25 August 2022 Framework for lumen-based nonrigid tomographic coregistration of intravascular images
Abhishek Karmakar, Max L. Olender, David Marlevi, Evan Shlofmitz, Richard A. Shlofmitz, Elazer R. Edelman, Farhad R. Nezami
Author Affiliations +
Abstract

Purpose: Modern medical imaging enables clinicians to effectively diagnose, monitor, and treat diseases. However, clinical decision-making often relies on combined evaluation of either longitudinal or disparate image sets, necessitating coregistration of multiple acquisitions. Promising coregistration techniques have been proposed; however, available methods predominantly rely on time-consuming manual alignments or nontrivial feature extraction with limited clinical applicability. Addressing these issues, we present a fully automated, robust, nonrigid registration method, allowing for coregistering of multimodal tomographic vascular image datasets using luminal annotation as the sole alignment feature.

Approach: Registration is carried out by the use of the registration metrics defined exclusively for lumens shapes. The framework is primarily broken down into two sequential parts: longitudinal and rotational registration. Both techniques are inherently nonrigid in nature to compensate for motion and acquisition artifacts in tomographic images.

Results: Performance was evaluated across multimodal intravascular datasets, as well as in longitudinal cases assessing pre-/postinterventional coronary images. Low registration error in both datasets highlights method utility, with longitudinal registration errors—evaluated throughout the paired tomographic sequences—of 0.29 ± 0.14 mm (<2 longitudinal image frames) and 0.18 ± 0.16 mm (<1 frame) for multimodal and interventional datasets, respectively. Angular registration for the interventional dataset rendered errors of 7.7 ° ± 6.7 ° , and 29.1 ° ± 23.2 ° for the multimodal set.

Conclusions: Satisfactory results across datasets, along with additional attributes such as the ability to avoid longitudinal over-fitting and correct nonlinear catheter rotation during nonrigid rotational registration, highlight the potential wide-ranging applicability of our presented coregistration method.

© 2022 Society of Photo-Optical Instrumentation Engineers (SPIE)
Abhishek Karmakar, Max L. Olender, David Marlevi, Evan Shlofmitz, Richard A. Shlofmitz, Elazer R. Edelman, and Farhad R. Nezami "Framework for lumen-based nonrigid tomographic coregistration of intravascular images," Journal of Medical Imaging 9(4), 044006 (25 August 2022). https://doi.org/10.1117/1.JMI.9.4.044006
Received: 25 February 2022; Accepted: 9 August 2022; Published: 25 August 2022
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CITATIONS
Cited by 3 scholarly publications.
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KEYWORDS
Image registration

Optical coherence tomography

Tomography

Intravascular ultrasound

Image segmentation

Rigid registration

Image fusion

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