Harnessing Metabolic Insights: A Framework for Dietary Patterns in Chronic Disease Prevention and Management

利用代谢信息:慢性病预防和管理中的膳食模式框架

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Abstract

Metabolic dysfunction is a major driver of global chronic disease, yet current dietary guidance remains only loosely connected to the biological pathways that underlie these conditions. Historically, nutrition research emphasized individual nutrients or caloric content, overlooking the integrated metabolic effects of whole dietary patterns. Extensive research has linked dietary factors with chronic inflammation, insulin hypersecretion, and insulin resistance, with more recent studies synthesizing these associations into metabolically grounded dietary pattern indices, compared with the conventional nutrient- or calorie-focused approaches. Metabolic dietary patterns, empirically derived food-based indices that predict long-term metabolic biomarkers such as C-peptide and inflammatory cytokines, introduce mechanistic specificity into dietary assessment. This perspective reviews the development and evidence base of these patterns, compares them with conventional dietary pattern approaches, and synthesizes their nutritional characteristics and disease predictive capacity. Although many healthy dietary patterns are associated with improved chronic disease outcomes, metabolic dietary patterns show more consistent and robust associations, suggesting that targeting insulin resistance, a central hub connecting hyperinsulinemia, inflammation, and chronic disease, may better capture metabolically meaningful dietary variation. Because existing evidence is largely observational, we propose a structured translational framework for evaluating metabolic dietary patterns in clinical and community settings. Key tenets include preserving metabolic integrity; clarifying food and beverage intake targets; addressing items with uncertain or counterintuitive metabolic properties; accounting for food combinations and preparation methods; integrating food processing level; and ensuring cultural adaptability. This framework supports the translation of metabolic insights into actionable dietary guidance for precision prevention, clinical care, and public health.

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