Literature DB >> 27277030

Automated detection of pulmonary nodules in PET/CT images: Ensemble false-positive reduction using a convolutional neural network technique.

Atsushi Teramoto1, Hiroshi Fujita2, Osamu Yamamuro3, Tsuneo Tamaki3.   

Abstract

PURPOSE: Automated detection of solitary pulmonary nodules using positron emission tomography (PET) and computed tomography (CT) images shows good sensitivity; however, it is difficult to detect nodules in contact with normal organs, and additional efforts are needed so that the number of false positives (FPs) can be further reduced. In this paper, the authors propose an improved FP-reduction method for the detection of pulmonary nodules in PET/CT images by means of convolutional neural networks (CNNs).
METHODS: The overall scheme detects pulmonary nodules using both CT and PET images. In the CT images, a massive region is first detected using an active contour filter, which is a type of contrast enhancement filter that has a deformable kernel shape. Subsequently, high-uptake regions detected by the PET images are merged with the regions detected by the CT images. FP candidates are eliminated using an ensemble method; it consists of two feature extractions, one by shape/metabolic feature analysis and the other by a CNN, followed by a two-step classifier, one step being rule based and the other being based on support vector machines.
RESULTS: The authors evaluated the detection performance using 104 PET/CT images collected by a cancer-screening program. The sensitivity in detecting candidates at an initial stage was 97.2%, with 72.8 FPs/case. After performing the proposed FP-reduction method, the sensitivity of detection was 90.1%, with 4.9 FPs/case; the proposed method eliminated approximately half the FPs existing in the previous study.
CONCLUSIONS: An improved FP-reduction scheme using CNN technique has been developed for the detection of pulmonary nodules in PET/CT images. The authors' ensemble FP-reduction method eliminated 93% of the FPs; their proposed method using CNN technique eliminates approximately half the FPs existing in the previous study. These results indicate that their method may be useful in the computer-aided detection of pulmonary nodules using PET/CT images.

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Mesh:

Year:  2016        PMID: 27277030     DOI: 10.1118/1.4948498

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  44 in total

1.  AI-based applications in hybrid imaging: how to build smart and truly multi-parametric decision models for radiomics.

Authors:  Isabella Castiglioni; Francesca Gallivanone; Paolo Soda; Michele Avanzo; Joseph Stancanello; Marco Aiello; Matteo Interlenghi; Marco Salvatore
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Review 2.  Machine learning concepts, concerns and opportunities for a pediatric radiologist.

Authors:  Michael M Moore; Einat Slonimsky; Aaron D Long; Raymond W Sze; Ramesh S Iyer
Journal:  Pediatr Radiol       Date:  2019-03-29

Review 3.  Overview of deep learning in medical imaging.

Authors:  Kenji Suzuki
Journal:  Radiol Phys Technol       Date:  2017-07-08

Review 4.  Deep learning aided decision support for pulmonary nodules diagnosing: a review.

Authors:  Yixin Yang; Xiaoyi Feng; Wenhao Chi; Zhengyang Li; Wenzhe Duan; Haiping Liu; Wenhua Liang; Wei Wang; Ping Chen; Jianxing He; Bo Liu
Journal:  J Thorac Dis       Date:  2018-04       Impact factor: 2.895

5.  DeepLesion: automated mining of large-scale lesion annotations and universal lesion detection with deep learning.

Authors:  Ke Yan; Xiaosong Wang; Le Lu; Ronald M Summers
Journal:  J Med Imaging (Bellingham)       Date:  2018-07-20

6.  Virtual digital subtraction angiography using multizone patch-based U-Net.

Authors:  Ryusei Kimura; Atsushi Teramoto; Tomoyuki Ohno; Kuniaki Saito; Hiroshi Fujita
Journal:  Phys Eng Sci Med       Date:  2020-10-07

7.  Generative Adversarial Network for Medical Images (MI-GAN).

Authors:  Talha Iqbal; Hazrat Ali
Journal:  J Med Syst       Date:  2018-10-12       Impact factor: 4.460

8.  Multiplanar analysis for pulmonary nodule classification in CT images using deep convolutional neural network and generative adversarial networks.

Authors:  Yuya Onishi; Atsushi Teramoto; Masakazu Tsujimoto; Tetsuya Tsukamoto; Kuniaki Saito; Hiroshi Toyama; Kazuyoshi Imaizumi; Hiroshi Fujita
Journal:  Int J Comput Assist Radiol Surg       Date:  2019-11-16       Impact factor: 2.924

Review 9.  Evolving the pulmonary nodules diagnosis from classical approaches to deep learning-aided decision support: three decades' development course and future prospect.

Authors:  Bo Liu; Wenhao Chi; Xinran Li; Peng Li; Wenhua Liang; Haiping Liu; Wei Wang; Jianxing He
Journal:  J Cancer Res Clin Oncol       Date:  2019-11-30       Impact factor: 4.553

10.  Expert knowledge-infused deep learning for automatic lung nodule detection.

Authors:  Jiaxing Tan; Yumei Huo; Zhengrong Liang; Lihong Li
Journal:  J Xray Sci Technol       Date:  2019       Impact factor: 1.535

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