Lailo Jaca Maison, Shin Jiae, Menichetti Giulia, Lee Sang-Ah
Interdisciplinary Graduate Program in Medical Bigdata Convergence, College of Medicine, Kangwon National University, Chuncheon 24341, Republic of Korea.
Channing Division of Network Medicine, Department of Medicine, Brigham and Women's Hospital, Harvard Medical School, Boston, MA 02114, USA.
Nutrients. 2025 May 8;17(10):1605. doi: 10.3390/nu17101605.
Current research on the link between diet and stroke or myocardial infarction primarily focuses on individual food items. However, people's eating habits involve complex combinations of various foods. By employing an innovative approach known as the Gaussian graphical model to identify dietary patterns along with the Cox proportional model, the study aimed to identify dietary networks and explore their relationship with the incidence of stroke and/or myocardial infarction in the Korean population. The research utilized data from 84,729 participants in the Korean Genome and Epidemiological Study (KoGES), including the HEXA cohort (61,140 participants), CAVAS cohort (15,419 participants), and Ansan-Ansung cohort (8170 participants). The network identified five dietary patterns or communities consisting of different food groups, while nine food groups did not belong to any community. The High-Protein and Green Tea Community consistently reduced the risk of stroke and myocardial infarction (MI), particularly among females. In most communities, no significant associations with stroke risk were noted in males, and the Rice and High-Calorie Beverages Community was linked to an increased risk of MI in both the total population and females. Dietary patterns derived from network analysis revealed distinct dietary habits in the Korean population, offering new insights into the relationship between diet and the risk of stroke and MI.
目前关于饮食与中风或心肌梗死之间联系的研究主要集中在单一食物上。然而,人们的饮食习惯涉及各种食物的复杂组合。通过采用一种名为高斯图形模型的创新方法来识别饮食模式,并结合考克斯比例模型,该研究旨在识别饮食网络,并探讨其与韩国人群中风和/或心肌梗死发病率之间的关系。该研究利用了韩国基因组与流行病学研究(KoGES)中84729名参与者的数据,包括HEXA队列(61140名参与者)、CAVAS队列(15419名参与者)和安山-安城队列(8170名参与者)。该网络识别出了由不同食物组组成的五种饮食模式或群落,而九个食物组不属于任何群落。高蛋白和绿茶群落持续降低中风和心肌梗死(MI)的风险,尤其是在女性中。在大多数群落中,男性与中风风险无显著关联,而大米和高热量饮料群落在总体人群和女性中都与心肌梗死风险增加有关。从网络分析得出的饮食模式揭示了韩国人群独特的饮食习惯,为饮食与中风和心肌梗死风险之间的关系提供了新的见解。