DocumentCode
27345
Title
Probabilistic Estimation of Mechanical Properties of Biomaterials Using Atomic Force Microscopy
Author
Roy, Ranjit ; Wenjin Chen ; Lei Cong ; Goodell, Lauri A. ; Foran, David J. ; Desai, Jaydev P.
Author_Institution
Robot., Autom., & Med. Syst. (RAMS) Lab., Univ. of Maryland, College Park, MD, USA
Volume
61
Issue
2
fYear
2014
fDate
Feb. 2014
Firstpage
547
Lastpage
556
Abstract
Nanoindentation using contact-mode atomic force microscopy (AFM) has emerged as a powerful tool for effective material characterization of a wide variety of biomaterials across multiple length scales. However, the interpretation of force-indentation experimental data from AFM is subject to some debate. Uncertainties in AFM data analysis stems from two primary sources: The exact point of contact between the AFM probe and the biological specimen and the variability in the spring constant of the AFM probe. While a lot of attention has been directed toward addressing the contact-point uncertainty, the effect of variability in the probe spring constant has not received sufficient attention. In this paper, we report on an error-in-variables-based Bayesian change-point approach to quantify the elastic modulus of human breast tissue samples after accounting for variability in both contact point and the probe spring constant. We also discuss the efficacy of our approach to a wide range of hyperparameter values using a sensitivity analysis.
Keywords
Bayes methods; atomic force microscopy; biological tissues; biomechanics; elasticity; nanoindentation; probability; sensitivity analysis; AFM data analysis uncertainties; AFM probe contact point; AFM probe spring constant; Bayesian change point approach; atomic force microscopy; biomaterial mechanical properties; contact mode AFM; contact point uncertainty; effective material characterization; force-indentation experimental data; human breast tissue elastic modulus; hyperparameter values; nanoindentation; probabilistic estimation; sensitivity analysis; Bayes methods; Calibration; Force; Microscopy; Probes; Springs; Uncertainty; Atomic force microscopy (AFM); Bayesian changepoint; error-in-variables (EIV); mechanical characterization; tissue microarray (TMA) technology;
fLanguage
English
Journal_Title
Biomedical Engineering, IEEE Transactions on
Publisher
ieee
ISSN
0018-9294
Type
jour
DOI
10.1109/TBME.2013.2283597
Filename
6612698
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