figshare
Browse
scapin-innovativemachinelearning-2021.pdf (1.65 MB)

An innovative machine learning approach to predict the dietary fiber content of packaged foods

Download (1.65 MB)
Version 3 2024-06-19, 10:52
Version 2 2024-06-05, 11:09
Version 1 2022-04-06, 08:33
journal contribution
posted on 2024-06-19, 10:52 authored by T Davies, JCY Louie, Tailane ScapinTailane Scapin, S Pettigrew, JHY Wu, M Marklund, DH Coyle
Underconsumption of dietary fiber is prevalent worldwide and is associated with multiple adverse health conditions. Despite the importance of fiber, the labeling of fiber content on packaged foods and beverages is voluntary in most countries, making it challenging for consumers and policy makers to monitor fiber consumption. Here, we developed a machine learning approach for automated and systematic prediction of fiber content using nutrient information commonly available on packaged products. An Australian packaged food dataset with known fiber content information was divided into training (n = 8986) and test datasets (n = 2455). Utilization of a k-nearest neighbors machine learning algorithm explained a greater proportion of variance in fiber content than an existing manual fiber prediction approach (R2 = 0.84 vs. R2 = 0.68). Our findings highlight the opportunity to use machine learning to efficiently predict the fiber content of packaged products on a large scale.

History

Journal

Nutrients

Volume

13

Article number

ARTN 3195

Pagination

1 - 12

Location

Switzerland

Open access

  • Yes

ISSN

2072-6643

eISSN

2072-6643

Language

English

Publication classification

C1 Refereed article in a scholarly journal

Issue

9

Publisher

MDPI