%0 Journal Article %T Application of Soft Tissue Artifact Compensation Using Displacement Dependency between Anatomical Landmarks and Skin Markers %A Taebeum Ryu %J Anatomy Research International %D 2012 %I Hindawi Publishing Corporation %R 10.1155/2012/123713 %X Soft tissue artifact is known to be one of the main sources of errors in motion analysis by means of stereophotogrammetry. Among many approaches to reduce such errors, one is to estimate the position of anatomical landmarks during a motion with joint angle or displacement of skin markers, which is the so-called compensation method of anatomical landmarks. The position of anatomical landmarks was modeled from the data of the so-called dynamic calibration, in which anatomical landmark positions are calibrated in an ad hoc motion. This study aimed to apply the compensation methods with joint angle and skin marker displacement to three lower extremity motions (walking, sit-to-stand/stand-to-sit, and step up/down) in ten healthy males and compare their reliability. To compare the methods, two sets of kinematic variables were calculated using two different marker clusters, and the difference was obtained. Results showed that the compensation method with skin marker displacement had less differences by 30¨C60% compared to without compensation. In addition, it had significantly less difference in some kinematic variables (7 of 18) by 25¨C40% compared to the compensation method with joint angle. 1. Introduction Skin marker-based stereophotogrammetry is the most commonly used technique to analyze motions, despite significant errors due to the deformation of soft tissues such as skin and muscle. The displacement of skin markers relative to the underlying bones is called soft tissue artifact (STA), and it is responsible for errors in motion analysis. Skin marker displacement can be as much as 40£¿mm in the lower extremities [1, 2]. Error in computed angle due to STA ranges from 10¡ã to 20¡ã and is especially significant in abduction/adduction and internal/external rotation motions [1, 3, 4]. Methods proposed to reduce STA errors are based on either one of two principles: treating the STA as an independent noise irrespective of motor tasks and modeling a systematic pattern of STA in relation to motor tasks. Representatives of the first category are the studies of Challis [5], Ball and Pierrynowski [6], and Alexander and Andriacchi [7]. Challis [5] and Ball and Pierrynowski [6] made models of skin marker cluster deformation using geometric transformations, such as scaling and shearing. Alexander and Andriacchi [7] attempted to model the trajectory of skin marker displacements relative to the underlying bones using the Gaussian function. The second category includes methods that assessed task-related patterns of STA by obtaining the positions of anatomical landmark¡ªwhich %U http://www.hindawi.com/journals/ari/2012/123713/