| Why miRDB? | 
			
				| miRDB is an online database for predicted microRNA 
				targets in animals. MicroRNAs are involved in many 
				diverse biological processes and they may potentially regulate 
				the functions of thousands of genes. One major issue in miRNA 
				studies is the lack of bioinformatics programs to accurately 
				predict miRNA targets. Animal miRNAs have limited sequence 
				complementarity to their gene targets, which makes it 
				challenging to select relevant biological features to build 
				target prediction models with high specificity. We have 
				developed a new miRNA target prediction program based on support 
				vector machines (SVMs) and high-throughput training datasets. By 
				systematically analyzing high-throughput experimental data, we have identified novel features that 
				are important to miRNA target binding and expression downregulation. These new features as 
				well as other known features have been integrated in an SVM machine learning framework 
				for the training of our target prediction model. Our prediction algorithm has 
				been validated by independent experimental data for its improved 
				selectivity on predicting a large number of miRNA downregulated 
				gene targets.   | 
			
				| What is SVM? | 
			
				| support vector machines (SVMs) are universal constructive 
				machine learning procedures based on statistical learning 
				theory. SVM has been applied in many diverse applications such 
				as pattern recognition, computational biology, and image 
				analysis. The basic concept is that by maximizing the separation 
				between the two classes in a nonlinear feature space, SVM not 
				only reduces the training error but more importantly also 
				achieves better generalization on unseen data.   | 
			
				| How to 
				interpret the target prediction score? | 
			
				| All the predicted targets have target prediction scores 
				between 50 - 100. These scores are assigned by the new 
				computational target prediction algorithm. The higher the score, the more confidence we 
				have in this prediction. That is why the search result is 
				ordered by prediction score. In our experience, a predicted 
				target with prediction score > 80 is most likely to be real. If 
				the score is below 60, you need to be cautious and it is 
				recommended to have other supporting evidence as well.   | 
			
				| My favorite 
				organism is not included. What should I do? | 
			
				| miRDB currently has predicted miRNA targets in five 
				organisms: human, mouse, rat, dog and chicken. If your organism 
				is not included, you may send us your request. If there is a 
				high demand for your  organism, we will include its 
				predicted miRNA targets in future updates.   | 
			
				| How to 
				perform target search? | 
			
				| There are two ways to search miRDB for predicted miRNA 
				targets. 1) Search by miRNA names. Partial names are allowed. If there 
				is more than one match, all the matched miRNAs will be returned 
				and you may choose from one of these miRNAs to view their 
				predicted targets. If there is only one match, the target 
				prediction result will be presented directly. The partial name 
				search can be useful if you need to do a general search. For 
				example, by typing in "hsa", you will retrieved all human miRNAs 
				with predicted targets. 2) Search by gene target information. There are three options 
				to do gene search: GenBank Accession, NCBI Gene ID or Gene 
				Symbol. You have to enter the exact ID or symbol and no partial 
				match is allowed. In this way, a single gene record will be 
				retrieved if it is predicted to be a miRNA target.   | 
			
				| How to 
				perform target mining? | 
			
				| The Target Mining page provides advanced search options for 
				miRNAs or their gene targets. First, you need to click on one of 
				the radio buttons to choose either miRNA search or gene target 
				search. There are two optional check boxes for the exclusion of 
				miRNAs with too many predicted targets or targets with low 
				scores. You may adjust the threshold values to tailor for your 
				needs. The default recommendation is to only include targets 
				with scores >60 and miRNAs with <800 targets. You may provide 
				your own miRNA or gene list. Alternatively, you may choose the 
				pre-compiled pathway gene list from the page. When searching for 
				miRNA gene targets, full mature miRNA names are required. For 
				the search of miRNA regulators, you may provide either NCBI gene 
				IDs or official gene symbols. If symbols are used in the search, 
				you also need to specify the species. Please use space or comma 
				to separate the entries.   | 
			
				| Why the retrieved GenBank accession sometimes is different from 
				my submitted one? | 
			
				| Because of the sequence redundancy in GenBank, each gene is 
				usually represented by more than one GenBank record. miRDB uses the 
				NCBI Gene index files to map multiple sequence records to the 
				same gene record. As a result, a different accession number 
				other than originally submitted may be retrieved. However, both 
				accessions represent the same gene.   | 
			
				| Who developed miRDB? | 
			
				| miRDB was created by Xiaowei Wang's lab at 
				the Department of Pharmacology, University of Illinois at Chicago. |