Title of article :
Identification of Pancreaticoduodenectomy Resection for Pancreatic Head Adenocarcinoma: A Preliminary Study of Radiomics
Author/Authors :
Hui, Bei University of Electronic Science and Technology of China - Chengdu, China , Qiu, Jia-Jun West China Hospital - Chengdu, China , Liu, Jin-Heng West China Hospital - Chengdu, China , Ke, Neng-Wen West China Hospital - Chengdu, China
Abstract :
In a pathological examination of pancreaticoduodenectomy for pancreatic head adenocarcinoma, a resection margin
without cancer cells in 1 mm is recognized as R0; a resection margin with cancer cells in 1 mm is recognized as R1. )e preoperative
identification of R0 and R1 is of great significance for surgical decision and prognosis. We conducted a preliminary radiomics study
based on preoperative CT (computer tomography) images to evaluate a resection margin which was R0 or R1. Methods. We
retrospectively analyzed 258 preoperative CT images of 86 patients (34 cases of R0 and 52 cases of R1) who were diagnosed as
pancreatic head adenocarcinoma and underwent pancreaticoduodenectomy. )e radiomics study consists of five stages: (i) delineate
and segment regions of interest (ROIs); (ii) by solving discrete Laplacian equations with Dirichlet boundary conditions, fit the ROIs
to rectangular regions; (iii) enhance the textures of the fitted ROIs combining wavelet transform and fractional differential; (iv)
extract texture features from the enhanced ROIs combining wavelet transform and statistical analysis methods; and (v) reduce
features using principal component analysis (PCA) and classify the resection margins using the support vector machine (SVM), and
then investigate the associations between texture features and histopathological characteristics using the Mann–Whitney U-test. To
reduce overfitting, the SVM classifier embedded a linear kernel and adopted the leave-one-out cross-validation. Results. It achieved an
AUC (area under receiver operating characteristic curve) of 0.8614 and an accuracy of 84.88%. Setting p ≤ 0.01 in the Mann–Whitney
U-test, two features of the run-length matrix, which are derived from diagonal sub-bands in wavelet decomposition, showed
statistically significant differences between R0 and R1. Conclusions. It indicates that the radiomics study is rewarding for the aided
diagnosis of R0 and R1. Texture features can potentially enhance physicians’ diagnostic ability.
Keywords :
Preliminary , Pancreaticoduodenectomy , Head , CT
Journal title :
Computational and Mathematical Methods in Medicine