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The Study on Predicting Respiratory Motion via MemoryBased Learning in Radiotherapy |
1 Institute of Biomedical Engineering,Southern Medical University,Guangzhou 510515, China
2 Guangdong Sunwah Tech Consulting Group,Guangzhou 510515, China
3 Radiotherapy Center of PLA 303 Hospital, Nanning 530021, China |
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Abstract Prediction is necessary to compensate the system latency in the realtime tracking radiation therapy for thoracic and abdominal cancers. However, because of the complexity of the breathing motion, conventional methods are far from clinical requirements. This paper proposed a memorybased learning method to predict respiratory motion. The method stores the training data in memory, then finds relevant data to answer a particular query. Furthermore, the paper adopts dynamic update the training data method and ridge regression aimed at “illcondition matrix” to greatly improve the accuracy and robustness of the algorithm. Our experiment collected ten respiratory motion data with average amplitude of 20 mm (9.2~37.8 mm) from humans’ body surface using POLARIS infrared positioning system. Using our methods (prediction horizon is 1s), mean absolute error (MAE) was reduced to 0.3 mm (0.08~0.8 mm), per estimate takes 1 ms. The results confirm that the proposed method is able to capture highly complex breathing movement accurately in real time.
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