Literature DB >> 32768047

Kidney segmentation from computed tomography images using deep neural network.

Luana Batista da Cruz1, José Denes Lima Araújo2, Jonnison Lima Ferreira2, João Otávio Bandeira Diniz3, Aristófanes Corrêa Silva2, João Dallyson Sousa de Almeida2, Anselmo Cardoso de Paiva2, Marcelo Gattass4.   

Abstract

BACKGROUND: The precise segmentation of kidneys and kidney tumors can help medical specialists to diagnose diseases and improve treatment planning, which is highly required in clinical practice. Manual segmentation of the kidneys is extremely time-consuming and prone to variability between different specialists due to their heterogeneity. Because of this hard work, computational techniques, such as deep convolutional neural networks, have become popular in kidney segmentation tasks to assist in the early diagnosis of kidney tumors. In this study, we propose an automatic method to delimit the kidneys in computed tomography (CT) images using image processing techniques and deep convolutional neural networks (CNNs) to minimize false positives.
METHODS: The proposed method has four main steps: (1) acquisition of the KiTS19 dataset, (2) scope reduction using AlexNet, (3) initial segmentation using U-Net 2D, and (4) false positive reduction using image processing to maintain the largest elements (kidneys).
RESULTS: The proposed method was evaluated in 210 CTs from the KiTS19 database and obtained the best result with an average Dice coefficient of 96.33%, an average Jaccard index of 93.02%, an average sensitivity of 97.42%, an average specificity of 99.94% and an average accuracy of 99.92%. In the KiTS19 challenge, it presented an average Dice coefficient of 93.03%.
CONCLUSION: In our method, we demonstrated that the kidney segmentation problem in CT can be solved efficiently using deep neural networks to define the scope of the problem and segment the kidneys with high precision and with the use of image processing techniques to reduce false positives.
Copyright © 2020 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Computed tomography; Convolutional neural networks; Kidney cancer; Kidney segmentation; Medical images

Mesh:

Year:  2020        PMID: 32768047     DOI: 10.1016/j.compbiomed.2020.103906

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  4 in total

1.  Kidney Tumor Segmentation Based on FR2PAttU-Net Model.

Authors:  Peng Sun; Zengnan Mo; Fangrong Hu; Fang Liu; Taiping Mo; Yewei Zhang; Zhencheng Chen
Journal:  Front Oncol       Date:  2022-03-17       Impact factor: 6.244

2.  Segmentation and quantification of COVID-19 infections in CT using pulmonary vessels extraction and deep learning.

Authors:  João O B Diniz; Darlan B P Quintanilha; Antonino C Santos Neto; Giovanni L F da Silva; Jonnison L Ferreira; Stelmo M B Netto; José D L Araújo; Luana B Da Cruz; Thamila F B Silva; Caio M da S Martins; Marcos M Ferreira; Venicius G Rego; José M C Boaro; Carolina L S Cipriano; Aristófanes C Silva; Anselmo C de Paiva; Geraldo Braz Junior; João D S de Almeida; Rodolfo A Nunes; Roberto Mogami; M Gattass
Journal:  Multimed Tools Appl       Date:  2021-06-24       Impact factor: 2.757

3.  Automatic method for classifying COVID-19 patients based on chest X-ray images, using deep features and PSO-optimized XGBoost.

Authors:  Domingos Alves Dias Júnior; Luana Batista da Cruz; João Otávio Bandeira Diniz; Giovanni Lucca França da Silva; Geraldo Braz Junior; Aristófanes Corrêa Silva; Anselmo Cardoso de Paiva; Rodolfo Acatauassú Nunes; Marcelo Gattass
Journal:  Expert Syst Appl       Date:  2021-06-22       Impact factor: 6.954

4.  Kidney Tumor Semantic Segmentation Using Deep Learning: A Survey of State-of-the-Art.

Authors:  Abubaker Abdelrahman; Serestina Viriri
Journal:  J Imaging       Date:  2022-02-25
  4 in total

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