Automatic Cocrystal Detection by Raman Spectral Deconvolution-Based Novelty Analysis.
Mehrdad YaghoobiTudor GrecuStephanie BrookesColin J CampbellPublished in: Analytical chemistry (2021)
Cocrystals are important molecular adducts that have many advantages as a means of modifying the physicochemical properties of active pharmaceutical ingredients, including taste masking and improved solubility, bioavailability, and stability. As a result, the discovery of new cocrystals is of great interest to commercial drug discovery programs. Time-consuming manual analysis of the large volumes of data that emerge from large-scale cocrystal screening programs of up to 1000s of preparations poses a challenge. Raman spectroscopy has been shown to discriminate between cocrystals and physical mixtures and is easy to automate, allowing rapid screening of large numbers of potential cocrystals, but the spectral features that encode the information are often subtle (e.g., slight changes in peak positions or intensities). We have employed an automated signal processing routine based on a sparse decomposition algorithm to speed up the data processing steps while maintaining the accuracy of a trained spectroscopist. We used our algorithm to screen 31 potential cocrystal preparations and found that through the use of a computationally generated threshold, we could achieve a clear classification of cocrystals and physical mixtures in less than a minute, compared to several hours manually.
Keyphrases
- raman spectroscopy
- deep learning
- machine learning
- drug discovery
- big data
- optical coherence tomography
- physical activity
- neural network
- electronic health record
- mental health
- public health
- ionic liquid
- loop mediated isothermal amplification
- high throughput
- artificial intelligence
- human health
- computed tomography
- clinical practice
- health information
- resistance training
- real time pcr
- data analysis
- dual energy
- single molecule
- sensitive detection