Untargeted Metabolomics for Integrative Taxonomy: Metabolomics, DNA Marker-Based Sequencing, and Phenotype Bioimaging.
Kristian PetersKaitlyn L Blatt-JanmaatNatalia TkachNicole M van DamSteffen NeumannPublished in: Plants (Basel, Switzerland) (2023)
Integrative taxonomy is a fundamental part of biodiversity and combines traditional morphology with additional methods such as DNA sequencing or biochemistry. Here, we aim to establish untargeted metabolomics for use in chemotaxonomy. We used three thallose liverwort species Riccia glauca , R. sorocarpa , and R. warnstorfii (order Marchantiales, Ricciaceae) with Lunularia cruciata (order Marchantiales, Lunulariacea) as an outgroup. Liquid chromatography high-resolution mass-spectrometry (UPLC/ESI-QTOF-MS) with data-dependent acquisition (DDA-MS) were integrated with DNA marker-based sequencing of the trn L- trn F region and high-resolution bioimaging. Our untargeted chemotaxonomy methodology enables us to distinguish taxa based on chemophenetic markers at different levels of complexity: (1) molecules, (2) compound classes, (3) compound superclasses, and (4) molecular descriptors. For the investigated Riccia species, we identified 71 chemophenetic markers at the molecular level, a characteristic composition in 21 compound classes, and 21 molecular descriptors largely indicating electron state, presence of chemical motifs, and hydrogen bonds. Our untargeted approach revealed many chemophenetic markers at different complexity levels that can provide more mechanistic insight into phylogenetic delimitation of species within a clade than genetic-based methods coupled with traditional morphology-based information. However, analytical and bioinformatics analysis methods still need to be better integrated to link the chemophenetic information at multiple scales.
Keyphrases
- mass spectrometry
- liquid chromatography
- high resolution mass spectrometry
- single molecule
- high resolution
- tandem mass spectrometry
- simultaneous determination
- ultra high performance liquid chromatography
- circulating tumor
- single cell
- gas chromatography
- ms ms
- cell free
- living cells
- solid phase extraction
- atomic force microscopy
- bioinformatics analysis
- quantum dots
- multiple sclerosis
- fluorescent probe
- genetic diversity
- genome wide
- nucleic acid
- gene expression
- machine learning
- electronic health record
- artificial intelligence
- big data
- gas chromatography mass spectrometry
- social media
- deep learning
- healthcare
- electron microscopy