DocumentCode
3571549
Title
Exploring Baseline Shift Prediction in Respiration Induced Tumor Motion
Author
Balasubramanian, Arvind ; Shamsuddin, Rittika ; Yam Cheung ; Sawant, Amit ; Prabhakaran, Balakrishnan
Author_Institution
Dept. of Comput. Sci., Univ. of Texas at Dallas, Richardson, TX, USA
fYear
2014
Firstpage
155
Lastpage
160
Abstract
Effective management of respiratory motion is essential for achieving the clinical goals of stereo tactic thoracic and abdominal radiotherapy, where highly potent radiation beams are precisely directed in order to ablate the tumor, while minimizing radiation damage to normal tissue and critical organs. Due to cycle-to-cycle variations in respiratory motion, it is important to be able to predict imminent anomalous or irregular tumor motion ahead of its occurrence. Such information can then be used to pause the radiation delivery, or to track the moving tumor. However, predicting tumor motion anomalies presents a challenge as the occurrence of these anomalies can vary from patient to patient and from day to day for the same patient. In this paper, we explore the use of observed data in predicting baseline trends, and baseline shifts, in particular. Using a tumor motion dataset obtained from 143 treatment fractions from 42 patients treated with Cyber knife Synchrony System, we execute multifaceted analyses, including offline and online scenarios. Given the variation in tumor motion patterns and the absence of standardized baselines and adequate personalized prior data, we compare performances of standard prediction algorithms with and without training on prior data. Our analyses yield promising results for baseline shift prediction, and real-time baseline trend estimation in general.
Keywords
biological organs; data mining; image motion analysis; medical image processing; object tracking; radiation therapy; tumours; abdominal radiotherapy; anomalous tumor motion; baseline shift prediction; baseline trends; clinical goals; critical organs; cyber knife synchrony system; data mining; irregular tumor motion; moving tumor tracking; normal tissue; patient treatment; radiation beams; radiation damage; radiation delivery; respiration induced tumor motion; respiratory motion management; stereo tactic thoracic radiotherapy; tumor motion anomalies; tumor motion dataset; tumor motion patterns; Algorithm design and analysis; Hidden Markov models; Market research; Motion segmentation; Prediction algorithms; Predictive models; Tumors; baseline shift; data mining; prediction; radiation therapy; tumor motion;
fLanguage
English
Publisher
ieee
Conference_Titel
Healthcare Informatics (ICHI), 2014 IEEE International Conference on
Type
conf
DOI
10.1109/ICHI.2014.28
Filename
7052483
Link To Document