Improving Interpretability in Alzheimer's Prediction via Joint Learning of ADAS-Cog Scores
- URL: http://arxiv.org/abs/2508.17619v1
- Date: Mon, 25 Aug 2025 02:56:11 GMT
- Title: Improving Interpretability in Alzheimer's Prediction via Joint Learning of ADAS-Cog Scores
- Authors: Nur Amirah Abd Hamid, Mohd Shahrizal Rusli, Muhammad Thaqif Iman Mohd Taufek, Mohd Ibrahim Shapiai, Daphne Teck Ching Lai,
- Abstract summary: We propose a multi task learning (MTL) framework that jointly predicts the global ADAS-Cog score and its sub-scores at Month 24.<n>The main goal is to examine how each sub scores particularly those associated with MRI features contribute to the prediction of the global score.<n>Subscore level analysis reveals that a small subset especially Q1 (Word Recall), Q4 (Delayed Recall), and Q8 (Word Recognition) consistently dominates the predicted global score.
- Score: 1.1689657956099038
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate prediction of clinical scores is critical for early detection and prognosis of Alzheimers disease (AD). While existing approaches primarily focus on forecasting the ADAS-Cog global score, they often overlook the predictive value of its sub-scores (13 items), which capture domain-specific cognitive decline. In this study, we propose a multi task learning (MTL) framework that jointly predicts the global ADAS-Cog score and its sub-scores (13 items) at Month 24 using baseline MRI and longitudinal clinical scores from baseline and Month 6. The main goal is to examine how each sub scores particularly those associated with MRI features contribute to the prediction of the global score, an aspect largely neglected in prior MTL studies. We employ Vision Transformer (ViT) and Swin Transformer architectures to extract imaging features, which are fused with longitudinal clinical inputs to model cognitive progression. Our results show that incorporating sub-score learning improves global score prediction. Subscore level analysis reveals that a small subset especially Q1 (Word Recall), Q4 (Delayed Recall), and Q8 (Word Recognition) consistently dominates the predicted global score. However, some of these influential sub-scores exhibit high prediction errors, pointing to model instability. Further analysis suggests that this is caused by clinical feature dominance, where the model prioritizes easily predictable clinical scores over more complex MRI derived features. These findings emphasize the need for improved multimodal fusion and adaptive loss weighting to achieve more balanced learning. Our study demonstrates the value of sub score informed modeling and provides insights into building more interpretable and clinically robust AD prediction frameworks. (Github repo provided)
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