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Congratulations to Ms. Kachaporn Saenluang for her recently accepted publication in ACS Applied Nano Materials
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Machine Learning Models for Predicting Cytotoxicity of Nanomaterials | Chemical Research in Toxicology
Materials Discovery and Properties Prediction in Thermal Transport via Materials Informatics: A Mini Review | Nano Letters
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Nanomaterials | Free Full-Text | Predicting Cytotoxicity of Metal Oxide Nanoparticles Using Isalos Analytics Platform | HTML
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Daphnia magna and mixture toxicity with nanomaterials – Current status and perspectives in data-driven risk prediction - ScienceDirect
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