Healthfulness Assessment of Recipes Shared on Pinterest: Natural Language Processing and Content Analysis (Preprint)

Author:

Cheng XiaoluORCID,Lin Shuo-YuORCID,Wang KevinORCID,Hong Y AliciaORCID,Zhao XiaoquanORCID,Gress DustinORCID,Wojtusiak JanuszORCID,Cheskin Lawrence JORCID,Xue HongORCID

Abstract

BACKGROUND

Although Pinterest has become a popular platform for distributing influential information that shapes users’ behaviors, the role of recipes pinned on Pinterest in these behaviors is not well understood.

OBJECTIVE

This study aims to explore the patterns of food ingredients and the nutritional content of recipes posted on Pinterest and to examine the factors associated with recipes that engage more users.

METHODS

Data were collected from Pinterest between June 28 and July 12, 2020 (207 recipes and 2818 comments). All samples were collected via 2 new user accounts with no search history. A codebook was developed with a raw agreement rate of 0.97 across all variables. Content analysis and natural language processing sentiment analysis techniques were employed.

RESULTS

Recipes using seafood or vegetables as the main ingredient had, on average, fewer calories and less sodium, sugar, and cholesterol than meat- or poultry-based recipes. For recipes using meat as the main ingredient, more than half of the energy was obtained from fat (277/490, 56.6%). Although the most followed pinners tended to post recipes containing more poultry or seafood and less meat, recipes with higher fat content or providing more calories per serving were more popular, having more shared photos or videos and comments. The natural language processing–based sentiment analysis suggested that Pinterest users weighted <i>taste</i> more heavily than <i>complexity</i> (225/2818, 8.0%) and <i>health</i> (84/2828, 2.9%).

CONCLUSIONS

Although popular pinners tended to post recipes with more seafood or poultry or vegetables and less meat, recipes with higher fat and sugar content were more user-engaging, with more photo or video shares and comments. Data on Pinterest behaviors can inform the development and implementation of nutrition health interventions to promote healthy recipe sharing on social media platforms.

Publisher

JMIR Publications Inc.

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