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Machine Learning in Human Olfactory Research

机译:人类嗅觉研究中的机器学习

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摘要

The complexity of the human sense of smell is increasingly reflected in complex and high-dimensional data, which opens opportunities for data-driven approaches that complement hypothesis-driven research. Contemporary developments in computational and data science, with its currently most popular implementation as machine learning, facilitate complex data-driven research approaches. The use of machine learning in human olfactory research included major approaches comprising 1) the study of the physiology of pattern-based odor detection and recognition processes, 2) pattern recognition in olfactory phenotypes, 3) the development of complex disease biomarkers including olfactory features, 4) odor prediction from physico-chemical properties of volatile molecules, and 5) knowledge discovery in publicly available big databases. A limited set of unsupervised and supervised machine-learned methods has been used in these projects, however, the increasing use of contemporary methods of computational science is reflected in a growing number of reports employing machine learning for human olfactory research. This review provides key concepts of machine learning and summarizes current applications on human olfactory data.
机译:人类气味的复杂性越来越反映在复杂和高维数据中,其开启了补充假设驱动研究的数据驱动方法的机会。当代在计算和数据科学的发展,目前最受流行的机器学习实现,促进复杂的数据驱动研究方法。在人类嗅觉研究中使用机器学习包括:主要方法包括1)研究模式的气味检测和识别过程的生理学,2)在嗅觉表型中的模式识别,3)综合疾病生物标志物的发育,包括嗅觉特征, 4)来自挥发性分子的物理化学特性的气味预测,5)在公开的大数据库中的知识发现。这些项目中使用了一系列有限的无监督和监督的机器学习方法,然而,在使用人类嗅觉研究的越来越多的报告中,越来越多地利用当代计算科学方法的利用。此审查提供了机器学习的关键概念,并总结了人类嗅觉数据的当前应用程序。

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