Leveraging LLMs for Early Alzheimer's Prediction
By: Tananun Songdechakraiwut
Potential Business Impact:
Finds Alzheimer's early using brain scans.
We present a connectome-informed LLM framework that encodes dynamic fMRI connectivity as temporal sequences, applies robust normalization, and maps these data into a representation suitable for a frozen pre-trained LLM for clinical prediction. Applied to early Alzheimer's detection, our method achieves sensitive prediction with error rates well below clinically recognized margins, with implications for timely Alzheimer's intervention.
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