Converting nanotoxicity data to information using artificial intelligence and simulation
Decades of nanotoxicology research have generated extensive and diverse data sets.
However, data is not equal to information. The question is how to extract critical information …
However, data is not equal to information. The question is how to extract critical information …
Machine learning applications in nanomaterials: Recent advances and future perspectives
L Yang, H Wang, D Leng, S Fang, Y Yang… - Chemical Engineering …, 2024 - Elsevier
Nanomaterials demonstrate enormous potential applications in various scientific and
engineering fields due to their unique physical and chemical properties. With the rapid …
engineering fields due to their unique physical and chemical properties. With the rapid …
Synthesis optimization and adsorption modeling of biochar for pollutant removal via machine learning
W Zhang, R Chen, J Li, T Huang, B Wu, J Ma, Q Wen… - Biochar, 2023 - Springer
Due to large specific surface area, abundant functional groups and low cost, biochar is
widely used for pollutant removal. The adsorption performance of biochar is related to …
widely used for pollutant removal. The adsorption performance of biochar is related to …
Merging data curation and machine learning to improve nanomedicines
Nanomedicine design is often a trial-and-error process, and the optimization of formulations
and in vivo properties requires tremendous benchwork. To expedite the nanomedicine …
and in vivo properties requires tremendous benchwork. To expedite the nanomedicine …
Toward predicting nanoparticle distribution in heterogeneous tumor tissues
Nanobio interaction studies have generated a significant amount of data. An important next
step is to organize the data and design computational techniques to analyze the nanobio …
step is to organize the data and design computational techniques to analyze the nanobio …
[HTML][HTML] Recent advances in utility of artificial intelligence towards multiscale colloidal based materials design
AA Moud - Colloid and Interface Science Communications, 2022 - Elsevier
Colloidal material design necessitates a collection of computer approaches ranging from
quantum chemistry to molecular dynamics and continuum modeling. Machine learning (ML) …
quantum chemistry to molecular dynamics and continuum modeling. Machine learning (ML) …
Intelligent control of nanoparticle synthesis through machine learning
H Lv, X Chen - Nanoscale, 2022 - pubs.rsc.org
The synthesis of nanoparticles is affected by many reaction conditions, and their properties
are usually determined by factors such as their size, shape and surface chemistry. In order …
are usually determined by factors such as their size, shape and surface chemistry. In order …
Quantitative prediction of inorganic nanomaterial cellular toxicity via machine learning
Organic chemistry has seen colossal progress due to machine learning (ML). However, the
translation of artificial intelligence (AI) into materials science is challenging, where biological …
translation of artificial intelligence (AI) into materials science is challenging, where biological …
Implementing comprehensive machine learning models of multispecies toxicity assessment to improve regulation of organic compounds
Y He, G Liu, S Hu, X Wang, J Jia, H Zhou… - Journal of Hazardous …, 2023 - Elsevier
Abstract Machine learning has made significant progress in assessing the risk associated
with hazardous chemicals. However, most models were constructed by randomly selecting …
with hazardous chemicals. However, most models were constructed by randomly selecting …
[HTML][HTML] User-friendly and industry-integrated AI for medicinal chemists and pharmaceuticals
Artificial intelligence has brought crucial changes to the whole field of natural sciences.
Myriads of machine learning algorithms have been developed to facilitate the work of …
Myriads of machine learning algorithms have been developed to facilitate the work of …