A learning-based, region of interest-tracking algorithm for catheter detection in echocardiography. Academic Article uri icon

abstract

  • Echocardiography (echo) is gaining popularity to guide the catheter during surgical procedures. However, it is difficult to discern the catheter tip in echo even with an acoustically active catheter. An acoustically active catheter is detected for the first time in cardiac echo images using two methods. First, a convolutional neural network (CNN) model was trained to detect the region of interest (ROI), the interior of the left ventricle, containing the catheter tip. Color intensity difference detection technique was implemented on the ROI to detect the catheter. This method succeeded in detecting the catheter without any manual input on 94% and 57% of long- and short-axis projections, respectively. Second, several tracking methods were implemented and tested. Given the manually identified initial positions of the catheter, the tracking methods could distinguish between the target (catheter tip) and the surrounding on the rest of the frames. Combining the two techniques, for the first time, resulted in an automatic, robust, and fast method for catheter detection in echo images.

published proceedings

  • Comput Med Imaging Graph

author list (cited authors)

  • Kim, T., Hedayat, M., Vaitkus, V. V., Belohlavek, M., Krishnamurthy, V., & Borazjani, I.

citation count

  • 0

complete list of authors

  • Kim, Taeouk||Hedayat, Mohammadali||Vaitkus, Veronica V||Belohlavek, Marek||Krishnamurthy, Vinayak||Borazjani, Iman

publication date

  • September 2022