Back to Search Start Over

JointNET: A Deep Model for Predicting Active Sacroiliitis from Sacroiliac Joint Radiography

Authors :
Turk, Sevcan
Demirkaya, Ahmet
Turali, M Yigit
Hepdurgun, Cenk
Dar, Salman UH
Karabulut, Ahmet K
Azizova, Aynur
Orman, Mehmet
Tamsel, Ipek
Aydingoz, Ustun
Argin, Mehmet
Cukur, Tolga
Publication Year :
2023

Abstract

Purpose: To develop a deep learning model that predicts active inflammation from sacroiliac joint radiographs and to compare the success with radiologists. Materials and Methods: A total of 1,537 (augmented 1752) grade 0 SIJs of 768 patients were retrospectively analyzed. Gold-standard MRI exams showed active inflammation in 330 joints according to ASAS criteria. A convolutional neural network model (JointNET) was developed to detect MRI-based active inflammation labels solely based on radiographs. Two radiologists blindly evaluated the radiographs for comparison. Python, PyTorch, and SPSS were used for analyses. P<0.05 was considered statistically significant. Results: JointNET differentiated active inflammation from radiographs with a mean AUROC of 89.2 (95% CI:86.8%, 91.7%). The sensitivity was 69.0% (95% CI:65.3%, 72.7%) and specificity 90.4% (95% CI:87.8 % 92.9%). The mean accuracy was 90.2% (95% CI: 87.6%, 92.8%). The positive predictive value was 74.6% (95% CI: 72.5%, 76.7%) and negative predictive value was 87.9% (95% CI: 85.4%, 90.5%) when prevalence was considered 1%. Statistical analyses showed a significant difference between active inflammation and healthy groups (p<0.05). Radiologists accuracies were less than 65% to discriminate active inflammation from sacroiliac joint radiographs. Conclusion: JointNET successfully predicts active inflammation from sacroiliac joint radiographs, with superior performance to human observers.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2301.10769
Document Type :
Working Paper