Abstract

This paper presents an efficient liver-segmentation system developed by combining three ideas under the operations of a level-set method and consequent processes. First, an effective initial process creates mask and seed regions. The mask regions assist in prevention of leakage regions due to an overlap of gray-intensities between liver and another soft-tissue around ribs and verte-brae. The seed regions are allocated inside the liver to measure statistical values of its gray-intensities. Second, we introduce liver-corrective images to represent statistical regions of the liver and preserve edge information. These images help a geodesic active contour (GAC) to move without obstruction from high level of image noises. Lastly, the computation time in a level-set based on reaction-diffusion evolution and the GAC method is reduced by using a concept of multi-resolution. We applied the proposed system to 40 sets of 3D CT-liver data, which were acquired from four patients (10 different sets per patient) by a 4D-CT imaging system. The segmentation results showed 86.38% ± 4.26% (DSC: 91.38% ± 2.99%) of similarities to outlines of manual delineation provided by a radiologist. Meanwhile, the results of liver segmentation only using edge images presented 79.17% ± 5.15% or statistical regions showed 74.04% ± 9.77% of similarities.

Highlights

  • Liver image segmentation is an important procedure in the computer-aided diagnosis (CAD) and surgery (CAS)

  • We applied the proposed system to 40 sets of 3D computed tomography (CT)-liver data, which were acquired from four patients by a 4D-CT imaging system in a cine mode

  • We validated similarities between the segmentation results of the proposed system and liver’s volumes delineated by a radiologist. These segmentation results were compared with the liver-segmentation methods based on the level-set speed image (LSSI) and statistical thresholding (ST) techniques, which were implemented in accordance with diagrams in Section 2.1 and Section 2.2, respectively

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Summary

Introduction

Liver image segmentation is an important procedure in the computer-aided diagnosis (CAD) and surgery (CAS). The level-set method is an interesting solution because it possibly gives high accuracy with small intervention from a user. It is normally formulated by a complicated energy-function. This sophisticated formulation may slightly improve performance of liver segmentation, but it consumes more computation cost due to an additional term. It may require many data sets of manual delineation to produce extraordinary information from training data sets

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