Literature DB >> 32537025

Ensemble classification for predicting the malignancy level of pulmonary nodules on chest computed tomography images.

Ning Xiao1, Yan Qiang1, Muhammad Bilal Zia1, Sanhu Wang2, Jianhong Lian3.   

Abstract

Early identification and classification of pulmonary nodules are essential for improving the survival rates of individuals with lung cancer and are considered to be key requirements for computer-assisted diagnosis. To address this topic, the present study proposed a method for predicting the malignant phenotype of pulmonary nodules based on weighted voting rules. This method used the pulmonary nodule regions of interest as the input data and extracted the features of the pulmonary nodules using the Denoising Auto Encoder, ResNet-18. Moreover, the software also modifies texture and shape features to assess the malignant phenotype of the pulmonary nodules. Based on their classification accuracy (Acc), the different classifiers were assigned to different weights. Finally, an integrated classifier was obtained to score the malignant phenotype of the pulmonary nodules. The present study included training and testing experiments conducted by extracting the corresponding lung nodule image data from the Lung Image Database Consortium-Image Database Resource Initiative. The results of the present study indicated a final classification Acc of 93.10±2.4%, demonstrating the feasibility and effectiveness of the proposed method. This method includes the powerful feature extraction ability of deep learning combined with the ability to use traditional features in image representation.
Copyright © 2020, Spandidos Publications.

Entities:  

Keywords:  deep learning; ensemble classification; lung cancer; malignancy level classification; pulmonary nodules

Year:  2020        PMID: 32537025      PMCID: PMC7288754          DOI: 10.3892/ol.2020.11576

Source DB:  PubMed          Journal:  Oncol Lett        ISSN: 1792-1074            Impact factor:   2.967


  18 in total

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Journal:  J Digit Imaging       Date:  2016-08       Impact factor: 4.056

5.  A weighted rule based method for predicting malignancy of pulmonary nodules by nodule characteristics.

Authors:  Aydın Kaya; Ahmet Burak Can
Journal:  J Biomed Inform       Date:  2015-05-22       Impact factor: 6.317

6.  A novel approach to malignant-benign classification of pulmonary nodules by using ensemble learning classifiers.

Authors:  A Tartar; A Akan; N Kilic
Journal:  Conf Proc IEEE Eng Med Biol Soc       Date:  2014

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Journal:  Med Image Anal       Date:  2013-12-17       Impact factor: 8.545

8.  Pulmonary Nodule Classification with Deep Convolutional Neural Networks on Computed Tomography Images.

Authors:  Wei Li; Peng Cao; Dazhe Zhao; Junbo Wang
Journal:  Comput Math Methods Med       Date:  2016-12-14       Impact factor: 2.238

9.  Diagnostic classification of solitary pulmonary nodules using dual time 18F-FDG PET/CT image texture features in granuloma-endemic regions.

Authors:  Song Chen; Stephanie Harmon; Timothy Perk; Xuena Li; Meijie Chen; Yaming Li; Robert Jeraj
Journal:  Sci Rep       Date:  2017-08-24       Impact factor: 4.379

10.  Liver cancer imaging: role of CT, MRI, US and PET.

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Journal:  Cancer Imaging       Date:  2004-04-02       Impact factor: 3.909

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