One AI Model for Multiple Diagnoses
Researchers have developed BrainIAC (Brain Imaging Adaptive Core), a foundation model capable of extracting multiple diagnostic signals from routine brain MRI scans. Trained on 48,965 brain scans using self-supervised learning, the model can estimate brain age, predict dementia risk, detect tumor mutations, and predict brain cancer survival — all from a single MRI.

The concept is revolutionary: instead of training specific models for each diagnostic task, a single generalist model learns broad representations of brain data and adapts to various clinical applications. Most impressively, it outperforms specialized models on most tasks, especially when limited training data are available.
Performance and Clinical Applications
BrainIAC was compared with other neuroimaging-specific AI models for brain age prediction, IDH mutation detection in gliomas, and time-to-stroke prediction. Results published in Nature Neuroscience show the generalist model consistently outperformed broader biomedical models and specific segmentation models.
Additionally, a technology named Prima demonstrated stronger diagnostic performance across more than 50 radiologic diagnoses involving major neurological disorders.
What This Means for Radiologists
For professionals working with advanced MRI and brain diagnostics, these foundation models represent a paradigm shift. Integration with DICOM medical imaging systems will enable automated analysis within existing workflows.
Source: Diagnostic Imaging

