An automatic method for segmentation of liver lesions in computed tomography images using deep neural networks

被引:23
作者
Araujo, Jose Denes Lima [1 ]
da Cruz, Luana Batista [1 ]
Ferreira, Jonnison Lima [1 ,2 ]
Neto, Otilio Paulo da Silva [1 ,3 ]
Silva, Aristofanes Correa [1 ]
de Paiva, Anselmo Cardoso [1 ]
Gattass, Marcelo [4 ]
机构
[1] Univ Fed Maranhao, Appl Comp Grp NCA UFMA, Av Portugueses S-N,Campus Bacanga, BR-65085580 Sao Luis, MA, Brazil
[2] Fed Inst Amazonas, Rua Santos Dumont SN,Campus Tabatinga,Vila Verde, BR-69640000 Tabatinga, AM, Brazil
[3] Fed Inst Piaui, Praca Liberdade 1597,Campus Teresina Cent, BR-64000040 Teresina, PI, Brazil
[4] Pontifical Catholic Univ Rio De Janeiro, R Sao Vicente 225, BR-22453900 Rio De Janeiro, RJ, Brazil
关键词
Liver cancer; Liver lesion segmentation; Convolutional neural networks; Computed tomography; TUMOR SEGMENTATION;
D O I
10.1016/j.eswa.2021.115064
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Liver cancer is one of the major causes of death by cancer. The early detection of lesions in the liver provides a better chance of treatment and cure of the disease. Computed tomography (CT) is one of the most used imaging techniques for the detection and diagnosis of liver lesions. However, the manual segmentation of liver and tumors, aside from being time-consuming, can still cause errors and may vary among specialists. Because of this hard work, computer-aided detection (CAD) and computer-aided diagnosis (CADx) systems have been developed to assist specialists in the detection and characterization of lesions in the liver and reduce the required time for diagnosis. The automatic segmentation of these lesions is a complex task since they present variability in contrast, shape, size, and location. In this work, a method to automatically segment liver lesions in CT images is proposed. The proposed method, which presents two deep convolutional neural networks (CNN) models, consists of five main steps: (1) image acquisition, (2) image pre-processing, (3) initial segmentation using RetinaNet, (4) lesion segmentation using U-Net, and (5) segmentation refinement. The proposed method was evaluated using a set of 131 CT images from the LiTS dataset, and the best result obtained a matthews correlation coefficient (MCC) of 83.62%, a sensitivity of 83.86%, a specificity of 99.96%, a Dice coefficient of 82.99%, a volumetric overlap error (VOE) of 27.89%, and a relative volume difference (RVD) of 1.69%. We show in our method that the problem of segmentation of liver lesions in CT images can be efficiently solved through the use of deep CNNs to define the scope of the problem and to precisely segment lesions.
引用
收藏
页数:14
相关论文
共 50 条
[41]   Fully automatic segmentation of abdominal aortic thrombus in pre-operative CTA images using deep convolutional neural networks [J].
Wang, Yonggang ;
Zhou, Min ;
Ding, Yong ;
Li, Xu ;
Zhou, Zhenyu ;
Xie, Tianchen ;
Shi, Zhenyu ;
Fu, Weiguo .
TECHNOLOGY AND HEALTH CARE, 2022, 30 (05) :1257-1266
[42]   A hierarchical fusion strategy of deep learning networks for detection and segmentation of hepatocellular carcinoma from computed tomography images [J].
I-Cheng Lee ;
Yung-Ping Tsai ;
Yen-Cheng Lin ;
Ting-Chun Chen ;
Chia-Heng Yen ;
Nai-Chi Chiu ;
Hsuen-En Hwang ;
Chien-An Liu ;
Jia-Guan Huang ;
Rheun-Chuan Lee ;
Yee Chao ;
Shinn-Ying Ho ;
Yi-Hsiang Huang .
Cancer Imaging, 24
[43]   A hierarchical fusion strategy of deep learning networks for detection and segmentation of hepatocellular carcinoma from computed tomography images [J].
Lee, I-Cheng ;
Tsai, Yung-Ping ;
Lin, Yen-Cheng ;
Chen, Ting-Chun ;
Yen, Chia-Heng ;
Chiu, Nai-Chi ;
Hwang, Hsuen-En ;
Liu, Chien-An ;
Huang, Jia-Guan ;
Lee, Rheun-Chuan ;
Chao, Yee ;
Ho, Shinn-Ying ;
Huang, Yi-Hsiang .
CANCER IMAGING, 2024, 24 (01)
[44]   Automated deep learning-based segmentation of COVID-19 lesions from chest computed tomography images [J].
Salehi, Mohammad ;
Ardekani, Mahdieh ;
Taramsari, Alireza ;
Ghaffari, Hamed ;
Haghparast, Mohammad .
POLISH JOURNAL OF RADIOLOGY, 2022, 87 :E478-E486
[45]   Automatic segmentation of dental cone-beam computed tomography scans using a deep learning framework [J].
Hegyi, Alexandra ;
Somodi, Kristof ;
Pinter, Csaba ;
Molnar, Balint ;
Windisch, Peter ;
Garcia-Mato, David ;
Diaz-Pinto, Andres ;
Palkovics, Daniel .
ORVOSI HETILAP, 2024, 165 (32) :1242-1251
[46]   A Deep Learning-Based Automatic Segmentation and 3D Visualization Technique for Intracranial Hemorrhage Detection Using Computed Tomography Images [J].
Khan, Muntakim Mahmud ;
Chowdhury, Muhammad E. H. ;
Arefin, A. S. M. Shamsul ;
Podder, Kanchon Kanti ;
Hossain, Md. Sakib Abrar ;
Alqahtani, Abdulrahman ;
Murugappan, M. ;
Khandakar, Amith ;
Mushtak, Adam ;
Nahiduzzaman, Md. .
DIAGNOSTICS, 2023, 13 (15)
[47]   A fully automatic segmentation pipeline of pulmonary lobes before and after lobectomy from computed tomography images [J].
Pang, Haowen ;
Wu, Yanan ;
Qi, Shouliang ;
Li, Chen ;
Shen, Jing ;
Yue, Yong ;
Qian, Wei ;
Wu, Jianlin .
COMPUTERS IN BIOLOGY AND MEDICINE, 2022, 147
[48]   Segmentation of focal liver lesions and virtual resection based on computed tomography data [J].
Zelter, P. M. ;
Kolsanov, A., V ;
Pyshkina, Yu S. .
BYULLETEN SIBIRSKOY MEDITSINY, 2021, 20 (01) :39-44
[49]   Iris Segmentation Using Deep Neural Networks [J].
Sinha, Nirmitee ;
Joshi, Akanksha ;
Gangwar, Abhishek ;
Bhise, Archana ;
Saquib, Zia .
2017 2ND INTERNATIONAL CONFERENCE FOR CONVERGENCE IN TECHNOLOGY (I2CT), 2017, :548-555
[50]   Automatic Segmentation of Epidermis and Hair Follicles in Optical Coherence Tomography Images of Normal Skin by Convolutional Neural Networks [J].
del Amor, Rocio ;
Morales, Sandra ;
Colomer, Adrian ;
Mogensen, Mette ;
Jensen, Mikkel ;
Israelsen, Niels M. ;
Bang, Ole ;
Naranjo, Valery .
FRONTIERS IN MEDICINE, 2020, 7