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arXiv 提交日期: 2026-06-08
📄 Abstract - Transition-Based Digital Twin Modelling for Alzheimer's Disease under Sparse Longitudinal Data

Alzheimer's disease (AD) progression is highly heterogeneous and is typically observed through sparse and irregular longitudinal data, posing challenges for prediction and personalised monitoring. Existing machine learning approaches have improved AD prediction using multimodal data, yet often focus on static classification or cohort-level risk estimation, providing limited support for subject-specific modelling and uncertainty-aware reasoning. To address these limitations, we present a personalised digital twin framework for AD prediction and scenario-based analysis using multimodal longitudinal data. The proposed approach integrates complementary modelling strategies to capture clinical transitions and temporal dependencies across visits. Using data from the Alzheimer's Disease Neuroimaging Initiative (ADNI), including cognitive assessments, clinical variables, and MRI-derived phenotypes, the framework predicts cognitive status and diagnostic categories while quantifying predictive uncertainty and enabling patient-specific what-if trajectory analysis. Evaluation on leak-free subject-level splits demonstrates strong performance in score forecasting and diagnosis classification. In this sparse and irregular ADNI setting, transition-based modelling of adjacent visits achieved higher predictive accuracy than the sequence-based branch, suggesting that local transition modelling may be more data-efficient. While sequence models remain valuable for uncertainty-aware trajectory forecasting, local transition modelling offers a more data-efficient and robust predictive strategy. These findings highlight the importance of aligning temporal modelling strategies with clinical data structure and suggest that transition-based digital twin formulations may provide a practical and interpretable approach for personalised disease forecasting in neurodegenerative disorders.

顶级标签: medical machine learning
详细标签: alzheimer's disease digital twin longitudinal data uncertainty quantification transition modeling 或 搜索:

基于转换的数字孪生模型:在稀疏纵向数据下应用于阿尔茨海默病 / Transition-Based Digital Twin Modelling for Alzheimer's Disease under Sparse Longitudinal Data


1️⃣ 一句话总结

针对阿尔茨海默病稀疏且不规则的临床数据,本文提出了一种个性化的数字孪生框架,通过模拟相邻就诊间的病情转换来预测疾病进程,相较于传统序列模型,该方法在数据有限的情况下更准确、高效,并能对每个患者的未来情况进行具体分析和不确定性评估。

源自 arXiv: 2606.09671