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Radiology in the Era of Big Data and Machine Learning

Author

Listed:
  • Augusto BF Antunes

    (Radiologist at Axial Medicina Diagnóstica, Brazil)

  • Flávio Amaro Oliveira Bitar Silva

    (Trauma and Urgency Surgeon; Gastrointestinal Endoscopist, Brazil)

  • Guilherme Augusto Salgado

    (Medical Consultant and Head of Business Development, Brazil)

Abstract

The whole healthcare system, from management to care providing, including scientific production, will be impacted by Artificial Intelligent. Nowadays, uniting data availability, powerful hardwares and new Deep Learning algorithms, there is a perfect environment to really develop a new way of solve problems in healthcare practice. Radiology has always been intrinsically connected to new scientifical advances and technologies, probably like no other area in medicine. It’s time to consider what the best place for the radiologist is, in this context. Also, it is imperative to know that there is no way to really ingress on this new era of technology based development in healthcare, if no effort is to be made on organizing, store, retrieve, distribute and secure the data we produce.

Suggested Citation

  • Augusto BF Antunes & Flávio Amaro Oliveira Bitar Silva & Guilherme Augusto Salgado, 2017. "Radiology in the Era of Big Data and Machine Learning," Current Trends in Clinical & Medical Imaging, Juniper Publishers Inc., vol. 1(5), pages 98-100, April.
  • Handle: RePEc:adp:jctcmi:v:1:y:2017:i:5:p:98-100
    DOI: 10.19080/CTCMI.2017.01.555575
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