UV-Vis and CIELAB Based Chemometric Characterization of Manihot esculenta Carotenoid Contents

J Integr Bioinform. 2017 Dec 13;14(4):20170056. doi: 10.1515/jib-2017-0056.

Abstract

Vitamin A deficiency is a prevalent health problem in many areas of the world, where cassava genotypes with high pro-vitamin A content have been identified as a strategy to address this issue. In this study, we found a positive correlation between the color of the root pulp and the total carotenoid contents and, importantly, showed how CIELAB color measurements can be used as a non-destructive and fast technique to quantify the amount of carotenoids in cassava root samples, as opposed to traditional methods. We trained several machine learning models using UV-visible spectrophotometry data, CIELAB data and a low-level data fusion of the two. Best performance models were obtained for the total carotenoids contents calculated using the UV-visible dataset as input, with R2 values above 90 %. Using CIELAB and fusion data, values around 60 % and above 90 % were found. Importantly, these results demonstrated how data fusion can lead to a better model performance for prediction when comparing to the use of a single data source. Considering all these findings, the use of colorimetric data associated with UV-visible and HPLC data through statistical and machine learning methods is a reliable way of predicting the content of total carotenoids in cassava root samples.

Keywords: CIELAB; Carotenoids; Cassava genotypes; Chemometrics; Machine learning.

MeSH terms

  • Carotenoids / analysis*
  • Carotenoids / chemistry
  • Color
  • Machine Learning
  • Manihot / chemistry*
  • Principal Component Analysis
  • Spectrophotometry, Ultraviolet

Substances

  • Carotenoids