Literature DB >> 32096876

Homology-based radiomic features for prediction of the prognosis of lung cancer based on CT-based radiomics.

Noriyuki Kadoya1, Shohei Tanaka1, Tomohiro Kajikawa1, Shunpei Tanabe1, Kota Abe1,2, Yujiro Nakajima1,2, Takaya Yamamoto1, Noriyoshi Takahashi1, Kazuya Takeda1, Suguru Dobashi3, Ken Takeda3, Kazuaki Nakane4, Keiichi Jingu1.   

Abstract

PURPOSE: Radiomics is a new technique that enables noninvasive prognostic prediction by extracting features from medical images. Homology is a concept used in many branches of algebra and topology that can quantify the contact degree. In the present study, we developed homology-based radiomic features to predict the prognosis of non-small-cell lung cancer (NSCLC) patients and then evaluated the accuracy of this prediction method.
METHODS: Four datasets were used: two to provide training and test data and two for the selection of robust radiomic features. All the datasets were downloaded from The Cancer Imaging Archive (TCIA). In two-dimensional cases, the Betti numbers consist of two values: b0 (zero-dimensional Betti number), which is the number of isolated components, and b1 (one-dimensional Betti number), which is the number of one-dimensional or "circular" holes. For homology-based evaluation, computed tomography (CT) images must be converted to binarized images in which each pixel has two possible values: 0 or 1. All CT slices of the gross tumor volume were used for calculating the homology histogram. First, by changing the threshold of the CT value (range: -150 to 300 HU) for all its slices, we developed homology-based histograms for b0 , b1 , and b1 /b0 using binarized images. All histograms were then summed, and the summed histogram was normalized by the number of slices. 144 homology-based radiomic features were defined from the histogram. To compare the standard radiomic features, 107 radiomic features were calculated using the standard radiomics technique. To clarify the prognostic power, the relationship between the values of the homology-based radiomic features and overall survival was evaluated using LASSO Cox regression model and the Kaplan-Meier method. The retained features with nonzero coefficients calculated by the LASSO Cox regression model were used for fitting the regression model. Moreover, these features were then integrated into a radiomics signature. An individualized rad score was calculated from a linear combination of the selected features, which were weighted by their respective coefficients.
RESULTS: When the patients in the training and test datasets were stratified into high-risk and low-risk groups according to the rad scores, the overall survival of the groups was significantly different. The C-index values for the homology-based features (rad score), standard features (rad score), and tumor size were 0.625, 0.603, and 0.607, respectively, for the training datasets and 0.689, 0.668, and 0.667 for the test datasets. This result showed that homology-based radiomic features had slightly higher prediction power than the standard radiomic features.
CONCLUSIONS: Prediction performance using homology-based radiomic features had a comparable or slightly higher prediction power than standard radiomic features. These findings suggest that homology-based radiomic features may have great potential for improving the prognostic prediction accuracy of CT-based radiomics. In this result, it is noteworthy that there are some limitations.
© 2020 American Association of Physicists in Medicine.

Entities:  

Keywords:  CT image; lung cancer; machine learning; radiomics; survival

Mesh:

Year:  2020        PMID: 32096876     DOI: 10.1002/mp.14104

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


  9 in total

1.  Improved Prognosis of Treatment Failure in Cervical Cancer with Nontumor PET/CT Radiomics.

Authors:  Tahir I Yusufaly; Jingjing Zou; Tyler J Nelson; Casey W Williamson; Aaron Simon; Meenakshi Singhal; Hannah Liu; Hank Wong; Cheryl C Saenz; Jyoti Mayadev; Michael T McHale; Catheryn M Yashar; Ramez Eskander; Andrew Sharabi; Carl K Hoh; Sebastian Obrzut; Loren K Mell
Journal:  J Nucl Med       Date:  2021-10-28       Impact factor: 11.082

2.  Reliability as a Precondition for Trust-Segmentation Reliability Analysis of Radiomic Features Improves Survival Prediction.

Authors:  Gustav Müller-Franzes; Sven Nebelung; Justus Schock; Christoph Haarburger; Firas Khader; Federico Pedersoli; Maximilian Schulze-Hagen; Christiane Kuhl; Daniel Truhn
Journal:  Diagnostics (Basel)       Date:  2022-01-19

3.  Spherical Convolutional Neural Networks for Survival Rate Prediction in Cancer Patients.

Authors:  Fabian Sinzinger; Mehdi Astaraki; Örjan Smedby; Rodrigo Moreno
Journal:  Front Oncol       Date:  2022-04-27       Impact factor: 5.738

4.  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

5.  Robust radiogenomics approach to the identification of EGFR mutations among patients with NSCLC from three different countries using topologically invariant Betti numbers.

Authors:  Kenta Ninomiya; Hidetaka Arimura; Wai Yee Chan; Kentaro Tanaka; Shinichi Mizuno; Nadia Fareeda Muhammad Gowdh; Nur Adura Yaakup; Chong-Kin Liam; Chee-Shee Chai; Kwan Hoong Ng
Journal:  PLoS One       Date:  2021-01-11       Impact factor: 3.240

6.  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

7.  Quantifying lung cancer heterogeneity using novel CT features: a cross-institute study.

Authors:  Zixing Wang; Cuihong Yang; Wei Han; Xin Sui; Fuling Zheng; Fang Xue; Xiaoli Xu; Peng Wu; Yali Chen; Wentao Gu; Wei Song; Jingmei Jiang
Journal:  Insights Imaging       Date:  2022-04-28

8.  A combined predictive model based on radiomics features and clinical factors for disease progression in early-stage non-small cell lung cancer treated with stereotactic ablative radiotherapy.

Authors:  Hong Yang; Lin Wang; Guoliang Shao; Baiqiang Dong; Fang Wang; Yuguo Wei; Pu Li; Haiyan Chen; Wujie Chen; Yao Zheng; Yiwei He; Yankun Zhao; Xianghui Du; Xiaojiang Sun; Zhun Wang; Yuezhen Wang; Xia Zhou; Xiaojing Lai; Wei Feng; Liming Shen; Guoqing Qiu; Yongling Ji; Jianxiang Chen; Youhua Jiang; Jinshi Liu; Jian Zeng; Changchun Wang; Qiang Zhao; Xun Yang; Xiao Hu; Honglian Ma; Qixun Chen; Ming Chen; Haitao Jiang; Yujin Xu
Journal:  Front Oncol       Date:  2022-08-02       Impact factor: 5.738

9.  Relapse predictability of topological signature on pretreatment planning CT images of stage I non-small cell lung cancer patients before treatment with stereotactic ablative radiotherapy.

Authors:  Takumi Kodama; Hidetaka Arimura; Yuko Shirakawa; Kenta Ninomiya; Tadamasa Yoshitake; Yoshiyuki Shioyama
Journal:  Thorac Cancer       Date:  2022-06-16       Impact factor: 3.223

  9 in total

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