| Literature DB >> 32341755 |
Vahed Maroufy1,2, Pankil Shah3,2, Arvand Asghari4, Nan Deng1, Rosemarie N U Le4, Juan C Ramirez5, Ashraf Yaseen1, W Jim Zheng6, Michihisa Umetani4,7, Hulin Wu1.
Abstract
Aberrant activation of the Sonic Hedgehog (SHH) gene is observed in various cancers. Previous studies have shown a "cross-talk" effect between the canonical Hedgehog signaling pathway and the Epidermal Growth Factor (EGF) pathway when SHH is active in the presence of EGF. However, the precise mechanism of the cross-talk effect on the entire gene population has not been investigated. Here, we re-analyzed publicly available data to study how SHH and EGF cooperate to affect the dynamic activity of the gene population. We used genome dynamic analysis to explore the expression profiles under different conditions in a human medulloblastoma cell line. Ordinary differential equations, equipped with solid statistical and computational tools, were exploited to extract the information hidden in the dynamic behavior of the gene population. Our results revealed that EGF stimulation plays a dominant role, overshadowing most of the SHH effects. We also identified cross-talk genes that exhibited expression profiles dissimilar to that seen under SHH or EGF stimulation alone. These unique cross-talk patterns were validated in a cell culture model. These cross-talk genes identified here may serve as valuable markers to study or test for EGF co-stimulatory effects in an SHH+ environment. Furthermore, these cross-talk genes may play roles in cancer progression, thus they may be further explored as cancer treatment targets.Entities:
Keywords: Sonic Hedgehog; epidermal growth factor; gene expression dynamics; gene regulatory network; pathway cross-talk
Year: 2020 PMID: 32341755 PMCID: PMC7170495 DOI: 10.18632/oncotarget.27547
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Number of GRMs
| Condition | # GRMs | # | # genes GRM1 |
|---|---|---|---|
| CTRL | 216 | 6 | 617 |
| SHH | 237 | 6 | 752 |
| EGF | 48 | 6 | 952 |
| EGF-SHH | 51 | 7 | 975 |
The first and second columns present number of GRMs based on the first 3,000 DRGs, and number of large size GRMs, respectively, for under each condition. Third column presents the number of genes in the largest GRM under each condition.
Number (%) of DRGs out of 3000, clustered into the major GRMs
| First 6 | First 8 | First 12 | |
|---|---|---|---|
| EGF | 2,816 (0.94) | 2,884 (0.96) | 2,936 (0.98) |
| EGF-SHH | 2,668 (0.89) | 2,847 (0.95) | 2,915 (0.97) |
| SHH | 1,893 (0.63) | 1,984 (0.66) | 2,135 (0.71) |
| CTRL | 1,782 (0.59) | 1,899 (0.63) | 2,066 (0.69) |
First column gives the number (%) of DRGs clustered into the first 6 GRMs (the largest 6 GRMs) under each condition. The last two columns include similar numbers (%) for the first 8 and first 12 GRMs, respectively.
Figure 1Gene response modules under Control and SHH+ conditions.
Matching large size GRMs under Control (left column) or SHH+ (right column). The Spearman correlation between the mean curves (red curves) is also reported for each pair.
Figure 2Gene response modules under EGF+ and EGF+SHH+ conditions.
Matching large size GRMs under EGF+ (left column) or EGF+SHH+ (right column). The Spearman correlation between the mean curves (red curves) is also reported for each pair.
Figure 3Spearman correlation of DRGs.
Each panel shows the distribution of the Spearman correlations for the 3,000 DRGs under the first conditions (in panel title) with the same 3,000 genes under the second condition (in panel title).
The number (%) of genes behaving similarly and those behaving differently out of 3,000 DRGs
|
|
|
| Other (%) | ||
|---|---|---|---|---|---|
| I | SHH+ vs CTRL | 742 (24.7) | 2 (0.1) | 261 (8.7) | 1,995 (66.5) |
| SHH+ vs EGF+ | 238 (7.9) | 17 (0.6) | 482 (16.1) | 2,263 (75.4) | |
| SHH+ vs EGF+SHH+ | 260 (8.7) | 17 (0.6) | 469 (15.6) | 2,254 (75.1) | |
| II | CTRL vs EGF+ | 182 (6.1) | 19 (0.6) | 541 (18) | 2,258 (75.3) |
| CTRL vs SHH+ | 736 (25.4) | 1 (0) | 262 (8.7) | 2,001 (66.7) | |
| CTRL vs EGF+SHH+ | 233 (7.8) | 16 (0.5) | 479 (16) | 2,272 (75.7) | |
| III | EGF+ vs SHH+ | 160 (5.3) | 15 (0.5) | 526 (17.5) | 2,299 (76.6) |
| GF+ vs CTRL | 136 (4.5) | 15 (0.5) | 566 (18.9) | 2,283 (76.1) | |
| EGF+ vs EGF+SHH+ | 2339 (78) | 1 (0) | 25 (0.8) | 635 (21.2) | |
| IV | EGF+SHH+ vs CTRL | 172 (5.7) | 14 (0.5) | 512 (17.1) | 2,302 (76.7) |
| EGF+SHH+ vs EGF+ | 2,356 (78.5) | 0 (0) | 18 (0.6) | 626 (20.9) | |
| EGF+SHH+ vs SHH+ | 182 (6.1) | 14 (0.5) | 538 (17.9) | 2,265 (75.5) |
First three rows (block I) compare the trend of 3,000 DRGs under SHH+ with their trend under CTRL, EGF+, and EGF+SHH+, respectively. The latter blocks (II, III, IV) present similar numbers based on comparing the 3,000 DRGs under CTRL, EGF+, and EGF+SHH+ with the same genes under other three conditions.
The network statistics: mean clustering coefficient and density for the networks under each condition
| Condition | mean Cl coeff | Density |
|---|---|---|
| EGF | 0.385 | 0.442 |
| EGF-SHH | 0.380 | 0.487 |
| SHH | 0.297 | 0.174 |
| CTRL | 0.288 | 0.198 |
Clustering coefficient measures how the neighboring GRMs are interconnected, and density shows the proportion of potential regulating edges among the GRMs.
Important GRMs: obtained as the set of first 20 GRMs with highest in-degree (I), out-degree (O) and betweenness (B) coefficients
| GRM | Importance | GRM | Importance | GRM | Importance |
|---|---|---|---|---|---|
| M119 | O, B | M278 | O | M384 | I |
| M124 | O | M290 | B | M392 | O |
| M133 | O, B | M300 | I | M404 | I, B |
| M142 | I, B | M307 | I, B | M407 | I |
| M156 | O | M319 | O, B | M408 | O |
| M168 | B | M322 | O, B | M414 | O |
| M178 | O | M326 | I, B | M416 | I |
| M189 | O, B | M330 | I | M422 | I, B |
| M19 | O, B | M331 | O | M431 | I |
| M198 | B | M337 | O | M432 | O |
| M225 | B | M362 | I | M436 | O |
| M235 | I, B | M37 | B | M438 | I, O |
| M244 | B | M372 | I, B | M454 | I |
| M250 | O | M374 | I, B | M455 | I |
| M265 | O | M375 | I | M72 | I |
In-degree (Out-degree) shows the number of GRMs regulating (regulated by) the GRM of interest. Betweenness shows the number of time that a GRM is a bridge between two other GRMs.
List of 179 cross-calk genes
| ABCD4 | CHD8 | GAD2 | NECAP2 | SERP1 |
| ABHD9 | CHTF8 | GDE1 | NFIC | SERPINB7 |
| AGGF1 | CLEC4A | GRIP2 | NLRP1 | SHH |
| AHRR | CNKSR3 | HHLA2 | NLRP12 | SIGLEC16 |
| ALDH1A1 | CNPY2 | HIST1H4J | NPS | SKI |
| ALOX12P2 | COMT | HSD11B1 | NRG2 | SLC7A9 |
| AMAC1L1 | CRISP1 | HSPC072 | OPA3 | SLC9A6 |
| AMELX | CS | HTA | OR2T3 | SNORA23 |
| ANPEP | CSF1 | IFNA2 | OR5H14 | SNORA26 |
| APLF | CUEDC1 | IFT80 | OR6C1 | SPAG11A |
| APOC1 | CYB5A | IL12RB2 | OR6M1 | SRP54 |
| ARID1A | DAAM1 | IL25 | P2RXL1 | STAMBP |
| ARMC6 | DAOA | KBTBD4 | PAK3 | SUCNR1 |
| ATF6B | DCTN4 | KCNC2 | PAK6 | SULT1A1 |
| ATIC | DDX11 | KCNH2 | PATE3 | SYNGR1 |
| ATP1A1 | DEFB104A | KIAA1109 | PAX1 | TLX1 |
| AVP | DEFB113 | KIF2B | PDE8B | TMED8 |
| BCAP29 | DENND5A | KIF5A | PDLIM5 | TMEM225 |
| BTBD8 | DKFZP686J0529 | KIR3DP1 | PFTK2 | TPRG1L |
| BTD | DMGDH | LLGL2 | PHF8 | TRPM2 |
| C11ORF58 | DNAH14 | LSR | PKP2 | TSLP |
| C14ORF183 | DUOX1 | MAP3K3 | PLEKHB2 | TTC33 |
| C15ORF21 | ECSIT | MGC119295 | PPM1K | UBXN10 |
| C15ORF44 | EEF1A1 | MGC33948 | PRAMEF22 | VWA5A |
| C1D | EEF1A1 | MGLL | PRKAA1 | WFDC2 |
| C1ORF185 | ERMN | MIDN | PRSS7 | XPR1 |
| C1ORF186 | EXOD1 | MIR1281 | PSG6 | ZCCHC5 |
| C9ORF47 | F5 | MPPED1 | RAET1L | ZNF302 |
| CCDC64 | FAM160A1 | MRPL14 | RASEF | ZNF562 |
| CCNB1IP1 | FAM3B | MRPL43 | RGPD4 | ZNF598 |
| CCNY | FFAR3 | MSH3 | RNF39 | ZNF611 |
| CD63 | FIGLA | MSL3 | RPLP0 | ZNF66 |
| CD7 | FLCN | MYCBP | RPP38 | ZNF92 |
| CD86 | FLJ37078 | NCCRP1 | S100A13 | ZNRD1 |
| CDC2L5 | FLJ45340 | NCOA5 | SAE1 | ZWILCH |
| CGREF1 | FLNC | NEBL | SEC14L1 |
Figure 4Enrichment cluster analysis of the cross-talk genes.
Enrichment cluster analysis of cross-talk genes showed up-regulation of transcription-related pathways.
Figure 5qRT-PCR validation of proposed cross-talk genes.
qRT-PCR results of cells treated with EGF (purple), Shh-N conditioned media (gold), or a combinational treatment with Shh-N and EGF (blue). Panels (A–C) show that EGF dominates the effects of SHH in EGF+SHH treatment after a certain point. Panel (D) shows the effect of co-activation, where under EGF+SHH treatment behavior diverges form that under EGF or SHH at and after 12 hours. n = 3/group, and data are expressed as mean ± SEM.
Primer sequences used for qRT-PCR analysis
| Gene | Forward Primer | Reverse Primer |
|---|---|---|
|
| TTC CAA AAC CAG TGA CCG CAT TG | AGT GCT CCA TCA GGA CAG ACT G |
|
| TAA GCA CAG CCG CTT CAA CGT C | CTC TGT CAC TGT GAC GAT AGC C |
|
| AGA TTC ACC GCT CCT GCA CAG T | CTG TCT GGC AAT CTC CTC ACG T |
|
| CCT TCC GAA AAG GAC AAG CCG T | GCT CTT TCT CAC TCG CTG ACA C |
|
| GAG AGT GAT TGA GAG TGG ACC AC | CAC AAC CCT CTG CAC CCA GTT T |
|
| GGA GAT GGC ACA GGA GGA A | GCC CGT AGT GCT TCA GTT T |