Cargando…

Machine Learning-Assisted Screening of Herbal Medicine Extracts as Vaccine Adjuvants

Adjuvants are important vaccine components, composed of a variety of chemical and biological materials that enhance the vaccine antigen-specific immune responses by stimulating the innate immune cells in both direct and indirect manners to produce a variety cytokines, chemokines, and growth factors....

Descripción completa

Detalles Bibliográficos
Autores principales: Hioki, Kou, Hayashi, Tomoya, Natsume-Kitatani, Yayoi, Kobiyama, Kouji, Temizoz, Burcu, Negishi, Hideo, Kawakami, Hitomi, Fuchino, Hiroyuki, Kuroda, Etsushi, Coban, Cevayir, Kawahara, Nobuo, Ishii, Ken J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9160479/
https://www.ncbi.nlm.nih.gov/pubmed/35663999
http://dx.doi.org/10.3389/fimmu.2022.847616
_version_ 1784719278091534336
author Hioki, Kou
Hayashi, Tomoya
Natsume-Kitatani, Yayoi
Kobiyama, Kouji
Temizoz, Burcu
Negishi, Hideo
Kawakami, Hitomi
Fuchino, Hiroyuki
Kuroda, Etsushi
Coban, Cevayir
Kawahara, Nobuo
Ishii, Ken J.
author_facet Hioki, Kou
Hayashi, Tomoya
Natsume-Kitatani, Yayoi
Kobiyama, Kouji
Temizoz, Burcu
Negishi, Hideo
Kawakami, Hitomi
Fuchino, Hiroyuki
Kuroda, Etsushi
Coban, Cevayir
Kawahara, Nobuo
Ishii, Ken J.
author_sort Hioki, Kou
collection PubMed
description Adjuvants are important vaccine components, composed of a variety of chemical and biological materials that enhance the vaccine antigen-specific immune responses by stimulating the innate immune cells in both direct and indirect manners to produce a variety cytokines, chemokines, and growth factors. It has been developed by empirical methods for decades and considered difficult to choose a single screening method for an ideal vaccine adjuvant, due to their diverse biochemical characteristics, complex mechanisms of, and species specificity for their adjuvanticity. We therefore established a robust adjuvant screening strategy by combining multiparametric analysis of adjuvanticity in vivo and immunological profiles in vitro (such as cytokines, chemokines, and growth factor secretion) of various library compounds derived from hot-water extracts of herbal medicines, together with their diverse distribution of nano-sized physical particle properties with a machine learning algorithm. By combining multiparametric analysis with a machine learning algorithm such as rCCA, sparse-PLS, and DIABLO, we identified that human G-CSF and mouse RANTES, produced upon adjuvant stimulation in vitro, are the most robust biological parameters that can predict the adjuvanticity of various library compounds. Notably, we revealed a certain nano-sized particle population that functioned as an independent negative parameter to adjuvanticity. Finally, we proved that the two-step strategy pairing the negative and positive parameters significantly improved the efficacy of screening and a screening strategy applying principal component analysis using the identified parameters. These novel parameters we identified for adjuvant screening by machine learning with multiple biological and physical parameters may provide new insights into the future development of effective and safe adjuvants for human use.
format Online
Article
Text
id pubmed-9160479
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-91604792022-06-03 Machine Learning-Assisted Screening of Herbal Medicine Extracts as Vaccine Adjuvants Hioki, Kou Hayashi, Tomoya Natsume-Kitatani, Yayoi Kobiyama, Kouji Temizoz, Burcu Negishi, Hideo Kawakami, Hitomi Fuchino, Hiroyuki Kuroda, Etsushi Coban, Cevayir Kawahara, Nobuo Ishii, Ken J. Front Immunol Immunology Adjuvants are important vaccine components, composed of a variety of chemical and biological materials that enhance the vaccine antigen-specific immune responses by stimulating the innate immune cells in both direct and indirect manners to produce a variety cytokines, chemokines, and growth factors. It has been developed by empirical methods for decades and considered difficult to choose a single screening method for an ideal vaccine adjuvant, due to their diverse biochemical characteristics, complex mechanisms of, and species specificity for their adjuvanticity. We therefore established a robust adjuvant screening strategy by combining multiparametric analysis of adjuvanticity in vivo and immunological profiles in vitro (such as cytokines, chemokines, and growth factor secretion) of various library compounds derived from hot-water extracts of herbal medicines, together with their diverse distribution of nano-sized physical particle properties with a machine learning algorithm. By combining multiparametric analysis with a machine learning algorithm such as rCCA, sparse-PLS, and DIABLO, we identified that human G-CSF and mouse RANTES, produced upon adjuvant stimulation in vitro, are the most robust biological parameters that can predict the adjuvanticity of various library compounds. Notably, we revealed a certain nano-sized particle population that functioned as an independent negative parameter to adjuvanticity. Finally, we proved that the two-step strategy pairing the negative and positive parameters significantly improved the efficacy of screening and a screening strategy applying principal component analysis using the identified parameters. These novel parameters we identified for adjuvant screening by machine learning with multiple biological and physical parameters may provide new insights into the future development of effective and safe adjuvants for human use. Frontiers Media S.A. 2022-05-19 /pmc/articles/PMC9160479/ /pubmed/35663999 http://dx.doi.org/10.3389/fimmu.2022.847616 Text en Copyright © 2022 Hioki, Hayashi, Natsume-Kitatani, Kobiyama, Temizoz, Negishi, Kawakami, Fuchino, Kuroda, Coban, Kawahara and Ishii https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Immunology
Hioki, Kou
Hayashi, Tomoya
Natsume-Kitatani, Yayoi
Kobiyama, Kouji
Temizoz, Burcu
Negishi, Hideo
Kawakami, Hitomi
Fuchino, Hiroyuki
Kuroda, Etsushi
Coban, Cevayir
Kawahara, Nobuo
Ishii, Ken J.
Machine Learning-Assisted Screening of Herbal Medicine Extracts as Vaccine Adjuvants
title Machine Learning-Assisted Screening of Herbal Medicine Extracts as Vaccine Adjuvants
title_full Machine Learning-Assisted Screening of Herbal Medicine Extracts as Vaccine Adjuvants
title_fullStr Machine Learning-Assisted Screening of Herbal Medicine Extracts as Vaccine Adjuvants
title_full_unstemmed Machine Learning-Assisted Screening of Herbal Medicine Extracts as Vaccine Adjuvants
title_short Machine Learning-Assisted Screening of Herbal Medicine Extracts as Vaccine Adjuvants
title_sort machine learning-assisted screening of herbal medicine extracts as vaccine adjuvants
topic Immunology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9160479/
https://www.ncbi.nlm.nih.gov/pubmed/35663999
http://dx.doi.org/10.3389/fimmu.2022.847616
work_keys_str_mv AT hiokikou machinelearningassistedscreeningofherbalmedicineextractsasvaccineadjuvants
AT hayashitomoya machinelearningassistedscreeningofherbalmedicineextractsasvaccineadjuvants
AT natsumekitataniyayoi machinelearningassistedscreeningofherbalmedicineextractsasvaccineadjuvants
AT kobiyamakouji machinelearningassistedscreeningofherbalmedicineextractsasvaccineadjuvants
AT temizozburcu machinelearningassistedscreeningofherbalmedicineextractsasvaccineadjuvants
AT negishihideo machinelearningassistedscreeningofherbalmedicineextractsasvaccineadjuvants
AT kawakamihitomi machinelearningassistedscreeningofherbalmedicineextractsasvaccineadjuvants
AT fuchinohiroyuki machinelearningassistedscreeningofherbalmedicineextractsasvaccineadjuvants
AT kurodaetsushi machinelearningassistedscreeningofherbalmedicineextractsasvaccineadjuvants
AT cobancevayir machinelearningassistedscreeningofherbalmedicineextractsasvaccineadjuvants
AT kawaharanobuo machinelearningassistedscreeningofherbalmedicineextractsasvaccineadjuvants
AT ishiikenj machinelearningassistedscreeningofherbalmedicineextractsasvaccineadjuvants