Deep-learning segmentation to select liver parenchyma for categorizing hepatic steatosis on multinational chest CT
Zhongyi Zhang,
Guixia Li,
Ziqiang Wang
et al.
Abstract:Unenhanced CT scans exhibit high specificity in detecting moderate-to-severe hepatic steatosis. Even though many CTs are scanned from health screening and various diagnostic contexts, their potential for hepatic steatosis detection has largely remained unexplored. The accuracy of previous methodologies has been limited by the inclusion of non-parenchymal liver regions. To overcome this limitation, we present a novel deep-learning (DL) based method tailored for the automatic selection of parenchymal portions in… Show more
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