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In silico prediction of solubility: Solid progress but no solution? Dr John Mitchell University of St Andrews
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Given accurately measured solubilities of 100 molecules, can you predict the solubilities of 32 similar ones?
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For this study Toni Llinàs measured 132 solubilities using the CheqSol method. He used a Sirius glpKa instrument
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K0K0 KaKa Intrinsic solubility- Of an ionisable compound is the thermodynamic solubility of the free acid or base form (Horter, D, Dressman, J. B., Adv. Drug Deliv. Rev., 1997, 25, 3-14) A NaA - ………. Na + AH S 0 is essentially the solubility of the neutral form only.
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Diclofenac In Solution Powder ● We continue “Chasing equilibrium” until a specified number of crossing points have been reached ● A crossing point represents the moment when the solution switches from a saturated solution to a subsaturated solution; no change in pH, gradient zero, no re-dissolving nor precipitating…. SOLUTION IS IN EQUILIBRIUM Random error less than 0.05 log units !!!! Supersaturated Solution Subsaturated Solution 8 Intrinsic solubility values * A. Llinàs, J. C. Burley, K. J. Box, R. C. Glen and J. M. Goodman. Diclofenac solubility: independent determination of the intrinsic solubility of three crystal forms. J. Med. Chem. 2007, 50(5), 979-983 ● First precipitation – Kinetic Solubility (Not in Equilibrium) ● Thermodynamic Solubility through “Chasing Equilibrium”- Intrinsic Solubility (In Equilibrium) Supersaturation Factor SSF = S kin – S 0 “CheqSol”
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Caveat: the official results are used in the following slides, but most of the interpretation is my own.
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A prediction was considered correct if it was within 0.5 log units
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Not a very generous margin of error!
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A “null prediction” based on predicting everything to have the mean training set solubility would have got 9/32 correct
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Using an R 2 threshold of 0.500, only 18/99 entries were good
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GOOD BAD
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3 “WINNERS” 3 Pareto optimal entries which I think of as “winners”. These combine best R 2 with most correct predictions.
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Some molecules proved much harder to predict than others – the most insoluble were amongst the most difficult.
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My opinion is that the overall standard was rather poor; It’s obvious that some entries were much better than others; But entries were anonymous; So we can’t judge between either specific researchers or between their methods; We can only rely on the “official” summary … Conclusions from Solubility Challenge
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We can only rely on the “official” summary … … “a variety of methods and combinations of methods all perform about equally well.” Conclusions from Solubility Challenge
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How should we approach the prediction/estimation/calculation of the aqueous solubility of druglike molecules? Two (apparently) fundamentally different approaches: theoretical chemistry & informatics.
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What Error is Acceptable? For typically diverse sets of druglike molecules, a “good” QSPR will have an RMSE ≈ 0.7 logS units. A RMSE > 1.0 logS unit is probably unacceptable. This corresponds to an error range of 4.0 to 5.7 kJ/mol in G sol.
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What Error is Acceptable? A useless model would have an RMSE close to the SD of the test set logS values: ~ 1.4 logS units; The best possible model would have an RMSE close to the SD resulting from the experimental error in the underlying data: ~ 0.5 logS units?
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Theoretical Approaches
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Theoretical Chemistry “The problem is difficult, but by making suitable approximations we can solve it at reasonable cost based on our understanding of physics and chemistry”
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Theoretical Chemistry Calculations and simulations based on real physics. Calculations are either quantum mechanical or use parameters derived from quantum mechanics. Attempt to model or simulate reality. Usually Low Throughput.
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Drug Disc.Today, 10 (4), 289 (2005)
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Thermodynamic Cycle
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Crystal Gas Solution
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Sublimation Free Energy Crystal Gas
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Sublimation Free Energy Crystal Gas
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Sublimation Free Energy Crystal Gas
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Sublimation Free Energy Crystal Gas Calculating G sub is a standard procedure in crystal structure prediction
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Crystal Structure Prediction Given the structural diagram of an organic molecule, predict the 3D crystal structure. Slide after SL Price, Int. Sch. Crystallography, Erice, 2004
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CSP Methodology Based around minimising lattice energy of trial structures. Enthalpy comes from lattice energy and intramolecular energy (DFT), which need to be well calibrated against each other: trade-off of lattice vs conformational energy. Entropy comes from phonon modes (crystal vibrations); can get Free Energy.
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CSP Methodology DFT calculation on monomer to obtain DMA electrostatics. Generate many plausible crystal structures using different space groups. Minimise lattice energy using DMA + repulsion-dispersion potential. Many structures may have similar energies.
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34 These methods can get relative lattice energies of different structures correct, probably to within a few kJ/mol. Absolute energies harder.
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35 Additional possible benefit for solubility: if we don’t know the crystal structure, we could reasonably use best structure from CSP.
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Other approaches to Lattice Energy Periodic DFT calculations on a lattice are an alternative to the model potential approach. Advantageous to optimise intra- and intermolecular energies simultaneously using the same method. Disadvantage: it’s hard to get accurate dispersion.
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Empirical routes to G sub Alternatively one could estimate sublimation energy from QSPR (no crystal structure needed, but no obvious benefit over direct informatics approach to solubility).
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Thermodynamic Cycle Crystal Gas Solution
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Hydration Free Energy
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We expect that hydration will be harder to model than sublimation, because the solution has an inexactly known and dynamic structure, both solute and solvent are important etc.
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Simulation: MD/FEP Parameterised continuum models
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… and of course the parameterised RISM work of our hosts. Quoted RMS error ~5kJ/mol or 0.9 log units.
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… and this one both calculates solubility directly and is simulation based: FEP or Monte Carlo.
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Luder et al.’s results correspond to an RMS error of about 6kJ/mol, or 1 logS unit, but only when an empirical “correction” is applied ….
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… their uncorrected results are less impressive.
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Hydration Energy Our currrent methodology here is just to try the various different PCM continuum models available in Gaussian.
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We observe than our TD cycle method based on lattice energy minimisation for sublimation and a PCM continuum model of hydration correlates reasonably with experiment, but is not quantitatively predictive (at least without arbitrary correction). Caveat: currently only a small sample of molecules.
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An alternative route is via octanol, then using logP.
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Theoretical Approaches ish So really these are
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Using a training-test set split to optimise parameters & validate: RMSE(te)=0.71 r 2 (te)=0.77 N train = 34; N test = 26
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Informatics Approaches
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Informatics “The problem is too difficult to solve using physics and chemistry, so we will design a black box to link structure and solubility”
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Informatics and Empirical Models In general, Informatics methods represent phenomena mathematically, but not in a physics-based way. Inputs and output model are based on an empirically parameterised equation or more elaborate mathematical model. Do not attempt to simulate reality. Usually High Throughput.
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Machine Learning Method Random Forest
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Random Forest: Solubility Results RMSE(te)=0.69 r 2 (te)=0.89 Bias(te)=-0.04 RMSE(tr)=0.27 r 2 (tr)=0.98 Bias(tr)=0.005 RMSE(oob)=0.68 r 2 (oob)=0.90 Bias(oob)=0.01 DS Palmer et al., J. Chem. Inf. Model., 47, 150-158 (2007) N train = 658; N test = 300
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Random Forest: Replicating Solubility Challenge (post hoc) RMSE(te)=1.09 r 2 (te)=0.39 10/32 correct within 0.5 logS units N train 100; N test 32 CDK descriptors
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Support Vector Machine
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SVM: Solubility Results et al., N train = 150 + 50; N test = 87 RMSE(te)=0.94 r 2 (te)=0.79
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What can we Learn from Informatics?
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What Descriptors Correlate with logS? …amongst the solubility challenge training set, once intercorrelated descriptors with R 2 > 0.64 are removed?
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The first 21 are all negatively correlated with logS … … things that reduce solubility.
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The first 21 are all negatively correlated with logS … … things that reduce solubility. Some of this is meaningful: aromatic groups reduce solubility. Some is accidental: logP happens to be defined as octanol:water, rather than water:octanol.
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Future Work Explore different models of hydration: PCM, simulation (MD/FEP), RISM … Route: Direct to water or via octanol? Machine Learning (Random Forest, SVM etc.) for hybrid experimental/parameterised models. Consistent training and validation sets and methodologies to compare methods: e.g., solubility challenge {100+32}.
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Conclusions thus far…
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Solubility has proved a difficult property to calculate. It involves different phases (solid & solution) and different substances (solute and solvent), and both enthalpy & entropy are important. The theoretical approaches are generally based around thermodynamic cycles and involve some empirical element.
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Thanks Pfizer & PIPMS Gates Cambridge Trust SULSA Dr Dave Palmer, Laura Hughes, Dr Toni Llinas James McDonagh, Dr Tanja van Mourik James Taylor, Simon Hogan, Gregor McInnes, Callum Kirk, William Walton (U/G project)
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