| Literature DB >> 28018239 |
Rosilene C Rossetto Burgos1, Eduard P A van Wijk2, Roeland van Wijk3, Min He1, Jan van der Greef1.
Abstract
The current healthcare system is hampered by a reductionist approach in which diagnostics and interventions focus on a specific target, resulting in medicines that center on generic, static phenomena while excluding inherent dynamic nature of biological processes, let alone psychosocial parameters. In this essay, we present some limitations of the current healthcare system and introduce the novel and potential approach of combining ultra-weak photon emission (UPE) with metabolomics technology in order to provide a dynamic readout of higher organizational systems. We argue that the combination of metabolomics and UPE can bring a new, broader, view of health state and can potentially help to shift healthcare toward more personalized approach that improves patient well-being.Entities:
Keywords: diagnostics; healthcare; metabolomics; system biology; ultra-weak photon emission
Year: 2016 PMID: 28018239 PMCID: PMC5156693 DOI: 10.3389/fphys.2016.00611
Source DB: PubMed Journal: Front Physiol ISSN: 1664-042X Impact factor: 4.566
Figure 1Schematic depiction of the development from health into a disease state. It shows how challenges to homeostasis can be regulated by allostasis by adapting the set points of the regulatory system. If the resilience is lost over time, the system can develop into a disease state. The last part is often handled by disease management focusing on single symptoms. The “life pyramid” view represents the notion of how biological systems are interconnected at different organizational levels and how the biopsychosocial environment acts dynamically within the system and therefore reflects the information at the lower levels. This integrated picture is more applicable to the pre-disease and healthy state and represents the newly emerging picture of how the future healthcare system should focus on promoting health rather than treating disease. Adapted from Oltvai and Barabási (2002), Ramautar et al. (2013), and van der Greef et al. (2013).
Figure 2Overview of the experimental steps required for integrating UPE and metabolomics data in order to promote health and diagnostics. Bodily fluids (for metabolomics; left) and parts of the body (for UPE recording; right) are sampled. The samples are analyzed using chromatographic techniques (for metabolomics) and spatiotemporal analyses (for UPE). The metabolomics data are then gathered in pathways, and photon counting statistics is applied to the UPE data. Finally, the two data sets are integrated performing Spearman's rank correlations using network correlation, ultimately generating a systems-based interpretation. In this example, plasma samples of pre-diabetic subjects (44 individuals) were analyzed for the generation metabolomics data. The metabolomics study used GC-MS and LC-MS platforms to profile lipids (phosphatidylcholine, lysophosphatidylcholine, sphingomyelin, fatty acids, and triglycerides), organic acids, sugar metabolites, and amine metabolites. UPE data was acquired from the subjects' hands generating 13 parameters after applying photon count statistics. Spearman's rank correlations was calculated between UPE parameters and various classes of compounds acquired from the metabolomics analysis. The correlation was filtered using |r| > 0.3 and subsequently built the correlation network using CytoScape software (MetScape plugin). Blue lines represent negative correlations, and orange lines represent positive correlations. The study was designed and conducted by TNO (Zeist, the Netherlands). The clinical trial (https://clinicaltrials.gov/ct2/show/NCT00469287) was approved by the Medical Ethics Committee of Tilburg (METOPP).