Keywords: Elastography, Elastography, diagnosis/prediction, machine learning
Motivation: Pathology of steatotic liver disease is characterized by fat burden, inflammation, and ballooning. Mechanical properties of tissue acquire by 2D-MRE has improved the detection of this disease. However, 3D-MRE, an improvement over 2D-MRE is not widely adopted by clinicians.
Goal(s): We aimed to compare the predictive capabilities of these two in risk factors associated with this disease using machine learning to help motivate clinicians to use 3D-MRE.
Approach: Use machine learning to determine the predictive capabilities of 2D-MRE and 3D-MRE.
Results: Results showed 3D-MRE best predicts steatohepatitis, inflammation, and ballooning.
Impact: The demonstrated predictive value of 3D-MRE in identifying those with certain risk factors allows clinicians to better plan treatment for patients with steatotic liver disease.
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