Back to Search Start Over

Partially cystic thyroid cancer on conventional and elastographic ultrasound: a retrospective study and a machine learning—assisted system

Authors :
Haina Zhao
Yushuang He
Buyun Ma
Honghao Luo
Jing-Yan Liu
Qi-Zhong Lin
Yu-Lan Peng
Source :
Ann Transl Med
Publication Year :
2020
Publisher :
AME Publishing Company, 2020.

Abstract

Background Thyroid carcinoma constitutes the vast majority of all thyroid cancer, most of which is the solid nodule type. No previous studies have examined combining both conventional and elastic sonography to evaluate the diagnostic performance of partially cystic thyroid cancer (PCTC). This retrospective study was designed to evaluate differentiation of PCTC from benign partially cystic nodules with a machine learning-assisted system based on ultrasound (US) and elastography. Methods Patients with suspicious partially cystic nodules and finally confirmed were included in the study. We performed conventional US and real-time elastography (RTE). The US features of nodules were recorded. The data set was entered into 6 machine-learning algorithms. Sensitivity, specificity, accuracy, and area under the curve (AUC) were calculated. Results A total of 177 nodules were included in this study. Among these nodules, 81 were malignant and 96 were benign. Wreath-shaped feature, micro-calcification, and strain ratio (SR) value were the most important imaging features in differential diagnosis. The random forest classifier was the best diagnostic model. Conclusions US features of PCTC exhibited unique characteristics. Wreath-shaped partially cystic nodules, especially with the appearance of micro-calcifications and larger SR value, are more likely to be malignant. The random forest classifier might be useful to diagnose PCTC.

Details

ISSN :
23055847 and 23055839
Volume :
8
Database :
OpenAIRE
Journal :
Annals of Translational Medicine
Accession number :
edsair.doi.dedup.....150ea59fc9a22ed48479fc139e87f0b5
Full Text :
https://doi.org/10.21037/atm.2020.03.211