Application and assessment of multiscale bending energy for morphometric characterization of neural cells
- 1 May 1997
- journal article
- research article
- Published by AIP Publishing in Review of Scientific Instruments
- Vol. 68 (5) , 2177-2186
- https://doi.org/10.1063/1.1148112
Abstract
The estimation of the curvature of experimentally obtained curves is an important issue in many applications of image analysis including biophysics, biology, particle physics, and high energy physics. However, the accurate calculation of the curvature of digital contours has proven to be a difficult endeavor, mainly because of the noise and distortions that are always present in sampled signals. Errors ranging from 1% to 1000% have been reported with respect to the application of standard techniques in the estimation of the curvature of circular contours [M. Worring and A. W. M. Smeulders, CVGIP: Im. Understanding, 58, 366 (1993)]. This article explains how diagrams of multiscale bending energy can be easily obtained from curvegrams and used as a robust general feature for morphometric characterization of neural cells. The bending energy is an interesting global feature for shape characterization that expresses the amount of energy needed to transform the specific shape under analysis into its lowest energy state (i.e., a circle). The curvegram, which can be accurately obtained by using digital signal processing techniques (more specifically through the Fourier transform and its inverse, as described in this work), provides multiscale representation of the curvature of digital contours. The estimation of the bending energy from the curvegram is introduced and exemplified with respect to a series of neural cells. The masked high curvature effect is reported and its implications to shape analysis are discussed. It is also discussed and illustrated that, by normalizing the multiscale bending energy with respect to a standard circle of unitary perimeter, this feature becomes an effective means for expressing shape complexity in a way that is invariant to rotation, translation, and scaling, and that is robust to noise and other artifacts implied by image acquisition.Keywords
This publication has 10 references indexed in Scilit:
- Retinal neurons and vessels are not fractal but space‐fillingJournal of Comparative Neurology, 1995
- Use and abuse of fractal theory in neuroscienceJournal of Comparative Neurology, 1995
- Shapes, shocks, and deformations I: The components of two-dimensional shape and the reaction-diffusion spaceInternational Journal of Computer Vision, 1995
- Computer vision based morphometric characterization of neural cellsReview of Scientific Instruments, 1995
- On the evolution of curves via a function of curvature. I. The classical caseJournal of Mathematical Analysis and Applications, 1992
- A bending energy model for measurement of cardiac shape deformityIEEE Transactions on Medical Imaging, 1991
- Organization of smooth image curves at multiple scalesInternational Journal of Computer Vision, 1989
- Morphological classification of rat cortical neurons in cell cultureJournal of Neuroscience, 1983
- Evidence for dendritic competition in the developing retinaNature, 1982
- An analysis technique for biological shape. IInformation and Control, 1974