Functional odor classification through a medicinal chemistry approach
Autor: | Zita Peterlin, Lu Xu, Narmin Tahirova, Stuart Firestein, Dong-Jing Zou, Terry E. Acree, Erwan Poivet |
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Rok vydání: | 2018 |
Předmět: |
0301 basic medicine
Chemistry Pharmaceutical media_common.quotation_subject False positives and false negatives Sensory system Biology Biochemistry Medicinal chemistry Olfactory Receptor Neurons Mice 03 medical and health sciences Perception Animals Humans Quality (business) Research Articles media_common Alternative methods Odor perception Multidisciplinary Behavior Animal Drug discovery musculoskeletal neural and ocular physiology SciAdv r-articles Esters 3. Good health Smell 030104 developmental biology Odor Odorants psychological phenomena and processes Research Article Neuroscience |
Zdroj: | Science Advances |
ISSN: | 2375-2548 |
DOI: | 10.1126/sciadv.aao6086 |
Popis: | Mechanistic approaches provide alternative solutions to in silico analyses of odorant molecules’ odor-structure relationships. Crucial for any hypothesis about odor coding is the classification and prediction of sensory qualities in chemical compounds. The relationship between perceptual quality and molecular structure has occupied olfactory scientists throughout the 20th century, but details of the mechanism remain elusive. Odor molecules are typically organic compounds of low molecular weight that may be aliphatic or aromatic, may be saturated or unsaturated, and may have diverse functional polar groups. However, many molecules conforming to these characteristics are odorless. One approach recently used to solve this problem was to apply machine learning strategies to a large set of odors and human classifiers in an attempt to find common and unique chemical features that would predict a chemical’s odor. We use an alternative method that relies more on the biological responses of olfactory sensory neurons and then applies the principles of medicinal chemistry, a technique widely used in drug discovery. We demonstrate the effectiveness of this strategy through a classification for esters, an important odorant for the creation of flavor in wine. Our findings indicate that computational approaches that do not account for biological responses will be plagued by both false positives and false negatives and fail to provide meaningful mechanistic data. However, the two approaches used in tandem could resolve many of the paradoxes in odor perception. |
Databáze: | OpenAIRE |
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