• Nutrition · Sep 2021

    Review

    Use of artificial intelligence in the imaging of sarcopenia: A narrative review of current status and perspectives.

    • Miłosz Rozynek, Iwona Kucybała, Andrzej Urbanik, and Wadim Wojciechowski.
    • Jagiellonian University Medical College, Department of Radiology, Krakow, Poland.
    • Nutrition. 2021 Sep 1; 89: 111227.

    AbstractSarcopenia is a muscle disease which previously was associated only with aging, but in recent days it has been gaining more attention for its predictive value in a vast range of conditions and its potential link with overall health. Up to this point, evaluating sarcopenia with imaging methods has been time-consuming and dependent on the skills of the physician. The solution for this problem may be found in artificial intelligence, which may assist radiologists in repetitive tasks such as muscle segmentation and body-composition analysis. The major aim of this review was to find and present the current status and future perspectives of artificial intelligence in the imaging of sarcopenia. We searched the PubMed database to find articles concerning the use of artificial intelligence in diagnostic imaging and especially in body-composition analysis in the context of sarcopenia. We found that artificial-intelligence systems could potentially help with evaluating sarcopenia and better predicting outcomes in a vast range of clinical situations, which could get us closer to the true era of precision medicine.Copyright © 2021 Elsevier Inc. All rights reserved.

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