Anatomy-aware computed tomography-to-ultrasound spine registration

被引:2
作者
Azampour, Mohammad Farid [1 ,2 ,6 ]
Tirindelli, Maria [1 ,3 ]
Lameski, Jane [1 ]
Gafencu, Miruna [1 ]
Tagliabue, Eleonora [4 ]
Fatemizadeh, Emad [2 ,4 ]
Hacihaliloglu, Ilker [5 ]
Navab, Nassir [1 ]
机构
[1] Tech Univ Munich, Chair Comp Aided Med Procedures & Augmented Real, Munich, Bavaria, Germany
[2] Sharif Univ Technol, Dept Elect Engn, Tehran, Iran
[3] ImFus GmbH, Munich, Bavaria, Germany
[4] Univ Verona, Dept Comp Sci, Verona, VR, Italy
[5] Univ British Columbia, Dept Radiol, Dept Med, Vancouver, BC, Canada
[6] Tech Univ Munich, Chair Comp Aided Med Procedures & Augmented Real, Boltzmannstr 15, D-85748 Garching, Bavaria, Germany
关键词
anatomy-aware deep learning; physics-based data generation; point cloud; registration; spine; ultrasound; LUMBAR SPINE; INTERVERTEBRAL DISC; STATISTICAL-MODEL; CT; INJECTIONS; GUIDANCE;
D O I
10.1002/mp.16731
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
BackgroundUltrasound (US) has demonstrated to be an effective guidance technique for lumbar spine injections, enabling precise needle placement without exposing the surgeon or the patient to ionizing radiation. However, noise and acoustic shadowing artifacts make US data interpretation challenging. To mitigate these problems, many authors suggested using computed tomography (CT)-to-US registration to align the spine in pre-operative CT to intra-operative US data, thus providing localization of spinal landmarks.PurposeIn this paper, we propose a deep learning (DL) pipeline for CT-to-US registration and address the problem of a need for annotated medical data for network training. Firstly, we design a data generation method to generate paired CT-US data where the spine is deformed in a physically consistent manner. Secondly, we train a point cloud (PC) registration network using anatomy-aware losses to enforce anatomically consistent predictions.MethodsOur proposed pipeline relies on training the network on realistic generated data. In our data generation method, we model the properties of the joints and disks between vertebrae based on biomechanical measurements in previous studies. We simulate the supine and prone position deformation by applying forces on the spine models. We choose the spine models from 35 patients in VerSe dataset. Each spine is deformed 10 times to create a noise-free data with ground-truth segmentation at hand. In our experiments, we use one-leave-out cross-validation strategy to measure the performance and the stability of the proposed method. For each experiment, we choose generated PCs from three spines as the test set. From the remaining, data from 3 spines act as the validation set and we use the rest of the data for training the algorithm.To train our network, we introduce anatomy-aware losses and constraints on the movement to match the physics of the spine, namely, rigidity loss and bio-mechanical loss. We define rigidity loss based on the fact that each vertebra can only transform rigidly while the disks and the surrounding tissue are deformable. Second, by using bio-mechanical loss we stop the network from inferring extreme movements by penalizing the force needed to get to a certain pose.MethodsOur proposed pipeline relies on training the network on realistic generated data. In our data generation method, we model the properties of the joints and disks between vertebrae based on biomechanical measurements in previous studies. We simulate the supine and prone position deformation by applying forces on the spine models. We choose the spine models from 35 patients in VerSe dataset. Each spine is deformed 10 times to create a noise-free data with ground-truth segmentation at hand. In our experiments, we use one-leave-out cross-validation strategy to measure the performance and the stability of the proposed method. For each experiment, we choose generated PCs from three spines as the test set. From the remaining, data from 3 spines act as the validation set and we use the rest of the data for training the algorithm.To train our network, we introduce anatomy-aware losses and constraints on the movement to match the physics of the spine, namely, rigidity loss and bio-mechanical loss. We define rigidity loss based on the fact that each vertebra can only transform rigidly while the disks and the surrounding tissue are deformable. Second, by using bio-mechanical loss we stop the network from inferring extreme movements by penalizing the force needed to get to a certain pose. ResultsTo validate the effectiveness of our fully automated data generation pipeline, we qualitatively assess the fidelity of the generated data. This assessment involves verifying the realism of the spinal deformation and subsequently confirming the plausibility of the simulated ultrasound images. Next, we demonstrate that the introduction of the anatomy-aware losses brings us closer to state-of-the-art (SOTA) and yields a reduction of 0.25 mm in terms of target registration error (TRE) compared to using only mean squared error (MSE) loss on the generated dataset. Furthermore, by using the proposed losses, the rigidity loss in inference decreases which shows that the inferred deformation respects the rigidity of the vertebrae and only introduces deformations in the soft tissue area to compensate the difference to the target PC. We also show that our results are close to the SOTA for the simulated US dataset with TRE of 3.89 mm and 3.63 mm for the proposed method and SOTA respectively. In addition, we show that our method is more robust against errors in the initialization in comparison to SOTA and significantly achieves better results (TRE of 4.88 mm compared to 5.66 mm) in this experiment.ConclusionsIn conclusion, we present a pipeline for spine CT-to-US registration and explore the potential benefits of utilizing anatomy-aware losses to enhance registration results. Additionally, we propose a fully automatic method to synthesize paired CT-US data with physically consistent deformations, which offers the opportunity to generate extensive datasets for network training.The generated dataset and the source code for data generation and registration pipeline can be accessed via .ConclusionsIn conclusion, we present a pipeline for spine CT-to-US registration and explore the potential benefits of utilizing anatomy-aware losses to enhance registration results. Additionally, we propose a fully automatic method to synthesize paired CT-US data with physically consistent deformations, which offers the opportunity to generate extensive datasets for network training.The generated dataset and the source code for data generation and registration pipeline can be accessed via .
引用
收藏
页码:2044 / 2056
页数:13
相关论文
共 50 条
  • [31] Computed tomography lung iodine contrast mapping by image registration and subtraction
    Goatman, Keith
    Plakas, Costas
    Schuijf, Joanne
    Beveridge, Erin
    Prokop, Mathias
    [J]. MEDICAL IMAGING 2014: IMAGE PROCESSING, 2014, 9034
  • [32] Vascular Anatomy in the Lumbar Spine Investigated by Three-Dimensional Computed Tomography Angiography: The Concept of Vascular Window
    Barrey, Cedric
    Ene, Bogdan
    Louis-Tisserand, Guy
    Montagna, Pietro
    Perrin, Gilles
    Simon, Emile
    [J]. WORLD NEUROSURGERY, 2013, 79 (5-6) : 784 - 791
  • [33] Hierarchical CT to Ultrasound Registration of the Lumbar Spine: A Comparison with Other Registration Methods
    Koo, Terry K.
    Kwok, Wingchi Edmund
    [J]. ANNALS OF BIOMEDICAL ENGINEERING, 2016, 44 (10) : 2887 - 2900
  • [34] Hierarchical CT to Ultrasound Registration of the Lumbar Spine: A Comparison with Other Registration Methods
    Terry K. Koo
    Wingchi Edmund Kwok
    [J]. Annals of Biomedical Engineering, 2016, 44 : 2887 - 2900
  • [35] Automatic detection of lytic and blastic thoracolumbar spine metastases on computed tomography
    Hammon, Matthias
    Dankerl, Peter
    Tsymbal, Alexey
    Wels, Michael
    Kelm, Michael
    May, Matthias
    Suehling, Michael
    Uder, Michael
    Cavallaro, Alexander
    [J]. EUROPEAN RADIOLOGY, 2013, 23 (07) : 1862 - 1870
  • [36] The Clinical Feasibility of 2-D US and Computed Tomography Registration Technology for Human Liver Imaging
    Liu, Jun
    Xu, Lijian
    Gu, Lixu
    Zhan, Weiwei
    [J]. JOURNAL OF MEDICAL IMAGING AND HEALTH INFORMATICS, 2015, 5 (07) : 1509 - 1512
  • [37] Automated quantification of coronary plaque with computed tomography: comparison with intravascular ultrasound using a dedicated registration algorithm for fusion-based quantification
    Boogers, Mark J.
    Broersen, Alexander
    van Velzen, Joella E.
    de Graaf, Fleur R.
    El-Naggar, Heba M.
    Kitslaar, Pieter H.
    Dijkstra, Jouke
    Delgado, Victoria
    Boersma, Eric
    de Roos, Albert
    Schuijf, Joanne D.
    Schalij, Martin J.
    Reiber, Johan H. C.
    Bax, Jeroen J.
    Jukema, J. Wouter
    [J]. EUROPEAN HEART JOURNAL, 2012, 33 (08) : 1007 - 1016
  • [38] Trimodality image registration of ultrasound, cardiac computed tomography, and magnetic resonance imaging for transcatheter aortic valve implantation and replacement image guidance
    Rahimi, Aisyah
    Khalil, Azira
    Ismail, Shahrina
    Jamil, Aminatul Saadiah Abdul
    Azizan, Muhammad Mokhzaini
    Lai, Khin Wee
    Faisal, Amir
    [J]. HEALTH AND TECHNOLOGY, 2023, 13 (06) : 925 - 936
  • [39] Towards accurate, robust and practical ultrasound-CT registration of vertebrae for image-guided spine surgery
    Yan, Charles X. B.
    Goulet, Benoit
    Pelletier, Julie
    Chen, Sean Jy-Shyang
    Tampieri, Donatella
    Collins, D. Louis
    [J]. INTERNATIONAL JOURNAL OF COMPUTER ASSISTED RADIOLOGY AND SURGERY, 2011, 6 (04) : 523 - 537
  • [40] ESTIMATION OF FELINE RENAL VOLUME USING COMPUTED TOMOGRAPHY AND ULTRASOUND
    Tyson, Reid
    Logsdon, Stacy A.
    Werre, Stephen R.
    Daniel, Gregory B.
    [J]. VETERINARY RADIOLOGY & ULTRASOUND, 2013, 54 (02) : 127 - 132