Mutagenicity: QSAR - quasi-QSAR - nano-QSAR.
暂无分享,去创建一个
[1] Karel Nesmerak,et al. SMILES-based quantitative structure–retention relationships for RP HPLC of 1-phenyl-5-benzylsulfanyltetrazoles , 2013, Structural Chemistry.
[2] M. Salahinejad,et al. QSAR studies of the dispersion of SWNTs in different organic solvents , 2013, Journal of Nanoparticle Research.
[3] Ulrich Simon,et al. Molecularly stabilised ultrasmall gold nanoparticles: synthesis, characterization and bioactivity. , 2013, Nanoscale.
[4] V. P. Agrawal,et al. Structural modelling and integrative analysis of microelectromechanical systems product using graph theoretic approach , 2009 .
[5] Kyeongjae Cho,et al. Developing Descriptors To Predict Mechanical Properties of Nanotubes , 2013, J. Chem. Inf. Model..
[6] Jerzy Leszczynski,et al. Optimal descriptor as a translator of eclectic information into the prediction of membrane damage: the case of a group of ZnO and TiO2 nanoparticles. , 2014, Ecotoxicology and environmental safety.
[7] Kavitha Pathakoti,et al. Using experimental data of Escherichia coli to develop a QSAR model for predicting the photo-induced cytotoxicity of metal oxide nanoparticles. , 2014, Journal of photochemistry and photobiology. B, Biology.
[8] Andrey A Toropov,et al. SMILES-based quantitative structure-property relationships for half-wave potential of N-benzylsalicylthioamides. , 2013, European journal of medicinal chemistry.
[9] Kunal Roy,et al. Modeling bioconcentration factor (BCF) using mechanistically interpretable descriptors computed from open source tool “PaDEL-Descriptor” , 2014, Environmental Science and Pollution Research.
[10] Bo-Han Su,et al. Dependence of QSAR Models on the Selection of Trial Descriptor Sets: A Demonstration Using Nanotoxicity Endpoints of Decorated Nanotubes , 2013, J. Chem. Inf. Model..
[11] Andrey A Toropov,et al. SMILES‐Based QSAR Models for the Calcium Channel‐Antagonistic Effect of 1,4‐Dihydropyridines , 2013, Archiv der Pharmazie.
[12] P. Achary,et al. Simplified molecular input line entry system-based optimal descriptors: QSAR modelling for voltage-gated potassium channel subunit Kv7.2 , 2014, SAR and QSAR in environmental research.
[13] Bahram Hemmateenejad,et al. A chemometrics approach to predict the dispersibility of graphene in various liquid phases using theoretical descriptors and solvent empirical parameters , 2014 .
[14] M. Ganjali,et al. Prediction of the complexation stabilities of La3+ ion with ionophores applied in lanthanoid sensors , 2014, Journal of Inclusion Phenomena and Macrocyclic Chemistry.
[15] U. Wirnitzer,et al. Studies on the in vitro genotoxicity of baytubes, agglomerates of engineered multi-walled carbon-nanotubes (MWCNT). , 2009, Toxicology letters.
[16] Sangdun Choi,et al. Nanoinformatics: Emerging Databases and Available Tools , 2014, International journal of molecular sciences.
[17] Andrey A Toropov,et al. Optimal descriptor as a translator of eclectic data into endpoint prediction: mutagenicity of fullerene as a mathematical function of conditions. , 2014, Chemosphere.
[18] Jerzy Leszczynski,et al. QSAR as a random event: modeling of nanoparticles uptake in PaCa2 cancer cells. , 2013, Chemosphere.
[19] Alexander Tropsha,et al. Using Graph Indices for the Analysis and Comparison of Chemical Datasets , 2013, Molecular informatics.
[20] Chun Wei Yap,et al. Quantitative Nanostructure–Activity Relationship modelling of nanoparticles , 2012 .
[21] G. Melagraki,et al. Enalos KNIME nodes: Exploring corrosion inhibition of steel in acidic medium , 2013 .
[22] Jerzy Leszczynski,et al. Optimal descriptor as a translator of eclectic information into the prediction of thermal conductivity of micro-electro-mechanical systems , 2013, Journal of Mathematical Chemistry.
[23] Jerzy Leszczynski,et al. Advancing risk assessment of engineered nanomaterials: application of computational approaches. , 2012, Advanced drug delivery reviews.
[24] Giuseppina C. Gini,et al. CORAL: Quantitative structure–activity relationship models for estimating toxicity of organic compounds in rats , 2011, J. Comput. Chem..
[25] M. Doble,et al. Antibacterial and antioxidant activity of protein capped silver and gold nanoparticles synthesized with Escherichia coli. , 2012, Journal of Biomedical Nanotechnology.
[26] Apilak Worachartcheewan,et al. QSAR Study of H1N1 Neuraminidase Inhibitors from Influenza a Virus , 2014 .
[27] E. Besalú,et al. Construction of coherent nano quantitative structure–properties relationships (nano-QSPR) models and catastrophe theory , 2011, SAR and QSAR in environmental research.
[28] Andrey A Toropov,et al. Optimal descriptor as a translator of eclectic information into the prediction of membrane damage by means of various TiO(2) nanoparticles. , 2013, Chemosphere.
[29] Pablo R Duchowicz,et al. A comparative QSAR on 1,2,5-thiadiazolidin-3-one 1,1-dioxide compounds as selective inhibitors of human serine proteinases. , 2011, Journal of molecular graphics & modelling.
[30] P. Achary,et al. QSPR modelling of dielectric constants of π-conjugated organic compounds by means of the CORAL software , 2014, SAR and QSAR in environmental research.
[31] Lothar Erdinger,et al. Transformation of mutagenic aromatic amines into non-mutagenic species by alkyl substituents. Part II: alkylation far away from the amino function. , 2002, Mutation research.
[32] A. Tropsha,et al. Quantitative nanostructure-activity relationship modeling. , 2010, ACS nano.
[33] Andrey A Toropov,et al. SMILES-based QSAR model for arylpiperazines as high-affinity 5-HT(1A) receptor ligands using CORAL. , 2013, European journal of pharmaceutical sciences : official journal of the European Federation for Pharmaceutical Sciences.
[34] Feng Luan,et al. nanotoxicology : assessing cytotoxicity of nanoparticles under diverse experimental conditions by using a novel QSTR-perturbation approach † , 2014 .
[35] Feng Luan,et al. Computational ecotoxicology: simultaneous prediction of ecotoxic effects of nanoparticles under different experimental conditions. , 2014, Environment international.
[36] Jerzy Leszczynski,et al. Periodic table-based descriptors to encode cytotoxicity profile of metal oxide nanoparticles: a mechanistic QSTR approach. , 2014, Ecotoxicology and environmental safety.
[37] C. Supuran,et al. 3D-QSAR CoMFA studies on sulfonamide inhibitors of the Rv3588c β-carbonic anhydrase from Mycobacterium tuberculosis and design of not yet synthesized new molecules , 2014, Journal of enzyme inhibition and medicinal chemistry.
[38] Docking and quantitative structure–activity relationship of oxadiazole derivates as inhibitors of GSK3$$\upbeta $$β , 2014, Molecular Diversity.
[39] F. Fernández-Trillo,et al. Click Chemistry for Drug Delivery Nanosystems , 2011, Pharmaceutical Research.
[40] Jerzy Leszczynski,et al. Novel application of the CORAL software to model cytotoxicity of metal oxide nanoparticles to bacteria Escherichia coli. , 2012, Chemosphere.
[41] Emilio Benfenati,et al. QSAR modeling of endpoints for peptides which is based on representation of the molecular structure by a sequence of amino acids , 2012, Structural Chemistry.