Tumour Ellipsification in Ultrasound Images for Treatment Prediction in Breast Cancer

Mehrdad Gangeh1, Hamid Reza Tizhoosh2, Kan Wu2, Dun Huang2, Hadi Tadayyon3, Gregory Czarnota4

  • 1Sunnybrook Health Sciences Centre
  • 2University of Waterloo
  • 3Queen's University, School of Computing
  • 4University of Toronto, Sunnybrook Health Sciences Centre

Details

09:05 - 09:55 | Thu 16 Feb | Ballroom D | ThRAF.22

Session: Rapid Fire Session 01: Imaging Informatics

Abstract

Recent advances in using quantitative ultrasound (QUS) methods have provided a promising framework to non-invasively and inexpensively monitor or predict the effectiveness of therapeutic cancer responses. One of the earliest steps in using QUS methods is contouring a region of interest (ROI) inside the tumor in ultrasound B-mode images. While manual segmentation is a very time-consuming and tedious task for human experts, auto-contouring is also an extremely difficult task for computers due to the poor quality of ultrasound B-mode images. However, for the purpose of cancer response prediction, a rough boundary of the tumor as an ROI is only needed. In this research, a semi-automated tumor localization approach is proposed for ROI estimation in ultrasound B-mode images acquired from patients with locally advanced breast cancer (LABC). The proposed approach comprised several modules, including 1) feature extraction using keypoint descriptors, 2) augmenting the feature descriptors with the distance of the keypoints to the user-input pixel as the centre of the tumour, 3) supervised learning using a support vector machine (SVM) to classify keypoints as "tumour" or "non-tumour", and 4) computation of an ellipse as an outline of the ROI representing the tumour. Experiments with 33 B-mode images from 10 LABC patients yielded promising results with an accuracy of 76.7% based on the Dice coefficient performance measure.