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1.
IEEE Trans Nanobioscience ; 17(3): 251-259, 2018 07.
Article in English | MEDLINE | ID: mdl-29994716

ABSTRACT

This paper demonstrates the ability of mach- ine learning approaches to identify a few genes among the 23,398 genes of the human genome to experiment on in the laboratory to establish new drug mechanisms. As a case study, this paper uses MDA-MB-231 breast cancer single-cells treated with the antidiabetic drug metformin. We show that mixture-model-based unsupervised methods with validation from hierarchical clustering can identify single-cell subpopulations (clusters). These clusters are characterized by a small set of genes (1% of the genome) that have significant differential expression across the clusters and are also highly correlated with pathways with anticancer effects driven by metformin. Among the identified small set of genes associated with reduced breast cancer incidence, laboratory experiments on one of the genes, CDC42, showed that its downregulation by metformin inhibited cancer cell migration and proliferation, thus validating the ability of machine learning approaches to identify biologically relevant candidates for laboratory experiments. Given the large size of the human genome and limitations in cost and skilled resources, the broader impact of this work in identifying a small set of differentially expressed genes after drug treatment lies in augmenting the drug-disease knowledge of pharmacogenomics experts in laboratory investigations, which could help establish novel biological mechanisms associated with drug response in diseases beyond breast cancer.


Subject(s)
Antineoplastic Agents/pharmacology , Gene Expression Regulation, Neoplastic/drug effects , Single-Cell Analysis/methods , Triple Negative Breast Neoplasms , Unsupervised Machine Learning , Cell Line, Tumor , Cluster Analysis , Female , Gene Expression Profiling/methods , Genomics/methods , Humans , Metformin/pharmacology , Triple Negative Breast Neoplasms/genetics , Triple Negative Breast Neoplasms/metabolism
2.
Oncotarget ; 8(16): 27199-27215, 2017 Apr 18.
Article in English | MEDLINE | ID: mdl-28423712

ABSTRACT

We demonstrate that model-based unsupervised learning can uniquely discriminate single-cell subpopulations by their gene expression distributions, which in turn allow us to identify specific genes for focused functional studies. This method was applied to MDA-MB-231 breast cancer cells treated with the antidiabetic drug metformin, which is being repurposed for treatment of triple-negative breast cancer. Unsupervised learning identified a cluster of metformin-treated cells characterized by a significant suppression of 230 genes (p-value < 2E-16). This analysis corroborates known studies of metformin action: a) pathway analysis indicated known mechanisms related to metformin action, including the citric acid (TCA) cycle, oxidative phosphorylation, and mitochondrial dysfunction (p-value < 1E-9); b) 70% of these 230 genes were functionally implicated in metformin response; c) among remaining lesser functionally-studied genes for metformin-response was CDC42, down-regulated in breast cancer treated with metformin. However, CDC42's mechanisms in metformin response remained unclear. Our functional studies showed that CDC42 was involved in metformin-induced inhibition of cell proliferation and cell migration mediated through an AMPK-independent mechanism. Our results points to 230 genes that might serve as metformin response signatures, which needs to be tested in patients treated with metformin and, further investigation of CDC42 and AMPK-independence's role in metformin's anticancer mechanisms.


Subject(s)
AMP-Activated Protein Kinases/metabolism , Breast Neoplasms/metabolism , Cell Movement/drug effects , Metformin/pharmacology , Signal Transduction/drug effects , Unsupervised Machine Learning , Breast Neoplasms/drug therapy , Breast Neoplasms/genetics , Breast Neoplasms/pathology , Cell Line, Tumor , Cell Movement/genetics , Cluster Analysis , Computational Biology/methods , Female , Gene Expression Profiling , Gene Expression Regulation, Neoplastic/drug effects , Gene Knockdown Techniques , Humans , cdc42 GTP-Binding Protein/genetics
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