TY - JOUR
T1 - Prediction of Nano-Bio Interactions through Convolutional Neural Network Analysis of Nanostructure Images
AU - Yan, Xiliang
AU - Zhang, Jin
AU - Russo, Daniel P.
AU - Zhu, Hao
AU - Yan, Bing
N1 - Funding Information:
X.Y. and B.Y. were supported by the National Natural Science Foundation of China (22036002 and 91643204), the National Key R&D Program of China (2016YFA0203103), and the introduced innovative R&D team project under the “The Pearl River Talent Recruitment Program” of Guangdong Province (2019ZT08L387). Codes for building convolutional neural network models can be accessed from https://github.com/yanxiliang1991/CNN-modeling-for-nano-bio-interaction-prediction . All nanostructure images can be accessed from https://drive.google.com/drive/folders/1FtPKYPz_5TgO7bh2mhYiKjVxW0QjLx3z?usp=sharing .
Publisher Copyright:
© 2020 American Chemical Society.
PY - 2020/12/28
Y1 - 2020/12/28
N2 - Artificial intelligence approaches, such as machine learning and deep learning, may predict nano-bio interactions. However, such a prediction is now hindered by the paucity of suitable nanodescriptors with applicable nanostructure annotation methods. Inspired by face recognition technology, we have developed a novel nanostructure annotation method to automatically convert nanostructures to images for convolutional neural network modeling. In this operation, nanostructure features were directly learned from nanoparticle images without complicated nanodescriptor calculations. The constructed convolutional neural network models were successfully used to predict physicochemical properties (i.e., logP and zeta potential) and biological activities (i.e., cellular uptake and protein adsorption) of 147 unique nanoparticles, including 123 gold nanoparticles, 12 platinum nanoparticles, and 12 palladium nanoparticles. Our nanostructure diversity and wide distribution of experimental values are beneficial for building predictive deep learning models. The deep learning models provide highly accurate predictions with all determination coefficients (R2) higher than 0.68 for both cross validation and external prediction. In addition, the constructed model is explainable because we can visualize how it learns from the class activation map. This approach enables a much more efficient end-to-end deep learning modality suitable for design of next generation nanomaterials.
AB - Artificial intelligence approaches, such as machine learning and deep learning, may predict nano-bio interactions. However, such a prediction is now hindered by the paucity of suitable nanodescriptors with applicable nanostructure annotation methods. Inspired by face recognition technology, we have developed a novel nanostructure annotation method to automatically convert nanostructures to images for convolutional neural network modeling. In this operation, nanostructure features were directly learned from nanoparticle images without complicated nanodescriptor calculations. The constructed convolutional neural network models were successfully used to predict physicochemical properties (i.e., logP and zeta potential) and biological activities (i.e., cellular uptake and protein adsorption) of 147 unique nanoparticles, including 123 gold nanoparticles, 12 platinum nanoparticles, and 12 palladium nanoparticles. Our nanostructure diversity and wide distribution of experimental values are beneficial for building predictive deep learning models. The deep learning models provide highly accurate predictions with all determination coefficients (R2) higher than 0.68 for both cross validation and external prediction. In addition, the constructed model is explainable because we can visualize how it learns from the class activation map. This approach enables a much more efficient end-to-end deep learning modality suitable for design of next generation nanomaterials.
KW - Artificial intelligence
KW - Face recognition
KW - Nano-Bio interaction
KW - Nanomaterial design
KW - Nanostructure annotation
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U2 - 10.1021/acssuschemeng.0c07453
DO - 10.1021/acssuschemeng.0c07453
M3 - Article
AN - SCOPUS:85099023876
SN - 2168-0485
VL - 8
SP - 19096
EP - 19104
JO - ACS Sustainable Chemistry and Engineering
JF - ACS Sustainable Chemistry and Engineering
IS - 51
ER -