Abstract
Abstract
Purpose
Localizing structures and estimating the motion of a specific target region are common problems for navigation during surgical interventions. Optical coherence tomography (OCT) is an imaging modality with a high spatial and temporal resolution that has been used for intraoperative imaging and also for motion estimation, for example, in the context of ophthalmic surgery or cochleostomy. Recently, motion estimation between a template and a moving OCT image has been studied with deep learning methods to overcome the shortcomings of conventional, feature-based methods.
Methods
We investigate whether using a temporal stream of OCT image volumes can improve deep learning-based motion estimation performance. For this purpose, we design and evaluate several 3D and 4D deep learning methods and we propose a new deep learning approach. Also, we propose a temporal regularization strategy at the model output.
Results
Using a tissue dataset without additional markers, our deep learning methods using 4D data outperform previous approaches. The best performing 4D architecture achieves an correlation coefficient (aCC) of 98.58% compared to 85.0% of a previous 3D deep learning method. Also, our temporal regularization strategy at the output further improves 4D model performance to an aCC of 99.06%. In particular, our 4D method works well for larger motion and is robust toward image rotations and motion distortions.
Conclusions
We propose 4D spatio-temporal deep learning for OCT-based motion estimation. On a tissue dataset, we find that using 4D information for the model input improves performance while maintaining reasonable inference times. Our regularization strategy demonstrates that additional temporal information is also beneficial at the model output.
Funder
Forschungszentrum Medizintechnik Hamburg
Publisher
Springer Science and Business Media LLC
Subject
Health Informatics,Radiology, Nuclear Medicine and imaging,General Medicine,Surgery,Computer Graphics and Computer-Aided Design,Computer Science Applications,Computer Vision and Pattern Recognition,Biomedical Engineering
Reference29 articles.
1. Bay H, Tuytelaars T, Van Gool L (2006) Surf: speeded up robust features. In: ECCV, Springer, pp 404–417
2. Bengs M, Gessert N, Schlaefer A (2019) 4d spatio-temporal deep learning with 4d fmri data for autism spectrum disorder classification. In: International conference on medical imaging with deep learning
3. Bergmeier J, Fitzpatrick JM, Daentzer D, Majdani O, Ortmaier T, Kahrs LA (2017) Workflow and simulation of image-to-physical registration of holes inside spongy bone. Int J Comput Assist Radiol Surg 12(8):1425–1437
4. Clark D, Badea C (2019) Convolutional regularization methods for 4d, X-ray ct reconstruction. In: Medical imaging 2019: physics of medical imaging, International society for optics and photonics. vol 10948, p 109482A
5. Du X, Assadi MZ, Jowitt F, Brett PN, Henshaw S, Dalton J, Proops DW, Coulson CJ, Reid AP (2013) Robustness analysis of a smart surgical drill for cochleostomy. Int J Med Robotics Comput Assist Surg 9(1):119–126
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献