Abstract

ObjectivesTraditional methods for creating food composition databases struggle to cope with the large number of products and the rapid pace of turnover in the food supply. The objective is to overview the updated Food Label Information Program (FLIP2020), a big data approach for the evaluation of the Canadian food supply and present the latest methods used in the development of this database.MethodsThe University of Toronto's Food Label Information Program (FLIP) is a database of Canadian prepackaged and chain restaurant foods and beverages collected since 2010. FLIP 2020 was developed using website “scraping” and machine learning (ML) coupled with artificial intelligence-enhanced optical character recognition (AI-OCR) to collect and manage food labelling information (e.g., nutritional composition, price, product images, ingredients, brand, etc.) on all foods and beverages available on seven major Canadian e-grocery retailer websites and 201 Canadian chain restaurants between May 2020 and February 2021.ResultsFLIP 2020 is comprised of 74,445 prepackaged food products and 21,225 menu items available on websites of seven retailers, 2 location-specific duplicate retailers and 141 chain restaurants. Food products were classified under multiple national and international categorization systems, in order to analyse similar foods under different systems. Of 57,006 food and beverage products available on seven retailers’ websites, nutritional composition data were available for about 60% of the products and ingredients were available for about 45%. Data for energy, protein, carbohydrate, fat, sugar, sodium and saturated fat were present for 54–65% of the products, while fibre information was available for 37%. Of the 201 eligible chain restaurants with ≥ 20 national outlets, 70% provided nutritional information. All provided energy, 84% provided saturated fat, total sugar and sodium, and 50% provided all 13 required nutrients listed on the Nutrition Facts table.ConclusionsFLIP, with its comprehensive sampling and granularity and use of ML/AI-OCR, is a powerful tool for evaluating and monitoring the Canadian food supply environment.Funding SourcesThis research was supported by funds from a Canadian Institutes of Health Research Project Grant.

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