Jonathan
Garamella
,
Kathryn
Regan
,
Gina
Aguirre
,
Ryan J.
McGorty‡
and
Rae M.
Robertson-Anderson‡
*
Department of Physics & Biophysics, University of San Diego, San Diego, CA 92110, USA. E-mail: randerson@sandiego.edu
First published on 12th June 2020
The cytoskeleton, a complex network of protein filaments and crosslinking proteins, dictates diverse cellular processes ranging from division to cargo transport. Yet, the role the cytoskeleton plays in the intracellular transport of DNA and other macromolecules remains poorly understood. Here, using single-molecule conformational tracking, we measure the transport and conformational dynamics of linear and relaxed circular (ring) DNA in composite networks of actin and microtubules with variable types of crosslinking. While both linear and ring DNA undergo anomalous, non-Gaussian, and non-ergodic subdiffusion, the detailed dynamics are controlled by both DNA topology (linear vs. ring) and crosslinking motif. Ring DNA swells, exhibiting heterogeneous subdiffusion controlled via threading by cytoskeleton filaments, while linear DNA compacts, exhibiting transport via caging and hopping. Importantly, while the crosslinking motif has little effect on ring DNA, linear DNA in networks with actin–microtubule crosslinking is significantly less ergodic and shows more heterogeneous transport than with actin–actin or microtubule–microtubule crosslinking.
Traditionally, the impact of crowding on intracellular transport has been investigated using small globular proteins or synthetic polymers as the crowders,30–33 which do not well model crowding by entangled and crosslinked networks of filaments that comprise the cytoskeleton. In such dense, entangled networks, long polymers (e.g., DNA) are restricted to move via reptation, or curvilinear diffusion along their backbones.34,35 Ring polymers, on the other hand, lack the free ends required for this type of transport, making ring DNA transport through entangled environments distinct and leading to great interest and debate.36–43 Ring polymers entangled by linear chains have been predicted to assume a wide range of conformational states, giving rise to a greater variety of transport mechanisms than their linear counterparts.43–51 Further complicating ring transport is the predicted threading of ring polymers by linear chains such that they cannot move beyond their radius of gyration unless the linear chain unthreads itself via reputation.34,35 This diffusive process, known as constraint release,52–54 is extremely slow compared to reptation and is likely largely eliminated if the linear chains are crosslinked.26 However, experimental evidence of these predicted diffusive processes, especially for biologically relevant polymers and systems, is sparse.26,47,48,55
The most well understood characteristic of diffusive motion in homogenous media is the linear growth of the mean-squared displacement (MSD) with time, i.e. MSD ∝ tα where α = 1. In crowded and stochastic systems, a departure from this relation (i.e. α ≠ 1) is common, giving rise to the widely-studied field of anomalous diffusion.56,57 While a subdiffusive MSD vs. time curve indicates anomalous diffusion, this alone cannot differentiate between the various transport models.5,56 The nature of the distributions of particle displacements can be analyzed for a deeper understanding of these processes. Non-Gaussian distributions are often found in crowded or confined environments common to soft matter58–61 and biological62–66 systems. The non-Gaussianity parameter βNG, which relates the fourth moment of the time-averaged trajectory to the time-averaged MSD (tMSD), can be used to differentiate between Brownian or fractional Brownian motion and continuous time random walk models. The origin of this non-Gaussianity is most often attributed to heterogeneity in the media, resulting in a range of diffusivities that depend on the local environment.67–69 Similarly, fluctuations in the time-averaged MSD can be characterized by the variance of individual particle tracks relative to the tMSD, quantified by the ergodicity breaking parameter, EB.70 For a perfectly reproducible process where all time-averages over adequately long intervals are the same, EB = 0 and the process can be said to be ergodic. Weakly non-ergodic processes either slowly decay to zero as t → ∞ or have some positive value.71 Deviations from zero are expected for other, non-stationary models.6,10 The easiest to conceptualize are systems in which the particles do not move continuously through the medium but are trapped, or caged, for a non-trivial amount of time before jumping, or hopping, to another available pocket.72
Anomalous diffusion, in particular subdiffusion where the scaling exponent α < 1, is widespread in crowded biological environments.6,73–76 There are many examples of subdiffusive behavior in living cells, including RNA–protein complexes in E. coli77–79 and S. cerevisiae,78,79 viruses in HeLa cells,80 proteins in plasma membranes,62 and gold nanoparticles in human and mammalian cell lines.81 Yet, the underlying processes and molecular conformations that give rise to the observed phenomena are not well understood. Further, given the inherent complexity of these in vivo environments, it is nearly impossible to isolate the roles that individual parameters play in the observed phenomena.
Here, we create biomimetic in vitro networks of actin and microtubules in which we systematically vary the type of crosslinking to understand the role the cytoskeleton plays in the transport and conformational dynamics of DNA. We specifically investigate three important crosslinking motifs: actin crosslinked to actin (A–A), microtubules crosslinked to microtubules (M–M), and actin crosslinked to microtubules (A–M) (Fig. 1). While these variations in crosslinking have been shown to alter the cytoskeleton network connectivity and rigidity,27 their effect on the transport of DNA and other macromolecules had yet to be discovered. Further, the extent to which transport is ergodic and/or Gaussian in nature, key to understanding the transport phenomena and properly analyzing and interpreting experimental data on these systems, remains an open question.
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| Fig. 1 Experimental conditions and techniques used to examine DNA transport in biomimetic cytoskeleton networks. (A) Schematic of the various conditions examined. Linear and ring DNA are added to actin–microtubule networks with actin–actin (A–A), microtubule–microtubule (M–M), or actin–microtubule (A–M) crosslinking. Biotinylated filaments are used in conjunction with NeutrAvidin complexes to enable crosslinking. (B) Single-molecule conformational tracking is used to measure the center-of-mass (COM) position and the lengths of the major and minor axes (Rmax and Rmin) of each DNA molecule for every frame of the time-series to quantify the transport and conformational dynamics of individual DNA molecules. (C) From (B), the COM mean squared displacement (MSD) is computed. This schematic was adapted from ref. 26. | ||
We find that while both DNA topologies, ring and linear, exhibit subdiffusion that is non-Gaussian and non-ergodic over the entire measurement time, these dynamics are driven by different physical phenomena depending on the topology. Ring DNA dynamics are dominated by threading by the cytoskeleton filaments, with little dependence on the type of crosslinking. Linear DNA dynamics, on the other hand, are heavily influenced by the crosslinking motif, with transport in the non-homologous crosslinked network (A–M) being significantly more anomalous as well as less Gaussian and less ergodic than in the networks with homologous crosslinking (A–A, M–M). Our collective results shed important new light on the role that the cytoskeleton plays in the ubiquitous anomalous transport observed in biological environments. As such, our results can further aid in systematically interrogating complex living systems in an effort to develop bottom-up artificial cells.82–84
:
1 base pair
:
dye ratio.85
:
1 molar ratio to a final protein concentration of 5.8 μM. An aqueous buffer comprised of 100 mM PIPES, 2 mM MgCl2, 2 mM EGTA, 1 mM ATP, 1 mM GTP, and 5 μM Taxol is used. To polymerize proteins to create filamentous composite networks, final solutions are pipetted into capillary tubing with an inner diameter of 800 μm, sealed with epoxy, and incubated for at least 30 minutes at 37 °C. To enable crosslinking, biotin–NeutrAvidin complexes are preassembled and added at a crosslinker
:
protein molar ratio of Rcp = 0.02 before polymerization.27 By preassembling the biotin–NeutrAvidin complexes separate of the network, we are able to control the type of crosslinking. All complexes contain a 2
:
2
:
1 stoichiometry of biotinylated protein to biotin to NeutrAvidin with the biotinylated proteins either being two actin monomers, two tubulin dimers or one of each to create actin–actin, microtubule–microtubule or actin–microtubule crosslinker complexes. These complexes are incorporated into the filaments as they polymerize. All three networks, characterized previously, are considered isotropic with no phase separation between proteins.26,27,87 The mesh size of all composite networks is ξ ≈ 0.81 μm.27
, from which we compute scaling exponents via MSD ∝ tα (Fig. 2). From the COM positions, we also compute particle displacements for each lag time to generate the van Hove distributions (Fig. 3A). These distributions are fit to the sum of a Gaussian and exponential function
, where A is the amplitude of the Gaussian, w is the Gaussian width, B is the amplitude of the exponential, and λ is the decay length. Distributions at 0.3, 0.5, 1, 1.5, 2, 2.5, 3, and 4 s were fit and λ was extracted for each time point (Fig. 3B). Master curves are generated by scaling the displacements using the power-law fitting λ ∝ tΩ such that Δxλ = Δx(t)/tΩ and plotting G(Δxλ,t). Finally, we compute the non-Gaussianity parameter,
, and ergodicity-breaking parameter,
, where
is the individual time averaged squared displacement and
is the time average MSD for the entire ensemble of trajectories (Fig. 4). To characterize the conformations of the DNA molecules, we compute the DNA coil size
from the major and minor axes measurements and normalize by the dilute limit mean end-to-end length,
, to determine the reduced coil size r043 (Fig. 5A). These analysis methods, depicted in Fig. 1, have been described and validated previously.25,26,30,32,88
While all systems display subdiffusion (α < 1), there are obvious differences in the transport of linear and ring DNA, as can be seen in Fig. 2A and B. The MSDs for linear molecules obey a single power-law relation over all measured lag times in all networks (Fig. 2A). While actin–actin (A–A) and microtubule–microtubule (M–M) (homologous) crosslinking appears to have similar effects on linear DNA transport with α ≈ 0.7, actin–microtubule crosslinking (A–M) (non-homologous) leads to significantly more subdiffusion with α ≈ 0.59. Interestingly, the transport of linear DNA in the A–M network is actually faster than in the other networks initially; but, because it is more subdiffusive, we observe a crossover in the MSD curves at ∼0.5 μm2. While the MSDs for linear DNA are well fit by a single power law for our entire experimental time window, ring DNA MSDs exhibit two distinct regimes of subdiffusion. Initially, as shown in Fig. 2C, ring DNA diffusion is less anomalous than that of its linear counterpart. However, beyond ∼0.4 μm2, the MSD curves for ring DNA become more anomalous (decreasing α) than those for linear DNA (Fig. 2C). This biphasic diffusion, absent for linear DNA, is emphasized by the insets in Fig. 2A and B. Here, we scale the normalized mean-squared displacement by tα using the α value obtained by fitting the first 2.5 seconds of the MSDs. As such, a horizontal line denotes a constant α value, while a deviation occurs when the anomalous scaling exponent changes. As shown, we observe a decrease in the scaled MSD curves for ring DNA that has the same characteristic shape in all crosslinking motifs (Fig. 2B inset). This behavior is in contrast to the inset in Fig. 2A, where the curves are roughly constant with lag time. Further, for ring DNA, transport in the M–M and A–M networks are similar and transport in the A–A networks is only slightly less anomalous (Fig. 2C), in contrast to the linear DNA in which transport in the A–M network is the outlier.
where λ(t) is the time dependent decay length of the system. This characteristic decay length λ(t) can be understood as an average of length scales associated with each of the relaxation processes that contribute to the exponential tail of the distributions.
To probe whether the decay length λ(t) is sensitive to DNA topology and network crosslinking motif, we plot its temporal evolution for all conditions in Fig. 3B. λ(t) roughly grows as the cube root of time, λ(t) ∝ t∼1/3, though this scaling exponent Ω varies slightly depending on DNA topology and crosslinking (ESI,† Table S1). We use the scaling behavior of the exponential tail to obtain an overlapping master curve by rescaling the displacements as Δxλ = Δx(t)/tΩ (Fig. 3C and D). Although we only show master curves for DNA in the actin–actin network, the result is generic and applicable to all networks. This suggests that the exponential function and corresponding decay lengths for the different DNA topologies in the various networks provides a robust description of the transport.
To further quantify and characterize the anomalous transport we observe, we evaluate the non-Gaussianity parameter, βNG and ergodicity-breaking parameter, EB, as described in Methods. For a particle undergoing Brownian motion, which is an ergodic process obeying Gaussian statistics, βNG = EB = 0. Conversely, as shown in Fig. 4, both parameters are clearly nonzero over the entire measurement window for both DNA topologies in all cytoskeleton networks. As shown, βNG(t) for all conditions decreases from an initial absolute maximum value of ∼O(10) to a nearly time-independent plateau ∼O(1). For most ostensibly anomalous processes, the non-Gaussianity is expected to approach a near-zero plateau as the transport becomes normal.93 However, we find no such behavior – all plateau values are significantly nonzero. Initially, linear DNA displays less Gaussian diffusion (higher βNG) than its ring equivalent, but, surprisingly, this effect is reversed for t > 2 seconds. Importantly, this crossover time is nearly the same as the time when the ring DNA becomes more subdiffusive. The exception is, again, the linear DNA diffusing in the actin–microtubule crosslinked composite, with βNG being > 2× higher than in all other conditions. This result is consistent with those presented in Fig. 3, where the van Hove distributions in Fig. 3Aiii are distinctly different than the others. The inset, showing the time average of the ergodicity breaking parameter EB, shows a similar trend. The diffusion of ring DNA is less ergodic over the experimental time period, with the exception of linear DNA in the A–M network, where EB is greatest by roughly a factor of two. Note that in all conditions the ergodicity breaking parameter is non-zero and positive, a hallmark of a weakly non-ergodic process.5
. Fig. 5 shows the probability distributions for this reduced coil size rcoil = Rcoil/R0 (Fig. 5A), as well as the mean value 〈rcoil〉 (Fig. 5B), and full-width-half-maximum, FHWM (Fig. 5C). These data, taken together, show clear topology-dependent differences: linear DNA is compacted in all networks while ring DNA is swollen and has a much wider conformational breadth, as measured by FWHM (the dashed line in Fig. 5B guides the eye to the condition Rcoil = R0). However, for each DNA topology there is little difference between the effect of actin–actin and microtubule–microtubule crosslinking. The major deviation occurs for linear DNA diffusing in the A–M network, where we observe a much larger distribution width (i.e., FWHM) compared to the other networks, signifying that the DNA assumes a greater range of conformational states in this network.
However, the most direct evidence of threading presented here lies in the biphasic MSDs for rings (Fig. 2B). The shift to a more subdiffusive regime occurs at or after ∼0.4 μm2, which is quite similar to the square of the radius of gyration for the ring DNA, RG2 = (0.65 μm)2 ≅ 0.42 μm2.26,43 This shift indicates that COM motion is restricted at distances >RG, exactly what we should expect for rings threaded by the cytoskeleton filaments. Namely, threaded rings can only diffuse perpendicular to the threading filament over distances <RG, so we would expect squared displacements >RG2 to be frozen out for threaded rings over timescales below the slowest relaxation mode of the network (∼O(10 s)).27,29,91 Further, as the average size of the ring DNA coils is greater than the dilute mean end-to-end limit of ∼1.58 μm43 (Fig. 5B), and the mesh size ξ of the network is ∼0.81 μm, the rings are likely threaded by multiple filaments. This result, coupled with the fact that the filaments are crosslinked together, makes it extremely unlikely for ring DNA molecules to be ‘released’ from the threading filaments. While threaded rings could also move along the actin filaments or microtubules rather than perpendicular to them, they would still be restricted by entanglements or crosslinks in the network and thus the squared displacements would be limited to the square of the mesh size ξ2. As such, we would expect all MSDs to remain <ξ2, even at large times. In M–M and A–M crosslinked networks, this is exactly the case (Fig. 2B) while transport in the A–A crosslinked network seems to contradict this idea. In the A–A network, there is slightly faster diffusion over a majority of the measurement time and this is amplified as the ring DNA in the other networks asymptotes to ξ2. We previously showed that as actin–actin crosslinking in composite networks is increased, the incidence of actin bundling increases.29 This bundling works to effectively reduce the number of individual fibers in the network and, in turn, increase the mesh size. Therefore, while we still expect the MSD curve in the A–A network to plateau, it should be slightly higher than in the other networks, as we find in Fig. 2B.
Threading of the ring DNA is also manifest in the temporal evolution of the non-Gaussianity parameter, βNG. Initially, the threaded rings are able to move around more freely than the linear chains in the same cytoskeleton network as they have smaller coils so it takes a longer time to “feel” the filaments in the network (Fig. 4). However, at longer times, the transport of ring DNA becomes less Gaussian (increase in βNG) as the constraints of the threading filaments become important.
The fact that the transport (α, λ, βNG, EB) and conformational dynamics (rcoil, FWHM) for rings are nearly the same irrespective of the crosslinking motif reinforces the idea that a single effect, i.e. threading, dominates ring dynamics. We note that the dominance of threading may be a result of adding DNA to the networks prior to filament polymerization. If the DNA were added after polymerization and crosslinking we would expect threading to occur primarily with the un-linked filaments and the free ends of the crosslinked species. However, given that in cells, the cytoskeleton is continuously polymerizing and depolymerizing as well as varying its crosslinking state we expect our preparation methods to be more physiologically relevant than the alternative preparation.
In contrast to rings, we find significant, network dependent changes in the transport of linear DNA when changing from homologous (A–A, M–M) to non-homologous (A–M) crosslinking motifs. In the network with actin filaments crosslinked to microtubules, the diffusion of linear DNA is faster than in A–A and M–M networks for the first 0.5 μm2 but slower for longer distances (Fig. 2A). This results in significantly more anomalous transport of linear DNA in A–M networks relative to the other networks (Fig. 2C). This crossover occurs as the DNA displacement approaches the mesh size, indicating that the A–M crosslinked network imposes a greater constraint than the other networks. This fact is bolstered by van Hove functions that show, qualitatively, that the distribution is the least Gaussian, suggesting that there is an increased degree of heterogeneity in transport (Fig. 3A). This interpretation is in agreement with a rheological analysis of this network,27 in which the mobilities of actin and microtubules in an A–M crosslinked network exhibited a much larger spread in values relative to A–A and M–M networks. This variance in mobility is indicative of more local heterogeneity in the networks, which in turn gives rise to heterogeneous transport.
Quantitatively, the non-Gaussianity for linear DNA in the A–M network is significantly higher than any other DNA in any other network (Fig. 4); the same is true for the ergodicity breaking parameter (Fig. 4, inset). These collective results suggest that the diffusion of linear DNA in the A–M crosslinked network is driven by caging more so than the other networks. This type of transport – where the tracer molecules do not continuously diffuse through the media but are trapped in a pocket of the network for an extended period before hopping to another pocket – has been seen in other viscoelastic polymer networks,94 manifesting as non-ergodic and non-Gaussian subdiffusion.94,95 When employing a homologous crosslinking motif (A–A or M–M), the other filament type (microtubules or actin) remains un-linked and thus maintains a greater degree of mobility. As such, the un-linked network acts to restrict hopping as the DNA motion is coupled to the slow rearrangement of the local network.96 In a more rigid network, such as one with a non-homologous crosslinking motif, hopping from rigid pocket to rigid pocket is a more effective mode of transport as the rearrangement times in this network are much longer. Indeed, studies in rigid polymer networks have found increasing the rigidity leads to more anomalous transport.97,98 Conversely, transport within the local rigid pockets for a single polymer is faster as less rearrangement occurs such that the molecule has more ‘empty’ space to explore. These competing effects lead to faster transport at smaller distances yet slower transport at larger distances (Fig. 2A).
In summary, we have used single-molecule conformational tracking to investigate the transport properties of large linear and ring DNA molecules in biomimetic cytoskeleton networks. We focus on the effects of DNA topology and cytoskeleton crosslinking motif on DNA transport and conformations, linking network structure to DNA dynamics. We find that transport in all networks is subdiffusive and heterogeneous, exhibiting weak ergodicity breaking and non-Gaussian displacement distributions. However, linear DNA assumes both a smaller coil size and a smaller breadth of conformations than ring DNA. Moreover, non-homologous crosslinking enhances the dynamic heterogeneity of linear DNA by linking the connectivity of the actin network to the rigidity of the microtubule network. On the other hand, ring DNA transport and conformational dynamics are dominated by threading of the rings by the cytoskeleton filaments. Not only is the subdiffusion of ring DNA biphasic and more anomalous than its linear counterpart, but also the dynamics for rings appear to be largely unaffected by the type of network crosslinking.
Beyond the implications our results have for understanding molecular transport in crowded media, they also give substantial insight into the complexities of engineering functional systems in biological environments. The impact on gene therapy or drug delivery are readily apparent, as any delivery system utilizing a nucleic acid or other macromolecule would need to navigate within a dynamic and complex cytoskeleton. This study further provides insight in bioengineering, yielding information into how intracellular material properties can be altered by tuning the activity of proteins responsible for homologous or non-homologous filament crosslinking. Our future work will investigate how transport depends on the DNA size as well as the network mesh size and spatial extent of heterogeneities.
Footnotes |
| † Electronic supplementary information (ESI) available. See DOI: 10.1039/d0sm00544d |
| ‡ Equal contributions. |
| This journal is © The Royal Society of Chemistry 2020 |