2023
DOI: 10.3390/ijerph20126059
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A Machine Learning Approach for Knee Injury Detection from Magnetic Resonance Imaging

Massimiliano Mangone,
Anxhelo Diko,
Luca Giuliani
et al.

Abstract: The knee is an essential part of our body, and identifying its injuries is crucial since it can significantly affect quality of life. To date, the preferred way of evaluating knee injuries is through magnetic resonance imaging (MRI), which is an effective imaging technique that accurately identifies injuries. The issue with this method is that the high amount of detail that comes with MRIs is challenging to interpret and time consuming for radiologists to analyze. The issue becomes even more concerning when ra… Show more

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Cited by 2 publications
(1 citation statement)
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“…One approach to improving model interpretability is to map the model's features to symbolic knowledge representations like ontologies. A machine learning model may predict the probability of an athlete's ACL injury based on features like knee swelling, instability, limited range of motion, and age [9]. The features selected by the model can be mapped to concepts and relationships in an ontology, with associated probabilities.…”
Section: Symbolic Representation Learningmentioning
confidence: 99%
“…One approach to improving model interpretability is to map the model's features to symbolic knowledge representations like ontologies. A machine learning model may predict the probability of an athlete's ACL injury based on features like knee swelling, instability, limited range of motion, and age [9]. The features selected by the model can be mapped to concepts and relationships in an ontology, with associated probabilities.…”
Section: Symbolic Representation Learningmentioning
confidence: 99%