Lee Hyo-Bin, Kwon So-Yeon, Park Ji-Hae, Kim Bori, Kim Geon-Ha, Choi Jang-Hwan, Park Young Mi
Department of Computational Medicine, Graduate Program in System Health Science and Engineering, Ewha Womans University, Seoul, 07804, Korea.
Department of Molecular Medicine, Ewha Womans University, Seoul, 07804, Korea.
Sci Rep. 2025 May 28;15(1):18735. doi: 10.1038/s41598-025-01477-2.
As populations age, understanding cognitive decline and age-related diseases like dementia has become increasingly important. "SuperAgers," individuals over 65 with cognitive abilities similar to those in their 40s, provide a unique perspective on cognitive reserve. This study analyzed 55 blood biomarkers, including cellular components and metabolism/inflammation-related factors, in 39 SuperAgers and 42 typical agers. While conventional statistical analyses identified significant differences in only four biomarkers, advanced feature selection and machine learning techniques revealed a broader set of 15 key biomarkers associated with SuperAger status. A predictive model built using these biomarkers achieved an accuracy of 76% in cognitive domain prediction. To address the limitation of small sample sizes, data augmentation leveraging large language models improved the model's robustness. Shapley Additive exPlanations (SHAP) provided interpretability, revealing the impact of specific blood factors on cognitive function. These findings suggest that certain blood biomarkers are not only associated with cognitive performance but may also serve as indicators of cognitive reserve. By utilizing simple blood tests, this research presents a clinically significant method for predicting cognitive function and identifying SuperAger status in healthy elderly individuals, offering a foundation for future studies on the biological mechanisms underpinning cognitive resilience.
随着人口老龄化,了解认知能力下降以及痴呆症等与年龄相关的疾病变得越来越重要。“超级老人”是指65岁以上但认知能力与40多岁的人相似的个体,他们为认知储备提供了独特的视角。本研究分析了39名“超级老人”和42名典型老年人的55种血液生物标志物,包括细胞成分以及代谢/炎症相关因子。虽然传统统计分析仅发现四种生物标志物存在显著差异,但先进的特征选择和机器学习技术揭示了与“超级老人”状态相关的更广泛的15种关键生物标志物。使用这些生物标志物构建的预测模型在认知领域预测中的准确率达到了76%。为了解决样本量小的局限性,利用大语言模型进行数据增强提高了模型的稳健性。Shapley值相加解释法(SHAP)提供了可解释性,揭示了特定血液因子对认知功能的影响。这些发现表明,某些血液生物标志物不仅与认知表现相关,还可能作为认知储备的指标。通过简单的血液检测,本研究提出了一种具有临床意义的方法,用于预测认知功能并识别健康老年人中的“超级老人”状态,为未来关于认知恢复力生物学机制的研究奠定了基础。