Application of Meta-Analysis and Machine Learning Methods to the Prediction of Methane Production from In Vitro Mixed Ruminal Micro-Organism Fermentation.
Jennifer L EllisHéctor Alaiz-MoretónAlberto Navarro-VillaEmma J McGeoughPeter PurcellChristopher D PowellPadraig O'KielyJames FranceSecundino LópezPublished in: Animals : an open access journal from MDPI (2020)
In vitro gas production systems are utilized to screen feed ingredients for inclusion in ruminant diets. However, not all in vitro systems are set up to measure methane (CH4) production, nor do all publications report in vitro CH4. Therefore, the objective of this study was to develop models to predict in vitro CH4 production from total gas and volatile fatty acid (VFA) production data and to identify the major drivers of CH4 production in these systems. Meta-analysis and machine learning (ML) methodologies were applied to a database of 354 data points from 11 studies to predict CH4 production from total gas production, apparent DM digestibility (DMD), final pH, feed type (forage or concentrate), and acetate, propionate, butyrate and valerate production. Model evaluation was performed on an internal dataset of 107 data points. Meta-analysis results indicate that equations containing DMD, total VFA production, propionate, feed type and valerate resulted in best predictability of CH4 on the internal evaluation dataset. The ML models far exceeded the predictability achieved using meta-analysis, but further evaluation on an external database would be required to assess generalization ability on unrelated data. Between the ML methodologies assessed, artificial neural networks and support vector regression resulted in very similar predictability, but differed in fitting, as assessed by behaviour analysis. The models developed can be utilized to estimate CH4 emissions in vitro.
Keyphrases
- systematic review
- room temperature
- machine learning
- big data
- meta analyses
- electronic health record
- case control
- fatty acid
- randomized controlled trial
- magnetic resonance imaging
- risk assessment
- duchenne muscular dystrophy
- neural network
- deep learning
- metabolic syndrome
- high resolution
- adverse drug
- data analysis
- insulin resistance
- diffusion weighted imaging
- saccharomyces cerevisiae