Cargando…

Artificial intelligence deciphers codes for color and odor perceptions based on large-scale chemoinformatic data

BACKGROUND: Color vision is the ability to detect, distinguish, and analyze the wavelength distributions of light independent of the total intensity. It mediates the interaction between an organism and its environment from multiple important aspects. However, the physicochemical basis of color codin...

Descripción completa

Detalles Bibliográficos
Autores principales: Zhang, Xiayin, Zhang, Kai, Lin, Duoru, Zhu, Yi, Chen, Chuan, He, Lin, Guo, Xusen, Chen, Kexin, Wang, Ruixin, Liu, Zhenzhen, Wu, Xiaohang, Long, Erping, Huang, Kai, He, Zhiqiang, Liu, Xiyang, Lin, Haotian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7043059/
https://www.ncbi.nlm.nih.gov/pubmed/32101298
http://dx.doi.org/10.1093/gigascience/giaa011
_version_ 1783501391936880640
author Zhang, Xiayin
Zhang, Kai
Lin, Duoru
Zhu, Yi
Chen, Chuan
He, Lin
Guo, Xusen
Chen, Kexin
Wang, Ruixin
Liu, Zhenzhen
Wu, Xiaohang
Long, Erping
Huang, Kai
He, Zhiqiang
Liu, Xiyang
Lin, Haotian
author_facet Zhang, Xiayin
Zhang, Kai
Lin, Duoru
Zhu, Yi
Chen, Chuan
He, Lin
Guo, Xusen
Chen, Kexin
Wang, Ruixin
Liu, Zhenzhen
Wu, Xiaohang
Long, Erping
Huang, Kai
He, Zhiqiang
Liu, Xiyang
Lin, Haotian
author_sort Zhang, Xiayin
collection PubMed
description BACKGROUND: Color vision is the ability to detect, distinguish, and analyze the wavelength distributions of light independent of the total intensity. It mediates the interaction between an organism and its environment from multiple important aspects. However, the physicochemical basis of color coding has not been explored completely, and how color perception is integrated with other sensory input, typically odor, is unclear. RESULTS: Here, we developed an artificial intelligence platform to train algorithms for distinguishing color and odor based on the large-scale physicochemical features of 1,267 and 598 structurally diverse molecules, respectively. The predictive accuracies achieved using the random forest and deep belief network for the prediction of color were 100% and 95.23% ± 0.40% (mean ± SD), respectively. The predictive accuracies achieved using the random forest and deep belief network for the prediction of odor were 93.40% ± 0.31% and 94.75% ± 0.44% (mean ± SD), respectively. Twenty-four physicochemical features were sufficient for the accurate prediction of color, while 39 physicochemical features were sufficient for the accurate prediction of odor. A positive correlation between the color-coding and odor-coding properties of the molecules was predicted. A group of descriptors was found to interlink prominently in color and odor perceptions. CONCLUSIONS: Our random forest model and deep belief network accurately predicted the colors and odors of structurally diverse molecules. These findings extend our understanding of the molecular and structural basis of color vision and reveal the interrelationship between color and odor perceptions in nature.
format Online
Article
Text
id pubmed-7043059
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher Oxford University Press
record_format MEDLINE/PubMed
spelling pubmed-70430592020-03-02 Artificial intelligence deciphers codes for color and odor perceptions based on large-scale chemoinformatic data Zhang, Xiayin Zhang, Kai Lin, Duoru Zhu, Yi Chen, Chuan He, Lin Guo, Xusen Chen, Kexin Wang, Ruixin Liu, Zhenzhen Wu, Xiaohang Long, Erping Huang, Kai He, Zhiqiang Liu, Xiyang Lin, Haotian Gigascience Research BACKGROUND: Color vision is the ability to detect, distinguish, and analyze the wavelength distributions of light independent of the total intensity. It mediates the interaction between an organism and its environment from multiple important aspects. However, the physicochemical basis of color coding has not been explored completely, and how color perception is integrated with other sensory input, typically odor, is unclear. RESULTS: Here, we developed an artificial intelligence platform to train algorithms for distinguishing color and odor based on the large-scale physicochemical features of 1,267 and 598 structurally diverse molecules, respectively. The predictive accuracies achieved using the random forest and deep belief network for the prediction of color were 100% and 95.23% ± 0.40% (mean ± SD), respectively. The predictive accuracies achieved using the random forest and deep belief network for the prediction of odor were 93.40% ± 0.31% and 94.75% ± 0.44% (mean ± SD), respectively. Twenty-four physicochemical features were sufficient for the accurate prediction of color, while 39 physicochemical features were sufficient for the accurate prediction of odor. A positive correlation between the color-coding and odor-coding properties of the molecules was predicted. A group of descriptors was found to interlink prominently in color and odor perceptions. CONCLUSIONS: Our random forest model and deep belief network accurately predicted the colors and odors of structurally diverse molecules. These findings extend our understanding of the molecular and structural basis of color vision and reveal the interrelationship between color and odor perceptions in nature. Oxford University Press 2020-02-26 /pmc/articles/PMC7043059/ /pubmed/32101298 http://dx.doi.org/10.1093/gigascience/giaa011 Text en © The Author(s) 2020. Published by Oxford University Press. http://creativecommons.org/licenses/by/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Zhang, Xiayin
Zhang, Kai
Lin, Duoru
Zhu, Yi
Chen, Chuan
He, Lin
Guo, Xusen
Chen, Kexin
Wang, Ruixin
Liu, Zhenzhen
Wu, Xiaohang
Long, Erping
Huang, Kai
He, Zhiqiang
Liu, Xiyang
Lin, Haotian
Artificial intelligence deciphers codes for color and odor perceptions based on large-scale chemoinformatic data
title Artificial intelligence deciphers codes for color and odor perceptions based on large-scale chemoinformatic data
title_full Artificial intelligence deciphers codes for color and odor perceptions based on large-scale chemoinformatic data
title_fullStr Artificial intelligence deciphers codes for color and odor perceptions based on large-scale chemoinformatic data
title_full_unstemmed Artificial intelligence deciphers codes for color and odor perceptions based on large-scale chemoinformatic data
title_short Artificial intelligence deciphers codes for color and odor perceptions based on large-scale chemoinformatic data
title_sort artificial intelligence deciphers codes for color and odor perceptions based on large-scale chemoinformatic data
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7043059/
https://www.ncbi.nlm.nih.gov/pubmed/32101298
http://dx.doi.org/10.1093/gigascience/giaa011
work_keys_str_mv AT zhangxiayin artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT zhangkai artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT linduoru artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT zhuyi artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT chenchuan artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT helin artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT guoxusen artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT chenkexin artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT wangruixin artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT liuzhenzhen artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT wuxiaohang artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT longerping artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT huangkai artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT hezhiqiang artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT liuxiyang artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata
AT linhaotian artificialintelligencedecipherscodesforcolorandodorperceptionsbasedonlargescalechemoinformaticdata