Literature DB >> 31397835

Nanoinformatics, and the big challenges for the science of small things.

A S Barnard1, B Motevalli1, A J Parker1, J M Fischer1, C A Feigl1, G Opletal1.   

Abstract

The combination of computational chemistry and computational materials science with machine learning and artificial intelligence provides a powerful way of relating structural features of nanomaterials with functional properties. However, combining these fundamentally different scientific approaches is not as straightforward as it seems. Machine learning methods were developed for large data sets with small numbers of consistent features. Typically nanomaterials data sets are small, with high dimensionality and high variance in the feature space, and suffer from numerous destructive biases. None of the established data science or machine learning methods in widespread use today were devised with (nano)materials data sets in mind, but there are ways to overcome these challenges and use them reliably. In this review we will discuss domain-specific constraints on data-driven nanomaterials design, and explore the differences between nanomaterials simulation and nanoinformatics that can be leveraged for greater impact.

Year:  2019        PMID: 31397835     DOI: 10.1039/c9nr05912a

Source DB:  PubMed          Journal:  Nanoscale        ISSN: 2040-3364            Impact factor:   7.790


  1 in total

1.  Identifying diverse metal oxide nanomaterials with lethal effects on embryonic zebrafish using machine learning.

Authors:  Richard Liam Marchese Robinson; Haralambos Sarimveis; Philip Doganis; Xiaodong Jia; Marianna Kotzabasaki; Christiana Gousiadou; Stacey Lynn Harper; Terry Wilkins
Journal:  Beilstein J Nanotechnol       Date:  2021-11-29       Impact factor: 3.649

  1 in total

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