Predicting human olfactory perception from chemical features of odor molecules
Author(s) -
Andreas Keller,
Richard C. Gerkin,
Yuanfang Guan,
Amit Dhurandhar,
Gábor Turu,
Bence Szalai,
Joel D. Mainland,
Yusuke Ihara,
Chung Wen Yu,
Russ Wolfinger,
Celine Vens,
Leander Schietgat,
Kurt De Grave,
Raquel Norel,
Gustavo Stolovitzky,
Guillermo Cecchi,
Leslie B. Vosshall,
Pablo Meyer
Publication year - 2017
Publication title -
science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 12.556
H-Index - 1186
eISSN - 1095-9203
pISSN - 0036-8075
DOI - 10.1126/science.aal2014
Subject(s) - odor , perception , olfaction , psychology , quality (philosophy) , cognitive science , computer science , cognitive psychology , neuroscience , epistemology , philosophy
It is still not possible to predict whether a given molecule will have a perceived odor or what olfactory percept it will produce. We therefore organized the crowd-sourced DREAM Olfaction Prediction Challenge. Using a large olfactory psychophysical data set, teams developed machine-learning algorithms to predict sensory attributes of molecules based on their chemoinformatic features. The resulting models accurately predicted odor intensity and pleasantness and also successfully predicted 8 among 19 rated semantic descriptors ("garlic," "fish," "sweet," "fruit," "burnt," "spices," "flower," and "sour"). Regularized linear models performed nearly as well as random forest-based ones, with a predictive accuracy that closely approaches a key theoretical limit. These models help to predict the perceptual qualities of virtually any molecule with high accuracy and also reverse-engineer the smell of a molecule.
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