| Literature DB >> 33946401 |
Sedra Alabed1, Heping Zhou2, Ilker K Sariyer3, Sulie L Chang2.
Abstract
The deposition of amyloid-beta (Aβ) through the cleavage of amyloid-beta precursor protein (APP) is a biomarker of Alzheimer's disease (AD). This study used QIAGEN Ingenuity Pathway Analysis (IPA) to conduct meta-analysis on the molecular mechanisms by which methamphetamine (METH) impacts AD through modulating the expression of APP. All the molecules affected by METH and APP were collected from the QIAGEN Knowledge Base (QKB); 78 overlapping molecules were identified. Upon simulation of METH exposure using the "Molecule Activity Predictor" feature, eight molecules were found to be affected by METH and exhibited activation relationships on APP expression at a confidence of p = 0.000453 (Z-score = 3.51, two-tailed). Core Analysis of these eight molecules identified High Mobility Group Box protein 1 (HMGB1) signaling pathway among the top 5 canonical pathways with most overlap with the 8-molecule dataset. Simulated METH exposure increased APP expression through HMGB1 at a confidence of p < 0.00001 (Z-score = 7.64, two-tailed). HMGB1 is a pathogenic hallmark in AD progression. It not only increases the production of inflammatory mediators, but also mediates the disruption of the blood-brain barrier. Our analyses suggest the involvement of HMGB1 signaling pathway in METH-induced modulation of APP as a potential casual factor of AD.Entities:
Keywords: AD; APP; Aβ; HMGB1; Ingenuity Pathway Analysis (IPA); METH; blood brain barrier (BBB); network meta-analysis (NMA); neuroinflammation
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Year: 2021 PMID: 33946401 PMCID: PMC8124433 DOI: 10.3390/ijms22094781
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 5.923
Figure 1Methods Flowchart. The steps involved in utilizing the resources offered by IPA are outlined in the flowchart. The first step was to use the basic IPA pathway tools, including but not limited to “Grow”, “Trim”, “Connect”, “Pathway Finder”, and “MAP”. The molecular activity analysis was conducted after the generation of every pathway using mathematical algorithms and data stored in QKB. A core analysis was run on the dataset of molecules from every generated pathway; the resulting canonical pathways were analyzed to identify the role of the molecules within the canonical pathways. IPA tools were again used to excise a portion of the neuroinflammation signaling pathway stored in QKB for a closer and more detailed look of the implicated molecules.
Figure 2Categorization of the overlapping molecules. (a) The 78 overlapping molecules affected by METH and APP are categorized into groups to identify the molecules to be investigated further in the analysis, in which the impact of METH exposure influences APP expression; (b) the 78 overlapping molecules affected by METH and APP that were categorized into groups can be seen in clusters within the network (grey lines indicate an undetermined expression change) to offer an overview of the original overlapping network, sans the 12 chemical drugs and toxicants.
Figure 3Quantitative illustration of the change in APP expression in response to METH exposure. The overall change in APP expression in response to METH exposure by the 8 intermediate molecules was measured by the individual involvement, Z-score (z(r)), of each one.
Figure 4The core analysis of top canonical pathways. The core analysis of the 8 overlapping molecules (JUN, MAPK3, MMP9, IL6, IL1B, TNF, IL1, and IFG1R) identified a series of canonical pathways associated with the molecules, which are listed in order of decreasing –log(B-H p-value). The dark highlighted pathways, neuroinflammation signaling pathways, and HGMB1 signaling, were the ones chosen for further investigation of their role in Alzheimer’s disease.
Figure 5Overlapping Molecules Between METH and HMGB1 and APP. (a) 16 molecules were found to overlap between METH and HMGB1. These intermediates are affected by METH exposure and also influence HMGB1 expression; (b) 19 molecules were found to overlap between HMGB1 and APP. These intermediates influence APP expression upon the upregulation of HMGB1.
Figure 6Integrated network of the METH, HMGB1, and APP intermediate molecules. The pathways between the 16 intermediate molecules influencing HMGB1 expression upon METH exposure and the 19 molecules mediating HMGB1 and APP were integrated into one network that illustrates the relationships of the molecules in the presence of each other. For a full list of molecules see Table 1.
Figure 7Quantitative illustration of HMGB1 expression in response to METH exposure. The overall change in expression in HMGB1 in response to METH exposure was measured by the individual involvement, Z-score (z(r)), of each of the 16 intermediate molecules.
Figure 8Quantitative illustration of APP expression in response HMGB1 upregulation. The overall change in APP expression following the upregulation of HMGB1 in response to METH exposure was measured by the individual involvement, Z-score (z(r)), of each of the 19 intermediate molecules.
Figure 9Activation of METH and Inactivation of HMGB1. METH was activated and HMGB1 was inactivated to illustrate the importance of the role of HMGB1 in METH influenced APP expression. The blocking of HMGB1 showed that even upon the exposure of METH, APP expression is inhibited.
Figure 10Canonical pathways of the METH, HMGB1, and APP integrated network. The core analysis of the integrated pathway revealed the canonical pathways associated with the network in order of decreasing −log(p-value), of which neuroinflammation signaling pathway was the top and selected for further investigation.
List of the 35 total molecule mediating METH, HMGB1, and APP.
| Symbol | Entrez Gene Name | Location |
|---|---|---|
| AGER | advanced glycosylation end-product specific receptor | Plasma Membrane |
| Akt | Akt | Cytoplasm |
| CAMK4 | calcium/calmodulin dependent protein kinase IV | Nucleus |
| CASP3 | caspase 3 | Cytoplasm |
| caspase | caspase | Cytoplasm |
| Ccl2 | chemokine (C-C motif) ligand 2 | Extracellular Space |
| CSF2 | colony stimulating factor 2 | Extracellular Space |
| Cytokine * | cytokine | Extracellular Space |
| EPO | Erythropoietin | Extracellular Space |
| ERK | Extracellular Receptor Kinase | Other |
| FAS | Fas cell surface death receptor | Plasma Membrane |
| HMOX1 | heme oxygenase 1 | Cytoplasm |
| HSF1 | heat shock transcription factor 1 | Nucleus |
| ICAM1 | intercellular adhesion molecule 1 | Plasma Membrane |
| IFNG | interferon gamma | Extracellular Space |
| IgG | immunoglobulin G | Extracellular Space |
| IL1 | interleukin 1 | Extracellular Space |
| IL6 | interleukin 6 | Extracellular Space |
| IL1A | interleukin 1 alpha | Extracellular Space |
| IL1B | interleukin 1 beta | Extracellular Space |
| IL1R1 | interleukin 1 receptor type 1 | Plasma Membrane |
| Jnk | c-Jun N-terminal kinase | Cytoplasm |
| Mapk | Mitogen-activated protein kinase | Cytoplasm |
| MAPK1 | mitogen-activated protein kinase 1 | Cytoplasm |
| MAPK3 | mitogen-activated protein kinase 3 | Cytoplasm |
| MAPK8 | mitogen-activated protein kinase 8 | Cytoplasm |
| MMP2 | matrix metallopeptidase 2 | Extracellular Space |
| MMP9 | matrix metallopeptidase 9 | Extracellular Space |
| PARP1 | poly(ADP-ribose) polymerase 1 | Nucleus |
| Pro-inflammatory Cytokine * | Pro-inflammatory cytokine | Other |
| RELA | RELA proto-oncogene, NF-kB subunit | Nucleus |
| TGFB1 | transforming growth factor beta 1 | Extracellular Space |
| TLR2 | toll like receptor 2 | Plasma Membrane |
| TLR4 | toll like receptor 4 | Plasma Membrane |
| TNF | tumor necrosis factor | Extracellular Space |
| TP53 | tumor protein p53 | Nucleus |
* Indicates complex groups/complexes—their members will have the same predicted activity. Members of Pro-inflammatory Cytokine: CD40LG, CD70, CLCF1, CNTF, CSF2, CXCL8, Eda, EDA, FASLG, IFNG, IL11, IL12A, IL12B, IL13, IL15, IL17A, IL17B, IL17C, Il17d, IL17D, IL17F, IL18, IL1A, IL1B, IL1F10, IL2, IL21, IL25, Il3, IL3, Il31, IL31, IL33, IL36A, IL36B, IL36G, IL37, IL4, IL5, IL6, LEP, LIF, LTA, LTB, OSM, TGFB1, TGFB2, TGFB3, TNF, TNFSF10, TNFSF11, TNFSF12, TNFSF13, TNFSF13B, TNFSF14, TNFSF15, TNFSF4, TNFSF8, Tnfsf9, TNFSF9. Members of Cytokine:IL1A, IL1B, IL9.