AERSMine:
				
				
					 
analyze differential clinical outcomes across
 
						the spectrum of human diseases and drugs
						
				
				
				
				
					AERSMine is a multi-cohort analyzing application designed to mine data across 
					millions 
					of patient reports (currently 21,560,354) from the FDA’s Adverse Event Reporting System.
				
				
					Perform focused {patients X meds} group comparisons, high dimensional subset–based correlation 
					analyses, view differential reporting patterns to identify high-risk demographics subgroups, 
					and unravel latent relationships within large clinical effects data. Gather new insights on 
					inter-correlated adverse events and population subgroups, recognize potential safety signals 
					and generate testable hypotheses based on risk-altering interactions. Our long-term hypothesis 
					is that by correlation of adverse reactions with known drug-phenotype-gene relationships, we 
					will improve our ability to modify therapeutic strategies and improve therapeutic efficacy.  
				
				
				
					
						Citation: Sarangdhar, M. et al.
					 
					Nat. Biotechnol. 
					
						34, 697–700 (2016).
					 
				
				
			 
		 
		
			
				
				Discover novel patterns across multiple population subgroups, generate analyzable data matrices, 
					identify unexpectedly high-risk subgroups, mechanistically linked ADRs, visualize and export analyses.
				 
			 
		 
		
			
				
				
					AERSMine:A novel framework for FAERS data mining
				
				
					AERSMine is a multi-cohort analyzing application designed to mine data from the 
					Food and Drug Administration (FDA) Adverse Event Reporting System (FAERS, legacy AERS, 
					LAERS). AERSMine allows comparative analysis of differential clinical outcomes and 
					adverse events (reactions) in response to approved and/or investigational drugs 
					(therapeutics). Differential adverse event (ADR) risk profiles can be identified 
					via well-established disproportionality analysis methods used in pharmacovigilance 
					including relative risk (RR), and safety signal detection methods, such as 
					Information Component (IC) and drug-drug-interaction (DDI) metric Omega. In addition, 
					AERSMine can facilitate pharmacology-based novel discoveries via identification of 
					drug repositioning (repurposing) candidates to improve treatment strategies. With 
					AERSMine researchers can gather new insights on inter-correlated ADRs and population 
					subgroups, recognize potential safety signals and generate testable hypotheses based 
					on risk-altering interactions. AERSMine uses the Anatomical Therapeutic Chemical 
					Classification System (ATC-KEGG) and MedDRA, Medical Dictionary for Regulatory 
					Activities (MedDRA) ontologies for drugs, clinical indications and ADR aggregation 
					respectively. AERSMine was recently published in Nature Biotechnology (NatBiol, 
					Natbio, NBT).