» Articles » PMID: 28629560

CT-based Radiomics Signature for Differentiating Borrmann Type IV Gastric Cancer from Primary Gastric Lymphoma

Overview
Journal Eur J Radiol
Specialty Radiology
Date 2017 Jun 21
PMID 28629560
Citations 49
Authors
Affiliations
Soon will be listed here.
Abstract

Purpose: To evaluate the value of CT-based radiomics signature for differentiating Borrmann type IV gastric cancer (GC) from primary gastric lymphoma (PGL).

Materials And Methods: 40 patients with Borrmann type IV GC and 30 patients with PGL were retrospectively recruited. 485 radiomics features were extracted and selected from the portal venous CT images to build a radiomics signature. Subjective CT findings, including gastric wall peristalsis, perigastric fat infiltration, lymphadenopathy below the renal hila and enhancement pattern, were assessed to construct a subjective findings model. The radiomics signature, subjective CT findings, age and gender were integrated into a combined model by multivariate analysis. The diagnostic performance of these three models was assessed with receiver operating characteristics curves (ROC) and were compared using DeLong test.

Results: The subjective findings model, the radiomics signature and the combined model showed a diagnostic accuracy of 81.43% (AUC [area under the curve], 0.806; 95% CI [confidence interval]: 0.696-0.917; sensitivity, 63.33%; specificity, 95.00%), 84.29% (AUC, 0.886 [95% CI: 0.809-0.963]; sensitivity, 86.67%; specificity, 82.50%), 87.14% (AUC, 0.903 [95%CI: 0.831-0.975]; sensitivity, 70.00%; specificity, 100%), respectively. There were no significant differences in AUC among these three models (P=0.051-0.422).

Conclusion: Radiomics analysis has the potential to accurately differentiate Borrmann type IV GC from PGL.

Citing Articles

Application of machine learning for the differentiation of thymomas and thymic cysts using deep transfer learning: A multi-center comparison of diagnostic performance based on different dimensional models.

Yang Y, Cheng J, Chen L, Cui C, Liu S, Zuo M Thorac Cancer. 2024; 15(31):2235-2247.

PMID: 39305057 PMC: 11543273. DOI: 10.1111/1759-7714.15454.


The value of radiomics features of the spleen as surrogates for differentiating subtypes of common pediatric lymphomas.

Si J, Wang H, Xie M, Yang Y, Li J, Wang F Quant Imaging Med Surg. 2024; 14(8):5630-5641.

PMID: 39143994 PMC: 11320520. DOI: 10.21037/qims-24-122.


Radiomics in Oesogastric Cancer: Staging and Prediction of Preoperative Treatment Response: A Narrative Review and the Results of Personal Experience.

Garbarino G, Polici M, Caruso D, Laghi A, Mercantini P, Pilozzi E Cancers (Basel). 2024; 16(15).

PMID: 39123392 PMC: 11311587. DOI: 10.3390/cancers16152664.


Development and validation of a machine learning-based F-fluorodeoxyglucose PET/CT radiomics signature for predicting gastric cancer survival.

Zhi H, Xiang Y, Chen C, Zhang W, Lin J, Gao Z Cancer Imaging. 2024; 24(1):99.

PMID: 39080806 PMC: 11290137. DOI: 10.1186/s40644-024-00741-4.


The Applications of Artificial Intelligence in Digestive System Neoplasms: A Review.

Zhang S, Mu W, Dong D, Wei J, Fang M, Shao L Health Data Sci. 2024; 3:0005.

PMID: 38487199 PMC: 10877701. DOI: 10.34133/hds.0005.