odor label
Navigating the Fragrance space Via Graph Generative Models And Predicting Odors
Sharma, Mrityunjay, Balaji, Sarabeshwar, Saha, Pinaki, Kumar, Ritesh
We explore a suite of generative modelling techniques to efficiently navigate and explore the complex landscapes of odor and the broader chemical space. Unlike traditional approaches, we not only generate molecules but also predict the odor likeliness with ROC AUC score of 0.97 and assign probable odor labels. We correlate odor likeliness with physicochemical features of molecules using machine learning techniques and leverage SHAP (SHapley Additive exPlanations) to demonstrate the interpretability of the function. The whole process involves four key stages: molecule generation, stringent sanitization checks for molecular validity, fragrance likeliness screening and odor prediction of the generated molecules. By making our code and trained models publicly accessible, we aim to facilitate broader adoption of our research across applications in fragrance discovery and olfactory research.
- Europe > United Kingdom > England > Hertfordshire (0.04)
- Asia > India > Madhya Pradesh > Bhopal (0.04)
- Asia > India > Himachal Pradesh > Shimla (0.04)
- Asia > India > Chandigarh (0.04)
Olfactory Label Prediction on aroma-chemical Pairs
The application of deep learning techniques on aroma-chemicals has resulted in models more accurate than human experts at predicting olfactory qualities. However, public research in this domain has been limited to predicting the qualities of single molecules, whereas in industry applications, perfumers and food scientists are often concerned with blends of many odorants. In this paper, we apply both existing and novel approaches to a dataset we gathered consisting of labeled pairs of molecules. We present a publicly available model capable of generating accurate predictions for the non-linear qualities arising from blends of aroma-chemicals.