Literature DB >> 33219906

Toward reliable automatic liver and tumor segmentation using convolutional neural network based on 2.5D models.

Girindra Wardhana1, Hamid Naghibi2, Beril Sirmacek2, Momen Abayazid2.   

Abstract

PURPOSE: We investigated the parameter configuration in the automatic liver and tumor segmentation using a convolutional neural network based on 2.5D model. The implementation of 2.5D model shows promising results since it allows the network to have a deeper and wider network architecture while still accommodates the 3D information. However, there has been no detailed investigation of the parameter configurations on this type of network model.
METHODS: Some parameters, such as the number of stacked layers, image contrast, and the number of network layers, were studied and implemented on neural networks based on 2.5D model. Networks are trained and tested by utilizing the dataset from liver and tumor segmentation challenge (LiTS). The network performance was further evaluated by comparing the network segmentation with manual segmentation from nine technical physicians and an experienced radiologist.
RESULTS: Slice arrangement testing shows that multiple stacked layers have better performance than a single-layer network. However, the dice scores start decreasing when the number of stacked layers is more than three layers. Adding higher number of layers would cause overfitting on the training set. In contrast enhancement test, implementing contrast enhancement method did not show a statistically significant different to the network performance. While in the network layer test, adding more layers to the network architecture does not always correspond to the increasing dice score result of the network.
CONCLUSIONS: This paper compares the performance of the network based on 2.5D model using different parameter configurations. The result obtained shows the effect of each parameter and allow the selection of the best configuration in order to improve the network performance in the application of automatic liver and tumor segmentation.

Entities:  

Keywords:  CT image; Convolutional neural network; Deep learning; Image segmentation; Liver tumor

Mesh:

Year:  2020        PMID: 33219906      PMCID: PMC7822806          DOI: 10.1007/s11548-020-02292-y

Source DB:  PubMed          Journal:  Int J Comput Assist Radiol Surg        ISSN: 1861-6410            Impact factor:   2.924


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Review 2.  Liver segmentation: indications, techniques and future directions.

Authors:  Akshat Gotra; Lojan Sivakumaran; Gabriel Chartrand; Kim-Nhien Vu; Franck Vandenbroucke-Menu; Claude Kauffmann; Samuel Kadoury; Benoît Gallix; Jacques A de Guise; An Tang
Journal:  Insights Imaging       Date:  2017-06-14
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2.  Automatic kidney segmentation using 2.5D ResUNet and 2.5D DenseUNet for malignant potential analysis in complex renal cyst based on CT images.

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3.  Decision Support System for Liver Lesion Segmentation Based on Advanced Convolutional Neural Network Architectures.

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Review 4.  State of the Art in Artificial Intelligence and Radiomics in Hepatocellular Carcinoma.

Authors:  Anna Castaldo; Davide Raffaele De Lucia; Giuseppe Pontillo; Marco Gatti; Sirio Cocozza; Lorenzo Ugga; Renato Cuocolo
Journal:  Diagnostics (Basel)       Date:  2021-06-30
  4 in total

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