| Literature DB >> 32640984 |
Jose Liñares-Blanco1, Cristian R Munteanu1,2, Alejandro Pazos1,2, Carlos Fernandez-Lozano3,4.
Abstract
BACKGROUND: The main challenge in cancer research is the identification of different omic variables that present a prognostic value and personalised diagnosis for each tumour. The fact that the diagnosis is personalised opens the doors to the design and discovery of new specific treatments for each patient. In this context, this work offers new ways to reuse existing databases and work to create added value in research. Three published signatures with significante prognostic value in Colon Adenocarcinoma (COAD) were indentified. These signatures were combined in a new meta-signature and validated with main Machine Learning (ML) and conventional statistical techniques. In addition, a drug repurposing experiment was carried out through Molecular Docking (MD) methodology in order to identify new potential treatments in COAD.Entities:
Keywords: Abemaciclib; Colon cancer; Drug repurposing; FABP6; Machine learning; Molecular docking; Prognosis; TCGA
Mesh:
Substances:
Year: 2020 PMID: 32640984 PMCID: PMC7346626 DOI: 10.1186/s12860-020-00295-w
Source DB: PubMed Journal: BMC Mol Cell Biol ISSN: 2661-8850
Gene signatures obtained from previous works
| Sun et al. 2018 | TREML2, PADI4, NCKIPSD, PTPRN, PGLYRP1, C5orf53, |
| TREML3, NOG, VIP, RIMKLB, NKAIN4, FAM171B | |
| Xu et al. 2017 | HES5, ZNF417, GLRA2, OR8D2, HOXA7, FABP6, MUSK, |
| HTR6, GRIP2, KLRK1, VEGFA, AKAP12, RHEB, NCRNA00152, PMEPA1 | |
| Wen et al. 2018 | GLTP, METTL7A, PPAP2A, CITED2, SCARA5, CDH3, |
| IL6R, PKIB, GLP2R, LINC00974, EPB41L3, NR3C2 |
Fig. 1Classification according to the stage of the patients. A comparative experiment was carried out with different datasets and different algorithms for the classification of patients according to their stage. The classification consisted of a binary classification, grouping the patients in two classes (stage I-II and stage III-IV)
Fig. 2Classification by metastatic stage of patients. A comparative experiment was carried out with different datasets and different algorithms for the classification of patients according to their metastatic stage of lymphatic node. The classification consisted of a binary classification, grouping patients into two classes (stage n0 and stage 1-3)
Fig. 3Results of analyisis prediction from tumor and helath tissues. a) A comparative ML task was carried out with three different signatures (Random signature, Meta signature and Drivers Intogen) to predict between tumor and helth tissues. TCGA expression values of these three signatures were the input in training phase for two ML algorithms (Random Forest and glmnet). The accuracy of the models for each signature is shown. b) Mean difference plot after differencial gene expressión is shown. Up and Down expression genes are highlighted in red and blue respectively. FABP6 and CDH3 were the genes with major gene expression differences. c) Comparative variable importance for metasignature in Random Forest and glment algorithms. Values were scaled for comparative analysis. d) Pie chart with intersections of same genes obtained by two ML approaches and differential gene expression. The three approaches obtained very similar conclusions
Top 15 Variable Importance obtained through Glmnet and Random Forest algorithm. In addition, we have compared these results with a classical analysis aproach for differential expression analysis with edgeR package
| GLTP | GLP2R | CDH3 |
| CDH3 | GLTP | GLP2R |
| MUSK | IL6R | VEGFA |
| SCARA5 | SCARA5 | MUSK |
| NR3C2 | NR3C2 | PKIB |
| GLP2R | CDH3 | SCARA5 |
| EPB41L3 | METTL7A | PMEPA1 |
| PKIB | MUSK | FABP6 |
| IL6R | PKIB | RHEB |
| METTL7A | EPB41L3 | IL6R |
| CITED2 | CITED2 | NR3C2 |
| VEGFA | VIP | VIP |
| FABP6 | FABP6 | EPB41L3 |
| VIP | VEGFA | GRIP2 |
| RIMKLB | HES5 | METTL7A |
Fig. 4Percentage of 3D PDB structures for each gene obtained
Top interactions of the 4 genes that have appeared among the 50 best interactions
| GLTP | 3S0I | Nilotinib | -13.7 |
| PTPRN | 3NP5 | Venetoclax | -12.3 |
| VEGFA | 4GLS | Venetoclax | -12.2 |
| FABP6 | 2MM3 | Abemaciclib | -12.1 |
Fig. 5Box diagram of the expression of the four genes between healthy and diseased tissues of the COAD cohort of the TCGA
Interaction force of Abemaciclib with all PDB structures of the FABP6 gene
| FABP6 | 2MM3 | Abemaciclib | -12.1 |
| FABP6 | 1O1U | Abemaciclib | -8.0 |
| FABP6 | 1O1V | Abemaciclib | -10 |
| FABP6 | 5L8I | Abemaciclib | -9.0 |
| FABP6 | 5L8N | Abemaciclib | -9.5 |
| FABP6 | 5L8O | Abemaciclib | -10 |
Fig. 6Three FABP structures (white ribbon) with the natural ligands (violet lines) and Abemaciclib (blue-green sticks and balls): 1O1V a, 2MM3 b, and 5L8N c
Fig. 7Box plot panel with the comparision between tumour and control samples through 21 tumour s types from TCGA
Fig. 8Survival curve according to the number of copies of the FABP6 gene. Extracted from [52]
List of genes, with PDB annotation, used for the Molecular Docking experiment
| PADI4 | VIP | GRIP2 | NCKIPSD |
|---|---|---|---|
| PGLYRP1 | FABP6 | CDH3 | VEGFA |
| NOG | EPB41L3 | IL6R | CITED2 |
| NR3C2 | RHEB | PTPRN | GLTP |