Automatic detection and diagnosis of sacroiliitis in CT scans as incidental findings
Yigal Shenkman, Bilal Qutteineh, Leo Joskowicz, Adi Szeskin, Yusef, Azraq, Arnaldo Mayer, Iris Eshed

TL;DR
This paper presents a new machine learning-based algorithm for automatic detection and grading of sacroiliitis in CT scans, aiming to improve early diagnosis from incidental findings during scans for other reasons.
Contribution
The study introduces a novel multi-step deep learning approach combining heuristics, U-Net, random forests, and CNNs for sacroiliitis diagnosis in CT scans, with high accuracy.
Findings
Achieved 91.9% binary classification accuracy
Achieved 86% three-class classification accuracy
Sensitivity of 95% for detection
Abstract
Early diagnosis of sacroiliitis may lead to preventive treatment which can significantly improve the patient's quality of life in the long run. Oftentimes, a CT scan of the lower back or abdomen is acquired for suspected back pain. However, since the differences between a healthy and an inflamed sacroiliac joint in the early stages are subtle, the condition may be missed. We have developed a new automatic algorithm for the diagnosis and grading of sacroiliitis CT scans as incidental findings, for patients who underwent CT scanning as part of their lower back pain workout. The method is based on supervised machine and deep learning techniques. The input is a CT scan that includes the patient's pelvis. The output is a diagnosis for each sacroiliac joint. The algorithm consists of four steps: 1) computation of an initial region of interest (ROI) that includes the pelvic joints region using…
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Taxonomy
MethodsConcatenated Skip Connection · *Communicated@Fast*How Do I Communicate to Expedia? · Max Pooling · Convolution · U-Net
