Literature DB >> 31210613

Deep Learning-based Image Conversion of CT Reconstruction Kernels Improves Radiomics Reproducibility for Pulmonary Nodules or Masses.

Jooae Choe1, Sang Min Lee1, Kyung-Hyun Do1, Gaeun Lee1, June-Goo Lee1, Sang Min Lee1, Joon Beom Seo1.   

Abstract

Background Intratumor heterogeneity in lung cancer may influence outcomes. CT radiomics seeks to assess tumor features to provide detailed imaging features. However, CT radiomic features vary according to the reconstruction kernel used for image generation. Purpose To investigate the effect of different reconstruction kernels on radiomic features and assess whether image conversion using a convolutional neural network (CNN) could improve reproducibility of radiomic features between different kernels. Materials and Methods In this retrospective analysis, patients underwent non-contrast material-enhanced and contrast material-enhanced axial chest CT with soft kernel (B30f) and sharp kernel (B50f) reconstruction using a single CT scanner from April to June 2017. To convert different kernels without sinogram, the CNN model was developed using residual learning and an end-to-end way. Kernel-converted images were generated, from B30f to B50f and from B50f to B30f. Pulmonary nodules or masses were semiautomatically segmented and 702 radiomic features (tumor intensity, texture, and wavelet features) were extracted. Measurement variability in radiomic features was evaluated using the concordance correlation coefficient (CCC). Results A total of 104 patients were studied, including 54 women and 50 men, with pulmonary nodules or masses (mean age, 63.2 years ± 10.5). The CCC between two readers using the same kernel was 0.92, and 592 of 702 (84.3%) of the radiomic features were reproducible (CCC ≥ 0.85); using different kernels, the CCC was 0.38 and only 107 of 702 (15.2%) of the radiomic features were reliable. Texture features and wavelet features were predominantly affected by reconstruction kernel (CCC, from 0.88 to 0.61 for texture features and from 0.92 to 0.35 for wavelet features). After applying image conversion, CCC improved to 0.84 and 403 of 702 (57.4%) radiomic features were reproducible (CCC, 0.85 for texture features and 0.84 for wavelet features). Conclusion Chest CT image conversion using a convolutional neural network effectively reduced the effect of two different reconstruction kernels and may improve the reproducibility of radiomic features in pulmonary nodules or masses. © RSNA, 2019 Online supplemental material is available for this article. See also the editorial by Park in this issue.

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Year:  2019        PMID: 31210613     DOI: 10.1148/radiol.2019181960

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  64 in total

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2.  Importance of CT image normalization in radiomics analysis: prediction of 3-year recurrence-free survival in non-small cell lung cancer.

Authors:  Doohyun Park; Daejoong Oh; MyungHoon Lee; Shin Yup Lee; Kyung Min Shin; Johnson Sg Jun; Dosik Hwang
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4.  Intra-scan inter-tissue variability can help harmonize radiomics features in CT.

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5.  The Quest for Generalizability in Radiomics.

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Review 7.  The Role of Radiomics in Lung Cancer: From Screening to Treatment and Follow-Up.

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8.  4D radiomics: impact of 4D-CBCT image quality on radiomic analysis.

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9.  Prediction of Human Papillomavirus (HPV) Association of Oropharyngeal Cancer (OPC) Using Radiomics: The Impact of the Variation of CT Scanner.

Authors:  Reza Reiazi; Colin Arrowsmith; Mattea Welch; Farnoosh Abbas-Aghababazadeh; Christopher Eeles; Tony Tadic; Andrew J Hope; Scott V Bratman; Benjamin Haibe-Kains
Journal:  Cancers (Basel)       Date:  2021-05-08       Impact factor: 6.639

10.  Radiomic signature of the FOWARC trial predicts pathological response to neoadjuvant treatment in rectal cancer.

Authors:  Zhuokai Zhuang; Zongchao Liu; Juan Li; Xiaolin Wang; Peiyi Xie; Fei Xiong; Jiancong Hu; Xiaochun Meng; Meijin Huang; Yanhong Deng; Ping Lan; Huichuan Yu; Yanxin Luo
Journal:  J Transl Med       Date:  2021-06-10       Impact factor: 5.531

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