Addressing a bottle neck for regulation of nanomaterials: quantitative read-across (Nano-QRA) algorithm for cases when only limited data is available
暂无分享,去创建一个
Mark T. D. Cronin | Jerzy Leszczynski | Karolina Jagiello | Agnieszka Gajewicz | Tomasz Puzyn | T. Puzyn | M. Cronin | J. Leszczynski | A. Gajewicz | K. Jagiello
[1] J C Madden,et al. Evaluation criteria for the quality of published experimental data on nanomaterials and their usefulness for QSAR modelling , 2013, SAR and QSAR in environmental research.
[2] Jerzy Leszczynski,et al. Using nano-QSAR to predict the cytotoxicity of metal oxide nanoparticles. , 2011, Nature nanotechnology.
[3] Reinhard Kreiling,et al. A decision-making framework for the grouping and testing of nanomaterials (DF4nanoGrouping). , 2015, Regulatory toxicology and pharmacology : RTP.
[4] Yong Pan,et al. Nano-QSAR modeling for predicting the cytotoxicity of metal oxide nanoparticles using novel descriptors , 2016 .
[5] A. G. Asuero,et al. The Correlation Coefficient: An Overview , 2006 .
[6] Andrew Worth,et al. Applying quantitative structure-activity relationship approaches to nanotoxicology: current status and future potential. , 2013, Toxicology.
[7] E Benfenati,et al. Results of a round-robin exercise on read-across , 2016, SAR and QSAR in environmental research.
[8] Claudia Röhl,et al. Manufactured nanomaterials: categorization and approaches to hazard assessment , 2014, Archives of Toxicology.
[9] Robert Landsiedel,et al. Nanomaterial categorization for assessing risk potential to facilitate regulatory decision-making. , 2015, ACS nano.
[10] Steffen Foss Hansen,et al. Late lessons from early warnings for nanotechnology. , 2008, Nature nanotechnology.
[11] A. Tropsha,et al. Quantitative nanostructure-activity relationship modeling. , 2010, ACS nano.
[12] Eugenia Valsami-Jones,et al. A strategy for grouping of nanomaterials based on key physico-chemical descriptors as a basis for safer-by-design NMs , 2014 .
[13] Reinhard Kreiling,et al. A critical appraisal of existing concepts for the grouping of nanomaterials. , 2014, Regulatory toxicology and pharmacology : RTP.
[14] T. Puzyn,et al. Toward the development of "nano-QSARs": advances and challenges. , 2009, Small.
[15] Jim Willis,et al. Science policy considerations for responsible nanotechnology decisions. , 2011, Nature nanotechnology.
[16] Sanjay Mathur,et al. Mapping the surface adsorption forces of nanomaterials in biological systems. , 2011, ACS nano.
[17] Read-Across Assessment Framework (RAAF) , 2017 .
[18] A. Nel,et al. Classification NanoSAR development for cytotoxicity of metal oxide nanoparticles. , 2011, Small.
[19] Jerzy Leszczynski,et al. Advancing risk assessment of engineered nanomaterials: application of computational approaches. , 2012, Advanced drug delivery reviews.
[20] R. Weissleder,et al. Modeling biological activities of nanoparticles. , 2012, Nano letters.
[21] Jerzy Leszczynski,et al. Novel approach for efficient predictions properties of large pool of nanomaterials based on limited set of species: nano-read-across , 2015, Nanotechnology.
[22] Tomasz Puzyn,et al. Nano-quantitative structure-activity relationship modeling using easily computable and interpretable descriptors for uptake of magnetofluorescent engineered nanoparticles in pancreatic cancer cells. , 2014, Toxicology in vitro : an international journal published in association with BIBRA.
[23] Hugh J. Byrne,et al. Concern-driven integrated approaches to nanomaterial testing and assessment – report of the NanoSafety Cluster Working Group 10 , 2013, Nanotoxicology.
[24] Jerzy Leszczynski,et al. From basic physics to mechanisms of toxicity: the "liquid drop" approach applied to develop predictive classification models for toxicity of metal oxide nanoparticles. , 2014, Nanoscale.
[25] Alexander Tropsha,et al. Novel Variable Selection Quantitative Structure-Property Relationship Approach Based on the k-Nearest-Neighbor Principle , 2000, J. Chem. Inf. Comput. Sci..
[26] 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.
[27] Lutz Mädler,et al. Use of metal oxide nanoparticle band gap to develop a predictive paradigm for oxidative stress and acute pulmonary inflammation. , 2012, ACS nano.
[28] 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.
[29] Karsten Müller,et al. Combined Experimental and Predictive Uncertainty of Quantitative Structure Property Relationship Models , 2016 .
[30] Grace Patlewicz,et al. Current and Future Perspectives on the Development, Evaluation, and Application of in Silico Approaches for Predicting Toxicity. , 2016, Chemical research in toxicology.
[31] Riego Sintes Juan,et al. NANoREG harmonised terminology for environmental health and safety assessment of nanomaterials , 2016 .
[32] Lang Tran,et al. ITS-NANO - Prioritising nanosafety research to develop a stakeholder driven intelligent testing strategy , 2014, Particle and Fibre Toxicology.
[33] Shikha Gupta,et al. Nano-QSAR modeling for predicting biological activity of diverse nanomaterials , 2014 .
[34] Jo Anne Shatkin,et al. A multi-stakeholder perspective on the use of alternative test strategies for nanomaterial safety assessment. , 2013, ACS nano.
[35] Jerzy Leszczynski,et al. Towards understanding mechanisms governing cytotoxicity of metal oxides nanoparticles: Hints from nano-QSAR studies , 2015, Nanotoxicology.
[36] Karen Blackburn,et al. A framework to facilitate consistent characterization of read across uncertainty. , 2014, Regulatory toxicology and pharmacology : RTP.
[37] A E Nel,et al. Implementation of alternative test strategies for the safety assessment of engineered nanomaterials , 2013, Journal of internal medicine.
[38] 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.
[39] Alexander Tropsha,et al. Exploring quantitative nanostructure-activity relationships (QNAR) modeling as a tool for predicting biological effects of manufactured nanoparticles. , 2011, Combinatorial chemistry & high throughput screening.
[40] T W Schultz,et al. A strategy for structuring and reporting a read-across prediction of toxicity. , 2015, Regulatory toxicology and pharmacology : RTP.
[41] Alexander Tropsha,et al. Modeling of p38 mitogen-activated protein kinase inhibitors using the Catalyst HypoGen and k-nearest neighbor QSAR methods. , 2004, Journal of molecular graphics & modelling.
[42] Maurizio Chiriva-Internati,et al. Nanotechnology and human health: risks and benefits , 2010, Journal of applied toxicology : JAT.