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Seq2Morph: a deep learning deformable image registration algorithm for longitudinal imaging studies and adaptive radiotherapy.

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Abstract

To simultaneously register all the longitudinal images acquired in a radiotherapy course for analyzing patients’ anatomy changes for adaptive radiotherapy (ART).   METHODS: : To address the unique needs of ART, we designed Seq2Morph, a novel deep learning-based deformable image registration (DIR) network. Seq2Morph was built upon VoxelMorph which is a general-purpose framework for learning-based image registration. The major upgrades are 1) expansion of inputs to all weekly CBCTs acquired for monitoring treatment responses throughout a radiotherapy course, for registration to their planning CT; 2) incorporation of 3D convolutional long short-term memory between the encoder and decoder of VoxelMorph, to parse the temporal patterns of anatomical changes; and 3) addition of bidirectional pathways to calculate and minimize inverse consistency errors (ICE). Longitudinal image sets from 50 patients, including a planning CT and six weekly CBCTs per patient were utilized for the network training and cross-validation. The outputs were deformation vector fields for all the registration pairs. The loss function was composed of a normalized cross-correlation for image intensity similarity, a DICE for contour similarity, an ICE, and a deformation regularization term. For performance evaluation, DICE and Hausdorff distance (HD) for the manual vs. predicted contours of tumor and esophagus on weekly basis were quantified and further compared with other state-of-the-art algorithms, including conventional VoxelMorph and Large Deformation Diffeomorphic Metric Mapping (LDDMM).Visualization of the hidden states of Seq2Morph revealed distinct spatiotemporal anatomy change patterns. Quantitatively, Seq2Morph performed similarly to LDDMM, but significantly outperformed VoxelMorph as measured by GTV DICE: (0.799±0.078, 0.798±0.081, 0.773±0.078), and 50% HD (mm): (0.80±0.57, 0.88±0.66, 0.95±0.60). The per-patient inference of Seq2Morph took 22s, much less than LDDMM (∼30 min).   CONCLUSION: : Seq2Morph can provide accurate and fast DIR for longitudinal image studies by exploiting spatial-temporal patterns. It closely matches the clinical workflow and has the potential to serve for both online and offline ART.  This article is protected by copyright. All rights reserved.This article is protected by copyright. All rights reserved.

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