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Biology and Biotechnology of Environmental Stress Tolerance in Plants, Volume 3
are involved in the regulation of targets of those miRNAs which are not
widely conserved (Debernardi et al., 2012; Zhao et al., 2016). Accelerated
bioinformatics and computational biology enable the opportunity to study
molecular mechanisms related to various stress responses in plants. For a
proper understanding of the molecular mechanism of plant stress responses
under salinity, miRNA-based, and si-RNA based computational strategies
are widely used. Direct cloning, forward genetics, and bioinformatics are
the most common methods for identifying and screening miRNAs, and
these methods have resulted in the discovery of a vast number of miRNAs.
There are several tools and techniques that are available to analyze other
kinds of sRNAs and also to study the gene regulations control by them.
However, still, the identification of sRNA molecules remains quite a diffi
cult task. The first step for identifying small RNAs is to obtain a collection
of sequences that might contain small RNA transcripts and the genome
sequences (if available), transcriptome data, and expressed sequence tags
(ESTs) can all be used for discovering small RNA genes (Li et al., 2012).
To date, in terms of reliability and sensitivity, the best choice for obtaining
a sequence of small RNAs is the sRNA library. By comparative analysis
of newly found sequences to those in databases and detecting overlap in
genomic location between the new data and databases, miRNAs can be
classified into several categories. The unannotated sequences are utilized
by the self-developed program Mireap to predict new miRNAs (Fu et
al., 2017). An in-depth study of the miRNA-mRNA regulatory network
provides knowledge about post-transcriptional fine adjustment of gene
expression. However, in silico predictions about the interaction between
miRNA and mRNA do not address the specific transcriptomic situation of
a particular biological system and are often influenced by false positive
(Meyer et al., 2014). Genome sequences can also be exploited to find small
RNA genes, and they offer the possibility of finding all small RNA genes,
but a high rate of false positives needs to be considered (Li et al., 2012). In
addition to the NCBI genome database, a few data centers are also helpful to
find small RNA genes or small RNA sequences. The plant microRNA data
base (PMRD, http://bioinformatics.cau.edu.cn/PMRD) now contains over
10,000 miRNAs from 121 plant species (Zhang et al., 2010). Bioinformatics
techniques like EST, GSS (genome survey sequences), and many others are
used to discover miRNAs, including probable miRNA precursors capable
of forming a hairpin-like secondary structure (Sunkar & Jagadeeswaran,
2008; Zhang et al., 2005) (Tables 9.2–9.4).