AI Mammogram Risk Scores Help Predict Future Breast Cancer
Longitudinal changes in image-based risk scores can identify patients predisposed to the disease years before diagnosis, new research shows.
Longitudinal changes in image-based risk scores can identify patients predisposed to the disease years before diagnosis, new research shows.
In a multinational study, AI-guided novices achieved 100% diagnostic accuracy on key cardiac imaging endpoints.
AI shows promise in medical imaging, but a study reveals its tendency to produce highly accurate yet misleading results by exploiting unintended data patterns, emphasizing the need for rigorous evaluation to ensure reliability and scientific integrity.
The American College of Radiology (ACR) has launched Assess-AI, the first AI quality registry to monitor and analyze the real-world performance of imaging AI algorithms, providing radiology facilities with performance insights, national benchmarks, and tools to ensure safe, effective, and transparent AI integration in clinical practice.
Read MoreIn this exclusive interview, Avez Rizvi, MD, CEO of RADPAIR, shares insights into the future of AI in radiology and the role RADPAIR aims to play in creating an AI-driven, patient-focused healthcare environment.
Read MoreGoogle Cloud’s new report highlights how generative AI can reduce administrative burdens for radiologists by automating documentation and image analysis, improving efficiency, diagnostic accuracy, and patient care quality.
Read MoreUniversity of California, San Francisco researchers developed a machine learning algorithm that enhances 3T MRI images to simulate 7T resolution, improving the detection of brain abnormalities like those in traumatic brain injury and multiple sclerosis.
Read MoreAI is rapidly transforming healthcare, particularly in medical imaging, but concerns over transparency, fairness, and demographic biases remain, as highlighted by a recent study showing that improved model performance does not automatically ensure equitable outcomes.
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