Introducing the Facility List Coder: A New Dataset/Method to Evaluate Community Food Environments

Community food environments have been shown to be important determinants to explain dietary patterns. This data descriptor describes a typical dataset obtained after applying the Facility List Coder (FLC), a new tool to asses community food environments that was validated and presented. The FLC was...

Full description

Bibliographic Details
Main Authors: Ana María Arcila-Agudelo, Juan Carlos Muñoz-Mora, Andreu Farran-Codina
Format: Article
Language:English
Published: MDPI AG 2020-03-01
Series:Data
Subjects:
Online Access:https://www.mdpi.com/2306-5729/5/1/23
id doaj-fdf763c6466d48039ba9083f2ebb7e5c
record_format Article
spelling doaj-fdf763c6466d48039ba9083f2ebb7e5c2020-11-25T02:57:38ZengMDPI AGData2306-57292020-03-01512310.3390/data5010023data5010023Introducing the Facility List Coder: A New Dataset/Method to Evaluate Community Food EnvironmentsAna María Arcila-Agudelo0Juan Carlos Muñoz-Mora1Andreu Farran-Codina2Department of Nutrition, Food Science, and Gastronomy, XaRTA–INSA, Faculty of Pharmacy, University of Barcelona, Av. Prat de la Riba, Campus de l’Alimentació de Torribera, 171, Santa Coloma de Gramenet, E-08921 Barcelona, SpainDepartment of Economics, Universidad EAFIT, Medellín 050022, ColombiaDepartment of Nutrition, Food Science, and Gastronomy, XaRTA–INSA, Faculty of Pharmacy, University of Barcelona, Av. Prat de la Riba, Campus de l’Alimentació de Torribera, 171, Santa Coloma de Gramenet, E-08921 Barcelona, SpainCommunity food environments have been shown to be important determinants to explain dietary patterns. This data descriptor describes a typical dataset obtained after applying the Facility List Coder (FLC), a new tool to asses community food environments that was validated and presented. The FLC was developed in Python 3.7 combining GIS analysis with standard data techniques. It offers a low-cost, scalable, efficient, and user-friendly way to indirectly identify community nutritional environments in any context. The FLC uses the most open access information to identify the facilities (e.g., convenience food store, bar, bakery, etc.) present around a location of interest (e.g., school, hospital, or university). As a result, researchers will have a comprehensive list of facilities around any location of interest allowing the assessment of key research questions on the influence of the community food environment on different health outcomes (e.g., obesity, physical inactivity, or diet quality). The FLC can be used either as a main source of information or to complement traditional methods such as store census and official commercial lists, among others.https://www.mdpi.com/2306-5729/5/1/23community food environmentsnutrition environmentgeographical information technologies (gis)facility list coderpython
collection DOAJ
language English
format Article
sources DOAJ
author Ana María Arcila-Agudelo
Juan Carlos Muñoz-Mora
Andreu Farran-Codina
spellingShingle Ana María Arcila-Agudelo
Juan Carlos Muñoz-Mora
Andreu Farran-Codina
Introducing the Facility List Coder: A New Dataset/Method to Evaluate Community Food Environments
Data
community food environments
nutrition environment
geographical information technologies (gis)
facility list coder
python
author_facet Ana María Arcila-Agudelo
Juan Carlos Muñoz-Mora
Andreu Farran-Codina
author_sort Ana María Arcila-Agudelo
title Introducing the Facility List Coder: A New Dataset/Method to Evaluate Community Food Environments
title_short Introducing the Facility List Coder: A New Dataset/Method to Evaluate Community Food Environments
title_full Introducing the Facility List Coder: A New Dataset/Method to Evaluate Community Food Environments
title_fullStr Introducing the Facility List Coder: A New Dataset/Method to Evaluate Community Food Environments
title_full_unstemmed Introducing the Facility List Coder: A New Dataset/Method to Evaluate Community Food Environments
title_sort introducing the facility list coder: a new dataset/method to evaluate community food environments
publisher MDPI AG
series Data
issn 2306-5729
publishDate 2020-03-01
description Community food environments have been shown to be important determinants to explain dietary patterns. This data descriptor describes a typical dataset obtained after applying the Facility List Coder (FLC), a new tool to asses community food environments that was validated and presented. The FLC was developed in Python 3.7 combining GIS analysis with standard data techniques. It offers a low-cost, scalable, efficient, and user-friendly way to indirectly identify community nutritional environments in any context. The FLC uses the most open access information to identify the facilities (e.g., convenience food store, bar, bakery, etc.) present around a location of interest (e.g., school, hospital, or university). As a result, researchers will have a comprehensive list of facilities around any location of interest allowing the assessment of key research questions on the influence of the community food environment on different health outcomes (e.g., obesity, physical inactivity, or diet quality). The FLC can be used either as a main source of information or to complement traditional methods such as store census and official commercial lists, among others.
topic community food environments
nutrition environment
geographical information technologies (gis)
facility list coder
python
url https://www.mdpi.com/2306-5729/5/1/23
work_keys_str_mv AT anamariaarcilaagudelo introducingthefacilitylistcoderanewdatasetmethodtoevaluatecommunityfoodenvironments
AT juancarlosmunozmora introducingthefacilitylistcoderanewdatasetmethodtoevaluatecommunityfoodenvironments
AT andreufarrancodina introducingthefacilitylistcoderanewdatasetmethodtoevaluatecommunityfoodenvironments
_version_ 1724710098301878272