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Class-Aware Cartilage Segmentation for Autonomous US-CT Registration in Robotic Intercostal Ultrasound Imaging | IEEE Journals & Magazine | IEEE Xplore

Class-Aware Cartilage Segmentation for Autonomous US-CT Registration in Robotic Intercostal Ultrasound Imaging


Abstract:

Ultrasound imaging has been widely used in clinical examinations owing to the advantages of being portable, real-time, and radiation-free. Considering the potential of ex...Show More

Abstract:

Ultrasound imaging has been widely used in clinical examinations owing to the advantages of being portable, real-time, and radiation-free. Considering the potential of extensive deployment of autonomous examination systems in hospitals, robotic US imaging has attracted increased attention. However, due to the inter-patient variations, it is still challenging to have an optimal path for each patient, particularly for thoracic applications with limited acoustic windows, e.g., intercostal liver imaging. To address this problem, a class-aware cartilage bone segmentation network with geometry-constraint post-processing is presented to capture patient-specific rib skeletons. Then, a dense skeleton graph-based non-rigid registration is presented to map the intercostal scanning path from a generic template to individual patients. By explicitly considering the high-acoustic impedance bone structures, the transferred scanning path can be precisely located in the intercostal space, enhancing the visibility of internal organs by reducing the acoustic shadow. To evaluate the proposed approach, the final path mapping performance is validated on five distinct CTs and two volunteer US data, resulting in ten pairs of CT-US combinations. Results demonstrate that the proposed graph-based registration method can robustly and precisely map the path from CT template to individual patients (Euclidean error: 2.21\pm 1.11~mm ). Note to Practitioners—The precise mapping of trajectories has been a bottleneck in developing autonomous intercostal intervention within limited acoustic space. Existing methods, based on external features such as the skin surface or passive markers, fail to capture the acoustic properties of local tissues, leading to significant shadowing when ribs are involved. The proposed method begins by utilizing distinctive anatomical features to extract cartilage bones and stiff ribs through a class-aware segmentation network. To ensure the segmentation accuracy of the sha...
Page(s): 4818 - 4830
Date of Publication: 20 June 2024

ISSN Information:


I. Introduction

Medical ultrasound (US) has been widely used in the preliminary healthcare industry due to its advantages of non-ionizing radiation, real-time capability, and accessibility. Besides the examination of internal organs, US also plays a crucial role in image-guided therapies such as liver ablation [1], [2]. A representative US-guided radiofrequency ablation (RFA) procedure through intercostal space is depicted in Fig. 1. Since the bone has much larger acoustic impedance than soft tissues, the US probe should be precisely positioned in the intercostal space to provide a good imaging window. In addition, to avoid penetrating intercostal vessels in liver ablation, electrode or needle should cautiously penetrate through the middle portion of the intercostal space [3]. Due to the fact that hepatic tumors can be adjacent to large vessels or heat-vulnerable organs, the position of the intervention trajectory needs to be very precise.

(a) Illustration of US liver scan from intercostal space and three types of thorax bones: sternum, rib and costal cartilage. (b), (c) and (d) are the representative US images acquired on the sternum, rib and cartilage, respectively. They have distinct anatomical features on US images.

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References

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