2022
DOI: 10.48550/arxiv.2203.16273
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Interpretable Vertebral Fracture Diagnosis

Abstract: Do black-box neural network models learn clinically relevant features for fracture diagnosis? The answer not only establishes reliability quenches scientific curiosity but also leads to explainable and verbose findings that can assist the radiologists in the final and increase trust. This work identifies the concepts networks use for vertebral fracture diagnosis in CT images. This is achieved by associating concepts to neurons highly correlated with a specific diagnosis in the dataset. The concepts are either … Show more

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References 33 publications
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