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Poster
in
Workshop: Medical Imaging meets NeurIPS

Semi-Supervised Diffusion Model for Brain Age Prediction

Ayodeji Ijishakin · Sophie Martin · Florence Townend · Federica Agosta · James Cole · Andrea Malaspina


Abstract:

Brain age prediction models have succeeded in predicting clinical outcomes in neurodegenerative diseases, but can struggle with tasks involving faster progressing diseases and low quality data. To enhance their performance, we employ a semi-supervised diffusion model, obtaining a 0.83(p<0.01) correlation between chronological and predicted age on low quality T1w MR images. This was competitive with state-of-the-art non-generative methods. Furthermore, the predictions produced by our model were significantly associated with survival length in Amyotrophic Lateral Sclerosis. Thus, our approach demonstrates the value of diffusion-based architectures for the task of brain age prediction.

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