Literature DB >> 29366586

Computer-Assisted Decision Support System in Pulmonary Cancer detection and stage classification on CT images.

Anum Masood1, Bin Sheng2, Ping Li3, Xuhong Hou4, Xiaoer Wei4, Jing Qin5, Dagan Feng6.   

Abstract

Pulmonary cancer is considered as one of the major causes of death worldwide. For the detection of lung cancer, computer-assisted diagnosis (CADx) systems have been designed. Internet-of-Things (IoT) has enabled ubiquitous internet access to biomedical datasets and techniques; in result, the progress in CADx is significant. Unlike the conventional CADx, deep learning techniques have the basic advantage of an automatic exploitation feature as they have the ability to learn mid and high level image representations. We proposed a Computer-Assisted Decision Support System in Pulmonary Cancer by using the novel deep learning based model and metastasis information obtained from MBAN (Medical Body Area Network). The proposed model, DFCNet, is based on the deep fully convolutional neural network (FCNN) which is used for classification of each detected pulmonary nodule into four lung cancer stages. The performance of proposed work is evaluated on different datasets with varying scan conditions. Comparison of proposed classifier is done with the existing CNN techniques. Overall accuracy of CNN and DFCNet was 77.6% and 84.58%, respectively. Experimental results illustrate the effectiveness of proposed method for the detection and classification of lung cancer nodules. These results demonstrate the potential for the proposed technique in helping the radiologists in improving nodule detection accuracy with efficiency.
Copyright © 2018 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Convolutional neural networks (CNN); Deep learning; Lung cancer stages; MBAN (Medical Body Area Network); Nodule detection; mIoT (medical Internet of Things)

Mesh:

Year:  2018        PMID: 29366586     DOI: 10.1016/j.jbi.2018.01.005

Source DB:  PubMed          Journal:  J Biomed Inform        ISSN: 1532-0464            Impact factor:   6.317


  21 in total

1.  Artificial intelligence using neural network architecture for radiology (AINNAR): classification of MR imaging sequences.

Authors:  Tomoyuki Noguchi; Daichi Higa; Takashi Asada; Yusuke Kawata; Akihiro Machitori; Yoshitaka Shida; Takashi Okafuji; Kota Yokoyama; Fumiya Uchiyama; Tsuyoshi Tajima
Journal:  Jpn J Radiol       Date:  2018-09-19       Impact factor: 2.374

2.  Detection of epithelial growth factor receptor (EGFR) mutations on CT images of patients with lung adenocarcinoma using radiomics and/or multi-level residual convolutionary neural networks.

Authors:  Xiao-Yang Li; Jun-Feng Xiong; Tian-Ying Jia; Tian-Le Shen; Run-Ping Hou; Jun Zhao; Xiao-Long Fu
Journal:  J Thorac Dis       Date:  2018-12       Impact factor: 2.895

Review 3.  A narrative review on current imaging applications of artificial intelligence and radiomics in oncology: focus on the three most common cancers.

Authors:  Simone Vicini; Chandra Bortolotto; Marco Rengo; Daniela Ballerini; Davide Bellini; Iacopo Carbone; Lorenzo Preda; Andrea Laghi; Francesca Coppola; Lorenzo Faggioni
Journal:  Radiol Med       Date:  2022-06-30       Impact factor: 6.313

4.  A Secure Framework toward IoMT-Assisted Data Collection, Modeling, and Classification for Intelligent Dermatology Healthcare Services.

Authors:  Md Khairul Islam; Chetna Kaushal; Md Al Amin; Abeer D Algarni; Nazik Alturki; Naglaa F Soliman; Romany F Mansour
Journal:  Contrast Media Mol Imaging       Date:  2022-06-29       Impact factor: 3.009

5.  Performance of an AI based CAD system in solid lung nodule detection on chest phantom radiographs compared to radiology residents and fellow radiologists.

Authors:  Alan A Peters; Amanda Decasper; Jaro Munz; Jeremias Klaus; Laura I Loebelenz; Maximilian Korbinian Michael Hoffner; Cynthia Hourscht; Johannes T Heverhagen; Andreas Christe; Lukas Ebner
Journal:  J Thorac Dis       Date:  2021-05       Impact factor: 3.005

6.  Automatic classification of ovarian cancer types from cytological images using deep convolutional neural networks.

Authors:  Miao Wu; Chuanbo Yan; Huiqiang Liu; Qian Liu
Journal:  Biosci Rep       Date:  2018-05-08       Impact factor: 3.840

7.  Classification of Computed Tomography Images in Different Slice Positions Using Deep Learning.

Authors:  Hiroyuki Sugimori
Journal:  J Healthc Eng       Date:  2018-07-16       Impact factor: 2.682

8.  Evaluation of an AI-Powered Lung Nodule Algorithm for Detection and 3D Segmentation of Primary Lung Tumors.

Authors:  Thomas Weikert; Tugba Akinci D'Antonoli; Jens Bremerich; Bram Stieltjes; Gregor Sommer; Alexander W Sauter
Journal:  Contrast Media Mol Imaging       Date:  2019-07-01       Impact factor: 3.161

Review 9.  The Performance of Deep Learning Algorithms on Automatic Pulmonary Nodule Detection and Classification Tested on Different Datasets That Are Not Derived from LIDC-IDRI: A Systematic Review.

Authors:  Dana Li; Bolette Mikela Vilmun; Jonathan Frederik Carlsen; Elisabeth Albrecht-Beste; Carsten Ammitzbøl Lauridsen; Michael Bachmann Nielsen; Kristoffer Lindskov Hansen
Journal:  Diagnostics (Basel)       Date:  2019-11-29

10.  Assessment of safety margin after microwave ablation of stage I NSCLC with three-dimensional reconstruction technique using CT imaging.

Authors:  Peng Yan; An-Na Tong; Xiu-Li Nie; Min-Ge Ma
Journal:  BMC Med Imaging       Date:  2021-06-07       Impact factor: 1.930

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