate is fully relaxed (unloaded image or reference image). Recent implementations of this technique involve printing fluorescent markers with regular spacing on the gel surface to avoid the need for a reference image22,23. Image-processing algorithms compare the loaded and unloaded images to provide a displacement map (also called displacement field) of the deformed gel, that is, a map that shows the extent to which each pixel of the substrate has shifted from its relaxed position as a consequence of the force exerted by the cell. Typical substrates used for traction microscopy include polyacrylamide or silicon-based gels. Both types of gels are linear elastic and optically transparent, their elasticity can be tuned over several orders of magnitude, and they can be readily coated with ECM7,23,24,25. A variety of computational methods can be used to retrieve the traction maps from the displacement field21,26,27,28,29,30. Over time, traction microscopy has been dramatically improved in terms of computation time26 and spatial resolution24,31,32,33.
Traction microscopy was originally conceived to compute the 2D force field exerted by a single cell on a 2D substrate21,26 but has been extended to multicellular clusters28 and to 2D substrates of arbitrary stiffness profiles10. The 2D approximation is valid in many experimental conditions but cells generally exert 3D forces on 2D substrates, and some cell types exhibit a normal traction component comparable to the in-plane one34. 3D forces on 2D substrates (often referred to as 2.5D tractions) can be computed using the same principle described above, provided that the displacement field of the substrate is measured in 3D35,36,37.
A far more complicated problem is the computation of 3D traction fields in cells embedded in 3D ECMs. Unlike the 2D and 2.5D cases in which the deformable substrate is tightly engineered by the experimentalist, the 3D ECM is continuously synthesized, degraded, and remodelled by the cell, which precludes a straightforward interpretation of a deformation field in terms of a force field. For example, it is unclear whether a large deformation in the vicinity of the cell is caused by a high traction or by local ECM degradation. Moreover, physiological ECMs are composed of fibres with highly non-linear force-extension relationships, and some of these fibres extend whereas others buckle in the same microscopic volume element. To avoid the issues associated with non-linearity and non-affinity of the ECM, Legant et al. computed 3D traction fields using synthetic, matrix metalloprotease (MMP)-cleavable polyethylene glycol (PEG) gels rather than native ECM38. Alternatively, Steinwachs et al. developed a continuum approach that incorporates non-affine properties of the ECM39. The applicability of these 3D traction approaches is still far from that of 2D traction microscopy, but they have already hinted at distinct mechanical behaviour in a 3D compared with a 2D environment. For example, force applied by MDA-MB-231 breast carcinoma cells appears to be independent of ECM concentration and stiffness in 3D39.
Traction microscopy is experimentally straightforward in its simplest applications but its popularity has been limited by the need of advanced software, a limitation now mitigated by the availability of open source codes and ImageJ plugins40,41,42. Nonetheless, there are important experimental caveats. For example, the computational problem of exactly determining the traction field from the displacement field is said to be mathematically ill-posed. This means that the addition of a small amount of measurement noise in the displacement field can lead to a large error in the traction field42. Thus, high-quality displacement fields are essential and the appropriate data handling through filtering and regularization must be carefully considered for each application. In addition, non-linear and poroelastic models of hydrogel substrates should be progressively incorporated into routine algorithms to improve data quality at large deformations.
Cantilevers and micropillars. As an alternative to deformable substrates, contractile surface forces are often measured using cantilevers (Fig. 1e–h; Table 1). Cantilevers are elongated structures with a constant cross-section made of an elastic material that are attached to a stiff substrate at one end and free at the other end. A force exerted on the free end causes cantilever bending and, if sufficiently small compared with cantilever length, cantilever displacement and force are proportional. Thus, cell forces can be readily measured from displacements if the proportionality constant (spring constant) is known. Spring constants can be calculated for simple shapes using elasticity theory if the length, shape and stiffness of the material are known or calibrated, for instance by tracking cantilever thermal fluctuations43. Microfabrication techniques allow the production of arrays of cylindrical micrometre-scale cantilevers called micropillars, usually made of polydimethylsiloxane (PDMS)44,45,46,47,48 or polyacrylamide49,50, that serve as cellular substrates (Fig. 1e–f). If the pillars are spaced closely enough and their apical surface is selectively coated with ECM, cells attach and exert forces only at the pillar tips. Thus, cell forces can be measured from pillar displacements and mapped at the subcellular level.
This approach has a few advantages over traction microscopy based on continuous substrates. First, displacements can be calculated from undeflected pillar positions in the uniform grid, without requiring a reference image. Second, displacements of a given pillar only depend on the force applied to that pillar, making force calculation simpler and less computationally intensive. Finally, the dependence of stiffness on micropillar geometry allows the generation of heterogeneous mechanical environments without altering material properties51, and abrupt changes in pillar shape can generate steep rigidity gradients52. Furthermore, magnetic actuators can be inserted in individual pillars to provide additional mechanical stimuli53,54. However, there are also disadvantages. The discrete, rather than uniform, adhesive surface presented to cells greatly influences the morphology of cell–ECM adhesions. Although less of an issue on pillars with sub-micrometre diameter47,48, the recruitment of integrins and adhesion proteins will be affected by the ECM patterning imposed by the pillars. Additionally, even if some approaches have been proposed55, calculating an effective stiffness of such substrates for comparison with physiological conditions is not straightforward. Finally, fabrication technologies restrict the stiffness range (approximately one order of magnitude) compared with continuum substrates (more than two orders), limiting the ability of micropillars to reproduce the wide variations in stiffness found among different types of in vivo tissues.
While generally operating at the cellular and tissue levels rather than at the subcellular one, other approaches consist of attaching cells to cantilevers in atomic force microscopes (AFMs)56, as well as optical57,58 or microelectromechanical systems (MEMS)59 approaches to measure forces. Despite the loss in spatial resolution, those devices often have the advantage of a precise, real-time conversion of cantilever deflection and force into an electric signal, which also enables the implementation of force feedback systems (Fig. 1g–h).
Droplets and inserts. Traction microscopy and cantilever-based methods are useful to measure cell-generated surface forces in vitro but they are not applicable in vivo. A new approach that overcomes this limitation is the insertion of deformable materials of known mechanical properties in the tissue of interest. This method was first demonstrated using microinjected micrometre-sized oil droplets of known surface tension coated with adhesion receptors60 (Fig. 1i,j). Reconstruction of the droplet shape through standard imaging techniques provides a measurement of the anisotropy of the local stresses in the tissue. Combination of oil-droplets with ferrofluids enables not only the quantification of cell-generated forces but also the application of controlled forces61. One caveat is that droplet incompressibility prevents a directed measurement of the isotropic component of the stress. Therefore, this technique cannot discern between isotropic pushing and pulling, but it is informative of stress anisotropy. Other limitations are the assumption that surface tension of the droplet is unchanged by its insertion in tissue and the absence of a direct measurement of the shear stress on the droplet. Some of these limitations have been partially overcome by the recent use of hydrogel-based inserts, which allow shear-stress measurements as well as absolute-stress measurements by virtue of their well-characterized compressibility and poroelasticity62.
Molecular sensors. The techniques described above provide force maps at the cell surface by measuring deformations of the inert biomaterials that surround the cell. The very same principle can be used at the nanoscale to measure the force borne by a specific molecule; if material mechanical properties can be assessed at the molecular scale, then deformations of individual molecules can be converted into forces. This principle has been harnessed to generate a wide array of sensors measuring molecular forces63 (Fig. 1k,l; Table 1). Here the mechanical response (force–extension curve) of molecular domains of choice (linkers) is first determined through single molecule techniques such as atomic force microscopy or optical tweezers. After this calibration step, linkers are coupled to molecules of interest. As the nanoscale deformations of individual molecules cannot be resolved optically, they are measured indirectly through fluorescence microscopy. In a common implementation, a 'cassette' containing a mechanically calibrated linker flanked by two different fluorophores is encoded into a protein of interest. Force application to the molecule causes stretching of the linker, thereby altering fluorescence resonance energy transfer (FRET) between the two fluorophores. The mechanical properties of the linker, for instance an α-helix64 or different peptides65,66, and the FRET range of the fluorophore pair determine the sensitivity and force range of the sensor, which typically spans from 1 to 10 pN. This approach has been used to quantify forces transmitted across a variety of proteins, including vinculin66, talin67, E-cadherin68,69, VE-cadherin, and PECAM70.
If the aim is to measure forces across extracellular ligands such as ECM molecules, sensors can be synthesized and then coupled to cell substrates71,72,73,74 rather than being genetically encoded. This strategy expands the choice of linkers and fluorophores, allowing, for instance, the use of fluorophore–quencher pairs, which increase their fluorescence as they are separated72,73. By providing a direct fluorescence measurement rather than a ratiometric one (as in FRET), sensitivity can be dramatically increased. As an alternative to protein domains, DNA hairpin linkers allow for a 'digital' readout, displaying whether the threshold to open the molecule has been crossed72,73. The force threshold can be controlled by tuning the DNA sequence75,76,77. In addition to DNA, larger and more mechanically stable proteins can be used, enabling the measurement of forces up to the 100 pN range78.
In summary, although molecular force probes only quantify the modulus and not the direction of force exertion, they provide fundamental information on force levels experienced by specific molecules. Certain issues remain to be resolved, namely the discrepancy in reported force levels between different approaches71,72,73, the difficulty in precisely inferring forces from molecular extension due to its stochastic nature and its dependence on force-loading profiles, and the distinction between average and individual molecular forces. However, this approach opens the door to an enormous wealth of new information on molecular force transmission that is potentially fundamental in elucidating molecular mechanisms in mechanobiology.
Force sensors based on unknown material properties
The techniques discussed thus far are based on quantifying the deformation of inert sensors, the material properties of which can be characterized. Therefore, these methods provide exact force measurements within the uncertainty of material calibration and measurement noise. A different family of techniques is based on applying static or dynamic force balance principles to cellular structures, the mechanical properties of which are unknown. In principle, these techniques are less powerful but they yield reliable results within a range of reasonable assumptions.
Monolayer stress microscopy. Soon after the development of traction microscopy it was recognized that knowledge of traction forces was sufficient to compute average intracellular tension using force balance arguments79. This idea was later refined to enable the quantification of intracellular and intercellular tension in cell collectives such as cell doublets80,81, clusters82, and monolayers28,83,84,85. In this Review, we refer to this technique as monolayer stress microscopy (MSM). The rationale behind MSM can be simply illustrated as a tug-of-war. If the (traction) force exerted by each player on the ground is known, then tension everywhere in the rope is fully defined by Newton's laws86. Similarly, if traction exerted by a cohesive group of cells is known, then tension at cell junctions is defined. This principle can be extended to a two-dimensional cell system such as a cell monolayer to compute the two-dimensional stress tensor within and between cells83,87,88,89 (Fig. 1d; Table 1). Unlike the unidimensional case, recovery of 2D stress requires assumption of material properties, specifically of the compressibility of the system. This property is generally not accessible, but this may not be an issue as compressibility variations over a reasonable range result in minor changes in the recovered stress tensor90,91. Monolayer stress microscopy thus far has mainly been based on the assumption that monolayers are thin elastic sheets of homogeneous mechanical properties83. Recently, this restriction has been lifted by combining traction force maps and imaging of focal adhesions and stress fibres, which allowed quantification of tension carried by each fibre92. Because MSM uses traction force maps as an input, the technique is affected by the limitations of traction microscopy in terms of spatial resolution and computational costs.
Laser ablation. Laser ablation is an established technique in which laser-pulse energy is focused to obliterate biological structures that transmit forces at the subcellular, cellular or tissue level (Fig. 1m–p; Table 1). Different ablation modes include severing cytoskeletal elements93,94,95, intercellular junctions96,97,98,99,100, and supracellular cables101, as well as obliterating cell cortical networks102,103,104 and individual or multiple cells105,106,107,108,109. Laser ablation generally causes the expansion of the targeted structure. This indicates that the ablation locus and its surroundings prior to ablation were under tension in the direction opposite to that of expansion—an ablation followed by shrinkage would instead indicate tissue compression. These qualitative considerations can be made quantitative if material properties are known or assumed. Ablated structures usually undergo a damped elastic recoil, that is, the speed of the wound edge exponentially plateaus to zero over a characteristic time interval τ (viscosity-to-elasticity ratio)93,96,103,104. In such cases, the initial speed of the wound edge provides a local estimate of the tension-to-viscosity ratio whereas the final extent of wound recoil provides a local estimate of the tension-to-elasticity ratio.
Force estimation conducted through laser ablation is limited by the assumption that material properties are constant and uniform across experimental conditions. If these material properties can be determined through independent methods, force measurements through laser ablation may be considered absolute and can also be compared across different biological systems. This could be achieved, for example, by combining laser ablation with non-contact tools to map cell mechanics110. Despite these limitations, laser ablation remains a very versatile technique because it allows sampling relative magnitude and direction of tension through multi-scale ablation modes both in vitro, in vivo and ex vivo97,99,100,101,102,104,105,108,109. Moreover, laser ablation may be combined with in silico modelling for a more complex assessment of cell and tissue mechanics93,94,95,98,100,103,104,105. Thus, despite its invasiveness and underlying assumptions regarding material properties, laser ablation is often the technique of choice to infer relative tension levels at cytoskeletal fibres and cell junctions.
Geometric force inference. When combined, all forces arising in cells and tissues must equilibrate inertial forces at all times (Newton's second law). These forces may include cellular cortical tensions, elastic forces associated with subcellular components, pressures generated by the inner cytoplasm and frictional responses to deformation. In the vast majority of experiments at cell and tissue level, inertia is negligible and cell forces equilibrate each other by adding up to zero. If motions of cells and tissues are also slow enough, viscous forces too will be negligible with respect to all other forces defining the physics of the biological system. Furthermore, biophysical quantifications often extend over timescales long enough for cellular poroelastic effects to be irrelevant111. With these assumptions in mind, a static force balance of only two primary forces can account for the mechanics of cells and tissues: intracellular pressures and cellular cortical tensions112,113,114,115,116,117,118,119. On a first level of approximation, intracellular pressures and cortical tensions can be assumed to be uniform within each cell and over cell membrane segments between consecutive intercellular junctions.
Such biomechanical understanding of cells is the foundation of a class of techniques known as the geometric force-inference methods (Fig. 1q–t; Table 1). Under the physical assumptions mentioned above, these methods are independent of the specific material properties of cells and tissues, including whether these are (poro)elastic, viscous or viscoelastic111. This methodology consists in measuring the angle at which cell membranes join double and triple junctions with their neighbours. Forces are inferred from deviation of these angles from their equilibrium configuration. Cell boundaries and angles can be determined through segmentation of microscopy images, a feature that makes force inference techniques non-invasive. However, this class of techniques can only infer forces providing a relative rather than absolute value.
Force inference approaches have evolved to tackle issues affecting the technique, which mostly concern the stability of the solution process and its sensitivity to noise—including that due to image segmentation112,113,114,115,116,117,118. These problems could be addressed through advanced equation solvers and modified assumptions about the forces involved in the biological process being quantified. A significant advancement in addressing these problems ensued from allowing the edge lines segmenting cell boundaries to be curved112. Recent geometric improvements in force inference methods enable force quantification in 3D117, as well as addressing biological contexts where it is not possible to assume slow motions and neglect viscous forces120. Fitting dynamic models of cell mechanics to quantitative data of cell shape and cytoskeleton flows has enabled force inference during polarization of Caenorhabditis elegans embryos121 and cell division122. Despite underlying assumptions, force inference methods are not invasive and, as such, they are preferred to laser ablation methods to quantify relative forces during dynamic processes in vivo.
The cell as a force sensor
The most relevant force sensor in biology is not a device fabricated in a laboratory by scientists; rather, it is the cell itself. How cells sense forces is a research topic in itself that has been extensively reviewed elsewhere123,124,125. However, it is worth highlighting the analogy between human-made and 'cell-made' force sensors, and to briefly address how the latter can be studied experimentally (Table 2). As in the research tools described above, cellular force sensors require materials having known properties and becoming deformed in a specific way on force application. Although some studies have suggested that cellular force sensors could involve the entire cell cytoskeleton46, they are generally assumed to consist of local molecular structures that change conformation when force is applied. These molecular structures are comparable to the molecular force sensors described above with one key difference: instead of leading to the emission of light, force application alters their conformation and changes their activity or affinity for binding partners. Conformational changes include molecular extension126, domain reorientation127, unfolding of previously folded domains128, bond rupture129 and opening of ion channels130,131. The study of such force-induced molecular conformational changes has exploded due to the development of nanotechniques allowing precise mechanical manipulation of single molecules through, for instance, AFM or magnetic and optical tweezers. This has allowed the in vitro study of the mechanosensing properties of cytoskeletal proteins like talin128,132, α-catenin133, or titin134, among many others. A significant challenge is the measurement of such conformational changes within live cells. Although correctly isolating single molecule interactions within cells can be problematic, this can be achieved for membrane-bound proteins with extracellular domains accessible to external probes. For instance, AFM and biomembrane force probe techniques have been used to study how force affects integrin extension126, the dissociation of integrin–ECM bonds135 and the unfolding of glycoproteins136.
The precise measurement of force-induced conformational changes in intracellular molecules remains a significant problem, although different approaches have been proposed. Margadant et al.137 labelled the two ends of talin molecules with different fluorophores to monitor talin extension in vivo. However, conclusively identifying which fluorophore pairs correspond to the same molecule is non-trivial, and involves various assumptions and intensive image processing. Similarly, Rivas-Pardo et al.134 labelled specific domains of titin within sarcomeres using quantum dots, and then harnessed the large size of the titin molecules to resolve the separation between quantum dots and monitor their extension. The Vogel group138,139 labelled domains of the ECM protein fibronectin with FRET fluorophore pairs, demonstrating protein extension in response to force. Krieger et al.140 used a cysteine shotgun technique to specifically label cysteine residues, and found that cysteine labelling in several proteins was altered after mechanical stimuli in live cells. Because cysteine is often buried within the tertiary or quaternary protein structure, this is indicative of force-induced conformational changes leading to cysteine exposure. Finally, electron microscopy images of cellular cryosections have been used to detect tension-induced conformational changes in membrane structures like caveolae14. In all of those techniques, comparisons of different conditions submitted or not to mechanical forces are essential to assess whether the detected conformational changes are indeed force-induced. However, it is often difficult to completely rule out other causes, or to distinguish whether forces affect the protein under study directly or downstream of a mechanosensing cascade. Recently, we have proposed an alternative method to evaluate the role of molecular mechanics by introducing mutations previously demonstrated to affect talin mechanical unfolding at the single molecule level in vitro141. By comparing the effect of wild-type talin versus the mechanical mutant, it was possible to isolate the effects mediated specifically by force-induced talin unfolding16.
Since cell responses to mechanical signals involve complex signalling cascades, whether and how cells respond to forces can be assessed by measuring downstream events. Typical force-sensitive events include changes in focal adhesion dynamics142,143, membrane currents triggered by mechanosensitive channels144, activation of effectors such as Src145 or vinculin146, and nuclear localization of mechanosensitive transcriptional regulators147. Additionally, the cell response can be studied after application of external forces through devices such as magnetic or optical tweezers148,149,150. However, it is important to note that such techniques, while providing fundamental information on mechanosensitive cascades, do not directly assess the specific mechanism by which cells sense forces.
Conclusions and outlook
The past two decades have seen the development of a wide variety of techniques to probe cell-generated forces. These techniques have revealed an unanticipated variety of mechanisms through which cells move, differentiate, divide, remodel, flow, and sense their microenvironment. These mechanisms are now known to operate at multiple length scales ranging from molecular forces that unfold cryptic protein domains to long-ranged supra-cellular force patterns that govern collective cell migration and wound healing. Physical forces are no longer seen as simple switches of mechanotransduction but also as mechanisms to propagate information within and between cells.
In this Review, we have provided an overview of current techniques to quantify cell-generated forces. The most reliable of such techniques are those based on measuring the deformation of materials with known properties (Fig. 1a–c,e–l; Table 1). However, these techniques are generally restricted to in vitro systems and they are sometimes affected by low signal-to-noise ratios. Alternatively, cell-generated forces can be inferred by using techniques that require a set of mechanical assumptions such as laser ablation or geometric force inference (Fig. 1d,m–t; Table 1). Whereas these techniques are, in principle, less desirable than those based on sensors of known mechanical properties, they are often the only choice to access forces at cell junctions, at cytoskeletal fibres and in vivo. Quantification using these techniques is reliable, provided underlying assumptions are correctly assessed for each specific experimental condition.
Besides the nature of the sensor and the associated mechanical assumptions, the investigator will need to consider several factors before opting for one technique over the other. These may include: whether the sample is in vivo or in vitro, in 2D or 3D, and physically accessible for contact; whether absolute force values are required or relative ones suffice; whether the process is dynamic and requires time-lapse measurements, or a one-off time point quantification is sufficient (even at the cost of destroying the sample). In addition, spatial resolution (nanoscale versus microscale) and force resolution (from the piconewton scale to hundreds of nanonewtons) need to be carefully analysed. With these considerations in mind, the reader is referred to Table 1 of this Review to identify the techniques best suited to address a particular scientific question.
We currently have access to a wide repertoire of techniques to probe cellular forces, but these techniques still require specialized skills and are far from becoming routine laboratory tools. The simplest techniques, such as traction force microscopy to probe cell–ECM forces in vitro, are rapidly leading the way towards standardization through reproducible experimental protocols and open-source software. Other tools, such as molecular force sensors, hold promise for force quantification in vivo, but are still affected by calibration issues and low signal-to-noise ratio. In light of the increasing realization of the importance of mechanobiology in life sciences, it is not unreasonable to imagine that force measurement tools will become as standard as those to measure gene expression and protein concentrations.
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Acknowledgements
We apologize to the many colleagues whose work could not be cited owing to space constraints. We thank M. Arroyo, J. C. del Álamo, J. J. Muñoz, G. W. Brodland, and all members of our laboratories for critical comments and encouragement. The authors acknowledge support from the Spanish Ministry of Economy, Industry and Competitiveness through the Centro de Excelencia Severo Ochoa Award to the Institute of Bioengineering of Catalonia, and through grants BFU2015-65074-P to X.T., BFU2014-52586-REDT and BFU2016-79916-P to P.R.-C., and BFU2016-75101-P and RYC-2014-15559 to V.C. The authors also acknowledge support from the Generalitat de Catalunya (Cerca Program and 2014-SGR-927 to X.T.), the European Research Council (CoG-616480 to X.T.), the European Commission (project 731957 to P.R.-C. and X.T.) and Fundació la Marató de TV3 (project 20133330 to P.R.-C.).
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Roca-Cusachs, P., Conte, V. & Trepat, X. Quantifying forces in cell biology. Nat Cell Biol 19, 742–751 (2017). https://doi.org/10.1038/ncb3564
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DOI: https://doi.org/10.1038/ncb3564
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