2022
DOI: 10.1007/s44169-022-00024-8
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Reaching the Full Potential of Machine Learning in Mitigating Environmental Impacts of Functional Materials

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Cited by 3 publications
(1 citation statement)
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“…Another challenge is unraveling the quantitative nanostructure (or physicochemical properties of NMs)–toxicity relationships (QNTR) in high multidimensional feature spaces. , The success of artificial intelligence (AI) in the safety assessment of small organic molecules has demonstrated their ability to identify specific toxicity features from a myriad of molecular properties. However, examples of the applications of AI to nanotoxicology are much less popular due to the paucity of model-friendly databases and the lack of suitable nanodescriptors. , Nanodescriptors, the mathematical entities that encode important physicochemical information about NMs, should apply to all types of nanostructures and properties such as composition, size, shape, and surface chemistry. They should ideally reflect the influence of the external environment (e.g., the protein coronathe layer of proteins that naturally bind to NMs in biological fluids that modulates their biological effects) .…”
Section: Introductionmentioning
confidence: 99%
“…Another challenge is unraveling the quantitative nanostructure (or physicochemical properties of NMs)–toxicity relationships (QNTR) in high multidimensional feature spaces. , The success of artificial intelligence (AI) in the safety assessment of small organic molecules has demonstrated their ability to identify specific toxicity features from a myriad of molecular properties. However, examples of the applications of AI to nanotoxicology are much less popular due to the paucity of model-friendly databases and the lack of suitable nanodescriptors. , Nanodescriptors, the mathematical entities that encode important physicochemical information about NMs, should apply to all types of nanostructures and properties such as composition, size, shape, and surface chemistry. They should ideally reflect the influence of the external environment (e.g., the protein coronathe layer of proteins that naturally bind to NMs in biological fluids that modulates their biological effects) .…”
Section: Introductionmentioning
confidence: 99%