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This paper proposes a probabilistic framework for Alzheimer's disease progression forecasting that combines ordinal diagnosis prediction, multi-horizon trajectory generation, and decomposed uncertainty estimation using a Temporal Fusion Transformer encoder and an autoregressive Mixture Density Network. The model outperforms baselines on ADNI data, achieving near-nominal 90% credible interval coverage with clinically meaningful uncertainty signals.