Do-Hyeon
Kim‡
a,
Dong-Kyun
Kim‡
b,
Kai
Zhou‡
a,
Soyeon
Park
a,
Yonghoon
Kwon
a,
Min Gyu
Jeong
c,
Nam Ki
Lee
*bd and
Sung Ho
Ryu
*ab
aDepartment of Life Sciences, Pohang University of Science and Technology, Pohang, 790-784, Republic of Korea. E-mail: sungho@postech.ac.kr
bSchool of Interdisciplinary Bioscience and Bioengineering, Pohang University of Science and Technology, Pohang, 790-784, Republic of Korea
cIntegrative Biosciences and Biotechnology, Pohang University of Science and Technology, Pohang, 790-784, Republic of Korea
dDepartment of Chemistry, Seoul National University, Seoul, 08826, Republic of Korea. E-mail: namkilee@snu.ac.kr
First published on 24th April 2017
Cellular processes occur through the orchestration of multi-step molecular reactions. Reaction progress kinetic analysis (RPKA) can provide the mechanistic details to elucidate the multi-step molecular reactions. However, current tools have limited ability to simultaneously monitor dynamic variations in multiple complex states at the single molecule level to apply RPKA in living cells. In this research, a single particle tracking-based reaction progress kinetic analysis (sptRPKA) was developed to simultaneously determine the kinetics of multiple states of protein complexes in the membrane of a single living cell. The subpopulation ratios of different states were quantitatively (and statistically) reliably extracted from the diffusion coefficient distribution rapidly acquired by single particle tracking at constant and high density over a long period of time using super-resolution microscopy. Using sptRPKA, a series of molecular mechanisms of epidermal growth factor receptor (EGFR) cellular processing induced by cetuximab were investigated. By comprehensively measuring the rate constants and cooperativity of the molecular reactions involving four EGFR complex states, a previously unknown intermediate state was identified that represents the rate limiting step responsible for the selectivity of cetuximab-induced EGFR endocytosis to cancer cells.
Single particle tracking (SPT) analysis of membrane proteins provides diffusional information for individual molecules and can reveal diffusional heterogeneity among the molecules on a plasma membrane.12 However, a simple SPT approach cannot provide a sufficient number of trajectories8,13,14 to give reliable statistical information about the multiple diffusional states of membrane proteins at the single cell level. This limitation in the number of trajectories has been overcome by use of single particle tracking photoactivated localization microscopy (sptPALM), in which a high density of trajectories is obtained by switching sparse subsets of photoactivatable fluorescent proteins on and off in a single cell.15 The ability to perform continuous SPT of membrane proteins at a constant density in a single living cell over a long period of time allows the determination of time series distributions of single molecule diffusion coefficients that vary over the reaction course of a cellular process.
In this research, a robust approach was developed to apply RPKA to the investigation of the time-dependent kinetics of cellular processes involving multiple complex states on a plasma membrane in a living cell. The intrinsic diffusivities of the different complex states of a membrane protein were estimated statistically and the amount of each state was extracted from the single molecule diffusion-coefficient distributions acquired by sptPALM over time, which was then subjected to RPKA to obtain kinetic information including reaction models and rate constants. This method was called single particle tracking-based reaction progress kinetic analysis (sptRPKA). This method was capable of simultaneously analyzing a series of molecular reactions involving up to five complex states with rate constants <0.05 s−1. Using sptRPKA, the simultaneous kinetics of the multi-step molecular reactions for epidermal growth factor receptor (EGFR) endocytosis induced by cetuximab were analyzed, which involves four distinct EGFR complex states. Furthermore, a previously unknown intermediate state was identified, that was the rate determining step in cetuximab-induced EGFR endocytosis.
First, the rate constants were varied for a first-order reaction with two complex states whose diffusion coefficients were set to 0.2 and 0.004 μm2 s−1, which ensured the complete separation of the two states in the trajectories (Fig. 2A). The residual sum of squares (RSS) for the fit increased as the rate constant increased over 0.05 s−1 (Fig. 2B). Interestingly, the estimation of the rate constant was far more stable than that of the RSS, which allowed the accurate determination of rate constants for first-order reactions which were even faster than 0.16 s−1 (Fig. 2C). This result indicates that the overall trend of the reaction progress was preserved despite the presence of inaccuracies in the subpopulation ratio measured at each time point, which were caused by the number of trajectories acquired over a brief period being insufficient to rapidly extract subpopulation ratios of the complex states from the diffusion coefficient distribution.
Next, the effects of the diffusion coefficients of two complex states on determining rate constants were examined (Fig. 2D). The short time diffusion coefficient was determined from trajectories with a duration of eight frames using the mean squared displacement (MSD) relationship, where the MSD = 4DΔτ + 4e2 (0 ≤ Δτ < 160 ms). The rate constant estimates were accurate when the diffusion coefficient distribution of each state was well discerned. The RSS for the fitting of the reaction progress data started to increase as the diffusion coefficient distributions of the two states became inseparable (Fig. 2E). The estimation error for the rate constant was within 10% when the mean diffusion coefficients of the two states differed by 40% (Fig. 2F). However, the estimation error for the rate constant was less stable compared to RSS because the uncertainty in the determination of the diffusion coefficient of each state from the diffusion coefficient distribution produced systematic bias for the extraction of the subpopulation ratio over the entire course of the reaction.
Because the uncertainty of the diffusion coefficient depends on the trajectory length, the estimation error for sptRPKA caused by an indistinguishable mixture of two diffusion coefficient distributions could be improved by using trajectories with longer lengths. However, to obtain longer trajectories, the particle density must be lowered to circumvent the high probability that more than one particle would be observed in a diffraction limit during tracking because of the complication of the correct linking of two particles in consecutive frames. Thus, it was expected that the temporal resolution (the fastest rate constant that could be accurately estimated) of sptRPKA would be compromised if longer trajectories were used because the number of trajectories in a given time interval would be decreased. This inversely proportional relationship between the separability of the diffusion coefficient distribution and the temporal resolution of sptRPKA was observed with respect to trajectory length [see Fig. S1 in the ESI†]. This result indicates that interconversion between the temporal resolution and the amount of diffusional information for sptRPKA can be accomplished by simply controlling the trajectory length, which can be adjusted according to the dynamic or static nature of the cellular processes of interest.
Lastly, the effect of the number of complex states on determining rate constants was explored. The first-order sequential reactions were analyzed simultaneously and this involved up to seven complex states (under a condition of maximal separation among the mean diffusion coefficients of multiple states) (Fig. 2G). One of the benefits of using sptRPKA, in which a reaction is examined over an entire time course, is that the diffusion coefficient of each complex state can be determined at a different time point, such point when the complexity of the diffusion coefficient distribution for that state is the lowest (e.g., for a first-order sequential reaction, the diffusion coefficients for the first and last states can be determined at the initial and late periods of the reaction, respectively). With this advantage, the reaction progress data (Fig. 2H) was accurately fitted and was used to determine the rate constants for the reactions involving up to four complex states using the trajectories with a length of eight frames (Fig. 2I). However, it was not feasible to precisely estimate the rate constants for reactions involving more than five complex states because of the generation of inseparable diffusion coefficient distributions when significant amounts of all the complex states appeared simultaneously in the middle of the reaction. It was confirmed that utilizing trajectories longer than 15 frames made it possible to estimate rate constants for the reactions with five complex states (see Fig. S2 in the ESI†), however, the temporal resolution of sptRPKA was sacrificed in this case.
Unlike simulated conditions, the membranes of living cells are structurally and dynamically heterogeneous. It is uncertain whether diffusion coefficient distributions produced by multiple independent measurements of diffusion coefficients from individual trajectories acquired at different points in space and time on the membrane of a living cell can be sufficiently consistent for accurate comparisons over a long period of time.19 Thus, prior to applying sptRPKA to a cellular process of a membrane protein, the measurement stability of single molecule diffusion coefficient distributions was examined in a living cell. EGFR was analyzed on the membrane of a living COS-7 cell and this was used as a model system. Using EGFR tagged with mEos3.2, a monomeric photoactivatable fluorescent protein,20 >200000 EGFR molecules with a trajectory duration longer than eight frames were tracked in a single COS-7 cell within 1 h at constant density using 405 nm photoactivation (see Fig. S3a in the ESI†). The cell morphology was not altered after the measurement, confirming that negligible photodamage to the cell occurred during the imaging (see Fig. S3b and c in the ESI†). The diffusion coefficient was calculated from the EGFR trajectories using the following equation: MSD = 4DΔτ + 4e2 (0 ≤ Δτ < 160 ms) (see Fig. S4 in the ESI†). Approximately 8.5 s was sufficient to obtain the stable diffusion coefficient distribution of EGFR in COS-7 cells (see Fig. S5 in the ESI†), which was also similar in different cell lines including HEK293, HeLa, and CHO-K1 cells (see Fig. S6 in the ESI†), thus enabling sptRPKA to resolve the sub-minute kinetics of EGFR.
Because it had been confirmed statistically that the diffusion coefficient distribution of EGFR could be reliably obtained using trajectories longer than eight frames with a frame rate of 13.3 Hz when accumulated over ∼8.5 s, the trajectories of EGFR-mEos3.2 were divided into 10 s intervals to generate a temporal map of the EGFR diffusion-coefficient distributions. The first such map was generated by treating COS-7 cells with immunoglobulin G (IgG) for 2 h following a mock treatment for 30 min to ensure that the basal steady state of the EGFR diffusional dynamics was not altered by nonspecific treatments (Fig. 3A). IgG treatment did not induce any noticeable changes in the EGFR diffusive dynamics. Next, the cells were treated with cetuximab 30 min after the mock treatment (Fig. 3B). The peak of the diffusion coefficient distribution of the fast diffusive EGFR subpopulation decreased by ∼38% within 3 min and then slowly decreased further by ∼55% after 2 h of cetuximab treatment. The portion of the slow diffusive subpopulation of EGFR increased dramatically after 2 h of cetuximab treatment, to ∼49% of the entire population.
To objectively identify the number of EGFR complex states involved in this process, the EGFR diffusion coefficient distributions (probability densities) obtained after cetuximab treatment were subtracted from the distribution obtained before cetuximab treatment, and this representing the change in the distribution caused by cetuximab treatment. Then, based on the Bayesian information criterion (BIC) analysis, the number of Gaussian mixtures were determined from the subtracted distributions that were transformed to a logarithmic scale because diffusion coefficients from a single state follow empirically a log normal distribution when the short trajectories are used.13,24–28 To avoid the artifacts derived from the noise signals, a fitted Gaussian distribution was counted as a state if the distribution was responsible for more than 3% of the entire EGFR population. With increasing time after cetuximab treatment, the number of EGFR complex states increased from two to four (Fig. 3C and see also Fig. S7 in the ESI†). This result indicates that at least four different EGFR complex states are involved in the cetuximab induced EGFR cellular process for up to 2 h after treatment. Singular value decomposition analysis of the subtracted distribution, which provides a non-parametric criterion to determine the effective rank to properly represent the characteristics in both the diffusion coefficient and time dimension simultaneously, supported the number of states determined (see Fig. S8 in the ESI†).
The kinetics of the ∼36% peak shift of the fast diffusive subpopulation observed within 3 min after cetuximab treatment with Pitstop 2 pretreatment were further examined. By obtaining the EGFR diffusion coefficient distributions approximately every 10 s for 5 min immediately after the addition of cetuximab, the kinetic changes in this subpopulation (t1/2 = ∼47 s) were resolved (Fig. 3E). Interestingly, the kinetics were similar to the association rate constant (kon) of cetuximab binding to EGFR,32 suggesting that this immediate decrease in the diffusion coefficient after cetuximab treatment represents the direct binding reaction of cetuximab to EGFR. The dissociation constant (Kd) for cetuximab binding to EGFR after Pitstop 2 pretreatment (∼0.39 nM) was also calculated from the dose-dependent shifts of the diffusion coefficient of EGFR (see Fig. S10 in the ESI†). The Kd value was similar to that previously reported for cetuximab binding to EGFR in vitro.32 Furthermore, the binding of cetuximab to EGFR should be independent of CCPs, which is consistent with the result that this immediate peak shift was resistant to Pitstop 2 pretreatment (Fig. 3D). This interpretation seemed to contradict the traditional Saffman–Delbrück model of membrane protein diffusion.33 However, a recent study showed that the direct binding of antibodies and their Fab fragments to the extracellular domains of membrane proteins can significantly contribute to the diffusivity of the membrane proteins in living cells,34 which supports the interpretation of the direct binding of cetuximab to EGFR based on the immediate decrease in the diffusion coefficient.
Although the existence of EGFR predimers has been suggested in many cancer cells,35,36 no discernible changes were detected in the other states indicating the predimers except for the monomeric EGFR and the cetuximab bound EGFR immediately after cetuximab treatment likely because the amount of EGFR predimers in COS-7 cells at its basal status is not significantly high. The predimers might have been detected, if a significant amount exists, because cetuximab plays a role in the dissociation of a dimer to a monomer.37
No previous reports were found concerning the molecular state of EGFR responsible for the further peak shift in the diffusion coefficient distribution induced by cetuximab (∼55% diffusion coefficient shift after 2 h, see Fig. 3B). Considering this additional shift was generated more rapidly (t1/2 ≈ 8.4 min) than the CCP-trapped state (t1/2 >32 min) (see Fig. S11 in the ESI†), this previously unknown state may represent an intermediate state that exists before EGFR becomes trapped in a CCP.38,39
Next, a reaction model was determined that explained the dynamic variations in the relative subpopulation ratios involving the four different complex states of EGFR induced by cetuximab for up to 2 h. Based on the results that both the unknown and CCP-trapped states of EGFR were blocked by Pitstop 2 and that the unknown state appeared prior to the CCP-trapped state (Fig. 3B and D), these reactions were likely to be sequential. However, a simple sequential reaction model with first-order kinetics could not explain the measurements (Fig. 4B). The reversible reaction models could also not explain the data (see Fig. S14 in the ESI†), and this was consistent with the fact that the reversible rate is generally negligible compared to its forward rate for high affinity antibodies (<1 nM of Kd) and EGFR trapped in CCPs could not be readily released because CCP seals its structure through dynamin,38 which should make the reversible rate negligible. While searching for a reaction model to best account for this data from the selection of plausible reaction models, it was found that the unknown state required a high order rate law to fit the data. To examine whether the CCP-trapped state was derived from the unknown state, both sequential and parallel reaction models were analyzed for the CCP-trapped state (Fig. 4C and D). Because the number of parameters in these two models was the same, the RSS for each state was utilized as a criterion to determine the best model. As expected, these two models exhibited no significant differences in RSS for the basal EGFR and cetuximab bound EGFR states because the two models were distinguished from the unknown intermediate state. However, the parallel reaction model did not fit the CCP-trapped state well, whereas the sequential reaction model fit it almost perfectly (Fig. 4E). Furthermore, the residuals from the parallel model exhibited a predictive pattern, whereas a random pattern was observed in the sequential model and this implies that the parallel model cannot capture the entire explanatory information of the CCP-trapped state (see Fig. S15 in the ESI†). Taken together, a cooperative sequential reaction model is the most probable model for the cetuximab induced EGFR endocytosis in the membrane of living cells (Fig. 4C). This result was confirmed by analyzing the cooperativity of the intermediate state in EGFR expression dependent manner (see Fig. S16 in the ESI†).
From the sequential model, it could be inferred that the previously unknown intermediate state was responsible for the transition from cetuximab bound EGFR to EGFR inside a CCP. It was found that EGFR in the CCP trapped state was highly clustered with a size similar to CCP (∼120 nm), whereas the cetuximab bound EGFR state was not (Fig. 5). This cetuximab-induced EGFR clustering observed by using super-resolution microscopy was also recently reported by Gao et al.40 Considering previous studies showing that EGFR signaling for active trafficking was not involved in cetuximab induced EGFR endocytosis23,41 and that a Fab fragment of cetuximab did not trigger EGFR internalization,42 the previously unknown intermediate state might be EGFR clusters passively associated with pre-existing EGFR oligomers that are held by clathrin through the bivalency of cetuximab (Fig. 6A), which is consistent with the fact that a monovalent Fab fragment of cetuximab did not induce the intermediate state and the CCP-trapped state (see Fig. S17 in the ESI†).
Fig. 6 A series of molecular mechanisms for cetuximab induced EGFR endocytosis. (A) The illustrations for a proposed model to account for a series of molecular mechanisms of cetuximab induced EGFR endocytosis on a living cell membrane. Each kinetic parameter at 37 °C was estimated from a set of rate equations for the sequential reaction with the cooperativity model shown in Fig. 4C. Cetuximab binds to monomeric EGFR with a first-order reaction, followed by a high-order rate law reaction for an unknown intermediate state that may involve clathrin dependent EGFR oligomerization. Finally, cetuximab bound EGFR in the unknown intermediate state is trapped in a CCP with a first-order reaction for clathrin mediated endocytosis. (B) EGFR internalization induced by cetuximab treated for 12 h on cell lines with different surface expression levels of EGFR at 37 °C. The proposed model (A) fits the experimental data (red line). |
Although cetuximab is known to inhibit the epidermal growth factor (EGF) dependent activity of EGFR by competing with EGF to bind EGFR,29 the mechanism by which cetuximab selectively targets EGFR-overexpressing cancer cells is still unknown.43 Because the rate limiting step produced by the previously unknown intermediate state is higher than the fifth order of rate law, this model provides kinetic evidence to account for the steep selectivity of cetuximab to the amount of surface EGFR to induce EGFR internalization. It was observed that cetuximab induced EGFR internalization exhibited strong sigmoidal dependence on the surface expression level of EGFR across normal and cancer cell lines, which was predicted well using this model (Fig. 6B). Furthermore, this model indicates that the first-order binding process of cetuximab to EGFR could not be a selective mechanism for both normal and cancer cells, which implies that the binding process represents a side effect, consistent with the phenomena that the affinity of anti-EGFR antibody drugs is directly proportional to the side effects of the drugs.44
Various kinetic parameters, including reaction models, rate constants, and stoichiometry for a series of molecular reactions in a living cell, can be obtained by performing a minimal number of experiments using sptRPKA. Furthermore, use of sptRPKA guarantees statistical reliability by obtaining one data point for RPKA using tens of thousands of single molecule trajectory data, which is critical because the quality of kinetic analyses largely depends on accurate measurements. Combined with computational simulations generated by the numerical integration of a set of differential equations,45,46 sptRPKA can be used to determine reaction models for cellular processes occurring in the membrane of living cells with significantly less uncertainty than traditional graphical methods.
By specifically labeling endogenous EGFR using the Fab fragment of an anti-EGFR antibody conjugated to photoswitchable Alexa Fluor 647,47 diffusional dynamics were observed for cetuximab induced endogenous EGFR similar to those of EGFR conjugated to mEos3.2 (see Fig. S18 in the ESI†). The acquisition of longer trajectories by adopting brighter and more stable organic dyes can provide additional diffusional information, such as confined and directed motions. This unique diffusional information can be used to classify the more complex states of membrane proteins that are difficult to classify using only a diffusion coefficient.
Footnotes |
† Electronic supplementary information (ESI) available: Details in experimental section and supporting figures. See DOI: 10.1039/c7sc01159h |
‡ These authors contributed equally. |
This journal is © The Royal Society of Chemistry 2017 |