Ziming Liu , Longjian Liu , Robert E. Heidel , Xiaopeng Zhao
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引用次数: 0
摘要
这项开创性的研究介绍了使用基于变压器的机器学习模型和可解释人工智能方法来探索营养对阿尔茨海默病(AD)死亡率的影响。利用第三次全国健康与营养调查(Nhanes iii,1988-1994 年)和 NHANES III Mortality-Linked File(2019 年)数据库中的数据,我们研究了各种营养因素与阿兹海默症死亡率之间错综复杂的关系。我们的方法采用了新颖的变压器模型,然后将其与随机森林和支持向量机等成熟方法进行比较。这种比较不仅强调了变压器模型在处理复杂医学数据集方面的优势,还突出了它们在深入洞察疾病进展方面的潜力。通过使用可解释人工智能(XAI),特别是夏普利加法解释(SHAP)和集成梯度方法,一些重要发现,如转化器中血小板分布宽度在 AD 死亡率中的重要作用和随机森林中血清维生素 B12 的重要作用得到了加强。这项研究在将先进的人工智能技术应用于医学研究方面迈出了重要一步,为理解和防治阿尔茨海默病提供了新的视角。
Explainable AI and transformer models: Unraveling the nutritional influences on Alzheimer's disease mortality
This pioneering study introduces the use of transformer-based machine learning models and explainable AI approaches to explore the impact of nutrition on Alzheimer's disease (AD) mortality. Using data from the Third National Health and Nutrition Examination Survey (Nhanes iii 1988 to 1994) and the NHANES III Mortality-Linked File (2019) databases, we investigate the intricate relationship between various nutritional factors and AD mortality. Our approach features a novel application of transformer models, which are then benchmarked against established methods like random forests and support vector machines. This comparison not only underscores the strengths of transformer models in handling complex medical datasets but also highlights their potential for providing deeper insights into disease progression. Key findings, such as the significant roles of Platelet distribution width in AD mortality in transformer and Serum Vitamin B12 in random forest, are enhanced by the use of Explainable Artificial Intelligence (XAI), particularly the Shapley Additive Explanations (SHAP) and the integrated gradient methods. This study serves as a vital step forward in applying advanced AI techniques to medical research, offering new perspectives in understanding and combating Alzheimer's Disease.