4.6 Article

Patient-specific Cardio-respiratory Motion Prediction in X-ray Angiography using LSTM Networks

Journal

PHYSICS IN MEDICINE AND BIOLOGY
Volume 68, Issue 2, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/1361-6560/acaba8

Keywords

cardiac motion; respiratory motion; cardio-respiratory motion prediction; X-ray angiography; LSTM model; motion tracking

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This study proposes a novel patient-specific cardio-respiratory motion prediction approach using a simple LSTM model. The motion behavior in an X-ray angiography time series is represented as a sequence of 2D affine transformation matrices, and a LSTM model is used to predict future frames based on previously generated images. The method achieves small prediction errors in both simulated and patient datasets.
Objective. To develop a novel patient-specific cardio-respiratory motion prediction approach for X-ray angiography time series based on a simple long short-term memory (LSTM) model. Approach. The cardio-respiratory motion behavior in an X-ray image sequence was represented as a sequence of 2D affine transformation matrices, which provide the displacement information of contrasted moving objects (arteries and medical devices) in a sequence. The displacement information includes translation, rotation, shearing, and scaling in 2D. A many-to-many LSTM model was developed to predict 2D transformation parameters in matrix form for future frames based on previously generated images. The method was developed with 64 simulated phantom datasets (pediatric and adult patients) using a realistic cardio-respiratory motion simulator (XCAT) and was validated using 10 different patient X-ray angiography sequences. Main results. Using this method we achieved less than 1 mm prediction error for complex cardio-respiratory motion prediction. The following mean prediction error values were recorded over all the simulated sequences: 0.39 mm (for both motions), 0.33 mm (for only cardiac motion), and 0.47 mm (for only respiratory motion). The mean prediction error for the patient dataset was 0.58 mm. Significance. This study paves the road for a patient-specific cardio-respiratory motion prediction model, which might improve navigation guidance during cardiac interventions.

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