Abstract

Umami ingredients have been identified as important factors in food seasoning and production. Traditional experimental methods for characterizing peptides exhibiting umami sensory properties (umami peptides) are time-consuming, laborious, and costly. As a result, it is preferable to develop computational tools for the large-scale identification of available sequences in order to identify novel peptides with umami sensory properties. Although a computational tool has been developed for this purpose, its predictive performance is still insufficient. In this study, we use a feature representation learning approach to create a novel machine-learning meta-predictor called UMPred-FRL for improved umami peptide identification. We combined six well-known machine learning algorithms (extremely randomized trees, k-nearest neighbor, logistic regression, partial least squares, random forest, and support vector machine) with seven different feature encodings (amino acid composition, amphiphilic pseudo-amino acid composition, dipeptide composition, composition-transition-distribution, and pseudo-amino acid composition) to develop the final meta-predictor. Extensive experimental results demonstrated that UMPred-FRL was effective and achieved more accurate performance on the benchmark dataset compared to its baseline models, and consistently outperformed the existing method on the independent test dataset. Finally, to aid in the high-throughput identification of umami peptides, the UMPred-FRL web server was established and made freely available online. It is expected that UMPred-FRL will be a powerful tool for the cost-effective large-scale screening of candidate peptides with potential umami sensory properties.

Highlights

  • Addressing the aforementioned issues, we present UMPred-FRL, a novel machinelearning meta-predictor that uses a feature representation learning method to improve the predictive performance of umami peptides

  • The average performances obtained from the repeated stratified 10-fold cross-validation scheme were used to determine the best combination of encoding and machine learning (ML) algorithm that were beneficial to umami peptide identification

  • Conclusions this study,we wedeveloped developed UMPred-FRL, a novel machine-learning meta-predictor In In this study, UMPred-FRL, a novel machine-learning meta-predictor for the accurate identification of umami peptides based on sequence information and for the accurate identification of umami peptides based on sequence information and without knowledge of the protein’s 3D structure

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Summary

Introduction

Sensory flavor is closely connected with food selection, consumption, absorption, and digestion [1]. The umami taste has long been perceived in many traditional foods such as soy sauce, cheese, and fermented Asian foods, it was only recently that this taste quality was officially recognized [2]. In 2002, umami was identified as the fifth basic taste (after salty, sweet, sour, and bitter) to describe a pleasant savory or MSG-like flavor [3]. As a result, understanding the biophysical and biochemical properties of the umami taste is critical in both scientific research and the food industry. Because of the potential of umami peptides in the food industry, identifying and characterizing peptide umami intensity could be highly useful in both scientific and nonscientific research

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