A novel CT-based radiomics model for predicting response and prognosis of chemoradiotherapy in esophageal squamous cell carcinoma

被引:3
作者
Kasai, Akinari [1 ]
Miyoshi, Jinsei [1 ,2 ]
Sato, Yasushi [1 ]
Okamoto, Koichi [1 ]
Miyamoto, Hiroshi [1 ]
Kawanaka, Takashi [3 ]
Tonoiso, Chisato [3 ]
Harada, Masafumi [3 ]
Goto, Masakazu [4 ]
Yoshida, Takahiro [4 ,5 ]
Haga, Akihiro [6 ]
Takayama, Tetsuji [1 ]
机构
[1] Tokushima Univ, Dept Gastroenterol & Oncol, Grad Sch Biomed Sci, 3-18-15 Kuramoto Cho, Tokushima 7708503, Japan
[2] Kawashima Hosp, Dept Gastroenterol, 6-1 Kitasakoichiban Cho, Tokushima 7700011, Japan
[3] Tokushima Univ, Dept Radiol, Grad Sch Biomed Sci, 3-18-15 Kuramoto Cho, Tokushima 7708503, Japan
[4] Tokushima Univ, Dept Thorac Endocrine Surg & Oncol, Grad Sch Biomed Sci, 3-18-15 Kuramoto Cho, Tokushima 7708503, Japan
[5] Yoshida Clin, 1-18 Shinuchimachi, Tokushima 7700845, Japan
[6] Tokushima Univ, Dept Med Image Informat, Grad Sch Biomed Sci, 3-18-15 Kuramoto Cho, Tokushima 7708503, Japan
关键词
CANCER; SURVIVAL; IMAGES;
D O I
10.1038/s41598-024-52418-4
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
No clinically relevant biomarker has been identified for predicting the response of esophageal squamous cell carcinoma (ESCC) to chemoradiotherapy (CRT). Herein, we established a CT-based radiomics model with artificial intelligence (AI) to predict the response and prognosis of CRT in ESCC. A total of 44 ESCC patients (stage I-IV) were enrolled in this study; training (n = 27) and validation (n = 17) cohorts. First, we extracted a total of 476 radiomics features from three-dimensional CT images of cancer lesions in training cohort, selected 110 features associated with the CRT response by ROC analysis (AUC >= 0.7) and identified 12 independent features, excluding correlated features by Pearson's correlation analysis (r >= 0.7). Based on the 12 features, we constructed 5 prediction models of different machine learning algorithms (Random Forest (RF), Ridge Regression, Naive Bayes, Support Vector Machine, and Artificial Neural Network models). Among those, the RF model showed the highest AUC in the training cohort (0.99 [95%CI 0.86-1.00]) as well as in the validation cohort (0.92 [95%CI 0.71-0.99]) to predict the CRT response. Additionally, Kaplan-Meyer analysis of the validation cohort and all the patient data showed significantly longer progression-free and overall survival in the high-prediction score group compared with the low-prediction score group in the RF model. Univariate and multivariate analyses revealed that the radiomics prediction score and lymph node metastasis were independent prognostic biomarkers for CRT of ESCC. In conclusion, we have developed a CT-based radiomics model using AI, which may have the potential to predict the CRT response as well as the prognosis for ESCC patients with non-invasiveness and cost-effectiveness.
引用
收藏
页数:10
相关论文
共 33 条
[1]   Epidemiology of Esophageal Squamous Cell Carcinoma [J].
Abnet, Christian C. ;
Arnold, Melina ;
Wei, Wen-Qiang .
GASTROENTEROLOGY, 2018, 154 (02) :360-373
[2]   Decoding tumour phenotype by noninvasive imaging using a quantitative radiomics approach [J].
Aerts, Hugo J. W. L. ;
Velazquez, Emmanuel Rios ;
Leijenaar, Ralph T. H. ;
Parmar, Chintan ;
Grossmann, Patrick ;
Cavalho, Sara ;
Bussink, Johan ;
Monshouwer, Rene ;
Haibe-Kains, Benjamin ;
Rietveld, Derek ;
Hoebers, Frank ;
Rietbergen, Michelle M. ;
Leemans, C. Rene ;
Dekker, Andre ;
Quackenbush, John ;
Gillies, Robert J. ;
Lambin, Philippe .
NATURE COMMUNICATIONS, 2014, 5
[3]   Radiomics with artificial intelligence for precision medicine in radiation therapy [J].
Arimura, Hidetaka ;
Soufi, Mazen ;
Kamezawa, Hidemi ;
Ninomiya, Kenta ;
Yamada, Masahiro .
JOURNAL OF RADIATION RESEARCH, 2019, 60 (01) :150-157
[4]   Radiomics and Dosiomics for Predicting Local Control after Carbon-Ion Radiotherapy in Skull-Base Chordoma [J].
Buizza, Giulia ;
Paganelli, Chiara ;
D'Ippolito, Emma ;
Fontana, Giulia ;
Molinelli, Silvia ;
Preda, Lorenzo ;
Riva, Giulia ;
Iannalfi, Alberto ;
Valvo, Francesca ;
Orlandi, Ester ;
Baroni, Guido .
CANCERS, 2021, 13 (02) :1-15
[5]   Classification of early stage non-small cell lung cancers on computed tomographic images into histological types using radiomic features: interobserver delineation variability analysis [J].
Haga A. ;
Takahashi W. ;
Aoki S. ;
Nawa K. ;
Yamashita H. ;
Abe O. ;
Nakagawa K. .
Radiological Physics and Technology, 2018, 11 (1) :27-35
[6]   Radiomic analysis in contrast-enhanced CT: predict treatment response to chemoradiotherapy in esophageal carcinoma [J].
Hou, Zhen ;
Ren, Wei ;
Li, Shuangshuang ;
Liu, Juan ;
Sun, Yu ;
Yan, Jing ;
Wan, Suiren .
ONCOTARGET, 2017, 8 (61) :104444-104454
[7]   Computed tomography-based deep-learning prediction of neoadjuvant chemoradiotherapy treatment response in esophageal squamous cell carcinoma [J].
Hu, Yihuai ;
Xie, Chenyi ;
Yang, Hong ;
Ho, Joshua W. K. ;
Wen, Jing ;
Han, Lujun ;
Lam, Ka-On ;
Wong, Ian Y. H. ;
Law, Simon Y. K. ;
Chiu, Keith W. H. ;
Vardhanabhuti, Varut ;
Fu, Jianhua .
RADIOTHERAPY AND ONCOLOGY, 2021, 154 :6-13
[8]   Assessment of Intratumoral and Peritumoral Computed Tomography Radiomics for Predicting Pathological Complete Response to Neoadjuvant Chemoradiation in Patients With Esophageal Squamous Cell Carcinoma [J].
Hu, Yihuai ;
Xie, Chenyi ;
Yang, Hong ;
Ho, Joshua W. K. ;
Wen, Jing ;
Han, Lujun ;
Chiu, Keith W. H. ;
Fu, Jianhua ;
Vardhanabhuti, Varut .
JAMA NETWORK OPEN, 2020, 3 (09)
[9]   Applications of Support Vector Machine (SVM) Learning in Cancer Genomics [J].
Huang, Shujun ;
Cai, Nianguang ;
Pacheco, Pedro Penzuti ;
Narandes, Shavira ;
Wang, Yang ;
Xu, Wayne .
CANCER GENOMICS & PROTEOMICS, 2018, 15 (01) :41-51
[10]  
Jeswal S. K., 2021, New Paradigms in Computational Modeling and Its Applications, P145