Literature DB >> 30824145

Investigation of thoracic four-dimensional CT-based dimension reduction technique for extracting the robust radiomic features.

Shohei Tanaka1, Noriyuki Kadoya2, Tomohiro Kajikawa1, Shohei Matsuda1, Suguru Dobashi3, Ken Takeda3, Keiichi Jingu1.   

Abstract

Robust feature selection in radiomic analysis is often implemented using the RIDER test-retest datasets. However, the CT Protocol between the facility and test-retest datasets are different. Therefore, we investigated possibility to select robust features using thoracic four-dimensional CT (4D-CT) scans that are available from patients receiving radiation therapy. In 4D-CT datasets of 14 lung cancer patients who underwent stereotactic body radiotherapy (SBRT) and 14 test-retest datasets of non-small cell lung cancer (NSCLC), 1170 radiomic features (shape: n = 16, statistics: n = 32, texture: n = 1122) were extracted. A concordance correlation coefficient (CCC) > 0.85 was used to select robust features. We compared the robust features in various 4D-CT group with those in test-retest. The total number of robust features was a range between 846/1170 (72%) and 970/1170 (83%) in all 4D-CT groups with three breathing phases (40%-60%); however, that was a range between 44/1170 (4%) and 476/1170 (41%) in all 4D-CT groups with 10 breathing phases. In test-retest, the total number of robust features was 967/1170 (83%); thus, the number of robust features in 4D-CT was almost equal to that in test-retest by using 40-60% breathing phases. In 4D-CT, respiratory motion is a factor that greatly affects the robustness of features, thus by using only 40-60% breathing phases, excessive dimension reduction will be able to be prevented in any 4D-CT datasets, and select robust features suitable for CT protocol of your own facility.
Copyright © 2019 Associazione Italiana di Fisica Medica. Published by Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  4D-CT; Lung cancer; Radiomics; Radiotherapy

Mesh:

Year:  2019        PMID: 30824145     DOI: 10.1016/j.ejmp.2019.02.009

Source DB:  PubMed          Journal:  Phys Med        ISSN: 1120-1797            Impact factor:   2.685


  6 in total

1.  A deep learning-based radiomics approach to predict head and neck tumor regression for adaptive radiotherapy.

Authors:  Shohei Tanaka; Noriyuki Kadoya; Yuto Sugai; Mariko Umeda; Miyu Ishizawa; Yoshiyuki Katsuta; Kengo Ito; Ken Takeda; Keiichi Jingu
Journal:  Sci Rep       Date:  2022-05-27       Impact factor: 4.996

Review 2.  Radiomics as a personalized medicine tool in lung cancer: Separating the hope from the hype.

Authors:  Isabella Fornacon-Wood; Corinne Faivre-Finn; James P B O'Connor; Gareth J Price
Journal:  Lung Cancer       Date:  2020-06-02       Impact factor: 5.705

3.  Radiomics feature robustness as measured using an MRI phantom.

Authors:  Joonsang Lee; Angela Steinmann; Yao Ding; Hannah Lee; Constance Owens; Jihong Wang; Jinzhong Yang; David Followill; Rachel Ger; Dennis MacKin; Laurence E Court
Journal:  Sci Rep       Date:  2021-02-17       Impact factor: 4.379

Review 4.  Understanding Sources of Variation to Improve the Reproducibility of Radiomics.

Authors:  Binsheng Zhao
Journal:  Front Oncol       Date:  2021-03-29       Impact factor: 6.244

5.  Impact of feature selection methods and subgroup factors on prognostic analysis with CT-based radiomics in non-small cell lung cancer patients.

Authors:  Yuto Sugai; Noriyuki Kadoya; Shohei Tanaka; Shunpei Tanabe; Mariko Umeda; Takaya Yamamoto; Kazuya Takeda; Suguru Dobashi; Haruna Ohashi; Ken Takeda; Keiichi Jingu
Journal:  Radiat Oncol       Date:  2021-04-30       Impact factor: 3.481

6.  Robustness of radiomic features in magnetic resonance imaging: review and a phantom study.

Authors:  Renee Cattell; Shenglan Chen; Chuan Huang
Journal:  Vis Comput Ind Biomed Art       Date:  2019-11-20
  6 in total

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