- Login
- Register
- Home/Current Issue
- About the journal
- Editorial board
- Online submission
- Instructions for authors
- Subscriptions
- Foundation Acta Endocrinologica
- Archive
- Contact
Romanian Academy
The Publishing House of the Romanian Academy
ACTA ENDOCRINOLOGICA (BUC)
The International Journal of Romanian Society of Endocrinology / Registered in 1938in Web of Science Master Journal List
Acta Endocrinologica(Bucharest) is live in PubMed Central
Journal Impact Factor - click here.
Showing 1 - 1 of 1
-
Perspectives
Saizu I, Cotruta B, Iacob RA, Bunduc S, Saizu RE, Dumbrava M, Pietrareanu C, Becheanu G, Grigorie D, Gheorghe C
A Model to Predict Diagnosis of Pancreatic Neuroendocrine Tumors Based on EUS Imaging FeaturesActa Endo (Buc) 2023 19(4): 407-414 doi: 10.4183/aeb.2023.407
AbstractBackground. This study aimed to determine predictive clinical and endoscopic ultrasound (EUS) features for pancreatic neuroendocrine tumor (PNET) diagnosis, utilizing EUS-guided tissue acquisition. Methods. A prospective study from 2018-2022 included patients with pancreatic masses undergoing EUS with elastography. Univariate binomial logistic regression followed by multiple logistic regression with significant predictors was employed. A forward selection algorithm identified optimal models based on predictor numbers. Variables encompassed EUS tumor characteristics (e.g., location, size, margins, echogenicity, vascularity on Doppler, main pancreatic duct dilation, elastography appearance, vascular invasion, and hypoechoic rim), alongside demographic and risk factors (smoking, alcohol, diabetes). Results. We evaluated 165 patients (24 PNETs). EUS features significantly linked with PNET diagnosis were well-defined margins (79% vs. 26%, p < 0.001), blue elastography appearance (46% vs. 9.9%, p < 0.001), vascularization (67% vs. 25%, p < 0.001), hypoechoic rim (46% vs. 10%, p < 0.001). The top-performing model, with 89.1% accuracy, included two predictors: a homogeneous lesion (OR, 95% CI) and a hypoechoic rim (OR, 95% CI). Conclusions. EUS appearance can differentiate PNETs from non-PNETs, with the hypoechoic rim being an independent predictor of PNET diagnosis. The most effective predictive model for PNETs combined the homogeneous lesion and presence of the hypoechoic rim.
Showing 1 - 1 of 1