Thyroidiomics: An Automated Pipeline for Segmentation and Classification of Thyroid Pathologies from Scintigraphy Images
Maziar Sabouri, Shadab Ahamed, Azin Asadzadeh, Atlas Haddadi Avval,, Soroush Bagheri, Mohsen Arabi, Seyed Rasoul Zakavi, Emran Askari, Ali, Rasouli, Atena Aghaee, Mohaddese Sehati, Fereshteh Yousefirizi, Carlos Uribe,, Ghasem Hajianfar, Habib Zaidi, Arman Rahmim

TL;DR
This study presents an automated pipeline using deep learning and radiomics to segment and classify thyroid diseases from scintigraphy images, achieving high accuracy and reducing assessment time.
Contribution
It introduces a ResUNet-based segmentation model combined with radiomics and feature selection for automated thyroid disease classification, demonstrating performance comparable to physicians.
Findings
ResUNet achieved high segmentation accuracy with DSC up to 0.86.
Classification accuracy reached up to 76% with high ROC AUC of 0.92.
Automated pipeline reduced assessment time while maintaining diagnostic performance.
Abstract
The objective of this study was to develop an automated pipeline that enhances thyroid disease classification using thyroid scintigraphy images, aiming to decrease assessment time and increase diagnostic accuracy. Anterior thyroid scintigraphy images from 2,643 patients were collected and categorized into diffuse goiter (DG), multinodal goiter (MNG), and thyroiditis (TH) based on clinical reports, and then segmented by an expert. A ResUNet model was trained to perform auto-segmentation. Radiomic features were extracted from both physician (scenario 1) and ResUNet segmentations (scenario 2), followed by omitting highly correlated features using Spearman's correlation, and feature selection using Recursive Feature Elimination (RFE) with XGBoost as the core. All models were trained under leave-one-center-out cross-validation (LOCOCV) scheme, where nine instances of algorithms were…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Dental Radiography and Imaging · AI in cancer detection
MethodsFeature Selection
