Patient-specific functional liver segments based on centerline classification of the hepatic and portal veins

Comput Assist Surg (Abingdon). 2025 Dec;30(1):2580307. doi: 10.1080/24699322.2025.2580307. Epub 2025 Oct 31.

Abstract

Purpose: Couinaud's liver segment classification has been widely adopted for liver surgery planning, yet its rigid anatomical boundaries often fail to align precisely with individual patient anatomy. This study proposes a novel patient-specific liver segmentation method based on detailed classification of hepatic and portal veins to improve anatomical adherence and clinical relevance.

Methods: Our proposed method involves two key stages: (1) surgeons annotate vascular endpoints on 3D models of hepatic and portal veins, from which vessel centerlines are computed; and (2) liver segments are calculated by assigning voxel labels based on proximity to these vascular centerlines. The accuracy and clinical applicability of our Hepatic and Portal Vein-based Classification (HPVC) were compared with conventional Plane-Based Classification (PBC), Portal Vein-Based Classification (PVC), and an automated deep learning method (nnU-Net) using volumetric measurements, Dice similarity scores, and expert evaluations.

Results: HPVC demonstrated superior anatomical conformity compared to traditional methods, especially in complex segments like 5 and 8, providing segmentations more reflective of actual vascular territories. Volumetric analysis revealed significant discrepancies among the methods, particularly with nnU-Net generally producing larger segment volumes. HPVC consistently achieved higher surgeon-rated scores in patient-specific anatomical adherence, perfusion region assessment, and accuracy in surgical planning compared to PBC, PVC, and nnU-Net.

Conclusion: The presented HPVC method offers substantial improvements in liver segmentation precision, especially relevant for surgical planning in anatomically complex cases. Its integration into clinical workflows via the open-source platform 3D Slicer significantly enhances its accessibility and usability.

Keywords: Couinaud classification; Medical software; liver segments classification; surgical planning.

MeSH terms

  • Deep Learning
  • Female
  • Hepatectomy* / methods
  • Hepatic Veins* / anatomy & histology
  • Hepatic Veins* / diagnostic imaging
  • Humans
  • Imaging, Three-Dimensional*
  • Liver* / anatomy & histology
  • Liver* / blood supply
  • Liver* / diagnostic imaging
  • Liver* / surgery
  • Male
  • Portal Vein* / anatomy & histology
  • Portal Vein* / diagnostic imaging
  • Tomography, X-Ray Computed