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

被引:5
|
作者
Hioki, Kou [1 ,2 ]
Hayashi, Tomoya [1 ,2 ]
Natsume-Kitatani, Yayoi [3 ]
Kobiyama, Kouji [1 ,2 ]
Temizoz, Burcu [1 ,2 ]
Negishi, Hideo [1 ]
Kawakami, Hitomi [4 ]
Fuchino, Hiroyuki [4 ]
Kuroda, Etsushi [5 ]
Coban, Cevayir [6 ,7 ]
Kawahara, Nobuo [4 ]
Ishii, Ken J. [1 ,2 ,7 ]
机构
[1] Univ Tokyo IMSUT, Inst Med Sci, Int Vaccine Design Ctr vDesC, Dept Microbiol & Immunol,Div Vaccine Sci, Tokyo, Japan
[2] Natl Inst Biomed Innovat, Ctr Vaccine & Adjuvant Res Ctr CVAR, Lab Mockup Vaccine, Osaka, Japan
[3] Natl Inst Biomed Innovat Hlth & Nutr NIBIOHN, Artificial Intelligence Ctr Hlth & Biomed Res, Lab Bioinformat, Osaka, Japan
[4] Natl Inst Biomed Innovat Hlth & Nutr NIBIOHN, Res Ctr Med Plant Resources, Ibaraki, Japan
[5] Hyogo Coll Med, Dept Immunol, Nishinomiya, Hyogo, Japan
[6] Univ Tokyo IMSUT, Inst Med Sci, Int Vaccine Design Ctr vDesC, Dept Microbiol & Immunol, Tokyo, Japan
[7] Osaka Univ, Immunol Frontier Res Ctr IFReC, Osaka, Japan
来源
FRONTIERS IN IMMUNOLOGY | 2022年 / 13卷
基金
日本科学技术振兴机构;
关键词
vaccine; adjuvant; machine learning; herbal extracts; mouse; human; RED GINSENG EXTRACT; CYCLIC GMP-AMP; IMMUNOLOGICAL ADJUVANT; NASAL INFLUENZA; PLATYCODON-GRANDIFLORUM; IMMUNE-RESPONSES; INNATE IMMUNITY; ORAL ADJUVANT; PARTICLE-SIZE; R-PACKAGE;
D O I
10.3389/fimmu.2022.847616
中图分类号
R392 [医学免疫学]; Q939.91 [免疫学];
学科分类号
100102 ;
摘要
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.
引用
收藏
页数:19
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