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Three-dimensional reconstruction of surface nanoarchitecture from two-dimensional datasets

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posted on 2024-07-26, 13:48 authored by Veselin Boshkovikj, Hayden Webb, Vy Pham, Christopher FlukeChristopher Fluke, Russell Crawford, Elena Ivanova
The design of biomaterial surfaces relies heavily on the ability to accurately measure and visualize the three-dimensional surface nanoarchitecture of substrata. Here, we present a technique for producing three-dimensional surface models using displacement maps that are based on the data obtained from two-dimensional analyses. This technique is particularly useful when applied to scanning electron micrographs that have been calibrated using atomic force microscopy (AFM) roughness data. The evaluation of four different surface types, including thin titanium films, silicon wafers, polystyrene cell culture dishes and dragonfly wings confirmed that this technique is particularly effective for the visualization of conductive surfaces such as metallic titanium. The technique is particularly useful for visualizing surfaces that cannot be easily analyzed using AFM. The speed and ease with which electron micrographs can be recorded, combined with a relatively simple process for generating displacement maps, make this technique useful for the assessment of the surface topography of biomaterials.

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ISSN

2191-0855

Journal title

AMB Express

Volume

4

Issue

1

Article number

article no. 3

Pagination

4 pp

Publisher

Springer

Copyright statement

Copyright © 2014 Boshkovikj et al. This an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Language

eng

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