Intelligent medical systems adept at acquiring and analyzing sensor data to offer context-sensitive support are at the forefront of modern healthcare. However, various factors, often not immediately apparent, significantly hinder the effective integration of contemporary machine learning research into clinical practice. Using insights from my own research team and extensive international collaborations, I will delve into prevalent issues in current medical imaging practices and offer potential remedies. My talk will highlight the vital importance of challenging every aspect of the medical imaging pipeline from the image modalities applied to the validation methodology, ensuring that intelligent imaging systems are primed for genuine clinical implementation.
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