Literature DB >> 31310847

Allergenicity prediction of novel and modified proteins: Not a mission impossible! Development of a Random Forest allergenicity prediction model.

Joost Westerhout1, Tanja Krone2, Almar Snippe3, Lilia Babé4, Scott McClain5, Gregory S Ladics6, Geert F Houben7, Kitty Cm Verhoeckx8.   

Abstract

Alternative and sustainable protein sources (e.g., algae, duckweed, insects) are required to produce (future) foods. However, introduction of new food sources to the market requires a thorough risk assessment of nutritional, microbial and toxicological risks and potential allergic responses. Yet, the risk assessment of allergenic potential of novel proteins is challenging. Currently, guidance for genetically modified proteins relies on a weight-of-evidence approach. Current Codex (2009) and EFSA (2010; 2017) guidance indicates that sequence identity to known allergens is acceptable for predicting the cross-reactive potential of novel proteins and resistance to pepsin digestion and glycosylation status is used for evaluating de novo allergenicity potential. Other physicochemical and biochemical protein properties, however, are not used in the current weight-of-evidence approach. In this study, we have used the Random Forest algorithm for developing an in silico model that yields a prediction of the allergenic potential of a protein based on its physicochemical and biochemical properties. The final model contains twenty-nine variables, which were all calculated using the protein sequence by means of the ProtParam software and the PSIPred Protein Sequence Analysis program. Proteins were assigned as allergenic when present in the COMPARE database. Results show a robust model performance with a sensitivity, specificity and accuracy each greater than ≥85%. As the model only requires the protein sequence for calculations, it can be easily incorporated into the existing risk assessment approach. In conclusion, the model developed in this study improves the predictability of the allergenicity of new or modified food proteins, as demonstrated for insect proteins.
Copyright © 2019 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Allergenicity assessment; Allergenicity prediction; Food allergy; Novel and modified proteins; Random forest

Mesh:

Substances:

Year:  2019        PMID: 31310847     DOI: 10.1016/j.yrtph.2019.104422

Source DB:  PubMed          Journal:  Regul Toxicol Pharmacol        ISSN: 0273-2300            Impact factor:   3.271


  6 in total

1.  A Comparative Analysis of Novel Deep Learning and Ensemble Learning Models to Predict the Allergenicity of Food Proteins.

Authors:  Liyang Wang; Dantong Niu; Xinjie Zhao; Xiaoya Wang; Mengzhen Hao; Huilian Che
Journal:  Foods       Date:  2021-04-09

2.  Immunoinformatics design of a novel epitope-based vaccine candidate against dengue virus.

Authors:  Adewale Oluwaseun Fadaka; Nicole Remaliah Samantha Sibuyi; Darius Riziki Martin; Mediline Goboza; Ashwil Klein; Abram Madimabe Madiehe; Mervin Meyer
Journal:  Sci Rep       Date:  2021-10-05       Impact factor: 4.379

3.  The COMPARE Database: A Public Resource for Allergen Identification, Adapted for Continuous Improvement.

Authors:  Ronald van Ree; Dexter Sapiter Ballerda; M Cecilia Berin; Laurent Beuf; Alexander Chang; Gabriele Gadermaier; Paul A Guevera; Karin Hoffmann-Sommergruber; Emir Islamovic; Liisa Koski; John Kough; Gregory S Ladics; Scott McClain; Kyle A McKillop; Shermaine Mitchell-Ryan; Clare A Narrod; Lucilia Pereira Mouriès; Syril Pettit; Lars K Poulsen; Andre Silvanovich; Ping Song; Suzanne S Teuber; Christal Bowman
Journal:  Front Allergy       Date:  2021-08-06

4.  Exploring whole proteome to contrive multi-epitope-based vaccine for NeoCoV: An immunoinformtics and in-silico approach.

Authors:  Shahkaar Aziz; Muhammad Waqas; Sobia Ahsan Halim; Amjad Ali; Aqib Iqbal; Maaz Iqbal; Ajmal Khan; Ahmed Al-Harrasi
Journal:  Front Immunol       Date:  2022-08-03       Impact factor: 8.786

5.  Evidence runs contrary to digestive stability predicting protein allergenicity.

Authors:  Rod A Herman; Jason M Roper; John X Q Zhang
Journal:  Transgenic Res       Date:  2019-11-18       Impact factor: 2.788

6.  Scientific Opinion on development needs for the allergenicity and protein safety assessment of food and feed products derived from biotechnology.

Authors:  Ewen Mullins; Jean-Louis Bresson; Tamas Dalmay; Ian Crawford Dewhurst; Michelle M Epstein; Leslie George Firbank; Philippe Guerche; Jan Hejatko; Hanspeter Naegeli; Fabien Nogué; Nils Rostoks; Jose Juan Sánchez Serrano; Giovanni Savoini; Eve Veromann; Fabio Veronesi; Antonio Fernandez Dumont; Francisco Javier Moreno
Journal:  EFSA J       Date:  2022-01-25
  6 in total

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