Kim, Hyungjin; Lee, Joo Ho; Kim, Hak Jae; Park, Chang Min; Wu, Hong-Gyun; Goo, Jin Mo
Radiotherapy and oncology : journal of the European Society for Therapeutic Radiology and Oncology
2021Nov ; 165 ( 22 ) :166-173.
PMID : 34748856
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Kim, Hyungjin -
Lee, Joo Ho -
Kim, Hak Jae -
Park, Chang Min -
Wu, Hong-Gyun -
Goo, Jin Mo -
ABSTRACT
BACKGROUND AND PURPOSE: To validate a computed tomography (CT)-based deep learning prognostication model, originally developed for a surgical cohort, in patients with primary lung cancer undergoing stereotactic ablative radiotherapy (SABR). MATERIALS AND
METHODS: This retrospective study identified patients with clinical stage T1-2N0M0 lung cancer treated with SABR between 2013 and 2018. The outcomes were local recurrence-free survival (LRFS), disease-free survival (DFS), and overall survival (OS). The discrimination performance of the model, which extracted a quantitative score of cumulative risk for an adverse event up to 900?days, was evaluated using time-dependent receiver operating characteristic curve analysis. Multivariable Cox regression was performed to investigate the independent prognostic value of the model output adjusting for clinical factors including age, sex, smoking status, and clinical T category.
RESULTS: In total, 135 patients (median age, 78?years; 101 men; 78 [57.8%] adenocarcinomas and 57 [42.2%] squamous cell carcinomas) were evaluated. Most patients (117/135) were treated with 48-60?Gy in four fractions. Median biologically effective dose was 150.0?Gy (interquartile range, 126.9, 150.0?Gy). For LRFS, the area under the curve (AUC) was 0.72 (95% confidence interval [CI]: 0.58, 0.87). The AUCs were 0.70 (95% CI: 0.60, 0.81) for DFS and 0.66 (95% CI: 0.54, 0.77) for OS. Model output was associated with LRFS (adjusted hazard ratio [HR], 1.043; 95% CI: 1.003, 1.085; P?=?0.04), DFS (adjusted HR, 1.03; 95% CI: 1.01, 1.05; P?=?0.008), and OS (adjusted HR, 1.025; 95% CI: 1.002, 1.047; P?=?0.03). CONCLUSION: This study showed external validity and transportability of the CT-based deep learning prognostication model for radiotherapy candidates. CI - Copyright ??2021 Elsevier B.V. All rights reserved.
keyword
Deep learning; Lung neoplasms; Multidetector computed tomography; Prognosis; Stereotactic ablative radiotherapy; Validation study
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