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An artificial neural network (ANN)‐based lung‐tumor motion predictor for intrafractional MR tumor tracking
Author(s) -
Yun Jihyun,
Mackenzie Marc,
Rathee Satyapal,
Robinson Don,
Fallone B. G.
Publication year - 2012
Publication title -
medical physics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.473
H-Index - 180
eISSN - 2473-4209
pISSN - 0094-2405
DOI - 10.1118/1.4730294
Subject(s) - lung tumor , artificial neural network , medicine , tracking (education) , medical imaging , match moving , nuclear medicine , lung , motion (physics) , radiology , computer science , artificial intelligence , psychology , pedagogy
Purpose: To address practical issues of implementing artificial neural networks (ANN) for lung‐tumor motion prediction in MRI‐based intrafractional lung‐tumor tracking. Methods: A feedforward four‐layered ANN structure is used to predict future tumor positions. A back‐propagation algorithm is used for ANN learning. Adaptive learning is incorporated by continuously updating weights and learning rate during prediction. An ANN training scheme specific for MRI‐based tracking is developed. A multiple‐ANN structure is developed to reduce tracking failures caused by the lower imaging rates of MRI. We used particle swarm optimization to optimize the ANN structure and initial weights (IW) for each patient and treatment fraction. Prediction accuracy is evaluated using the 1D superior–inferior lung‐tumor motions of 29 lung cancer patients for system delays of 120–520 ms, in increments of 80 ms. The result is compared with four different scenarios: (1), (2) ANN structure optimization + with/without IW optimization, and (3), (4) no ANN structure optimization + with/without IW optimization, respectively. An additional simulation is performed to assess the value of optimizing the ANN structure for each treatment fraction. Results: For 120–520 ms system delays, mean RMSE values (ranges 0.0–2.8 mm from 29 patients) of 0.5–0.9 mm are observed, respectively. Using patient specific ANN structures, a 30%–60% decrease in mean RMSE values is observed as a result of IW optimization, alone. No significant advantages in prediction performance are observed, however, by optimizing for each fraction. Conclusions: A new ANN‐based lung‐tumor motion predictor is developed for MRI‐based intrafractional tumor tracking. The prediction accuracy of our predictor is evaluated using a realistic simulated MR imaging rate and system delays. For 120–520 ms system delays, mean RMSE values of 0.5–0.9 mm (ranges 0.0–2.8 mm from 29 patients) are achieved. Further, the advantage of patient specific ANN structure and IW in lung‐tumor motion prediction is demonstrated by a 30%–60% decrease in mean RMSE values.