Convolutional Deep Operator Networks for Learning Nonlinear Focused Ultrasound Wave Propagation in Heterogeneous Spinal Cord Anatomy
- URL: http://arxiv.org/abs/2412.16118v1
- Date: Fri, 20 Dec 2024 18:03:38 GMT
- Title: Convolutional Deep Operator Networks for Learning Nonlinear Focused Ultrasound Wave Propagation in Heterogeneous Spinal Cord Anatomy
- Authors: Avisha Kumar, Xuzhe Zhi, Zan Ahmad, Minglang Yin, Amir Manbachi,
- Abstract summary: Focused ultrasound therapy is a promising tool for optimally targeted treatment of spinal cord injuries.
Current approaches rely on computer simulations to solve the governing wave propagation equations.
We propose a convolutional deep operator network (DeepONet) to rapidly predict FUS pressure fields in patient spinal cords.
- Score: 0.0
- License:
- Abstract: Focused ultrasound (FUS) therapy is a promising tool for optimally targeted treatment of spinal cord injuries (SCI), offering submillimeter precision to enhance blood flow at injury sites while minimizing impact on surrounding tissues. However, its efficacy is highly sensitive to the placement of the ultrasound source, as the spinal cord's complex geometry and acoustic heterogeneity distort and attenuate the FUS signal. Current approaches rely on computer simulations to solve the governing wave propagation equations and compute patient-specific pressure maps using ultrasound images of the spinal cord anatomy. While accurate, these high-fidelity simulations are computationally intensive, taking up to hours to complete parameter sweeps, which is impractical for real-time surgical decision-making. To address this bottleneck, we propose a convolutional deep operator network (DeepONet) to rapidly predict FUS pressure fields in patient spinal cords. Unlike conventional neural networks, DeepONets are well equipped to approximate the solution operator of the parametric partial differential equations (PDEs) that govern the behavior of FUS waves with varying initial and boundary conditions (i.e., new transducer locations or spinal cord geometries) without requiring extensive simulations. Trained on simulated pressure maps across diverse patient anatomies, this surrogate model achieves real-time predictions with only a 2% loss on the test set, significantly accelerating the modeling of nonlinear physical systems in heterogeneous domains. By facilitating rapid parameter sweeps in surgical settings, this work provides a crucial step toward precise and individualized solutions in neurosurgical treatments.
Related papers
- Patient-Specific Real-Time Segmentation in Trackerless Brain Ultrasound [35.526097492693864]
Intraoperative ultrasound (iUS) imaging has the potential to improve surgical outcomes in brain surgery.
But its interpretation is challenging, even for expert neurosurgeons.
In this work, we designed the first patient-specific framework that performs brain tumor segmentation in trackerless iUS.
arXiv Detail & Related papers (2024-05-16T10:07:30Z) - CathFlow: Self-Supervised Segmentation of Catheters in Interventional Ultrasound Using Optical Flow and Transformers [66.15847237150909]
We introduce a self-supervised deep learning architecture to segment catheters in longitudinal ultrasound images.
The network architecture builds upon AiAReSeg, a segmentation transformer built with the Attention in Attention mechanism.
We validated our model on a test dataset, consisting of unseen synthetic data and images collected from silicon aorta phantoms.
arXiv Detail & Related papers (2024-03-21T15:13:36Z) - AiAReSeg: Catheter Detection and Segmentation in Interventional
Ultrasound using Transformers [75.20925220246689]
endovascular surgeries are performed using the golden standard of Fluoroscopy, which uses ionising radiation to visualise catheters and vasculature.
This work proposes a solution using an adaptation of a state-of-the-art machine learning transformer architecture to detect and segment catheters in axial interventional Ultrasound image sequences.
arXiv Detail & Related papers (2023-09-25T19:34:12Z) - Robotic Navigation Autonomy for Subretinal Injection via Intelligent
Real-Time Virtual iOCT Volume Slicing [88.99939660183881]
We propose a framework for autonomous robotic navigation for subretinal injection.
Our method consists of an instrument pose estimation method, an online registration between the robotic and the i OCT system, and trajectory planning tailored for navigation to an injection target.
Our experiments on ex-vivo porcine eyes demonstrate the precision and repeatability of the method.
arXiv Detail & Related papers (2023-01-17T21:41:21Z) - Ultrasound Signal Processing: From Models to Deep Learning [64.56774869055826]
Medical ultrasound imaging relies heavily on high-quality signal processing to provide reliable and interpretable image reconstructions.
Deep learning based methods, which are optimized in a data-driven fashion, have gained popularity.
A relatively new paradigm combines the power of the two: leveraging data-driven deep learning, as well as exploiting domain knowledge.
arXiv Detail & Related papers (2022-04-09T13:04:36Z) - Differentially private training of neural networks with Langevin
dynamics forcalibrated predictive uncertainty [58.730520380312676]
We show that differentially private gradient descent (DP-SGD) can yield poorly calibrated, overconfident deep learning models.
This represents a serious issue for safety-critical applications, e.g. in medical diagnosis.
arXiv Detail & Related papers (2021-07-09T08:14:45Z) - DFENet: A Novel Dimension Fusion Edge Guided Network for Brain MRI
Segmentation [0.0]
We propose a novel Dimension Fusion Edge-guided network (DFENet) that can meet both of these requirements by fusing the features of 2D and 3D CNNs.
The proposed model is robust, accurate, superior to the existing methods, and can be relied upon for biomedical applications.
arXiv Detail & Related papers (2021-05-17T15:43:59Z) - Non-Rigid Volume to Surface Registration using a Data-Driven
Biomechanical Model [0.028144129864580446]
We train a convolutional neural network to perform both the search for surface correspondences and the non-rigid registration in one step.
The network is trained on physically accurate biomechanical simulations of randomly generated, deforming organ-like structures.
We show that the network translates well to real data while maintaining a high inference speed.
arXiv Detail & Related papers (2020-05-29T17:35:23Z) - Rectified Linear Postsynaptic Potential Function for Backpropagation in
Deep Spiking Neural Networks [55.0627904986664]
Spiking Neural Networks (SNNs) usetemporal spike patterns to represent and transmit information, which is not only biologically realistic but also suitable for ultra-low-power event-driven neuromorphic implementation.
This paper investigates the contribution of spike timing dynamics to information encoding, synaptic plasticity and decision making, providing a new perspective to design of future DeepSNNs and neuromorphic hardware systems.
arXiv Detail & Related papers (2020-03-26T11:13:07Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.