AI-based forecasting of ethanol fermentation using yeast morphological data.
Kaori Itto-NakamaShun WatanabeNaoko KondoShinsuke OhnukiRyota KikuchiToru NakamuraWataru OgasawaraKen KasaharaYoshikazu OhyaPublished in: Bioscience, biotechnology, and biochemistry (2021)
Several industries require getting information of products as soon as possible during fermentation. However, the trade-off between sensing speed and data quantity presents challenges for forecasting fermentation product yields. In this study, we tried to develop AI models to forecast ethanol yields in yeast fermentation cultures, using cell morphological data. Our platform involves the quick acquisition of yeast morphological images using a non-staining protocol, extraction of high-dimensional morphological data using image processing software, and forecasting of ethanol yields via supervised machine learning. We found that the neural network algorithm produced the best performance, which had a coefficient of determination of > 0.9 even at 30 and 60 min in the future. The model was validated using test data collected using the CalMorph-PC(10) system, which enables rapid image acquisition within 10 min. AI-based forecasting of product yields based on cell morphology will facilitate the management and stable production of desired biocommodities.
Keyphrases
- machine learning
- saccharomyces cerevisiae
- big data
- electronic health record
- artificial intelligence
- deep learning
- neural network
- single cell
- cell therapy
- stem cells
- magnetic resonance
- healthcare
- lactic acid
- magnetic resonance imaging
- cell wall
- mesenchymal stem cells
- diffusion weighted imaging
- convolutional neural network
- current status
- high resolution
- health information