Abstract

BackgroundDifferentiating pancreatic cancer (PC) from normal tissue by computer-aided diagnosis of EUS images were quite useful. The current study was designed to investigate the feasibility of using computer-aided diagnostic (CAD) techniques to extract EUS image parameters for the differential diagnosis of PC and chronic pancreatitis (CP).Methodology/Principal FindingsThis study recruited 262 patients with PC and 126 patients with CP. Typical EUS images were selected from the sample sets. Texture features were extracted from the region of interest using computer-based techniques. Then the distance between class algorithm and sequential forward selection (SFS) algorithm were used for a better combination of features; and, later, a support vector machine (SVM) predictive model was built, trained, and validated. Overall, 105 features of 9 categories were extracted from the EUS images for pattern classification. Of these features, the 16 were selected as a better combination of features. Then, SVM predictive model was built and trained. The total cases were randomly divided into a training set and a testing set. The training set was used to train the SVM, and the testing set was used to evaluate the performance of the SVM. After 200 trials of randomised experiments, the average accuracy, sensitivity, specificity, the positive and negative predictive values of pancreatic cancer were 94.2±0.1749%,96.25±0.4460%, 93.38±0.2076%, 92.21±0.4249% and 96.68±0.1471%, respectively.Conclusions/SignificanceDigital image processing and computer-aided EUS image differentiation technologies are highly accurate and non-invasive. This technology provides a kind of new and valuable diagnostic tool for the clinical determination of PC.

Highlights

  • Computer-aided diagnostic (CAD) techniques can assist radiologists to indentify lesions and improve diagnostic accuracy, when used in combination with other physiological and biochemical methods

  • The diagnosis of pancreatic cancer (PC) has been hampered by its anatomical location and the limited number of available examination procedures

  • With the wide application of endoscopic ultrasonography, endoscopic ultrasound (EUS) and EUS-FNA have become the preferred diagnostic methods for PC [14,15]; these methods exhibit diagnostic accuracies up to 85%, which are significantly higher than the 50% accuracy obtained with CT exam-based diagnoses [16]

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Summary

Introduction

Computer-aided diagnostic (CAD) techniques can assist radiologists to indentify lesions and improve diagnostic accuracy, when used in combination with other physiological and biochemical methods. Some CAD research findings have been verified by the U.S FDA; the application of CAD techniques was shown to improve the diagnostic accuracy and reduce the number of misdiagnoses [3]. Based on these successful experience, we previously have implemented the use of digital image processing techniques for the successful differentiation of endoscopic ultrasound (EUS) images depicting pancreatic cancer (PC) from EUS images of non-cancerous samples, including normal samples and samples exhibiting signs of chronic pancreatitis (CP). Differentiating pancreatic cancer (PC) from normal tissue by computer-aided diagnosis of EUS images were quite useful. The current study was designed to investigate the feasibility of using computer-aided diagnostic (CAD) techniques to extract EUS image parameters for the differential diagnosis of PC and chronic pancreatitis (CP)

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