Change your Toolbox to Create Addiction-Free Opioid Analgesics!
Thomas J. Feuerstein1*, Ulrich G. Hofmann1,2
Copyright : © 2018 . This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
The US opioid crisis stays challenging, as analgesic opioids avoiding both tolerance and addiction are not yet available. The addiction tendency of opioid analgetics may be circumvented by exploiting the principle of biased agonism. Still missing µ-opioid analgetics may be caused by a shortcoming of current agonist’s efficacy estimation. Present efficacy estimates do not yield meaningful correlations with corresponding ligand-biased signaling events. We propose to use the "mechanistic" general response function to deduce the agonist dissociation constant Kd at the receptor under investigation. Accordingly, the transduction shift, pEC50 – pKd, may more reliably estimate the agonist’s efficacy while truly taking spare receptors into account. All in all, the search for adequate opioid replacement drugs should be undertaken with revisited and more suitable tools.
Toolbox, Create Addiction-Free, Opioid Analgesics
1. The Problem
2. µ-Opioid Receptor-Mediated Responses
3. Measures Of Agonist Efficacy
4. Theoretical Background Of Agonist Models
Table1. Direct Proportionality between Relative Binding and Relative Response Take a semi-logarithmic concentration-response curve with Lex being the decadic logarithm lg of the applied concentration (M) of an exogenous agonist which is the independent variable of a function f(Lex). Then, f(Lex), the relative response, is the dependent variable. The semi-logarithmic binding ratio b, describing fractional receptor occupation as function of Lex in the case of a bimolecular reaction, can be deduced from the Law of Mass Action as Kd is the dissociation constant of the agonist at the receptor.
The concentration-response can thus be expressed as a function f(b(Lex)). Then the first derivative of this concentration-response curve, [f(b(Lex))], is not congruent with the first derivative b´(Lex) of a bimolecular binding sigmoid unless there is direct proportionality between receptor occupancy and response:
This inequality only disappears if there is direct proportionality between occupancy and response. Disappearance means that the function f (i.e. the relative response) of a variable (i.e. occupancy) equals that variable and yields f (b (Lex)) = b (Lex). Such a direct proportionality, including parallel shifts in both axis directions, is not possible when spare receptors are present.
Without direct proportionality, e.g. when a receptor reserve exists, the change of the slope function (first derivative) of a concentration-response curve of a full agonist from the slope function of a theoretical binding sigmoid is essential.
The theoretical derivation of a general response function (Table 2) is based on two assumptions [10], adapted here to & micro-opioid receptors:
Fig. 7 in [13] reflects an example of such a transduction shift and is displayed here for demonstration (Fig. 1). Nonlinear regression analyses, one with the general response function, the other with a logistic function is shown (Fig. 1). A logistic function is necessarily symmetric in its inflection point. Its abscissa value is the lgEC50. In comparison to the general response function which allows a “mechanistic” interpretation (e.g. a Kd estimate), a logistic function can only have a “descriptive” character (e.g. an EC50 estimate).
The 2-autoreceptor-mediated inhibition by noradrenaline of evoked noradrenaline release in slices of the rabbit hippocampus (for experimental details see [10]).
The dashed inhibition curve was fitted with a logistic function, the solid curve with the general response function. These curves represent the best nonlinear fits to all the individual values (dots) Sx/S 1 (read out of the inhibition of noradrenaline release). The most important parameter estimates together with their CI95s are indicated with the nomenclature -LEC50:= pEC50 and - LKd:= pKd. Estimates of n = 4, k = 3, and of a “true” Kd of 10–8.00 M corresponded to a receptor reserve of 25% [= 100(n – k)/n] which accounted for a significant transduction shift of 0.23 lg units between the EC50 M) and the true Kd of
noradrenaline. We purposely chose an example with a relatively low receptor reserve (25%) to demonstrate the estimation precision of our procedure to evaluate a transduction shift.
The concept of functional units impacts conclusions from functional studies with homogenized material. For instance, a synaptosomal membrane preparation is used to measure a receptor-mediated inhibition of adenylyl cyclase activity. In intact synaptosomes, the receptors under investigation may have a density of n = 10 per functional unit, e.g. a nerve terminal. 60% spare receptors then correspond to k = 4. Membrane homogenization destroys all individual functional units: the homogenate may then be regarded as a single huge functional unit, bearing an extremely high number of receptors, presumably with a preserved receptor reserve of 60%. The activation of 40% of all receptors in the homogenate should then yield 100% of adenylyl cyclase inhibition. However, the activation of 40% of all receptors in intact synaptosomes does not induce a 100% inhibition, since the agonist occupation per synaptosome is not exactly four at each. Only those synaptosomes with four or more occupied receptors contribute with their maximum strength to the overall effect. Therefore, the potency of an agonist will be higher in a homogenate than in intact synaptosomes. Its concentration-response curve is located on the left of that in synaptosomes.
Also in the case of activated ligand-bound complexes the subsequent binding process to an intracellular effector is “binomial”. It reflects the discrete probability of “success”, here the binding of a ligand-bound complex to one of its effectors. If special intracellular effectors exceed the number of currently present ligand-bound complexes these members then represent an effector reserve. Effectors not interacting with ligand-bound complexes may be called spare effectors.
The model of Black and Leff [5] was developed to reflect the above mentioned peculiarities of a receptor reserve, EC50< Kd and maximal response upon submaximal receptor occupancy by a pure agonist. Response expressed by the operational model used a so-called “rectangular hyperbolic” function of the concentration of occupied receptors, called “transducer function”. However, it is fundamentally flawed to suppose a priori that a response function is “rectangular hyperbolic” (for details see [12]). The model ignores the possibility of a relative effect E/Emax to be proportional to the binding ratio. In that case, the agonist dissociation constant Kd is largely misjudged. If there is no direct proportionality between effect and binding ratio, e.g. if a receptor reserve is present, response as function of agonist concentration is not a symmetric sigmoid in semi-logarithmic scale (see above). The operational model does not allow for such a shape and therefore its estimate of a receptor reserve is unbalanced. Additional shortcomings of this model are described in [12].
In summary, the operational model of pharmacological agonism roughly satisfies the pharmacological expectation about a receptor reserve, i.e., EC50< Kd. This is achieved, however, without relying on the physico-chemical grounds of pharmacology since the “transducer ratio” or the “operational efficacy” of an agonist (see [5]) has no clear biological meaning. The price to be paid for the realization of EC50< Kd is that the operational model may detect a receptor reserve which does not exist (see [9, 12]).
Spare receptors must induce a change of the first derivative of a concentration-response curve of a full agonist from that of a binding sigmoid [9]. This condition has not been considered by Black and Leff [5]. Consequently, the operational model does not yield appropriate efficacy estimations and may have hindered so far the discovery of ligand-biased signaling events pointing to addiction-free opioid drugs.
How should one proceed if a decision has to be made between a descriptive [5] and a mechanistic model[10]? Nonlinear regression analysis provides an objective criterion, the goodness-of-fit, i.e. the Residual Sums of Squares (RSS). We recommend the following pragmatic approach to decide between competing models: To prefer a mechanistic model over a descriptive model, the mechanistic model should yield at least an equivalent quality of the fit procedure if both models have nearly the same number of parameters to be estimated. The number of parameters of the logistic function (Emax, EC50, c) appears less than the number of parameters of the general response function (Emax, Kd, n, k).The Hill coefficient c is a real variable and n and k are positive integer variables. The fraction of spare receptors is estimated by the quotient (n–k)/n. The quotient thus may represent a single “real” parameter, corresponding to the single “real” c. With the same number of parameters of the two models, “equivalence” may be assumed if the percentage difference of the RSS values is less than 10%.
Most agonists don´t simply mimic endogenous ligands but cause receptors to exercise only portions of their vast repertoire of behaviors [3]. This receptor-based selectivity or biased agonism represents an expansion of the activation possibilities of an endogenous agonist. The corresponding targeting of chemical structures of ligands as possibility to induce a selective cellular function may be available avenue for therapeutic selectivity.
Obviously, such a therapeutic progress is urgently needed in the development of new µ-opioid receptor analgesic drugs which should lose their addiction risks. Obtaining accurate measurements of agonist efficacy is most important in the analysis of opioid tolerance (e.g.[6]). Ligand-related conformation changes as biased agonism at the µ-opioid receptor were correlated with agonist efficacies to activate receptor internalization [6]. However, unexpectedly, some µ-opioid receptor agonists did not display a good correlation between the operational efficacy for G protein activation and the operational efficacy for the activation of receptor internalization. Are these discrepancies due to the use of the operational model of Black and Leff [5] to estimate efficacies? May other implementations to discriminate between agonist affinity and efficacy yield better results?
We think that the above-mentioned transduction shift, pEC50 – pKd according to the general response function, is a better tool than the operational efficacy.
To (partly) explain the ability of opioids to induce tolerance three theories were proposed .[6]: (1) Low efficacy µ-opioid agonists induce profound tolerance because they give rise to receptor desensitization, but little receptor internalization. Then the receptor is unable to undergo efficient dephosphorylation and resensitization. (2) Morphine differs from other µ-opioid agonists by different molecular mechanisms to desensitize µ-opioid receptors.
(3) The low efficacy of morphine induces little µ-opioid receptor desensitization. Its prolonged signaling at the receptor leads to neuronal adaptations that precipitate tolerance.
All three theories may be compromised by agonist efficacy estimates with shortcomings. Refinements of the operational model .[5] cannot solve that and probably have hindered to find biased µ-opioid replacement drugs with low or no addiction tendency. It seems advisable to explore other ways of analyzing agonists.
We recommend to evaluate the inflection point asymmetry and the steepness at the inflection point of concentration-response curves by nonlinear regression analysis, keeping the following in mind: (1) the data point resolution on the lg concentration abscissa should be as high as possible. It is more important to sample the concentration space with many data points than scarce data points with many measurements. The minimal concentration difference must not exceed a half lg-unit. Dense sampling of the concentration scale improves nonlinear fits. (2) Test concentrations should include extremal (low and high) values to cover the flat branches of the curve. The zero concentration of the tested ligand should lie at least one lg-unit below the lowest real ligand concentration. Without sampling these flat tails, the deviations from symmetry of fitted curves cannot be recognized. (3) Nonlinear regression analyses must be based on the individual data points, not on their means.
Thus, it is advisable to sample the concentration space in the widest possible way and to use fit models suitable for also detecting asymmetry in concentration-response curves. For this purpose it may be necessary to supplement concentration-response curves used for previous analyzes.
Transduction shifts, pEC50 – pKd according to the general response function, should be the applied efficacy estimates, replacing the method of Black and Leff [5]. All in all, the long path to adequate replacement drugs to effectively combat the opioid crisis has only just began, but should be undertaken with a more suitable set of tools, including new considerations (Table 3). The use of incorrect estimation methods for the efficacy of agonists must be avoided.
Table3. Binding duration as a key to biased agonism?
With respect to the principle of biased agonism, the use of different chemical structures of ligands as alternatives to induce selective cellular functions, both the spatial dimensional accuracy of an agonist regarding the µ-opioid receptor binding pocket and its actual conformation deserves attention. We propose to analyze the principle of biased agonism of µ-opioid receptor ligands also with respect to their binding duration at the receptor systems under investigation.
The prolonged signaling of a morphine-activated receptor points to the possible relevance of the ligand-receptor interaction duration. The binding duration can be evaluated rather easily and has been shown to be crucial to the distinction of full and partial agonists .[14]: The loss of efficacy of partial agonists is most likely related to a shorter binding duration as compared to full agonists. In a spare- receptor-free system it became obvious that partial agonists do not bind long enough to the receptor to mediate a maximum response[14]. Since the binding duration of a ligand cannot depend on the density of receptors, i.e. on the possible existence of a receptor reserve, the determination of the binding duration of µ-opioid receptor ligands may help to elucidate their role in biased agonism. Correspondingly, such spare receptor-free conditions may be established by the use of irrevesrsible µ-opioid receptor antagonists (see .[7]). Then, partial and full agonists can be easily distinguished their different binding durations may linked to differently selected cellular functions.
Acknowledgement
References