Improved Pancreatic Cancer Detection and Localization on CT Scans: A Computer-Aided Detection Model Utilizing Secondary Features

Author:

Ramaekers Mark1ORCID,Viviers Christiaan G. A.2ORCID,Hellström Terese A. E.2ORCID,Ewals Lotte J. S.3ORCID,Tasios Nick4,Jacobs Igor4,Nederend Joost3ORCID,Sommen Fons van der2ORCID,Luyer Misha D. P.1ORCID

Affiliation:

1. Department of Surgery, Catharina Cancer Institute, Catharina Hospital Eindhoven, EJ 5623 Eindhoven, The Netherlands

2. Department of Electrical Engineering, Eindhoven University of Technology, AZ 5612 Eindhoven, The Netherlands

3. Department of Radiology, Catharina Cancer Institute, Catharina Hospital Eindhoven, EJ 5623 Eindhoven, The Netherlands

4. Department of Hospital Services and Informatics, Philips Research, AE 5656 Eindhoven, The Netherlands

Abstract

The early detection of pancreatic ductal adenocarcinoma (PDAC) is essential for optimal treatment of pancreatic cancer patients. We propose a tumor detection framework to improve the detection of pancreatic head tumors on CT scans. In this retrospective research study, CT images of 99 patients with pancreatic head cancer and 98 control cases from the Catharina Hospital Eindhoven were collected. A multi-stage 3D U-Net-based approach was used for PDAC detection including clinically significant secondary features such as pancreatic duct and common bile duct dilation. The developed algorithm was evaluated using a local test set comprising 59 CT scans. The model was externally validated in 28 pancreatic cancer cases of a publicly available medical decathlon dataset. The tumor detection framework achieved a sensitivity of 0.97 and a specificity of 1.00, with an area under the receiver operating curve (AUROC) of 0.99, in detecting pancreatic head cancer in the local test set. In the external test set, we obtained similar results, with a sensitivity of 1.00. The model provided the tumor location with acceptable accuracy obtaining a DICE Similarity Coefficient (DSC) of 0.37. This study shows that a tumor detection framework utilizing CT scans and secondary signs of pancreatic cancer can detect pancreatic tumors with high accuracy.

Funder

Eindhoven AI Systems Institute

Publisher

MDPI AG

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