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Main Authors: Shuaibu, Aisha L., Gibb, Kieran A., Wijeratne, Peter A., Simpson, Ivor J. A.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.09514
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author Shuaibu, Aisha L.
Gibb, Kieran A.
Wijeratne, Peter A.
Simpson, Ivor J. A.
author_facet Shuaibu, Aisha L.
Gibb, Kieran A.
Wijeratne, Peter A.
Simpson, Ivor J. A.
contents Longitudinal image registration enables studying temporal changes in brain morphology which is useful in applications where monitoring the growth or atrophy of specific structures is important. However this task is challenging due to; noise/artifacts in the data and quantifying small anatomical changes between sequential scans. We propose a novel longitudinal registration method that models structural changes using temporally parameterized neural displacement fields. Specifically, we implement an implicit neural representation (INR) using a multi-layer perceptron that serves as a continuous coordinate-based approximation of the deformation field at any time point. In effect, for any N scans of a particular subject, our model takes as input a 3D spatial coordinate location x, y, z and a corresponding temporal representation t and learns to describe the continuous morphology of structures for both observed and unobserved points in time. Furthermore, we leverage the analytic derivatives of the INR to derive a new regularization function that enforces monotonic rate of change in the trajectory of the voxels, which is shown to provide more biologically plausible patterns. We demonstrate the effectiveness of our method on 4D brain MR registration.
format Preprint
id arxiv_https___arxiv_org_abs_2504_09514
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Capturing Longitudinal Changes in Brain Morphology Using Temporally Parameterized Neural Displacement Fields
Shuaibu, Aisha L.
Gibb, Kieran A.
Wijeratne, Peter A.
Simpson, Ivor J. A.
Computer Vision and Pattern Recognition
Machine Learning
Longitudinal image registration enables studying temporal changes in brain morphology which is useful in applications where monitoring the growth or atrophy of specific structures is important. However this task is challenging due to; noise/artifacts in the data and quantifying small anatomical changes between sequential scans. We propose a novel longitudinal registration method that models structural changes using temporally parameterized neural displacement fields. Specifically, we implement an implicit neural representation (INR) using a multi-layer perceptron that serves as a continuous coordinate-based approximation of the deformation field at any time point. In effect, for any N scans of a particular subject, our model takes as input a 3D spatial coordinate location x, y, z and a corresponding temporal representation t and learns to describe the continuous morphology of structures for both observed and unobserved points in time. Furthermore, we leverage the analytic derivatives of the INR to derive a new regularization function that enforces monotonic rate of change in the trajectory of the voxels, which is shown to provide more biologically plausible patterns. We demonstrate the effectiveness of our method on 4D brain MR registration.
title Capturing Longitudinal Changes in Brain Morphology Using Temporally Parameterized Neural Displacement Fields
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2504.09514