Title :
Characterization of the Performance of Memetic Algorithms for the Automation of Bone Tracking With Fluoroscopy
Author :
Tersi, Luca ; Fantozzi, Silvia ; Stagni, Rita
Author_Institution :
Health Sci. & Technol.-Interdept. Center for Ind. Res., Univ. of Bologna, Bologna, Italy
Abstract :
Reliable knowledge of in vivo joint kinematics is fundamental in clinical medicine. Fluoroscopic motion tracking theoretically permits a millimeter/degree level of accuracy in 3-D joint motion analysis, but the reliability of the local optimization algorithm [Levenberg-Marquardt (LMA)], typically used for the pose estimation, is highly operator dependent. A new memetic algorithm (MA), hybridizing global evolution and a local search metaphor for learning, is proposed to automate the analysis and improve its reliability and robustness. The performance of MA was assessed for in silico and in vivo elbow kinematics, with and without user supervision. The best learning strategy between Lamarckian and Baldwinian evolution was identified. MA´s accuracy and repeatability was quantified and compared with LMA´s. The algorithm performed best using a partial Lamarckian learning strategy. The geometric symmetry of analyzed bony segments influenced the accuracy, whereas the absolute bone pose with respect to the projection geometry affected the repeatability. In contrast to LMA, MA provided robust, repeatable, and operator independent pose estimations, even for in vivo analyses. The pose can be automatically estimated with errors lower than 1 mm and 1° for all the pose parameters except the depth position, if the investigated motion task avoids symmetric bony projection silhouettes.
Keywords :
biomechanics; bone; diagnostic radiography; image motion analysis; kinematics; learning (artificial intelligence); medical image processing; object tracking; optimisation; orthopaedics; pose estimation; 3-D joint motion analysis; Baldwinian evolution; LMA; Lamarckian evolution; Levenberg-Marquardt algorithm; MA performance; absolute bone pose; bone tracking automation; bony segments; clinical medicine; depth position; fluoroscopic motion tracking; fluoroscopy; geometric symmetry; hybridizing global evolution; in silico; in vivo analyses; in vivo elbow kinematics; in vivo joint kinematics; local optimization algorithm; local search metaphor; memetic algorithm; millimeter/degree level of accuracy; motion task; operator independent pose estimations; partial Lamarckian learning strategy; pose parameter; projection geometry; reliability; repeatability; robustness; symmetric bony projection silhouettes; user supervision; Biological cells; Bones; Convergence; Joints; Optimization; Solid modeling; Three-dimensional displays; Adaptive distance maps; fluoroscopy; joint kinematics; memetic algorithms (MAs);
Journal_Title :
Evolutionary Computation, IEEE Transactions on
DOI :
10.1109/TEVC.2013.2281540