Model-based tendon segmentation from ultrasound images

In orthopedics, trigger finger is one of the popular occupational hazards in recent years. Ultrasound images are usually used for diagnosing the severity of trigger finger clinically. Finger ultrasound image has two important characteristics: the shape of tendon is close to an ellipse, and the tendon boundaries vary significantly in image appearance. The traditional segmentation methods usually cannot segment the tendon well. In this study, we develop an ultrasound image detection and estimation system that can assist clinician to locate and evaluate the area of tendon and synovial sheath automatically. An adaptive texture-based active shape model (ATASM) method is proposed to overcome the complex segmentation problems with the proposed shape model by minimizing the objective function based on gradient and texture information. Considering the segmentation may have many local solutions due to various image qualities, the genetic algorithm (GA) is adopted to search for the best shape parameters. In the experiments, the results of tendon segmentation are found with small segmentation errors and similar to the contour drawn by trained users.

[1]  P. Windyga,et al.  A 2-D Active Appearance Model For Prostate Segmentation in Ultrasound Images , 2005, 2005 IEEE Engineering in Medicine and Biology 27th Annual Conference.

[2]  Satish S. Udpa,et al.  Ultrasonic image processing for tendon injury evaluation , 1998, Proceedings of the IEEE-SP International Symposium on Time-Frequency and Time-Scale Analysis (Cat. No.98TH8380).

[3]  Hideo Noguchi,et al.  Sonographic appearance of the flexor tendon, volar plate, and A1 pulley with respect to the severity of trigger finger. , 2012, The Journal of hand surgery.

[4]  Hsin-Chen Chen,et al.  Registration-based segmentation of three-dimensional ultrasound images for quantitative measurement of fetal craniofacial structure. , 2012, Ultrasound in medicine & biology.

[5]  Jennifer Moriatis Wolf,et al.  Trigger digits: principles, management, and complications. , 2006, The Journal of hand surgery.

[6]  Dar-Ren Chen,et al.  Diagnosis of breast tumors with ultrasonic texture analysis using support vector machines , 2006, Neural Computing & Applications.