Literature DB >> 29873026

Automatic recognition of 3D GGO CT imaging signs through the fusion of hybrid resampling and layer-wise fine-tuning CNNs.

Guanghui Han1,2, Xiabi Liu3, Guangyuan Zheng3, Murong Wang3, Shan Huang3.   

Abstract

Ground-glass opacity (GGO) is a common CT imaging sign on high-resolution CT, which means the lesion is more likely to be malignant compared to common solid lung nodules. The automatic recognition of GGO CT imaging signs is of great importance for early diagnosis and possible cure of lung cancers. The present GGO recognition methods employ traditional low-level features and system performance improves slowly. Considering the high-performance of CNN model in computer vision field, we proposed an automatic recognition method of 3D GGO CT imaging signs through the fusion of hybrid resampling and layer-wise fine-tuning CNN models in this paper. Our hybrid resampling is performed on multi-views and multi-receptive fields, which reduces the risk of missing small or large GGOs by adopting representative sampling panels and processing GGOs with multiple scales simultaneously. The layer-wise fine-tuning strategy has the ability to obtain the optimal fine-tuning model. Multi-CNN models fusion strategy obtains better performance than any single trained model. We evaluated our method on the GGO nodule samples in publicly available LIDC-IDRI dataset of chest CT scans. The experimental results show that our method yields excellent results with 96.64% sensitivity, 71.43% specificity, and 0.83 F1 score. Our method is a promising approach to apply deep learning method to computer-aided analysis of specific CT imaging signs with insufficient labeled images. Graphical abstract We proposed an automatic recognition method of 3D GGO CT imaging signs through the fusion of hybrid resampling and layer-wise fine-tuning CNN models in this paper. Our hybrid resampling reduces the risk of missing small or large GGOs by adopting representative sampling panels and processing GGOs with multiple scales simultaneously. The layer-wise fine-tuning strategy has ability to obtain the optimal fine-tuning model. Our method is a promising approach to apply deep learning method to computer-aided analysis of specific CT imaging signs with insufficient labeled images.

Entities:  

Keywords:  Classifier fusion; Computer-aided diagnosis; Convolutional neural network (CNN); GGO imaging sign; Hybrid resampling; Layer-wise fine-tuning

Mesh:

Year:  2018        PMID: 29873026     DOI: 10.1007/s11517-018-1850-z

Source DB:  PubMed          Journal:  Med Biol Eng Comput        ISSN: 0140-0118            Impact factor:   2.602


  21 in total

Review 1.  Ground-glass opacity: interpretation of high resolution CT findings.

Authors:  Giuseppe Battista; Claudia Sassi; Maurizio Zompatori; Domenico Palmarini; Romeo Canini
Journal:  Radiol Med       Date:  2003 Nov-Dec       Impact factor: 3.469

2.  Automatic detection of large pulmonary solid nodules in thoracic CT images.

Authors:  Arnaud A A Setio; Colin Jacobs; Jaap Gelderblom; Bram van Ginneken
Journal:  Med Phys       Date:  2015-10       Impact factor: 4.071

3.  Fleischner Society: glossary of terms for thoracic imaging.

Authors:  David M Hansell; Alexander A Bankier; Heber MacMahon; Theresa C McLoud; Nestor L Müller; Jacques Remy
Journal:  Radiology       Date:  2008-01-14       Impact factor: 11.105

4.  Feature-based image patch approximation for lung tissue classification.

Authors:  Yang Song; Weidong Cai; Yun Zhou; David Dagan Feng
Journal:  IEEE Trans Med Imaging       Date:  2013-01-18       Impact factor: 10.048

5.  Convolutional Neural Networks for Medical Image Analysis: Full Training or Fine Tuning?

Authors:  Nima Tajbakhsh; Jae Y Shin; Suryakanth R Gurudu; R Todd Hurst; Christopher B Kendall; Michael B Gotway
Journal:  IEEE Trans Med Imaging       Date:  2016-03-07       Impact factor: 10.048

6.  Pulmonary Nodule Detection in CT Images: False Positive Reduction Using Multi-View Convolutional Networks.

Authors:  Arnaud Arindra Adiyoso Setio; Francesco Ciompi; Geert Litjens; Paul Gerke; Colin Jacobs; Sarah J van Riel; Mathilde Marie Winkler Wille; Matiullah Naqibullah; Clara I Sanchez; Bram van Ginneken
Journal:  IEEE Trans Med Imaging       Date:  2016-03-01       Impact factor: 10.048

7.  Deep Convolutional Neural Networks for Computer-Aided Detection: CNN Architectures, Dataset Characteristics and Transfer Learning.

Authors:  Hoo-Chang Shin; Holger R Roth; Mingchen Gao; Le Lu; Ziyue Xu; Isabella Nogues; Jianhua Yao; Daniel Mollura; Ronald M Summers
Journal:  IEEE Trans Med Imaging       Date:  2016-02-11       Impact factor: 10.048

Review 8.  Lung Cancer Screening, Version 3.2018, NCCN Clinical Practice Guidelines in Oncology.

Authors:  Douglas E Wood; Ella A Kazerooni; Scott L Baum; George A Eapen; David S Ettinger; Lifang Hou; David M Jackman; Donald Klippenstein; Rohit Kumar; Rudy P Lackner; Lorriana E Leard; Inga T Lennes; Ann N C Leung; Samir S Makani; Pierre P Massion; Peter Mazzone; Robert E Merritt; Bryan F Meyers; David E Midthun; Sudhakar Pipavath; Christie Pratt; Chakravarthy Reddy; Mary E Reid; Arnold J Rotter; Peter B Sachs; Matthew B Schabath; Mark L Schiebler; Betty C Tong; William D Travis; Benjamin Wei; Stephen C Yang; Kristina M Gregory; Miranda Hughes
Journal:  J Natl Compr Canc Netw       Date:  2018-04       Impact factor: 11.908

9.  Computer-Aided Diagnosis with Deep Learning Architecture: Applications to Breast Lesions in US Images and Pulmonary Nodules in CT Scans.

Authors:  Jie-Zhi Cheng; Dong Ni; Yi-Hong Chou; Jing Qin; Chui-Mei Tiu; Yeun-Chung Chang; Chiun-Sheng Huang; Dinggang Shen; Chung-Ming Chen
Journal:  Sci Rep       Date:  2016-04-15       Impact factor: 4.379

10.  Comparison of deep neural networks to spatio-temporal cortical dynamics of human visual object recognition reveals hierarchical correspondence.

Authors:  Radoslaw Martin Cichy; Aditya Khosla; Dimitrios Pantazis; Antonio Torralba; Aude Oliva
Journal:  Sci Rep       Date:  2016-06-10       Impact factor: 4.379

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