Ayushi Sinha1, Masaru Ishii2, Gregory D Hager3, Russell H Taylor3. 1. Laboratory for Computational and Sensing Robotics, The Johns Hopkins University, Baltimore, MD, 21218, USA. sinha@jhu.edu. 2. Department of Otolaryngology - Head and Neck Surgery, Johns Hopkins Medical Institutions, Baltimore, MD, 21205, USA. 3. Laboratory for Computational and Sensing Robotics, The Johns Hopkins University, Baltimore, MD, 21218, USA.
Abstract
PURPOSE: Clinical examinations that involve endoscopic exploration of the nasal cavity and sinuses often do not have a reference preoperative image, like a computed tomography (CT) scan, to provide structural context to the clinician. The aim of this work is to provide structural context during clinical exploration without requiring additional CT acquisition. METHODS: We present a method for registration during clinical endoscopy in the absence of CT scans by making use of shape statistics from past CT scans. Using a deformable registration algorithm that uses these shape statistics along with dense point clouds from video, we simultaneously achieve two goals: (1) register the statistically mean shape of the target anatomy with the video point cloud, and (2) estimate patient shape by deforming the mean shape to fit the video point cloud. Finally, we use statistical tests to assign confidence to the computed registration. RESULTS: We are able to achieve submillimeter errors in registrations and patient shape reconstructions using simulated data. We establish and evaluate the confidence criteria for our registrations using simulated data. Finally, we evaluate our registration method on in vivo clinical data and assign confidence to these registrations using the criteria established in simulation. All registrations that are not rejected by our criteria produce submillimeter residual errors. CONCLUSION: Our deformable registration method can produce submillimeter registrations and reconstructions as well as statistical scores that can be used to assign confidence to the registrations.
PURPOSE: Clinical examinations that involve endoscopic exploration of the nasal cavity and sinuses often do not have a reference preoperative image, like a computed tomography (CT) scan, to provide structural context to the clinician. The aim of this work is to provide structural context during clinical exploration without requiring additional CT acquisition. METHODS: We present a method for registration during clinical endoscopy in the absence of CT scans by making use of shape statistics from past CT scans. Using a deformable registration algorithm that uses these shape statistics along with dense point clouds from video, we simultaneously achieve two goals: (1) register the statistically mean shape of the target anatomy with the video point cloud, and (2) estimate patient shape by deforming the mean shape to fit the video point cloud. Finally, we use statistical tests to assign confidence to the computed registration. RESULTS: We are able to achieve submillimeter errors in registrations and patient shape reconstructions using simulated data. We establish and evaluate the confidence criteria for our registrations using simulated data. Finally, we evaluate our registration method on in vivo clinical data and assign confidence to these registrations using the criteria established in simulation. All registrations that are not rejected by our criteria produce submillimeter residual errors. CONCLUSION: Our deformable registration method can produce submillimeter registrations and reconstructions as well as statistical scores that can be used to assign confidence to the registrations.
Authors: Ayushi Sinha; Simon Leonard; Austin Reiter; Masaru Ishii; Russell H Taylor; Gregory D Hager Journal: Proc SPIE Int Soc Opt Eng Date: 2016-03-21
Authors: Seth D Billings; Ayushi Sinha; Austin Reiter; Simon Leonard; Masaru Ishii; Gregory D Hager; Russell H Taylor Journal: Med Image Comput Comput Assist Interv Date: 2016-10-02
Authors: Simon Leonard; Austin Reiter; Ayushi Sinha; Masaru Ishii; Russel H Taylor; Gregory D Hager Journal: Proc SPIE Int Soc Opt Eng Date: 2016-03-21
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