| Literature DB >> 30458788 |
S Ivvan Valdez1, Josué González-Sandoval2, Sergio Dueñas-Jiménez3, Nancy Elizabeth Franco Rodríguez4, Sulema Torres-Ramos2, Gerardo Mendizabal-Ruiz5.
Abstract
BACKGROUND: Laboratory rats play a critical role in research because they provide a biological model that can be used for evaluating the affectation of diseases and injuries, and for the evaluation of the effectiveness of new drugs and treatments. The analysis of locomotion in laboratory rats facilitates the understanding of motor defects in many diseases, as well as the damage and recovery after peripheral and central nervous system injuries. However, locomotion analysis of rats remains a great challenge due to the necessity of labor intensive manual annotations of video data required to obtain quantitative measurements of the kinematics of the rodent extremities. In this work, we present a method that is based on the use of a bio-inspired algorithm that fits a kinematic model of the hind limbs of rats to binary images corresponding to the segmented marker of images corresponding to the rat's gait. The bio-inspired algorithm combines a genetic algorithm for a group of the optimization variables with a local search for a second group of the optimization variables.Entities:
Keywords: Genetic algorithm; Hind limb; Kinematics analysis; Laboratory rats; Local search
Mesh:
Year: 2018 PMID: 30458788 PMCID: PMC6245690 DOI: 10.1186/s12938-018-0565-6
Source DB: PubMed Journal: Biomed Eng Online ISSN: 1475-925X Impact factor: 2.819
Fig. 1a Example of marks placed on the skin of the hind limb of a laboratory rat, and b the binary image corresponding to the marks
Fig. 2Kinematic model of the rat hind limb
Fig. 3Examples of the kinematic model adjustments over the binary images corresponding to the hind limb marks of a rat employing the proposed method
Statistics of the variation of the results of the adjusted kinematic model employing the proposed method five times on 100 randomly selected frames using Bootstrapping and a re-sampling parameter of
| Variable | Mean difference (std) | 95% Confidence interval |
|---|---|---|
| 2.39 (4.87) | 1.95–3.02 | |
| 1.86 (3.56) | 1.56–2.35 | |
| 3.32 (6.27) | 2.65–4.12 | |
| 12.59 (10.48) | 11.41–13.79 | |
| 0.02 (0.06) | 0.018–0.034 | |
| 0.01 (0.03) | 0.013–0.022 | |
| 0.01 (0.02) | 0.013–0.019 | |
| 0.36 (1.58) | 0.210–0.582 |
Fig. 4From up to down, left to right angles. Dots are and estimated values from five executions per frame. The gray line is a weighted mean, each value is weighted by the normalized objective function (the normalized objective function values from the five executions sums to one) . The green line is a cubic-spline interpolation of the weighted mean
Fig. 5Examples of the the leg pendulum-like movement of the hind limb obtained with the proposed method (A), and with the annotations of two observers (O1 and O2)