Recent progresses in data-driven analysis methods, including network-based
approaches, are revolutionizing many classical disciplines. These techniques
can also be applied to food and nutrition, which must be studied to design
healthy diets. Using nutritional information from over 1,000 raw foods, we
systematically evaluated the nutrient composition of each food in regards to
satisfying daily nutritional requirements. The nutrient balance of a food was
quantified herein as nutritional fitness, using the food's frequency of
occurrence in nutritionally adequate food combinations. Nutritional fitness
offers prioritization of recommendable foods within a global network of foods,
in which foods are connected based on the similarities of their nutrient
compositions. We identified a number of key nutrients, such as choline and
alpha-linolenic acid, whose levels in foods can critically affect the foods'
nutritional fitness. Analogously, pairs of nutrients can have the same effect.
In fact, two nutrients can impact the nutritional fitness synergistically,
although the individual nutrients alone may not. This result, involving the
tendency among nutrients to show correlations in their abundances across foods,
implies a hidden layer of complexity when exploring for foods whose balance of
nutrients within pairs holistically helps meet nutritional requirements.
Interestingly, foods with high nutritional fitness successfully maintain this
nutrient balance. This effect expands our scope to a diverse repertoire of
nutrient-nutrient correlations, integrated under a common network framework
that yields unexpected yet coherent associations between nutrients. Our
nutrient-profiling approach combined with a network-based analysis provides a
more unbiased, global view of the relationships between foods and nutrients,
and can be extended towards nutritional policies, food marketing, and
personalized nutrition.Comment: Supplementary material is available at the journal websit