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Differentiating autoimmune pancreatitis from pancreatic ductal adenocarcinoma with CT radiomics features

Authors :
Bert Vogelstein
Jin He
Seyoun Park
Christopher L. Wolfgang
Shahab Shayesteh
Kenneth W. Kinzler
E K Fishman
Saeed Ghandili
Linda C. Chu
Satomi Kawamoto
Alan L. Yuille
Daniel Fadaei Fouladi
Richard A. Burkhart
Ralph H. Hruban
Source :
Diagnostic and Interventional Imaging. 101:555-564
Publication Year :
2020
Publisher :
Elsevier BV, 2020.

Abstract

Purpose The purpose of this study was to determine whether computed tomography (CT)-based machine learning of radiomics features could help distinguish autoimmune pancreatitis (AIP) from pancreatic ductal adenocarcinoma (PDAC). Materials and Methods Eighty-nine patients with AIP (65 men, 24 women; mean age, 59.7 ± 13.9 [SD] years; range: 21–83 years) and 93 patients with PDAC (68 men, 25 women; mean age, 60.1 ± 12.3 [SD] years; range: 36–86 years) were retrospectively included. All patients had dedicated dual-phase pancreatic protocol CT between 2004 and 2018. Thin-slice images (0.75/0.5 mm thickness/increment) were compared with thick-slices images (3 or 5 mm thickness/increment). Pancreatic regions involved by PDAC or AIP (areas of enlargement, altered enhancement, effacement of pancreatic duct) as well as uninvolved parenchyma were segmented as three-dimensional volumes. Four hundred and thirty-one radiomics features were extracted and a random forest was used to distinguish AIP from PDAC. CT data of 60 AIP and 60 PDAC patients were used for training and those of 29 AIP and 33 PDAC independent patients were used for testing. Results The pancreas was diffusely involved in 37 (37/89; 41.6%) patients with AIP and not diffusely in 52 (52/89; 58.4%) patients. Using machine learning, 95.2% (59/62; 95% confidence interval [CI]: 89.8–100%), 83.9% (52:67; 95% CI: 74.7–93.0%) and 77.4% (48/62; 95% CI: 67.0–87.8%) of the 62 test patients were correctly classified as either having PDAC or AIP with thin-slice venous phase, thin-slice arterial phase, and thick-slice venous phase CT, respectively. Three of the 29 patients with AIP (3/29; 10.3%) were incorrectly classified as having PDAC but all 33 patients with PDAC (33/33; 100%) were correctly classified with thin-slice venous phase with 89.7% sensitivity (26/29; 95% CI: 78.6–100%) and 100% specificity (33/33; 95% CI: 93–100%) for the diagnosis of AIP, 95.2% accuracy (59/62; 95% CI: 89.8–100%) and area under the curve of 0.975 (95% CI: 0.936–1.0). Conclusions Radiomic features help differentiate AIP from PDAC with an overall accuracy of 95.2%.

Details

ISSN :
22115684
Volume :
101
Database :
OpenAIRE
Journal :
Diagnostic and Interventional Imaging
Accession number :
edsair.doi.dedup.....669cd0aff212311eb74bdb49516ca2c9
Full Text :
https://doi.org/10.1016/j.diii.2020.03.002