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Development of the Fathead Minnow Narcosis Toxicity Data Base Larry Brooke1, Gilman Veith2, Daniel Call3, Dianne Geiger1, and Christine Russom4 1University of Wisconsin-Superior, 2QSAR foundation, 3University of Dubuque, and 4U.S. EPA Mid-Continent Ecology Laboratory Log10 96-hr LC50 (mol/L) Log Water Solubility (mol/L) Bilinear Relationship Model for Narcosis I MOA (from Veith et al. 1983) 0 -2 -4 Log LC50 = -1.09 log P + 1.09 log (0.000068P + 1) - 0.79 R2 = 0.9986; n = 10 -6 -8 -2 0 2 4 Log10 P 6 8 Narcosis I Chemicals (Acute Toxicity with Fathead Minnow) Log10 LC50 (moles/L) 0 -2 -4 Y = -1.6417 - 0.7724X r2 = 0.8944; n = 291 Where: Y = Log10 LC50 and X = Log10 P -6 -8 -4 -2 0 2 Log10 P 4 6 8 Acute Toxicity to Fathead Minnow with Narcosis I & II Chemicals Log10 LC50 (moles/L) 0 Narcosis I (non-polar) Y = -1.6417 - 0.7724X r2 = 0.8944; n = 291 -2 -4 Narcosis II (Polar) Y = -2.3244 - 0.6140X r2 = 0.5599; n = 36 -6 Where: Y = Log10 LC50 (moles/L) and X = Log10 P -8 -4 -2 0 2 Log10 P 4 6 8 Toxicity to Fathead Minnow of Narcosis I, II, and III Chemicals (From the U.S. EPA Data Base) Log10 LC50 (moles/L) 0 -2 -4 Y = -1.7741 - 0.7513X r2 = 0.8559; n = 351 -6 Where: Y = Log10 LC50 (moles/L) and X = Log10 P -8 -4 -2 0 2 Log10 P 4 6 8 1 Nonpolar Narcotic Chemicals (from Schultz et al. 1998) Log10 LC50 (moles/L) 0 -1 Tetrahymena pyriformis Y = -1.1728 - 0.7336X; r2 = 0.9442 n = 148 -2 -3 -4 Pimephales promelas 2 Y = -1.2140 - 0.8741X; r = 0.9569 n = 51 -5 -6 -2 -1 0 1 2 Log P 3 4 5 6 Nonpolar Narcotic Chemicals (from Schultz et al. 1998 and U.S. EPA) 0 Log10 LC50 (moles/L) -1 -2 -3 -4 -5 Fathead minnow Tetrahymena pyriformis -6 -7 -4 -2 0 2 Log10 P 4 6 8 Fathead Minnow Acute and Chronic Toxicity with Narcosis Chemicals Log10 LC50 or MATC (moles/L) 0 Acute Toxicity Y = -1.6417 - 0.7724X r2 = 0.8944; n = 291 -2 -4 -6 Chronic MATC Y = -3.1562 - 6375X r2 = 0.7576; n = 30 Where: Y= Log10 LC50 (moles/L) and X = Log10 P -8 -2 0 2 4 Log10 P 6 8 Applying Predictive Data Mining to Predictive Toxicology From Narcosis to McKim Conference Chihae Yang 28th June, 2006 Acknowledgment • • • • Gilman Veith, International QSAR Foundation J.F. Rathman, The Ohio State University Leadscope team Ohio Technology Action Fund From Meyer-Overtone to McKim Conference • Narcosis – …”toxicity of neutral organics is related to their ability to partition between water and a lipophilic biphase where molecules exert their activity…” • Model system for partition: olive oil/water. • Evolution Narcosis Non-polar and polar narcosis Reactivity …… Paradigm shift • How do we strategically leverage? In silico In vitro In vivo Omics • How do we read across the species, endpoints, structural classes, different knowledge domains? Predictive data mining strategies structural descriptions analogs chemical stressor profile biological/environmental fate Yang, C.; Richard, A.M., Cross, K.P. Current Computer-Aided Drug Design, 2006, 2, 1-19. Steps in predictive data mining Visualization Analysis Structure, data, graphs, models SAR & QSAR Profiling Grouping Searching Hypothesis driven queries Analog searching Read across Platform Chemistry Biology integration Knowledge addition Relational database Data mining analysis methods Compound grouping Analysis Focused Data Sets Prediction QSAR Classification Classification Rule Extraction Pattern Recognition Profiling Clustering Expert Grouping Large diverse Data Sets Applying to predictive tox • Profiling “chem-bio” domain – Cut across different knowledge domains – Find hidden signals and relationships from data • Qualify/quantify read-across • Complementary to (Q)SAR – Build hypothesis driven models – Go beyond Yes/No question and answer Predictive data mining examples • Biological profile – Relationships between fish narcosis and toxicological findings in rat inhalation studies? • Fathead minnow EPA dataset • Rat acute toxicity dataset from RTECS • Thermodynamics consideration Theoretical bases: Vapor-liquid equilibrium • Non-ideal Raoult’s law: - The equilibrium distribution between liquid and vapor phases for a chemical species i i xi piv yi P Pi partial pressure i : activity coefficient xi : mole fraction of i in the liquid phase piv : vapor pressure of pure liquid i at the same temperature T yi : mole fraction in the vapor phase. Study sources for rat and FHM correlations - rat exposure time 2-8 hours - narcosis RTECS 2006 2341 • single dose • inhalation chamber 921 EPA FHM 617 • dose unit (mg/mL) • defined LD50 76 179 LC50 at 96 hr Profiling examples Structures Liver O Lung UBL GI pLC50 Rat FHM present present absent absent 0.489 -1.37 absent present present absent 0.799 -0.729 absent present absent absent 1.98 0.44 absent absent absent present 2.54 1.49 OH N OH Representing structures with Leadscope molecular descriptors O Ak Benzenes N Functional groups O O N Any N H N N Heterocycles N Pharmacophores PCC PCC HBA O Spacers User defined features NH2 Read-across using structural descriptors Structural descriptors profiles of rat organ lesions LC50 FHM Structural descriptors % structures liver ubl lung GI 43.4 0 0 0.24 1,2-subst 13.2 0 0 1,3-subst 10.5 0 1,4-subst 18.4 pLC50 FHM Rat 0.06 1.38 2.02 0.3 0 1.3 1.63 0 0.25 0 1.88 1.54 0 0 0.36 0.07 1.46 1.79 30.3 0.09 0.04 0.3 0.04 -0.2 1.4 alcohol, p-alkyl- 13.2 0.2 0.1 0.4 0 -1.02 1.21 alcohol, aryl- 13.2 0 0 0.3 0.1 1.01 1.61 aldehyde 6.6 0 0 0.2 0.2 1.31 0.67 amines 18.4 0 0 0.29 0 0.66 2.24 carbonyl 26.3 0.05 0 0.1 0.05 1.3 1.91 ether 13.2 0.2 0 0.1 0 0.56 0.94 13.2 0.2 0 0.1 0 0.56 0.94 18.4 0 0 0.29 0.07 1.91 2.02 13.2 0 0 0.4 0 1.54 2.3 5.3 0.25 0 0.25 0 -0.87 0.63 Benzenes alcohol ether, alkylhalide halide, arylketone 23 structural descriptors were selected. Quantitative read-across Liver kidney ubl Lung GI Pearson correlations Liver – GI Lung – Kidney Liver – Lung pLC50Rat – pLC50FHM - 0.52 0.45 -0.31 0.55 pLC50FHM – Liver - 0.72 pLC50FHM – Kidney - 0.75 pLC50 Rat pLC50 FHM From a surface scientist point of view • Passive diffusion through lipid bilayer – Headgroup interaction – Hydrophobic tail interaction – Hydrophilic to lipophilic balance (HLB) • Partition model of molecules in lipid layer : species i bulk activity i bulk species i activity i lipid lipid at equilibrium ibulk x ibulk ilipid x ilipid partition coefficient: K x x ilipid ibulk bulk lipid xi i : activity coefficient UNIFAC activity coefficient model ln i ln iC ln iR “combinatorial” term molecular volume and surface area effects (size, shape, packing) “residual” term intermolecular energy effects (interaction) The properties of Gases & Liquids, 4th ed., R. Reid, J. Prausnitz, B. Poling, McGraw Hill, 1987 Advantages of UNIFAC model • Group contribution method – Molecular descriptors-based activity coefficients • Flexibility to vary liquid phases compositions – – – – – octanol/water octanol-water solution/water hexadecane/water lipid/water etc. Example: Lipid as a solvent phase O O O O O O N P O O O O O O O O O O O O Example of activity coefficients in various environment Solvent Log10 Water 5.23 Octanol 0.05 Lipid tail -0.40 Lipid head 0.12 Hexadecane 0.73 O O H Activity coefficients at infinite dilution can be used to model solubility in various phases. measured LogP LogP (ow/w) Pearson correlations against measured LogP LogP(o/w) 0.93 LogP(ow/w) 0.92 LogP(h/w) 0.92 LogP(dppc/w) 0.90 LogP (o/w) LogP (h/w) LogP (dppc/w) Reflection …We’re committed to nothing less than a point-forpoint transcript of everything there is. Only one problem: the index is harder to use than the book. We’ll live to see the day when retrieving from the catalog becomes more difficult than extracting from the world that catalog condenses…. “The gold bug variations, Richard Powers”, 2004 Distribution of LC50s for FHM and rats pLC50 of FHM Mean: 0.669 pLD50 of rats Mean: 1.52 2 Narcosis I Chemicals Acute Toxicity with Fathead Minnow and Water Solubility of Chemical 0 Water Solubility (moles/L) Log10 LC50 (moles/L) 1 -1 -2 -3 -4 LC50 vs Log P Solubility vs Log P -5 -6 -2 -1 0 1 2 Log10 P 3 4 5 6