American Association for Cancer Research
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Supplementary materials, Supplementary Figures 1-2, Supplementary Tables 1-4 from Radiomics Analysis for Evaluation of Pathological Complete Response to Neoadjuvant Chemoradiotherapy in Locally Advanced Rectal Cancer

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posted on 2023-03-31, 20:10 authored by Zhenyu Liu, Xiao-Yan Zhang, Yan-Jie Shi, Lin Wang, Hai-Tao Zhu, Zhenchao Tang, Shuo Wang, Xiao-Ting Li, Jie Tian, Ying-Shi Sun

Table S1. Demographic comparison between Primary and Validation cohorts; Table S2. Radiomics features associated with CRT outcome identified by two sample t-test and LASSO; Table S3. Related factors for pCR detection in LARC; Table S4. Statistical significance of the clinical information in the multivariate regression model; Figure S1. Recruitment pathway for patients in this study; Figure S2. Typical cases of pCR and non-pCR.

Funding

National Natural Science Foundation of China

Key Research Program of the Chinese Academy of Sciences

Science and Technology Service Network Initiative of the Chinese Academy of Sciences

Beijing Municipal Science & Technology Commission ‘Capital Clinical Research Special Fund’

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ARTICLE ABSTRACT

Purpose: To develop and validate a radiomics model for evaluating pathologic complete response (pCR) to neoadjuvant chemoradiotherapy in patients with locally advanced rectal cancer (LARC).Experimental Design: We enrolled 222 patients (152 in the primary cohort and 70 in the validation cohort) with clinicopathologically confirmed LARC who received chemoradiotherapy before surgery. All patients underwent T2-weighted and diffusion-weighted imaging before and after chemoradiotherapy; 2,252 radiomic features were extracted from each patient before and after treatment imaging. The two-sample t test and the least absolute shrinkage and selection operator regression were used for feature selection, whereupon a radiomics signature was built with support vector machines. Multivariable logistic regression analysis was then used to develop a radiomics model incorporating the radiomics signature and independent clinicopathologic risk factors. The performance of the radiomics model was assessed by its calibration, discrimination, and clinical usefulness with independent validation.Results: The radiomics signature comprised 30 selected features and showed good discrimination performance in both the primary and validation cohorts. The individualized radiomics model, which incorporated the radiomics signature and tumor length, also showed good discrimination, with an area under the receiver operating characteristic curve of 0.9756 (95% confidence interval, 0.9185–0.9711) in the validation cohort, and good calibration. Decision curve analysis confirmed the clinical utility of the radiomics model.Conclusions: Using pre- and posttreatment MRI data, we developed a radiomics model with excellent performance for individualized, noninvasive prediction of pCR. This model may be used to identify LARC patients who can omit surgery after chemoradiotherapy. Clin Cancer Res; 23(23); 7253–62. ©2017 AACR.

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