Metabolomics-based biomarker discovery for bee health monitoring: A proof of concept study concerning nutritional stress in Bombus terrestris.
Luoluo WangIvan MeeusCaroline RomboutsLieven Van MeulebroekLynn VanhaeckeGuy SmagghePublished in: Scientific reports (2019)
Bee pollinators are exposed to multiple natural and anthropogenic stressors. Understanding the effects of a single stressor in the complex environmental context of antagonistic/synergistic interactions is critical to pollinator monitoring and may serve as early warning system before a pollination crisis. This study aimed to methodically improve the diagnosis of bee stressors using a simultaneous untargeted and targeted metabolomics-based approach. Analysis of 84 Bombus terrestris hemolymph samples found 8 metabolites retained as potential biomarkers that showed excellent discrimination for nutritional stress. In parallel, 8 significantly altered metabolites, as revealed by targeted profiling, were also assigned as candidate biomarkers. Furthermore, machine learning algorithms were applied to the above-described two biomarker sets, whereby the untargeted eight components showed the best classification performance with sensitivity and specificity up to 99% and 100%, respectively. Based on pathway and biochemistry analysis, we propose that gluconeogenesis contributed significantly to blood sugar stability in bumblebees maintained on a low carbohydrate diet. Taken together, this study demonstrates that metabolomics-based biomarker discovery holds promising potential for improving bee health monitoring and to identify stressor related to energy intake and other environmental stressors.
Keyphrases
- machine learning
- mass spectrometry
- public health
- healthcare
- human health
- cancer therapy
- small molecule
- mental health
- deep learning
- ms ms
- high throughput
- liquid chromatography
- physical activity
- social media
- health information
- body mass index
- drug delivery
- high resolution
- big data
- weight gain
- health promotion
- high resolution mass spectrometry
- life cycle