Detection of adrenal anomalous findings in spinal CT images using multi model graph aggregation
Carmel Shabalin, Israel Shenkman, Ilan Shelef, Gal Ben-Arie, Alex, Geftler, Yuval Shahar

TL;DR
This paper presents a novel multi-model graph aggregation method for detecting adrenal abnormalities in spinal CT scans, repurposing spine-focused images for abdominal pathology screening with a complex deep learning pipeline.
Contribution
Introduces a multi-model deep learning approach for adrenal abnormality detection in spine-focused CT scans, enabling cross-organ screening and potential application to other imaging modalities.
Findings
Effective detection of adrenal abnormalities in spinal CT scans.
The multi-model approach improves localization accuracy.
Pipeline adaptable to other organs and imaging types.
Abstract
Low back pain is the symptom that is the second most frequently reported to primary care physicians, effecting 50 to 80 percent of the population in a lifetime, resulting in multiple referrals of patients suffering from back problems, to CT and MRI scans, which are then examined by radiologists. The radiologists examining these spinal scans naturally focus on spinal pathologies and might miss other types of abnormalities, and in particular, abdominal ones, such as malignancies. Nevertheless, the patients whose spine was scanned might as well have malignant and other abdominal pathologies. Thus, clinicians have suggested the need for computerized assistance and decision support in screening spinal scans for additional abnormalities. In the current study, We have addressed the important case of detecting suspicious lesions in the adrenal glands as an example for the overall methodology we…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging
MethodsSparse Evolutionary Training · Focus
