Attention-based CT scan interpolation for lesion segmentation of colorectal liver metastases Conference Paper


Authors: Hamghalam, M.; Do, R. K. G.; Simpson, A. L.
Editors: Gimi, B. S.; Krol, A.
Title: Attention-based CT scan interpolation for lesion segmentation of colorectal liver metastases
Conference Title: Medical Imaging 2023: Biomedical Applications in Molecular, Structural, and Functional Imaging
Abstract: Small liver lesions common to colorectal liver metastases (CRLMs) are challenging for convolutional neural network (CNN) segmentation models, especially when we have a wide range of slice thicknesses in the computed tomography (CT) scans. Slice thickness of CT images may vary by clinical indication. For example, thinner slices are used for presurgical planning when fine anatomic details of small vessels are required. While keeping the effective radiation dose in patients as low as possible, various slice thicknesses are employed in CRLMs due to their limitations. However, differences in slice thickness across CTs lead to significant performance degradation in CT segmentation models based on CNNs. This paper proposes a novel unsupervised attention-based interpolation model to generate intermediate slices from consecutive triplet slices in CT scans. We integrate segmentation loss during the interpolation model's training to leverage segmentation labels in existing slices to generate middle ones. Unlike common interpolation techniques in CT volumes, our model highlights the regions of interest (liver and lesions) inside the abdominal CT scans in the interpolated slice. Moreover, our model's outputs are consistent with the original input slices while increasing the segmentation performance in two cutting-edge 3D segmentation pipelines. We tested the proposed model on the CRLM dataset to upsample subjects with thick slices and create isotropic volume for our segmentation model. The produced isotropic dataset increases the Dice score in the segmentation of lesions and outperforms other interpolation approaches in terms of interpolation metrics. © COPYRIGHT SPIE. Downloading of the abstract is permitted for personal use only.
Keywords: pathology; liver metastasis; computerized tomography; medical imaging; liver tumor; segmentation; liver tumors; ct scans; neural networks; computed tomography scan; liver lesions; convolutional neural network; interpolation; slice thickness; segmentation models; lesion segmentations; isotropics
Journal Title Progress in Biomedical Optics and Imaging - Proceedings of SPIE
Volume: 12468
Conference Dates: 2023 Feb 19-22
Conference Location: San Diego, CA
ISBN: 1605-7422
Publisher: SPIE  
Date Published: 2023-01-01
Start Page: 12468-29
Language: English
DOI: 10.1117/12.2656072
PROVIDER: scopus
DOI/URL:
Notes: Conference paper: 12468 0U -- Source: Scopus
Altmetric
Citation Impact
BMJ Impact Analytics
MSK Authors
  1. Kinh Gian Do
    256 Do