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AutoDetect-mNP: An Unsupervised Machine Learning Algorithm for Automated Analysis of Transmission Electron Microscope Images of Metal Nanoparticles.

Publication ,  Journal Article
Wang, X; Li, J; Ha, HD; Dahl, JC; Ondry, JC; Moreno-Hernandez, I; Head-Gordon, T; Alivisatos, AP
Published in: JACS Au
March 2021

The synthesis quality of artificial inorganic nanocrystals is most often assessed by transmission electron microscopy (TEM) for which high-throughput advances have dramatically increased both the quantity and information richness of metal nanoparticle (mNP) characterization. Existing automated data analysis algorithms of TEM mNP images generally adopt a supervised approach, requiring a significant effort in human preparation of labeled data that reduces objectivity, efficiency, and generalizability. We have developed an unsupervised algorithm AutoDetect-mNP for automated analysis of TEM images that objectively extracts morphological information on convex mNPs from TEM images based on their shape attributes, requiring little to no human input in the process. The performance of AutoDetect-mNP is tested on two data sets of bright field TEM images of Au nanoparticles with different shapes and further extended to palladium nanocubes and cadmium selenide quantum dots, demonstrating that the algorithm is quantitatively reliable and can thus serve as a generalizable measure of the morphology distributions of any mNP synthesis. The AutoDetect-mNP algorithm will aid in future developments of high-throughput characterization of mNPs and the future advent of time-resolved TEM studies that can investigate reaction mechanisms of mNP synthesis and reactivity.

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Published In

JACS Au

DOI

EISSN

2691-3704

ISSN

2691-3704

Publication Date

March 2021

Volume

1

Issue

3

Start / End Page

316 / 327

Related Subject Headings

  • 34 Chemical sciences
 

Citation

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Wang, X., Li, J., Ha, H. D., Dahl, J. C., Ondry, J. C., Moreno-Hernandez, I., … Alivisatos, A. P. (2021). AutoDetect-mNP: An Unsupervised Machine Learning Algorithm for Automated Analysis of Transmission Electron Microscope Images of Metal Nanoparticles. JACS Au, 1(3), 316–327. https://doi.org/10.1021/jacsau.0c00030
Wang, Xingzhi, Jie Li, Hyun Dong Ha, Jakob C. Dahl, Justin C. Ondry, Ivan Moreno-Hernandez, Teresa Head-Gordon, and A Paul Alivisatos. “AutoDetect-mNP: An Unsupervised Machine Learning Algorithm for Automated Analysis of Transmission Electron Microscope Images of Metal Nanoparticles.JACS Au 1, no. 3 (March 2021): 316–27. https://doi.org/10.1021/jacsau.0c00030.
Wang X, Li J, Ha HD, Dahl JC, Ondry JC, Moreno-Hernandez I, et al. AutoDetect-mNP: An Unsupervised Machine Learning Algorithm for Automated Analysis of Transmission Electron Microscope Images of Metal Nanoparticles. JACS Au. 2021 Mar;1(3):316–27.
Wang, Xingzhi, et al. “AutoDetect-mNP: An Unsupervised Machine Learning Algorithm for Automated Analysis of Transmission Electron Microscope Images of Metal Nanoparticles.JACS Au, vol. 1, no. 3, Mar. 2021, pp. 316–27. Epmc, doi:10.1021/jacsau.0c00030.
Wang X, Li J, Ha HD, Dahl JC, Ondry JC, Moreno-Hernandez I, Head-Gordon T, Alivisatos AP. AutoDetect-mNP: An Unsupervised Machine Learning Algorithm for Automated Analysis of Transmission Electron Microscope Images of Metal Nanoparticles. JACS Au. 2021 Mar;1(3):316–327.

Published In

JACS Au

DOI

EISSN

2691-3704

ISSN

2691-3704

Publication Date

March 2021

Volume

1

Issue

3

Start / End Page

316 / 327

Related Subject Headings

  • 34 Chemical sciences