Literature DB >> 25326261

Computer-aided liver volumetry: performance of a fully-automated, prototype post-processing solution for whole-organ and lobar segmentation based on MDCT imaging.

Ghaneh Fananapazir1, Mustafa R Bashir, Daniele Marin, Daniel T Boll.   

Abstract

PURPOSE: To evaluate the performance of a prototype, fully-automated post-processing solution for whole-liver and lobar segmentation based on MDCT datasets.
MATERIALS AND METHODS: A polymer liver phantom was used to assess accuracy of post-processing applications comparing phantom volumes determined via Archimedes' principle with MDCT segmented datasets. For the IRB-approved, HIPAA-compliant study, 25 patients were enrolled. Volumetry performance compared the manual approach with the automated prototype, assessing intraobserver variability, and interclass correlation for whole-organ and lobar segmentation using ANOVA comparison. Fidelity of segmentation was evaluated qualitatively.
RESULTS: Phantom volume was 1581.0 ± 44.7 mL, manually segmented datasets estimated 1628.0 ± 47.8 mL, representing a mean overestimation of 3.0%, automatically segmented datasets estimated 1601.9 ± 0 mL, representing a mean overestimation of 1.3%. Whole-liver and segmental volumetry demonstrated no significant intraobserver variability for neither manual nor automated measurements. For whole-liver volumetry, automated measurement repetitions resulted in identical values; reproducible whole-organ volumetry was also achieved with manual segmentation, p(ANOVA) 0.98. For lobar volumetry, automated segmentation improved reproducibility over manual approach, without significant measurement differences for either methodology, p(ANOVA) 0.95-0.99. Whole-organ and lobar segmentation results from manual and automated segmentation showed no significant differences, p(ANOVA) 0.96-1.00. Assessment of segmentation fidelity found that segments I-IV/VI showed greater segmentation inaccuracies compared to the remaining right hepatic lobe segments.
CONCLUSION: Automated whole-liver segmentation showed non-inferiority of fully-automated whole-liver segmentation compared to manual approaches with improved reproducibility and post-processing duration; automated dual-seed lobar segmentation showed slight tendencies for underestimating the right hepatic lobe volume and greater variability in edge detection for the left hepatic lobe compared to manual segmentation.

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Mesh:

Year:  2015        PMID: 25326261     DOI: 10.1007/s00261-014-0276-9

Source DB:  PubMed          Journal:  Abdom Imaging        ISSN: 0942-8925


  3 in total

1.  Deep Learning-Based Assessment of Functional Liver Capacity Using Gadoxetic Acid-Enhanced Hepatobiliary Phase MRI.

Authors:  Hyo Jung Park; Jee Seok Yoon; Seung Soo Lee; Heung-Il Suk; Bumwoo Park; Yu Sub Sung; Seung Baek Hong; Hwaseong Ryu
Journal:  Korean J Radiol       Date:  2022-04-04       Impact factor: 7.109

2.  Assessment of Radiation Dose Delivered and Volume Measurement By Low- and High-Dose Diagnostic Computed Tomography: Anthropomorphic Liver Phantom Study.

Authors:  Subhash Chand Kheruka; Manish Ora; Shivani Chaudhary; Sanjay Gambhir
Journal:  Indian J Nucl Med       Date:  2020-10-21

3.  Fully automated whole-liver volume quantification on CT-image data: Comparison with manual volumetry using enhanced and unenhanced images as well as two different radiation dose levels and two reconstruction kernels.

Authors:  Florian Hagen; Antonia Mair; Michael Bitzer; Hans Bösmüller; Marius Horger
Journal:  PLoS One       Date:  2021-08-02       Impact factor: 3.240

  3 in total

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