Abstract
Mutations of receptor tyrosine kinases (RTKs) are associated with the development of many cancers by modifying receptor signaling and contributing to drug resistance in clinical settings. We present enhanced bystander bioluminescence resonance energy transfer-based biosensors providing new insights into RTK biology and pharmacology critical for the development of more effective RTK-targeting drugs. Distinct SH2-specific effector biosensors allow for real-time and spatiotemporal monitoring of signal transduction pathways engaged upon RTK activation. Using EGFR as a model, we demonstrate the capacity of these biosensors to differentiate unique signaling signatures, with EGF and Epiregulin ligands displaying differences in efficacy, potency, and responses within different cellular compartments. We further demonstrate that EGFR single point mutations found in Glioblastoma or non-small cell lung cancer, impact the constitutive activity of EGFR and response to tyrosine kinase inhibitor. The BRET-based biosensors are compatible with microscopy, and more importantly characterize the next generation of therapeutics directed against RTKs.
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Introduction
Since their discovery, receptor tyrosine kinases (RTKs) have emerged as key regulators of cell growth, metabolism, differentiation, and survival. Consequently, dysregulated RTK activity often contributes to various disorders—most notably cancer—thus making this family of receptors prime therapeutic targets. RTK signaling and activity is classically described to follow the canonical model where ligand binding on the cell surface favors receptor dimerization and/or oligomerization, inducing a conformational change that culminates in the activation of the kinase domain. This event leads to trans autophosphorylation of receptor tyrosine residues, which serve as docking platforms for various signaling proteins containing Src homology-2 (SH2) and/or phospho-tyrosine-binding (PTB) domains. These domains bind to specific phospho-tyrosine residues within the receptor cytosolic tail and engage downstream mediators that propagate critical cellular signaling events1.
It is now evident that RTK signaling in physiological and pathological states is much more complex and multifaceted than initially described. Indeed, ever-increasing data is revealing that different ligands can stabilize distinct active conformational states of the same receptor, leading to different signaling and biological outcomes2,3,4,5. This concept, known as functional selectivity, has been well described for GPCRs and allows for selective modulation of receptor-downstream signaling networks4,6,7,8. Furthermore, we now know that many activated RTKs trigger signaling events from various endosomal compartments, which potentially contribute to drug resistance9,10,11.
Our understanding underlying the activity and pharmacology of RTKs remains incomplete, and their full therapeutic potential is largely underexploited. Such gaps are, in part, attributable to technological shortcomings in profiling the activation signature of the receptors. Indeed, many of the methodologies currently used to study RTK activation and screen for therapeutics targeting RTKs revolve around the kinase activity. Kinase activity-based assays are limited in throughput and can overlook additional key determinants of ligand therapeutic efficacy, including kinetics of responses, cellular localization, and functional selectivity.
We present herein live-cell bioluminescence resonance energy transfer (BRET)-based biosensors allowing for real-time spatiotemporal monitoring of RTK signaling across more than 10 effector proteins/pathways. The RTK bioSens-All® platform is built using enhanced bystander BRET, or ebBRET12, which exploits the ability of luciferase and GFP from Renilla reniformis to self-associate with moderate affinity and optimally transfer energy13. Using these naturally interacting chromophores, we developed biosensors that allow for quantitative live-cell monitoring of RTK-mediated and -specific trafficking of SH2 domain-containing protein to the plasma membrane and early endosomes following receptor activation. We used EGFR as a model receptor to demonstrate the spectrum of applications of our biosensors in studying RTK biology and pharmacology. The results obtained replicated the expected receptor coupling profiles and pharmacology while revealing novel ligand-specific spatiotemporal signaling biases and mutation-specific signaling signatures. The selectivity and sensitivity of the biosensors provide unmatched tools for both spectrometric and microscopy-based spatiotemporal studies of RTK signaling, which is also compatible with high-throughput screening for novel therapeutics.
Results
Characterization of RTK signaling at the plasma membrane using effector-specific ebBRET-based biosensors
Phosphorylation of tyrosine residues in the cytosolic domain of RTKs leads to the recruitment of SH2 domain-containing proteins. SH2 domains represent the largest class of phospho-tyrosine-selective recognition domains in the human proteome14, with over one hundred SH2-domain-containing proteins described in humans15. We used the SH2 domains of seven RTK-interacting effectors to generate seven Renilla Reniformis luciferase (RlucII)-fused SH2 as the energy donor component of the biosensors (Supplementary Fig. 1). The SH2 domains selected have been reported to interact with a range of RTKs in a pTyr motif-specific manner16. We used Renilla Reniformis GFP (rGFP)-fused to the CAAX motif of K-Ras as the BRET acceptor, thus targeting rGFP to the plasma membrane (PM)12 (Fig. 1a). The rGFP-CAAX fusion thereby allowed us to assess RTK effector engagement at the PM and more importantly, permitted to work with unmodified (i.e., untagged) receptors.
To evaluate if responses were receptor concentration-dependent, we performed receptor titration studies using EGFR as a model system. We monitored ligand-induced RlucII-SH2(PLCG1) recruitment to the PM following a 10-min stimulation with human EGF (hEGF) in HEK293 transiently transfected with different amounts of human EGFR coding plasmid (Fig. 1b). Receptor concentration-dependent and ligand concentration-dependent increase in BRET signals were observed following ligand addition. No effect was observed in the absence of EGFR transfection, confirming the specificity of the response. The largest assay window was obtained with 500 ng of EGFR; this quantity of receptor was therefore used for all subsequent experiments.
To further investigate EGFR signaling, we compared the responses of biosensors based on three different SH2-domain-containing biosensors in HEK293 cells expressing or not EGFR. The biosensors tested are generally (but not exclusively) associated with the activation of three major RTK signaling axes: SH2(Grb2) for the MAPK pathway, SH2(PLCG1) for the PKC pathway, and SH2(SHIP1) for the Akt pathway (non-canonical activation mechanism). The measured response demonstrated an EGFR and hEGF ligand concentration-dependent BRET signals with EC50s of 0.14 nM, 0.14 nM, and 0.21 nM, respectively (Fig. 1c). We also validated the specificity of four other RlucII-tagged SH2 domain biosensors from the following RTK-interacting proteins: SHC1, PI3K-R1d1, PI3K-R2d2 and Grb14. Ligand concentration-dependent responses were only observed in cells expressing EGFR and the presence of hEGF (EC50 between 0.1 and 0.3 nM) (Fig. 1d). Interestingly, Hill coefficients differed for each SH2 domain biosensor: 0.74 (SH2(Grb2)), 1.48 (SH2(PLCG1)), 1.23 (SH2(SHIP1)), 1.31 (SH2(SHC1)), 1.67 (SH2(PI3K-R1d1)), 1.34 (SH2(PI3K-R2d2)), and 1.35 (SH2(Grb14)). This may be suggestive of differential binding cooperativity between each molecule of RlucII-tagged SH2 domain protein and/or between the latter and endogenous effectors that interact with various pTyr motifs in the hEGFR cytoplasmic domain.
Spectroscopic and microscopic assessment of ligand-specific EGFR signaling at the plasma membrane
Using the panel of seven biosensors validated above, we then compared the ability of two natural EGFR ligands, hEGF and hEpiregulin, to activate the receptor by monitoring BRET signals. Plasma membrane recruitment of these biosensors was recorded following stimulation with increasing concentrations of each ligand. hEGF promoted the recruitment of the seven biosensors to the PM with similar potencies (EC50 ranging from 3 × 10−11 M to 10 × 10−11 M) (Fig. 2a). Compared to hEGF, hEpiregulin was at least 100-fold less potent in promoting the recruitment of SH2 effectors to EGFR’s tyrosine-phosphorylated sites based on BRET measurements (Fig. 2a). The sensitivity of the SH2-based biosensors allowed the quantification of responses to different ligands.
Recent advances in microscopy and more efficient BRET probes, such as those offered by ebBRET brought new opportunities for the development of BRET-based imaging tools. BRET imaging offers the possibility to validate the localization of newly designed ebBRET biosensors and to visually assess BRET signals in subcellular compartments. HEK293 cells were co-transfected with the EGFR receptor and the RlucII-tagged effector, SH2(Grb2), to monitor its recruitment at the rGFP-tagged PM. BRET images were first obtained in resting conditions and 10 min after stimulation with 10 nM hEGF. As shown in Fig. 2b and Supplementary Movie 1, the recruitment of the SH2(Grb2) effector to the PM upon hEGF stimulation using ebBRET-based imaging was sustained for at least 1 h. These BRET imaging results strongly support the data generated using spectrometric methods (Fig. 2a) while also illustrating the possibility of transposing the biosensor platform to microscopy (Fig. 2b).
Spectroscopic and microscopic assessment of ligand-specific EGFR signaling at the early endosomes
To assess whether EGFR activation by hEGF and hEpiregulin could be detected in early endosomes (EEs) we used rGFP-fused to the FYVE domain of endofin as BRET acceptor. Specific co-localization of the rGFP-FYVE fusion construct used in the present study to EEs (Rab5+ compartment) has been previously confirmed by microscopy12 using identical conditions. Targeting rGFP to EE allowed us to detect RTK effector engagement at the EE compartment by measuring BRET with the RlucII-tagged effectors (Fig. 3a). SH2(Grb2), SH2(PLCG1), and SH2(SHIP1) translocation to EEs was examined after a 60-minute stimulation with increasing concentrations of hEGF or hEpiregulin. For hEGF, all SH2 biosensors studied translocated to EEs with EC50s between 1.7 × 10−10 M and 2.4 × 10−10 M. In contrast, no responses were obtained upon hEpiregulin stimulation (Fig. 3b). These results are consistent with published evidence showing that hEpiregulin does not promote EGFR internalization to EEs17,18.
To validate that we were in the appropriate time window for translocation to the EEs after stimulation with hEpiregulin, we examined in real-time the trafficking of the three biosensors to EEs. Cells were stimulated with hEGF or hEpiregulin and BRET signals were monitored for a period of 60 min; measurements were recorded every 30 s. We observed again that hEGF, but not hEpiregulin, promoted a time-dependant increase of SH2(Grb2), SH2(PLCG1), and SH2(SHIP1) biosensors localization to the EEs, with the appearance in the EEs after 20 min of ligand stimulation (Fig. 3c). Altogether, these results highlight the capacity of the biosensors to monitor the spatiotemporal ligand signaling bias following EGFR activation.
BRET imaging was used to confirm the above observations for hEGF-induced SH2(Grb2) translocation to EEs (Fig. 3d). BRET signals were imaged before and at 10 and 60 min after hEGF treatment (10 nM). No signal was detected following a 10 min stimulation but a robust increase in BRET signal was observed in punctate intracellular structures after 60 min of stimulation in agreement with the spectrometric kinetic measurements.
Altogether, the newly generated RlucII-SH2 biosensors allowed the assessment of signaling kinetics in various cellular compartments and timescales ranging from milliseconds to hours and using BRET microscopy.
Spatiotemporal analysis of EGFR signaling blockade with the EGFR tyrosine kinase inhibitor Gefitinib
To further demonstrate the specificity of the SH2-based biosensor BRET signals, we monitored the inhibitory action of Gefitinib (IressaTM), an EGFR-specific tyrosine kinase inhibitor (TKI), commonly used as a first-line treatment for some breast and lung cancers. Cells expressing three separate SH2-biosensors were treated with increasing concentrations of Gefitinib for 30 min, followed by hEGF for 10 min. Gefitinib inhibited the recruitment of SH2(Grb2), SH2(PLCG1), and SH2(SHIP1) to the PM, with observed IC50s of 4 nM, 5 nM, and 21 nM respectively (Fig. 4a). Of note, these values are comparable to previously reported data in the literature using other methods (reported IC50s comprised between 30 nM and 40 nM)19,20. We also evaluated Gefitinib’s inhibitory activity in real time. Responses were rapidly reversed within 180 s, 90 s, and 60 s for SH2(Grb2), SH2(PLCG1), and SH2(SHIP1), respectively, upon the addition of Gefitinib (10 μM) after 30 min of stimulation with hEGF (Fig. 4b).
An understanding of trafficking and signaling of RTKs in the EEs is important since it has been proposed to be an important mechanism contributing to drug resistance21,22,23. It is thus necessary to properly examine and define the effects of therapeutics in such intracellular compartments. For this purpose, we measured BRET in the EEs using the SH2(SHIP1) biosensor, as this biosensor displayed the greatest assay window in that compartment. After a 30-minute incubation with increasing concentrations of Gefitinib, cells were stimulated for 60 min with hEGF (55 nM) to promote effector recruitment to EEs. As shown in Fig. 4c, Gefitinib was able to reverse the recruitment of SH2(SHIP1) to the EEs with a similar potency to the one observed at the PM (IC50 = 20 nM). To examine the real-time recruitment of SH2(SHIP1) to the EEs, EGFR-expressing cells were stimulated for 60 min with hEGF before the addition of a 10 µM Gefitinib (Fig. 4c). As observed at the PM, the signal was rapidly reversed within less than 60 s, showing the capacity of this TKI to inhibit the recruitment of SH2 effectors at both the PM and EEs.
BRET imaging was used to confirm the inhibitory effects of Gefitinib on hEGF-induced SH2(Grb2) recruitment at the PM and EEs (Fig. 4d and Supplementary Movie 1). BRET signals were assessed following the addition of 1 µM of Gefitinib after 1 h of stimulation with 10 nM hEGF, either looking at the PM or at EEs. BRET signals were completely reversed in both compartments with Gefitinib, further highlighting the advantage of using SH2-biosensors to characterize the activity of TKIs in different cellular compartments.
Endogenous EGFR signaling in cancer cell lines
A-431 human epidermoid carcinoma cells are known to express high levels of EGFR and are often used to study cancer-associated cell signaling events. We thus used this cell line to examine the ability of ebBRET-based RTK biosensors to measure signaling downstream of endogenously expressed RTKs. A-431 cells were transfected with the SH2(Grb2) effector and its recruitment to the PM was measured following stimulation of endogenous EGFR with hEGF (Fig. 5a). Stimulation of transfected A-431 cells produced a SH2(Grb2) response similar to what was observed in EGFR-transfected HEK293 cells (i.e., potency: EC50 = 0,32 nM vs 0,14 nM; efficacy: Emax = 4000 vs. 5700). We then evaluated the recruitment of SH2(Grb2) to the PM in real-time after addition of hEGF and its subsequent inhibition following the addition of 10 µM Gefitinib after 15 min of hEGF stimulation. SH2(Grb2) was recruited to the PM within 4 min and its activation was reversed by Gefitinib within 3 min (Fig. 5b). In addition to A-431 cells, which express high levels of EGFR, we tested the capacity of our SH2 biosensors to detect endogenous EGFR signaling in cells expressing lower receptor levels of the receptor (i.e., in HeLa and MDA-MB-231 cells). As shown in Fig. 5c, d, EGF dose-dependently led to EGFR activation and PM recruitment of the SH2(Grb2) biosensor in both cell lines. These data highlighted the capability of ebBRET-based RTK sensors to be used in different pathophysiologically relevant cellular models and demonstrate the sensitivity of the assays to detect signaling events from endogenously expressed RTKs.
Impact of cancer-associated EGFR point and truncation mutations on EGFR response
Glioblastoma (GBM), a very aggressive form of brain cancer with poor prognosis24, presents multiple aberrant genomic alterations of EGFR that are responsible for disrupted signaling and resistance to therapies25. EGFR extracellular domain truncation mutations (i.e., EGFR-vI, -vII, and -vIII)26,27, deletion in the kinase domain (i.e., EGFR-vIV and –vV mutants)28 and extracellular point mutations (i.e., A298V, R324L and G598V)29,30 are exclusively found in GBM31 (Fig. 6a). Furthermore, it has been reported that mutations in EGFR can lead to significant changes in receptor constitutive activity32,33,34.
We sought to determine signaling profiles at the PM of three types of mutants recurrent in GBM: EGFR-vIII, -vIV, and –G598V. HEK293 cells were transfected with plasmids expressing each of the mutated forms of EGFR, and either RlucII-tagged effector SH2(Grb2), SH2(PLCG1), or SH2(SHIP1). The translocation of the effectors to the PM was then monitored upon stimulation with increasing concentration of hEGF (Fig. 6b). Our data revealed that EGFR-vIII did not respond to stimulation with hEGF compared to wild-type (WT) EGFR. These results validated structural data showing that the EGF binding site is located within the portion of the receptor deleted in the EGFR-vIII mutant35. However, the basal BRET signal was found to be increased compared to the WT receptor reflecting the constitutive activity of the receptor. When analyzing ligand-independent receptor activation due to the presence of mutations, our data demonstrated that EGFR–vIII displayed significant constitutive activation for SH2(SHIP1) biosensor but not SH2(Grb2) and SH2(PLCG1) biosensors (Fig. 6c). EGFR-vIV responded to hEGF stimulation but with a ~10-fold lower potency than that observed with WT EGFR with SH2(PLCG1) and SH2(SHIP1) biosensors (Fig. 6b). Loss of some tyrosine-phosphorylated sites28 may account for the above observations. Finally, EGFR-G598V, which is found in smaller cohorts of GBM36, showed similar maximal ligand responses compared to WT EGFR (Fig. 6b). Conversely, EGFR–vIV displayed significant ligand-independent constitutive activity with the SH2(SHIP1) biosensor only, while the EGFR-G598V point mutant displayed significant constitutive activity with SH2(PLCG1) and SH2(SHIP1) biosensors (Fig. 6c).
We then investigated the impact of EGFR-vIII, -vIV, and –G598V mutations on ligand-dependent and -independent activity in the EEs. Similar to its activity at the PM, EGFR-vIII induced selective constitutive SH2(SHIP1) effector recruitment to EEs; stimulation with EGF did not further enhance the translocation of effectors to EE (Fig. 7a, b). Interestingly EGFR-vIV displayed a complete lack of effector recruitment to EEs, despite being almost fully functional in recruiting the SH2 effectors to the PM (Fig. 7a). These observations may be linked to the fact that this mutant lacks the Y1045 phosphorylation site shown to promote receptor internalization and degradation through the recruitment of ubiquitin ligase c-CBL37,38. Alternatively, failure of the Y1045 mutant to recruit c-Cbl may indirectly impact EGFR trafficking by impairing ubiquitination (and subsequent activation) of (an) accessory protein(s) involved in receptor internalization as previously described39. Finally, the EGFR-G598V mutant displayed increased constitutive activity for both SH2(Grb2) and SH2(SHIP1) effectors at the EEs and still responded to hEGF stimulation in this compartment indicating that, similarly to the WT, EGFR-G598V is internalized upon agonist stimulation (Fig. 7a, b). Differences in EE SH2 effector recruitment to the various EGFR mutants is not explained by differences in receptor expression, as quantification of surface and total EGFR expression by flow cytometry demonstrated comparable or even slightly higher expression levels of EGFR mutants to EGFR-WT when overexpressed in HEK293 cells (Supplementary Figs. 2 and 3).
EGFR point mutations EGFR-T790M, -C797S, and -T790M/C797S are acquired mutations that arise during treatment with first and third-generation EGFR TKIs and occur in non-small cell lung carcinoma (NSCLC)40,41. We assessed the inhibitory effects of two TKIs approved for the treatment of NSCLC on these EGFR mutants (Fig. 8). Looking at the real-time recruitment of SH2(PLCG1) effector to the PM, we followed the activation of the mutated receptors, compared to WT EGFR, after stimulation with hEGF. We then followed the reversal of effector engagement upon the addition of 10 µM of first-generation TKI, Gefitinib, or third-generation TKI, Osimertinib (TagrissoTM). Interestingly, we observed different kinetics of inhibition between the two TKIs on WT EGFR. Gefitinib displayed faster inhibitory activity (within 60 s) compared to Osimertinib (5 min) in completely reversing WT EGFR signaling. Gefitinib reversed the activity of WT EGFR and –C797S, but this TKI was ineffective on the –T790M mutation.
These observations are supported by Gefitinib’s mode of action, which involves binding to the EGFR kinase ATP binding site and the fact that the –T790M mutation is located in the ATP binding site42,43. In contrast, Osimertinib reversed the activity of both EGFR-WT and –T790M, but not of –C797S mutant (Fig. 8). Osimertinib was developed to circumvent –T790M mutation as it forms a covalent bond with Cys797 at the edge of the ATP-binding pocket44. Its efficacy is, however, compromised by the presence of a mutation on this cysteine residue45. As expected, both TKIs were ineffective on the EGFR–T790M/C797S double mutant. Our observations are consistent with data in the literature, showing the capacity of the RTK biosensor platform to discriminate the effects of different TKIs, and the impact of mutations on TKI activity.
Discussion
We have developed a BRET-based biosensor platform enabling the study of RTK activity in living cells. This platform of genetically encoded biosensors is based on ebBRET12, which confers the ability to study spatiotemporal aspects of receptor activity with great sensitivity and robustness. Validation of the biosensor platform was performed using EGFR but is applicable to the study of other RTKs. For all biosensors tested, EGFR agonist and inhibitor responses were concentration-dependent and exhibited potencies paralleling those documented in the literature2,19,20,46,47,48, highlighting the reliability of the technology. The use of the RTK biosensor platform can further be applied in imaging, allowing the monitoring of specific interactions between protein partners when they are present in close proximity within the same cellular compartment and the translocation of effectors between compartments, as shown in the current study.
The biosensor platform exhibits a wide range of advantages. To begin, the platform provides both qualitative and quantitative data on receptor activity by offering the ability to interrogate live-cell signaling across a vast array of pathways. This represents a significant improvement over classically used in vitro kinase assays, which are limited in their ability to detect compounds that modulate RTK activity allosterically (via mechanisms that are independent of direct kinase inhibition) and compounds whose activity requires accessory proteins and/or cellular co-factors. These advantages, coupled to the ability to screen multiple pathways, significantly reduce the chances of falsely labeling therapeutically viable molecules as inactive.
In addition, the availability of a wide range of effector-specific biosensors linked to different downstream signaling cascades allows for the identification of ‘‘biased ligands” and “biased signaling”. Biased ligands hold potential therapeutic relevance because of their ability to selectively modulate therapeutic signaling cascades while lacking activity on cascades that may produce deleterious side effects. Ligand-biased signaling has been extensively described for GPCRs49,50,51,52,53; yet, this field remains underexplored for RTKs, in part due to an emphasis on the discovery of ATP-competitive catalytic domain inhibitors. Reports of biased signaling and ligands have been reported for IGF-1R54. Indeed, EGF and Epiregulin displayed differences (especially in potency) in engaging various signaling effectors at the PM. Such differences, however, do not constitute ligand-biased signaling, which is described as ligand‐dependent activation of certain pathways over others. Relative to EGF, Epiregulin is simply less potent in recruiting the SH2 effectors to the PM to an equal degree across the different effectors for which an EC50 can be determined. Thus, with regards to PM engagement of SH2 effectors in our experimental system, Epiregulin is a balanced EGFR ligand that displays lower potency in activating EGFR relative to EGF. However, signaling bias may also occur at a spatiotemporal level, with different ligands promoting distinct signaling events at different cellular compartments. Indeed, we demonstrated that EGF, but not Epiregulin, stimulated effector engagement at the early endosomal compartment. Endosomal RTK signaling and subsequent cellular outcomes, including cell transformation and tumorigenesis, are thought to differ from those outcomes resulting from plasma membrane activity (reviewed in55,56,57). Interestingly, recent structural studies of EGFR have revealed that some EGFR natural ligands, Epiregulin and Epigen, stabilize distinct (i.e., less stable) dimeric conformations of the EGFR extracellular domain relative to EGF2. Such differences were linked to distinct biological outputs, with EGF promoting proliferation and Epiregulin and Epigen stimulating differentiation of breast cancer cells. Our biosensor platform will help expand knowledge of RTK signaling outputs from endosomal compartments and their relevance to both pathophysiological and therapeutic outcomes.
Unlike other assays offering receptor-proximal functional readouts, the platform described herein does not require the tagging of receptors. The addition of tags to receptors may influence signaling and/or trafficking. Importantly, tagging of RTKs (especially with fluorescent proteins, like GFP) may result in artefactual receptor dimerization. Such dimerization could be driven by the propensity of fluorescent proteins to naturally dimerize58,59. Dimerization of RTKs is a hallmark event in receptor activation; as such, fluorescence protein dimerization may result in false and/or increased basal activation of RTK signaling. The use of untagged receptors also makes the ebBRET-based biosensor platform amenable to the study of endogenously expressed receptors, as shown herein with A-431, HeLa, and MDA-MB-231 cells.
Overexpression of the various effector-specific SH2 domains may interfere with the interactions of RTKs with various endogenous scaffolding and/or signaling proteins. As a result, this may disrupt membrane traffic that is elicited upon EGFR activation and may fail to detect all feedback regulation of EGFR signaling. Furthermore, when using heterologous expressed RTKs and the SH2-based effectors, some of the responses could emanate from favorable stoichiometries that may not exist under physiological conditions. Such profiling represents the coupling possibilities and not necessarily the coupling that will be observed in all cell types. Any couplings observed in such settings require further validation to conclude their physiological relevance in cells or tissues of interest.
The biosensors were further applied to the signaling profiling and pharmacological characterization of various activating mutations frequently found in GBM: EGFR-vIII (N-terminal deletion mutant lacking exons 2–7), EGFR-vIV (C-terminal deletion mutant lacking exons 25–27) and the extracellular point mutant EGFR-G598V34,60. In accordance with previous reports, we detected ligand-independent (i.e., constitutive) activity of EGFR-vIII, -vIV, and -G598V mutants with conserved ligand responsiveness for mutants EGFR-vIV and -G598V29,32,61. Interestingly, our data suggest mutant-specific patterns of constitutive pathway activation, with EGFR-vIII and -vIV mutants displaying greater selectivity in pathway engagement versus a more promiscuous profile for the -G598V mutant. The identification of central signaling axes common to a majority of RTK mutants may favor the development of novel therapeutics targeting shared signaling effectors and mechanisms. Such drugs could thus circumvent issues related to tumor heterogeneity and resulting drug resistance.
Various mutations have been shown to confer drug resistance62, such as those used in the present study and found in NSCLC. In fact, EGFR mutations such as EGFR-T790M, -C797S, and -T790M/C797S commonly arise during treatment in clinical settings. As exemplified by the Gefitinib and Osimertinib data in Fig. 8, our biosensor platform allowed the differentiation of drugs with different activity profiles toward different mutations leading to drug resistance. To date, overcoming acquired resistance remains an important challenge as tumors constantly develop new resistance mechanisms that counter successive generations of inhibitors. As mutations present a dynamic landscape, elucidating the complexity of acquired and intrinsic mutation mechanisms, and decrypting the signaling profile of RTK mutations, could help identify and develop improved therapeutic tools and strategies.
In summary, this study highlights the applicability of the RTK biosensor platform to perform in-depth, spatiotemporal characterization of RTK biology and pharmacology. The RTK bioSens-All® platform represents a versatile toolset for the development and characterization of novel “biased” RTK ligands and tyrosine kinase inhibitors effective against various mutations involved in drug resistance.
Methods
Ligands
The following compounds were used in this study: human recombinant Epidermal Growth Factor (EGF) (Cedarlane; ON, Canada; cat#CL10504), human recombinant Epiregulin (Cedarlane; ON, Canada; cat# CLCYT609), Gefitinib (Iressa®; Tocris Bioscience, United Kingdom; cat# 3000). and Osimertinib (Tagrisso®; MedChemexpress, NJ, USA; cat# HY-15772A).
Plasmids
Human pcDNA3.1(+)-EGFR-WT was kindly provided by Dr Michel Bouvier’s lab (IRIC, Montreal University, QC, Canada). Human pcDNA3.1(+)-EGFR-WT was used to generate EGFR mutants by mutagenesis: (i) EGFR-T790M: threonine in position 790 mutated in methionine; (ii) EGFR-C797S: cysteine in position 797 mutated in serine; (iii) EGFR-T790M/C797S: threonine in position 790 mutated in methionine and cysteine in position 797 mutated in serine; (iv) EGFR-G598V: glycine in position 598 mutated in valine; (v) EGFR-vIII, truncated between amino-acids 30 and 297; and (vi) EGFR-vIV, truncated between amino-acids 982 and 1054. Human SH2-domains of effector proteins were synthesized, and the generated synthetic DNA fragments were subcloned downstream the RlucII portion into a pCDNA3.1(+) vector after HindIII/XbaI digestion (Supplementary Fig. 1a, b). All plasmids were generated by Topgenetech (Montreal, QC, Canada). Their amino-acid sequences are presented in Supplementary Fig. 1. Both rGFP-CAAX and rGFP-FYVE constructs were previously described12.
Cell culture
Human embryonic kidney 293 HEK293-SL cells were a gift from Dr Stéphane Laporte’s lab (McGill University, Montreal, QC, Canada)12 and human epidermoid carcinoma A-431 cells (cat# CRL-1555), human adenocarcinoma HeLa cells (cat# CRM-CCL-2) and human adenocarcinoma MDA-MB-231 cells (cat# CRM-HTB-26) were obtained from the American Type Culture Collection (ATCC, VA, USA). All cell lines were cultured in a complete medium containing Dulbecco’s Modified Eagle Medium (DMEM; without sodium pyruvate, with 4.5 g/L glucose, without L-glutamine; Wisent, QC, Canada; cat# 319-030-CL) supplemented with 1% penicillin-streptomycin (PS; 100 U/mL penicillin and 100 μg/mL streptomycin; Wisent, QC, Canada; cat# 450-201-EL) and 10% fetal bovine serum (FBS; Wisent, QC, Canada; cat# 090150). Cells were divided twice a week and incubated at 37 °C in a humidified atmosphere with 5% CO2.
Transfection
Forty-eight hours before the BRET experiments, HEK293-SL cells were co-transfected with the receptor and one of each RlucII-SH2 / rGFP-localization biosensors. For each transfection condition, the total amount of transfected DNA was kept constant at 1 µg per mL of cell culture to be transfected; whenever necessary, salmon sperm DNA (Invitrogen, CA, USA; cat# 15632011) was used as a DNA carrier to supplement plasmid DNA (i.e., biosensor and receptor). Plasmids quantities per mL of cell culture were assembled in 150 mM NaCl (pH 7.0) as follows: 250 ng of EGFR-WT or EGFR mutants, 10 ng of RlucII-SH2 construct, and 250 ng of rGFP-CAAX (PM) or rGFP-FYVE (EEs) plasmids. PEI (polyethylenimine 25 kDa linear; PolyScience, IL, USA; cat# 23966), previously diluted in 150 mM NaCl, was used as the transfection agent, and the PEI: DNA ratio (µg:µg) was fixed at 3:1. The PEI-containing solution was added to the DNA solution and the DNA/PEI mixture immediately vortexed for 5 s. The DNA/PEI mixture was incubated for at least 20 min at room temperature to allow for the formation of DNA/PEI complexes. During the incubation, HEK293-SL cells were detached, using Trypsin-0,05% EDTA (Wisent, QC, Canada; cat# 325-542-EL), counted and re-suspended in complete DMEM culture medium containing 2% of FBS to a concentration of 3.5 × 105 cells/mL. At the end of the incubation period, the DNA/PEI mixture was added to the cells. Cells were finally distributed in 96-well plates (White Opaque 96-well /Microplates; Greiner, NC, USA; cat# 655083) at a density of 35,000 cells per well. Cells were maintained in culture for the next 48 h before BRET measurements.
A-431 cells were transfected exactly as described for HEK293-SL above, with the exception that no receptor-coding plasmid was transfected since A-431 cells express high levels of endogenous EGFR. HeLa and MDA-MB-231 were transfected using FuGENE® HD Transfection Reagent (Promega, Madison, WI, USA) and OPTI-MEM®I reduced serum medium (Invitrogen; cat# 31985062) as the DNA and FuGENE® HD dilution agent. Cells were distributed in 96-well plates at a density of 45,000 cells per well and maintained in culture for the next 48 h before BRET measurements.
Bioluminescence resonance energy transfer (BRET) measurements
At 48 h post-transfection, BRET experiments were performed according to the following protocol. Culture medium was aspirated and replaced with 100 µl of pH 7.0 Hank’s Balanced Salt Solution buffer (HBSS; without red phenol; with sodium bicarbonate, with calcium and magnesium, with HEPES; Wisent, QC, Canada; cat# 319-067CL) per well. Plates were incubated for at least 60 min at room temperature to allow equilibration of the transfected cells in the HBSS buffer.
Testing of agonist ligands
Increasing concentrations of test compound (EGF or Epiregulin) were added to each well using the HP D300e digital dispenser (Tecan, Switzerland). Compounds were assayed at 22 concentrations for each biosensor. Right after compound injection, 10 µl of 10 µM of luciferase substrate, e-Coelenterazine Prolume Purple (Methoxy e-CTZ; Nanolight Technologies, AZ, USA; cat# 369), were added to each well to a final concentration of 1 µM. Cells were then incubated with the test compounds at room temperature for 10 min (for measurement of responses at the plasma membrane (PM)) or 60 min (for measurement of responses at early endosomes (EE)) under agitation. BRET readings were collected with a 20 s integration time on a SPARK 10 M plate reader (Tecan, Switzerland) with an energy donor filter (400 nm ± 70 nm) and energy acceptor filter (515 ± 20 nm). BRET values were obtained by calculating the ratio of the light emitted by the energy acceptor (rGFP) over the light emitted by the energy donor (RlucII).
Testing of inhibitors
To study the inhibitory effects of Gefitinib at both the PM and EE, increasing Gefitinib concentrations were added to cells (as described above). BRET was recorded 30 min later as a measure of any potential agonist (including inverse agonist) activity of the compounds. Immediately following this initial BRET recording, EGF (EC80) was directly added to each well (the same well treated with the inhibitor) using the HP D300e digital dispenser. Cells were then incubated at room temperature for an additional 10 min (for measurement of responses at the PM) or 60 min (for measurement of responses at EE), after which time a second BRET measurement was recorded to assess the inhibitory activity of the compounds. All BRET readings were collected, as previously mentioned, on a SPARK 10 M plate reader.
Real-time kinetics of agonist ligands
Prior to ligand addition, cells were incubated with 10 µl of 20 µM e-Coelenterazine Prolume Purple (2 µM final concentration) for 5 min at room temperature to stabilize the luciferase signal. Previously determined EC80 of EGF or maximal concentration of Epiregulin was then injected using the HP D300e digital dispenser. BRET values were collected each 30 s for 60 min with a 20 s integration time on the SPARK 10 M plate reader. The same filters as described above were used.
Real-time kinetics of inhibition
After a 5-minute incubation with a final concentration of 2 µM Prolume Purple, cells were stimulated with an EC80 of EGF, and BRET was recorded every 30 s for 30 min (for measurement of responses at the PM) or 60 min (for measurement of responses at EE). After 30 or 60 min of agonist stimulation, 10 µM of Gefitinib were injected, and BRET measurements were recorded every 30 s for another 30 min. In the case of A-431 cells, the same protocol was followed except for the total time of the PM kinetics assay: after 15 min of agonist stimulation, Gefitinib was added for 15 additional minutes.
BRET Calculations and analysis
BRET values were obtained by calculating the ratio of the light emitted by the energy acceptor (rGFP; 515 ± 20 nm)) over the light emitted by the energy donor (RlucII; 400 nm ± 70 nm). BRET ratios were then standardized using the equation below and represented as universal BRET (uBRET) values:
Constants A and B, obtained on the SPARK 10 M plate reader, correspond to the following values:
A = pre-established BRET ratio obtained from transfection of a background control (vector coding for RlucII alone).
B = pre-established BRET ratio obtained from transfection of positive control (vector coding for a GFP10-RlucII fusion protein).
The standardized BRET ratio is referred to as uBRET. uBRET data are expressed as the mean of at least three independent experiments ± SEM.
In order to compare basal (constitutive) activities between EGFR-WT and EGFR mutants (Figs. 6c and 7b), a control condition with no receptor and RlucII-SH2 / rGFP-CAAX (for PM) or rGFP-FYVE (for EE) transfected cells was added on each assay plate; using the mean of these ‘biosensor only’ controls, raw uBRET data were normalized and thus allowing to differentiate changes in basal activities due to EGFR mutations. Using the normalized values calculated for non-stimulated conditions, we generated histograms for constitutive activities comparison (vs.EGFR-WT).
Statistics and reproducibility
All experiments were performed in at least three biological replicates (see figure legends), and data are expressed as the mean of at least three independent experiments ± standard error of the mean (SEM). The statistical significance of the differences was tested using an ordinary one-way ANOVA with Bonferroni post hoc adjustment for multiple comparisons, using GraphPad Prism 8.0. A value of p < 0.05 was considered significant. All generated concentration-response curves were fitted and analyzed using the four-parameter logistic non-linear regression model in GraphPad Prism (v8.0, GraphPad Software Inc, CA, USA). Kinetics were fitted using the non-linear one-phase association model in Prism 8.
BRET imaging
BRET imaging was performed using a BRET microscope composed of an inverted microscope (Eclipse Ti-U, Nikon, NY, USA), an optical filter unit (Lambda 10-2, Sutter Instrument, CA, USA), and an EMCCD camera (HNü512, Nüvü cameras, QC, Canada) as described in Kobayashi et al.63.
HEK293-SL cells were seeded 72 h prior measurement on poly-d-lysine-coated 35 mm glass bottom dishes (MatTek, MA, USA; cat# P35GC-1.5-14-C) at a density of 2–6 × 105 cells per dish, and transfected at 48 h before BRET imaging with 250 ng EGFR-WT, 30 ng of RlucII-SH2(Grb2) construct, 250 ng of rGFP-CAAX (PM) or rGFP-FYVE (EEs) plasmids, completed to 1 µg final with ssDNA.
Just before the imaging experiment, cells were washed with pH 7.4 Modified HBSS (137.9 mM NaCl, 5.33 mM KCl, 1 mM CaCl2, 1 mM MgCl2, 0.44 mM KH2PO4, 0.33 mM Na2HPO4, 10 mM HEPES). EGF (10 nM), Gefitinib (1 µM), and the luciferase substrate Coelenterazine-400a (10 µM; Nanolight Technologies, AZ, USA; cat# 340) were diluted in HBSS.
After the addition of the luciferase substrate, photon counting frames were continuously obtained and integrated for 10 s without a filter (total luminescence frames), then for 10 s with a long-pass filter (480LP, acceptor frames). The video represents the time-lapse recording with exposure of 50 s/channel/frame and a video rate of 6FPS (1 s → 300 s). Each frame was recorded with an EM gain of 3000 and 100-ms exposure time. Acceptor and total luminescence images were generated by repeating 25 integration cycles (total exposure time 250 s/channel) and integrating all frames with the same filter settings. Image analysis was performed using MATLAB 2019b (The MathWorks, Inc.). Images were treated with photometric correction64 and iterative Poisson image denoising65 filters. BRET levels used in BRET imaging correspond to the ratio of acceptor (rGFP) photon counts to donor photon counts calculated for each pixel63,66. BRET levels are expressed as a color-coded heat map, with the lowest being black and purple and the highest red and white.
Flow cytometric evaluation of EGFR expression
For evaluation of cell surface EGFR levels, samples were prepared according to BD Biosciences’ protocol for cell surface staining of stem cells and other adherent cells for flow cytometry. Briefly, cells were transfected as described above, washed once, and incubated in 2% EDTA in PBS solution for 10 min. Cells were then put in suspension by gently pipetting up and down, washed with four volumes of PBS, and once with stain buffer (1xPBS, BSA 2%, NaN3 0.1% pH 7.4), and resuspended to a concentration of 1 × 106 cells/mL. Samples were then fixed by incubating in paraformaldehyde (4% in PBS) for 30 min. The cells were incubated for 1 h on ice with 5 µg/mL antibodies: PE mouse anti-Human EGF Receptor (BD PharmigenTM, ON, Canada; cat # 566778) or PE mouse IgG1 k-Isotype Control (BD PharmigenTM, ON, Canada; cat# 554680). To evaluate total EGFR expression, fixed cells were permeabilized for 20 min in 0.5% Tween-20 solution in PBS. Samples were washed with stain buffer (1xPBS, BSA 2%, NaN3 0.1% pH 7.4) and incubated for 1 h on ice with 0.2 µg antibodies (listed above). Cells were washed twice with stain buffer, and events were recorded on an LSRFortessa™ Cell Analyzer (BD Biosciences). Flow cytometry analysis was performed using the FlowJo v10.10.0 software (BD Biosciences).
Reporting summary
Further information on research design is available in the Nature Portfolio Reporting Summary linked to this article.
Data availability
The amino acid sequences of all RLucII-SH2 effectors and human EGFR-WT and six studied EGFR mutants are shown in Supplementary Fig. 1. Expression levels of EGFR-WT or mutants overexpressed in HEK293 cells are shown in Supplementary Fig. 2. The gating strategy for flow cytometry data is provided as Supplementary Fig. 3. Time-lapse recording of BRET signal for the recruitment of RlucII-SH2(Grb2) at the plasma membrane is shown in Supplementary Movie 1. The source data behind the graphs in the manuscript are shown in Supplementary Data 1.
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Acknowledgements
This study was funded by the National Research Council of Canada Industrial Research Assistance Program (NRC IRAP). Part of the work was funded by a Foundation grant (#FDn-148431) from the Canadian Institute of Health Research (CIHR) to MB.
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F.G., A.M., B.B., C.L., M.B. and X.L. conceived and designed the research. F.G., A.M., B.B., H.K. and P.H.S.P. performed the experiments. F.G., A.M., B.B., H.K. and X.L. developed the methods. F.G., A.M., H.K., P.H.S.P., M.B., X.L., S.C. and L.S. participated in the analysis and interpretation of the results. F.G., A.M., H.K., P.H.S.P., M.B. and L.S. wrote and reviewed the paper. All authors reviewed and approved the paper for publication.
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F.G. and B.B. were employees of Domain Therapeutics NA Inc. A.M., and L.S. are employees of Domain Therapeutics NA Inc. X.L. was an employee of Domain Therapeutics. S.S. is an employee of Domain Therapeutics. M.B. is chairman of Domain Therapeutics scientific advisory board. The remaining authors declare no competing interests.
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Gross, F., Mancini, A., Breton, B. et al. EGFR signaling and pharmacology in oncology revealed with innovative BRET-based biosensors. Commun Biol 7, 250 (2024). https://doi.org/10.1038/s42003-024-05965-5
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DOI: https://doi.org/10.1038/s42003-024-05965-5
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