State-of-the-Art Deep Learning in Cardiovascular Image Analysis

Cardiovascular imaging is going to change substantially in the next decade, fueled by the deep learning revolution. For medical professionals, it is important to keep track of these developments to ensure that deep learning can have meaningful impact on clinical practice. This review aims to be a st...

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Veröffentlicht in:JACC. Cardiovascular imaging 2019-08, Vol.12 (8), p.1549-1565
Hauptverfasser: Litjens, Geert, Ciompi, Francesco, Wolterink, Jelmer M., de Vos, Bob D., Leiner, Tim, Teuwen, Jonas, Išgum, Ivana
Format: Artikel
Sprache:eng
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Zusammenfassung:Cardiovascular imaging is going to change substantially in the next decade, fueled by the deep learning revolution. For medical professionals, it is important to keep track of these developments to ensure that deep learning can have meaningful impact on clinical practice. This review aims to be a stepping stone in this process. The general concepts underlying most successful deep learning algorithms are explained, and an overview of the state-of-the-art deep learning in cardiovascular imaging is provided. This review discusses >80 papers, covering modalities ranging from cardiac magnetic resonance, computed tomography, and single-photon emission computed tomography, to intravascular optical coherence tomography and echocardiography. Many different machines learning algorithms were used throughout these papers, with the most common being convolutional neural networks. Recent algorithms such as generative adversarial models were also used. The potential implications of deep learning algorithms on clinical practice, now and in the near future, are discussed. [Display omitted] •Deep learning has revolutionized computer vision and is now seeing application in cardiovascular imaging.•This paper provides a thorough overview of the state of the art across applications and modalities for clinicians.•Clinicians should guide the applications of deep learning to have the most meaningful clinical impact.
ISSN:1936-878X
1876-7591
DOI:10.1016/j.jcmg.2019.06.009