Preoperative CT-based Deep Learning Model for Predicting Disease-Free Survival in Patients with Lung Adenocarcinomas

Background: Deep learning models have the potential for lung cancer prognostication, but model output as an independent prognostic factor must be validated with clinical risk factors. Purpose: To develop and validate a preoperative CT-based deep learning model for predicting disease-free survival in...

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Veröffentlicht in:Radiology 2020-07, Vol.296 (1), p.216-224
Hauptverfasser: Kim, Hyungjin, Goo, Jin Mo, Lee, Kyung Hee, Kim, Young Tae, Park, Chang Min
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Sprache:eng
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Zusammenfassung:Background: Deep learning models have the potential for lung cancer prognostication, but model output as an independent prognostic factor must be validated with clinical risk factors. Purpose: To develop and validate a preoperative CT-based deep learning model for predicting disease-free survival in patients with lung adenocarcinoma. Materials and Methods: In this retrospective study, a deep learning model was trained to extract prognostic information from preoperative CT examinations. Data set 1 for training, tuning, and internal validation consisted of patients with T1-4N0M0 adenocarcinoma resected between 2009 and 2015. Data set 2 for external validation included patients with clinical T1-2aN0M0 (stage I) adenocarcinomas resected in 2014. Discrimination was assessed by using Harrell C index and benchmarked against the clinical T category. The Greenwood-Nam-D'Agostino test was used for model calibration. The multivariable-adjusted hazard ratios (HRs) were analyzed with clinical prognostic factors by using the Cox regression. Results: Evaluated were 800 patients (median age, 64 years; interquartile range, 56-70 years; 450 women) in data set 1 and 108 patients (median age, 63 years; interquartile range, 57-71 years; 60 women) in data set 2. The C indexes were 0.74-0.80 in the internal validation and 0.71-0.78 in the external validation, both comparable with the clinical T category (0.78 in the internal validation and 0.74 in the external validation; all P..05). The model exhibited good calibration in all data sets (P..05). Multivariable Cox regression revealed that model outputs were independent prognostic factors (hazard ratio [HR] of the categorical output, 2.5[95% confidence interval {CI}: 1.03, 5.9; P =.04] in the internal validation and 3.6 [95% CI: 1.6, 8.5; P =.003] in the external validation). Other than the deep learning model, only smoking status (HR, 3.4; 95% CI: 1.4, 8.5; P =.007) contributed further to prediction of disease-free survival for patients after resection of clinical stage I adenocarcinomas. Conclusion: A deep learning model for chest CT predicted disease-free survival for patients undergoing an operation for clinical stage I lung adenocarcinoma. (C) RSNA, 2020
ISSN:0033-8419
1527-1315
DOI:10.1148/radiol.2020192764