Investigating causal networks of dementia using causal discovery and natural language processing models.

NPJ dementia Pub Date : 2025-01-01 Epub Date: 2025-05-09 DOI:10.1038/s44400-025-00006-2
Xinzhu Yu, Artitaya Lophatananon, Vivien Holmes, Kenneth R Muir, Hui Guo
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Abstract

Comprehensively studying modifiable risk factors to understand their contributions to dementia mechanisms is imperative. This study used natural language processing (NLP) models to pre-select candidate risk factors for dementia from 5505 baseline variables in the UK Biobank. We then applied causal discovery approaches to examine the relationships among the selected variables and their links to dementia in later life, presenting these connections in a causal network. We identified eight risk factors that directly or indirectly influence dementia, with mental disorders due to brain dysfunction (ICD-10 F06) acting as direct causes and mediators in pathways from other neurological disorders to dementia. Although evidence for the direct link between biological age and dementia was less pronounced, its potential value in dementia management remains non-negligible. This study advances our understanding of dementia mechanisms and highlights the potential of NLP and machine learning for the causal discovery of complex diseases from high-dimensional data.

使用因果发现和自然语言处理模型调查痴呆的因果网络。
全面研究可改变的危险因素以了解其对痴呆机制的贡献是必要的。本研究使用自然语言处理(NLP)模型从英国生物银行(UK Biobank)的5505个基线变量中预先选择痴呆的候选风险因素。然后,我们应用因果发现方法来检查所选变量之间的关系及其与晚年痴呆症的联系,将这些联系呈现在因果网络中。我们确定了8个直接或间接影响痴呆的风险因素,其中脑功能障碍引起的精神障碍(icd - 10f06)是其他神经系统疾病到痴呆的直接原因和中介。尽管生物学年龄与痴呆症之间的直接联系的证据不太明显,但其在痴呆症管理中的潜在价值仍然不可忽视。这项研究促进了我们对痴呆症机制的理解,并强调了NLP和机器学习在从高维数据中发现复杂疾病的因果关系方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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