| Literature DB >> 28697173 |
Omer F Kuzu1, Raghavendra Gowda1,2,3, Mohammad A Noory1, Gavin P Robertson1,2,3,4,5,6.
Abstract
BACKGROUND: Demand for cholesterol is high in certain cancers making them potentially sensitive to therapeutic strategies targeting cellular cholesterol homoeostasis. A potential approach involves disruption of intracellular cholesterol transport, which occurs in Niemann-Pick disease as a result of acid sphingomyelinase (ASM) deficiency. Hence, a class of lysosomotropic compounds that were identified as functional ASM inhibitors (FIASMAs) might exhibit chemotherapeutic activity by disrupting cancer cell cholesterol homoeostasis.Entities:
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Year: 2017 PMID: 28697173 PMCID: PMC5558686 DOI: 10.1038/bjc.2017.200
Source DB: PubMed Journal: Br J Cancer ISSN: 0007-0920 Impact factor: 7.640
Figure 1ASM inhibitors induce melanoma-specific cell death by inhibiting intracellular cholesterol transport. (A) fluorescence microscopy of intracellular cholesterol localisation following knockdown of SMPD1 (ASM1) as detected by Filipin-III staining (arrows show accumulated cholesterol); (B) the viability of UACC 903 and 1205 Lu melanoma cells following knockdown of SMPD1; (C) IC50 values of various melanoma cell lines and FF2441 fibroblasts treated with ASM inhibitors. Dose–response curves were drawn in OriginPro (OriginLab) using Levenberg Marquardt algorithm; (D) viability of UACC 903 and FF2441 cells following 24 h of treatment with increasing concentrations of ASM inhibitors; (E) viability of melanoma cells treated with various ASM inhibitors in the absence or presence of v-ATPase inhibitor, Bafilomycin-A1; (F) intracellular cholesterol localisation following leelamine, U18666A or ASM inhibitor treatments as detected by Filipin-III staining. (lower) Co-localisation of RFP-tagged lysosomal LAMP1 protein with cholesterol; (G) LDL treatment protects UACC 903 cells from ASM inhibitor-mediated cell death; (H) Venn diagram showing number of significantly altered genes identified by RNA-sequencing of UACC 903 cells treated with ASM inhibitors (left); and enrichment analysis of significantly altered 177 genes; (I) expression level of cholesterol synthesis genes following ASM treatment as detected by RNA-sequencing; (J) cholesterol synthesis pathway. White highlighted genes were identified as significantly deregulated by RNA-sequencing; (K) distribution of log-2-fold change in expression levels of cholesterol synthesis genes identified by microarray analysis following treatment of MCF7 cells with ASM inhibitors.
Geneset enrichment analysis
| Regulation of cholesterol biosynthesis by SREBF | 3.10E−10 | −2.05 | Reactome |
| Interferon | 4.10E−06 | −1.93 | Reactome |
| Cholesterol biosynthetic process | 1.09E−11 | −2.42 | GOBP |
| Cholesterol metabolic process | 1.87E−09 | −2.21 | GOBP |
| Response to decreased oxygen levels | 3.78E−08 | −2.48 | GOBP |
| Response to nutrient levels | 1.75E−06 | −2.4 | GOBP |
| Response to endoplasmic reticulum stress | 2.03E−05 | −2.18 | GOBP |
| Endoplasmic reticulum membrane | 2.62E−04 | −2.29 | GOCC |
| Perinuclear region of cytoplasm | 3.86E−03 | −2.3 | GOCC |
| SREBF1 | 3.41E−08 | −1.88 | ENCODE |
| Cholesterol biosynthetic process | 7.95E−13 | −2.41 | GOBP |
| Cholesterol metabolic process | 5.49E−13 | −2.21 | GOBP |
| Steroid biosynthetic process | 1.78E−07 | −2.22 | GOBP |
| ER-nucleus signalling pathway | 3.00E−07 | −2.19 | GOBP |
| Cellular response to hypoxia | 4.97E−07 | −2.24 | GOBP |
| Response to nutrient levels | 2.04E−06 | −2.42 | GOBP |
| Isoprenoid biosynthetic process | 8.76E−06 | −2.71 | GOBP |
| Response to endoplasmic reticulum stress | 3.79E−06 | −2.22 | GOBP |
| Regulation of cholesterol biosynthesis by SREBP | 3.12E−09 | −2.05 | Reactome |
| Activation of gene expression by SREBF (SREBP) | 1.40E−05 | −2.06 | Reactome |
| UPR | 2.15E−04 | −1.93 | Reactome |
| Regulation of cholesterol biosynthesis by SREBP | 3.65E−07 | −2.05 | Reactome |
| PERK regulates gene expression (ER stress) | 5.16E−06 | −2.14 | Reactome |
| UPR | 4.33E−06 | −1.94 | Reactome |
| Cholesterol biosynthetic process | 1.19E−10 | −2.42 | GOBP |
| Response to nutrient levels | 3.27E−09 | −2.45 | GOBP |
| Response to endoplasmic reticulum stress | 2.13E−09 | −2.25 | GOBP |
| Cholesterol metabolic process | 1.85E−09 | −2.2 | GOBP |
| Endoplasmic reticulum membrane | 1.02E−07 | −2.29 | GOCC |
| Perinuclear region of cytoplasm | 6.27E−03 | −2.28 | GOCC |
| Regulation of cholesterol biosynthesis by SREBP | 1.91E−12 | −2.05 | REACTOME |
| UPR | 2.04E−10 | −1.94 | REACTOME |
| PERK regulates gene expression (ER stress) | 7.94E−08 | −2.12 | REACTOME |
| Cholesterol biosynthetic process | 5.49E−16 | −2.42 | GOBP |
| Response to endoplasmic reticulum stress | 2.24E−14 | −2.25 | GOBP |
| Cholesterol metabolic process | 3.30E−12 | −2.2 | GOBP |
| ER-nucleus signalling pathway | 7.01E−12 | −2.2 | GOBP |
| Autophagy | 7.75E−05 | −2.09 | GOBP |
| ER to Golgi vesicle-mediated transport | 1.84E−04 | −1.92 | GOBP |
| Response to starvation | 2.70E−07 | −2.19 | GOBP |
| Intrinsic apoptotic signalling pathway in response to ER stress | 2.15E−06 | −2.36 | GOBP |
Abbreviations: ER=endoplasmic reticulum; GOBP=Gene Ontology Biological Process, GOCC=Gene Ontology Cellular Component; UPR=unfolded protein response.
Figure 2Efficacy of cholesterol transport inhibitors on xenografted melanoma tumour development. (A) bar graph representing the effect of oral administration of desipramine, nortriptyline and perphenazine on xenografted UACC 903 melanoma tumour growth at day 22; (B) H&E stained tumour sections showing vacuolisation of tumours harvested from animals treated with perphenazine; (C) bar graph showing average number of mitotic figures identified in H&E stained sections of tumours harvested from perphenazine or vehicle-treated mice; (D–H) growth kinetics or tumour weights of UACC 903, 1205 Lu and A2058 xenografted tumours following oral administration of fluphenazine (25 mg kg−1) or perphenazine (50 mg kg−1). Image (inset in D) showing UACC 903 tumours harvested at the end of the experiment. (E and H) bar graphs showing tumour weight percentages compared to vehicle-treated animals, harvested from UACC 903 and A2058 xenografts, respectively; (I) bar graph showing the weight loss of mice with UACC 903 xenografts 2 days after drug treatments. *P < 0.05; **P < 0.01; ***P < 0.001.
Figure 3Liposomal administration of perphenazine enhanced therapeutic activity while decreasing sedative side effects. (A) bar graph showing activity of mice following oral or intravenous liposomal administration of perphenazine; (B) sleep behaviour of mice treated with perphenazine; (C) bar graph showing body weight change in Swiss Webster mice following oral or intravenous liposomal administration of perphenazine (DA: Drug administration); (D) efficacy of liposomal perphenazine on cultured UACC 903 melanoma cells survival; (E and G) growth kinetics of UACC 903 and 1205 Lu xenografted tumours following intravenous administration of 15 mg kg−1 liposomal perphenazine. Inserts in each graph show average mice weight during the treatment period; (F) distribution of tumour weights harvested from mice treated with empty or perphenazine encapsulated liposomes; (H) H&E stained vital organ sections of mice treated with empty or perphenazine encapsulated liposomes. ***P < 0.001.
Figure 4ASM inhibitors disrupt autophagic flux and cellular endocytosis leading to inhibition of oncogenic signalling. (A) Western blot analyses showing LC3B and p62/SQSTM1 levels as a marker of autophagic flux in UACC 903 cells; (B) fluorescence microscopy of GFP-tagged LC3B suggesting autophagosome accumulation in ASM inhibitor or Bafilomycin-A1 (positive control) treated UACC 903 cells; (C) fluorescence microscopy images showing endocytosis of Alexa Fluor-conjugated transferrin protein following treatment with vehicle (DMSO) or ASM inhibitors; (D) flow cytometry-based quantification of Alexa Fluor-conjugated transferrin endocytosis; (E) common genetic perturbations that were significantly linked to the cholesterol transport inhibitors in the Lincscloud database (top), and gene enrichment analysis of the 56 genes that exhibit similar cellular signature to the CTI treatments (bottom). Numbers in top panel shows similarity scores between perturbations; KD: knockdown; OE: overexpression; (F) immunofluorescence staining shows perinuclear accumulation of IGF1R protein; (G) western blots of UACC 903 cells treated with increasing concentrations of nortriptyline, perphenazine or fluphenazine; (H) approximate IC50 values of various CTI agents for metastatic melanoma cell lines and normal skin cells suggesting increased sensitivity of mutant PTEN cells to these agents (top), western blots suggesting a correlation between AKT activity and CTI sensitivity of melanoma cell lines (bottom). *P < 0.05.
Figure 5ASM inhibitor-mediated cell death involves disruption of MMP but not Caspase-3/7 activity. (A) flow cytometry analysis showing Annexin-V/PI staining of UACC 903 cells. Cells, in the lower and upper right quadrant show early and late apoptotic cells, respectively; (B) histogram showing MMP following treatment with ASM inhibitors or FCCP; (C) viability of wild-type or BAX-knockout HCT116 cells after 24 h of treatment with increasing concentrations of perphenazine (left) or other ASM inhibitors (right); (D) viability of UACC 903 cells treated with leelamine or ASM inhibitors in the absence or presence of apoptosome inhibitor NS3694; (E) caspase-dependent cell death measured by treatment of UACC 903 cells with or without pan-caspase inhibitor, z-VAD-fmk. TRAIL (50 ng ml−1) treatment served as a positive control for caspase-dependent cell death (left). *P < 0.05; **P < 0.01; ***P < 0.001.