Efficient SVR model update approaches for respiratory motion prediction

Robert Dürichen, Tobias Wissel, Achim Schweikard

Abstract

In order to successfully ablate moving tumours in robotic radiosurgery, respiratory motion prediction is needed to compensate time delays. In this context, recent studies revealed a high potential of support vector regression (SVR). However, high computational cost is one major drawback, particularly caused by batch mode training. We evaluate two approaches to reduce the update rate as well as computation time, while keeping a low prediction error. The update rules are either based on information about the respiratory phase or based on the current prediction error. An evaluation on patient data sets revealed that the second approach on average decreases computation time by 88.53% compared to a batch mode implementation. The prediction error increased by 0.3 hence indicating enhanced efficiency.
Original languageEnglish
Number of pages4
Publication statusPublished - 01.11.2012
Event11. Jahrestagung der Deutschen Gesellschaft für Computer- und Roboterassistierte Chirugie (CURAC) - Düsseldorf, Germany
Duration: 15.11.201216.11.2012

Conference

Conference11. Jahrestagung der Deutschen Gesellschaft für Computer- und Roboterassistierte Chirugie (CURAC)
Country/TerritoryGermany
CityDüsseldorf
Period15.11.1216.11.12

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