Computed tomography-based prediction of pancreatitis following biliary metal stent placement with the convolutional neural network

Introduction: Pancreatitis is a potentially lethal adverse event of endoscopic transpapillary placement of a self-expandable metal stent (SEMS) for malignant biliary obstruction (MBO). Deep learning-based image recognition has not been investigated in predicting pancreatitis in this setting. Method...

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Main Authors: Tsuyoshi Hamada, Koichiro Yasaka, Yousuke Nakai, Rintaro Fukuda, Ryunosuke Hakuta, Kazunaga Ishigaki, Sachiko Kanai, Kensaku Noguchi, Hiroki Oyama, Tomotaka Saito, Tatsuya Sato, Tatsunori Suzuki, Naminatsu Takahara, Hiroyuki Isayama, Osamu Abe, Mitsuhiro Fujishiro
Format: Article
Language:English
Published: Georg Thieme Verlag KG
Series:Endoscopy International Open
Online Access:http://www.thieme-connect.de/DOI/DOI?10.1055/a-2298-0147
Description
Summary:Introduction: Pancreatitis is a potentially lethal adverse event of endoscopic transpapillary placement of a self-expandable metal stent (SEMS) for malignant biliary obstruction (MBO). Deep learning-based image recognition has not been investigated in predicting pancreatitis in this setting. Methods: We included 70 patients who received endoscopic placement of a SEMS for nonresectable distal MBO. We constructed a convolutional neural network (CNN) model for pancreatitis prediction using a series of preprocedural computed tomography images covering the whole pancreas (≥ 120,960 augmented images in total). We examined the additional effects of the CNN-based probabilities on the following machine learning models based on clinical parameters: logistic regression, support vector machine with a linear or RBF kernel, random forest classifier, and gradient boosting classifier. Model performance was assessed based on the area under the curve (AUC) in the receiver operating characteristic analysis, positive predictive value (PPV), accuracy, and specificity. Results: The CNN model was associated with moderate levels of performance metrics: AUC, 0.67; PPV, 0.45; accuracy, 0.66; and specificity, 0.63. When added to the machine learning models, the CNN-based probabilities increased the performance metrics. The logistic regression model with the CNN-based probabilities had an AUC of 0.74, PPV of 0.85, accuracy of 0.83, and specificity of 0.96, compared to 0.72, 0.78, 0.77, and 0.96, respectively, without the probabilities. Conclusions: The CNN-based model may increase the predictability for pancreatitis following endoscopic placement of a biliary SEMS. Our findings support the potential of deep learning technology in improving prognostic models in pancreatobiliary therapeutic endoscopy.
ISSN:2364-3722
2196-9736