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孕妇的饮食模式与血清25(OH)维生素D及血清贫血相关生物标志物的关联:基于机器学习的方法

Associations of dietary patterns with serum 25(OH) vitamin D and serum anemia related biomarkers among expectant mothers: A machine learning based approach.

作者信息

Das Arpita, Bai Chyi-Huey, Chang Jung-Su, Huang Ya-Li, Wang Fan-Fen, Hsu Chien-Yeh, Chen Yi-Chun, Chao Jane C-J

机构信息

School of Nutrition and Health Sciences, Taipei Medical University, Taipei, Taiwan.

Department of Public Health, School of Medicine, Taipei Medical University, Taipei, Taiwan; School of Public Health, Taipei Medical University, Taipei, Taiwan; Nutrition Research Center, Taipei Medical University Hospital, Taipei, Taiwan.

出版信息

Int J Med Inform. 2025 Jul;199:105890. doi: 10.1016/j.ijmedinf.2025.105890. Epub 2025 Mar 24.

Abstract

BACKGROUND

Machine learning algorithms (MLA) gained prominence in nutritional epidemiology for analyzing dietary associations and uncovering intricate patterns within data. We explored dietary patterns associated with serum iron biomarkers and vitamin D among pregnant women, utilizing MLA to perform predictive analyses.

METHODS

The cross-sectional study utilized a secondary dataset from the Nationwide Nutrition and Health Survey in Taiwan, and 1,423 expectant mothers were recruited. Dietary patterns were predicted using K-means cluster analysis on semiquantitative food frequency data. Associations between serum biomarkers and dietary patterns were analyzed using binomial logistic regression, adjusting for sociodemographic and dietary variables. MLA including support vector machine, K-nearest neighbor, naive Bayes, random forest, and decision tree were applied to predict the accuracy of the dietary patterns in improving anemia-related biomarkers.

RESULTS

The K-means clustering identified two dietary patterns: LP + LA (low plant, low animal) and MP + LA (moderate plant, low animal). Logistic regression revealed that expectant mothers following the MP + LA pattern had a lower likelihood of low serum iron (OR = 0.45, 95 % CI 0.34-0.60) and ferritin (OR = 0.27, 95 % CI 0.21-0.36), but a higher likelihood of low 25(OH) vitamin D. MLA models demonstrated 70 %-76 % accuracy in identifying dietary pattern associated with improvement in serum iron and ferritin levels.

CONCLUSIONS

The MP + LA dietary pattern exhibits a positive association with serum iron biomarkers and a negative association with 25(OH) vitamin D. Machine learning models demonstrate comparable predictive accuracy, highlighting their utility in nutritional epidemiology for identifying dietary patterns and their relationships with biochemical markers.

摘要

背景

机器学习算法(MLA)在营养流行病学中崭露头角,用于分析饮食关联并揭示数据中的复杂模式。我们利用MLA进行预测分析,探索孕妇血清铁生物标志物和维生素D相关的饮食模式。

方法

这项横断面研究使用了台湾全国营养与健康调查的二级数据集,招募了1423名准妈妈。对半定量食物频率数据使用K均值聚类分析来预测饮食模式。使用二项逻辑回归分析血清生物标志物与饮食模式之间的关联,并对社会人口统计学和饮食变量进行调整。应用包括支持向量机、K近邻、朴素贝叶斯、随机森林和决策树在内的MLA来预测饮食模式改善贫血相关生物标志物的准确性。

结果

K均值聚类确定了两种饮食模式:LP + LA(低植物性、低动物性)和MP + LA(中等植物性、低动物性)。逻辑回归显示,遵循MP + LA模式的准妈妈血清铁水平低(OR = 0.45,95% CI 0.34 - 0.60)和铁蛋白水平低(OR = 0.27,95% CI 0.21 - 0.36)的可能性较低,但25(OH)维生素D水平低的可能性较高。MLA模型在识别与血清铁和铁蛋白水平改善相关的饮食模式方面表现出70% - 76%的准确率。

结论

MP + LA饮食模式与血清铁生物标志物呈正相关,与25(OH)维生素D呈负相关。机器学习模型显示出相当的预测准确性,突出了它们在营养流行病学中识别饮食模式及其与生化标志物关系的实用性。

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