scholarly article | Q13442814 |
P50 | author | Alejandro Speck-Planche | Q42241648 |
Juan Ruso | Q42806243 | ||
Feng Luan | Q50731755 | ||
Humbert González-Díaz | Q56394765 | ||
P2093 | author name string | M Natália D S Cordeiro | |
Valeria V Kleandrova | |||
P2860 | cites work | Species-specific toxicity of copper nanoparticles among mammalian and piscine cell lines. | Q39163806 |
Using nano-QSAR to predict the cytotoxicity of metal oxide nanoparticles | Q43415971 | ||
P433 | issue | 24 | |
P407 | language of work or name | English | Q1860 |
P921 | main subject | nanoparticle | Q61231 |
cytotoxicity | Q246181 | ||
nanomaterial | Q967847 | ||
P304 | page(s) | 14686-14694 | |
P577 | publication date | 2014-11-21 | |
P1433 | published in | Environmental Science & Technology | Q689027 |
P1476 | title | Computational tool for risk assessment of nanomaterials: novel QSTR-perturbation model for simultaneous prediction of ecotoxicity and cytotoxicity of uncoated and coated nanoparticles under multiple experimental conditions | |
P478 | volume | 48 |
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