| Literature DB >> 32185178 |
Michael Rychlik1,2, Philippe Schmitt-Kopplin1,3.
Abstract
Predictions about the future knowledge of the "complete" food metabolome may be assayed based on the laws of Moore and Kurzweil, who foresee a technological development on exponential behavior. The application of these laws allows us to extrapolate and predict roughly when each single metabolite in foods could be (1) known, (2) detectable, and (3) identifiable. To avoid huge additional uncertainties, we restrict the range of metabolites to those in unprocessed foods. From current metabolite databases and their coverage over time, the conservative number of all considered food metabolites can be estimated to be 500,000, predicting them being known by around 2025. Assuming these laws and extrapolating the current developments in chromatography and mass spectrometry technology, the year 2032 can be estimated, when single molecule detection will be possible in "routine" mass spectrometry. A possible forecast for the identification of all food metabolites, however, is much more difficult and estimated at the earliest in 2041 as the year when this may be achieved. However, the real prediction uncertainty is extreme and is discussed in the essay presented here.Entities:
Keywords: LC-MS sensitivity; analytical chemistry; dark matter; high resolution; metabolome databases; single molecule detection; structure identification
Year: 2020 PMID: 32185178 PMCID: PMC7058551 DOI: 10.3389/fnut.2020.00009
Source DB: PubMed Journal: Front Nutr ISSN: 2296-861X
Examples of important metabolite databases.
| PubChem | All human-made chemical compounds | 96,110,535 | 20.08.2019 | |
| ChemSpider | Chemical compounds from diverse data sources | >71,000,000 | 12.01.2020 | |
| Metlin | Endogenous metabolites and xenobiotica | 958,000 | 2017 | |
| Human metabolome database (HMDB) | Human metabolites including conjugates | 114,000 | 2018 | |
| MassBank | High-resolution MS database of metabolites including MS/MS spectra | 76,418 | 12.01.2020 | |
| KNApSAcK, Nara Institute of Science and Technology | Plant metabolite database | 51,179 | 29.09.2019 | |
| LIPID MAPS | Lipids | 43,636 | 10.07.2019 | |
| Kyoto Encyclopedia of Genes and Genomes (KEGG) database | Metabolites, reactions, enzymes, and genes related to metabolic pathways | 18,607 | 21.08.2019 | |
| Golm Metabolome Database (GMD) | GC-EI MS database on plant metabolites | 2,222 (metabolites) | 17.02.2017 |
Figure 1Evolution and prediction of predicted, detected, and identified metabolites over time. (A,B) The number of predicted and identified compounds in the HMDB versions 1.0 (2007) and 4.0 (2018) (15) increased in the given time range in a predicted exponential manner and can be further projected accordingly into the future to reach the number of 500,000 metabolites comprising the relevant metabolites in foods, excluding xenobiotica and process-generated compounds. The fractions of not-predicted and not-identified metabolites are termed dark matter I and dark matter III, respectively. (C,D) The evolution of signal sensitivity over time in contemporary LC-QQQ MS instrument in (D) is translated into a limit of detection for the given injected amount of molecules, here for the reference compound reserpine. Under the assumption that the limit of detecting reserpine refers to a constant threshold of signal intensity, the limit of detection has been decreasing over time. The development follows an exponential behavior over the last 8 years and can be predicted to follow this path in the future until single molecule detection is reached. As the sensitivity of non-targeted LC-QTOF MS can be expected to be one order of magnitude lower than that of the LC-QQQ, single molecule detection of the former will be reached later. The respective year projected to the current state of detected molecules in HMDB and the estimation of the further evolution to detect the expected number of 500,000 metabolites result in “dark matter II,” which is equivalent to the non-detected metabolites over time.