Literature DB >> 36082205

Data-Driven Detection and Registration of Spine Surgery Instrumentation in Intraoperative Images.

S A Doerr1, A Uneri1, Y Huang1, C K Jones2, X Zhang1, M D Ketcha1, P A Helm3, J H Siewerdsen1,2.   

Abstract

Purpose: Conventional model-based 3D-2D registration algorithms can be challenged by limited capture range, model validity, and stringent intraoperative runtime requirements. In this work, a deep convolutional neural network was used to provide robust initialization of a registration algorithm (known-component registration, KC-Reg) for 3D localization of spine surgery implants, combining the speed and global support of data-driven approaches with the previously demonstrated accuracy of model-based registration.
Methods: The approach uses a Faster R-CNN architecture to detect and localize a broad variety and orientation of spinal pedicle screws in clinical images. Training data were generated using projections from 17 clinical cone-beam CT scans and a library of screw models to simulate implants. Network output was processed to provide screw count and 2D poses. The network was tested on two test datasets of 2,000 images, each depicting real anatomy and realistic spine surgery instrumentation - one dataset involving the same patient data as in the training set (but with different screws, poses, image noise, and affine transformations) and one dataset with five patients unseen in the test data. Assessment of device detection was quantified in terms of accuracy and specificity, and localization accuracy was evaluated in terms of intersection-over-union (IOU) and distance between true and predicted bounding box coordinates.
Results: The overall accuracy of pedicle screw detection was ~86.6% (85.3% for the same-patient dataset and 87.8% for the many-patient dataset), suggesting that the screw detection network performed reasonably well irrespective of disparate, complex anatomical backgrounds. The precision of screw detection was ~92.6% (95.0% and 90.2% for the respective same-patient and many-patient datasets). The accuracy of screw localization was within 1.5 mm (median difference of bounding box coordinates), and median IOU exceeded 0.85. For purposes of initializing a 3D-2D registration algorithm, the accuracy was observed to be well within the typical capture range of KC-Reg.1. Conclusions: Initial evaluation of network performance indicates sufficient accuracy to integrate with algorithms for implant registration, guidance, and verification in spine surgery. Such capability is of potential use in surgical navigation, robotic assistance, and data-intensive analysis of implant placement in large retrospective datasets. Future work includes correspondence of multiple views, 3D localization, screw classification, and expansion of the training dataset to a broader variety of anatomical sites, number of screws, and types of implants.

Entities:  

Keywords:  deep learning; image registration; image-guided surgery; intraoperative imaging; spine surgery

Year:  2020        PMID: 36082205      PMCID: PMC9450103          DOI: 10.1117/12.2550052

Source DB:  PubMed          Journal:  Proc SPIE Int Soc Opt Eng        ISSN: 0277-786X


  8 in total

Review 1.  Impact of spine surgery complications on costs associated with management of adult spinal deformity.

Authors:  Samrat Yeramaneni; Chessie Robinson; Richard Hostin
Journal:  Curr Rev Musculoskelet Med       Date:  2016-09

2.  Object Detection With Deep Learning: A Review.

Authors:  Zhong-Qiu Zhao; Peng Zheng; Shou-Tao Xu; Xindong Wu
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2019-01-28       Impact factor: 10.451

3.  Low-dose preview for patient-specific, task-specific technique selection in cone-beam CT.

Authors:  Adam S Wang; J Webster Stayman; Yoshito Otake; Sebastian Vogt; Gerhard Kleinszig; A Jay Khanna; Gary L Gallia; Jeffrey H Siewerdsen
Journal:  Med Phys       Date:  2014-07       Impact factor: 4.071

4.  Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks.

Authors:  Shaoqing Ren; Kaiming He; Ross Girshick; Jian Sun
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2016-06-06       Impact factor: 6.226

5.  Known-component 3D image reconstruction for improved intraoperative imaging in spine surgery: A clinical pilot study.

Authors:  Xiaoxuan Zhang; Ali Uneri; J Webster Stayman; Corinna C Zygourakis; Sheng-Fu L Lo; Nicholas Theodore; Jeffrey H Siewerdsen
Journal:  Med Phys       Date:  2019-06-30       Impact factor: 4.071

6.  Known-component metal artifact reduction (KC-MAR) for cone-beam CT.

Authors:  A Uneri; X Zhang; T Yi; J W Stayman; P A Helm; G M Osgood; N Theodore; J H Siewerdsen
Journal:  Phys Med Biol       Date:  2019-08-21       Impact factor: 3.609

7.  Intraoperative evaluation of device placement in spine surgery using known-component 3D-2D image registration.

Authors:  A Uneri; T De Silva; J Goerres; M W Jacobson; M D Ketcha; S Reaungamornrat; G Kleinszig; S Vogt; A J Khanna; G M Osgood; J-P Wolinsky; J H Siewerdsen
Journal:  Phys Med Biol       Date:  2017-02-24       Impact factor: 3.609

8.  Computed tomography evaluation of pedicle screws placed in the pediatric deformed spine over an 8-year period.

Authors:  Ronald A Lehman; Lawrence G Lenke; Kathryn A Keeler; Yongjung J Kim; Gene Cheh
Journal:  Spine (Phila Pa 1976)       Date:  2007-11-15       Impact factor: 3.468

  8 in total

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