Bioinformatics is an interdisciplinary scientific field
that develops methods and software tools for storing, retrieving, organizing
and analyzing biological data. As an interdisciplinary field, bioinformatics
combines computer science, statistics,
mathematics
and engineering
to study and process biological data.
Information systems such as databases and
ontologies
are used to store and organize biological data. Analyzing biological data to
produce meaningful information involves writing and running software programs
that use algorithms
from graph
theory, artificial intelligence, soft
computing, data mining, image
processing, and computer simulation. The algorithms in turn
depend on theoretical foundations such as discrete mathematics, control
theory, system theory, information theory, and statistics.
Bioinformatics is similar but distinct science from biological computation and computational biology. Biological computation
uses bioengineering and biology to build
biological computers,
whereas bioinformatics uses computation to better understand biology.
Bioinformatics and computational biology have similar aims and approaches, but
differ in scale: bioinformatics organizes and analyzes basic biological data,
whereas computational biology builds theoretical models of biological systems,
just as mathematical biology does with mathematical
models.
Commonly used software tools and technologies in the field
include Java, C#, XML, Perl, C, C++, Python, R, SQL, CUDA, MATLAB, and spreadsheet
applications.
Introduction
Bioinformatics has become an important part of many areas of
biology. In experimental molecular biology, bioinformatics techniques such as
image and signal processing allow extraction of useful results from large
amounts of raw data. In the field of genetics and genomics, it
aids in sequencing and annotating genomes and their observed mutations. It
plays a role in the textual mining of biological literature and the development
of biological and gene ontologies to organize and query biological data. It
plays a role in the analysis of gene and protein expression and regulation.
Bioinformatics tools aid in the comparison of genetic and genomic data and more
generally in the understanding of evolutionary aspects of molecular biology. At
a more integrative level, it helps analyze and catalogue the biological pathways
and networks that are an important part of systems biology. In structural
biology, it aids in the simulation and modeling of DNA, RNA, and protein
structures as well as molecular interactions.
History
Paulien Hogeweg coined the term
"Bioinformatics" in 1970 to refer to the study of information
processes in biotic systems. This definition placed bioinformatics as a field
parallel to biophysics
(the study of physical processes in biological systems) or biochemistry
(the study of chemical processes in biological systems).
Sequences. Computers became essential in molecular
biology when protein sequences became available after Frederick
Sanger determined the sequence of insulin in the
early 1950s. Comparing multiple sequences manually turned out to be
impractical. A pioneer in the field was Margaret Oakley Dayhoff, who has been
hailed by David Lipman, director of the National Center for
Biotechnology Information, as the "mother and father of
bioinformatics."Dayhoff compiled one of the first protein sequence
databases, initially published as books and pioneered methods of sequence
alignment and molecular evolution. Another early contributor to bioinformatics
was Elvin
A. Kabat, who pioneered biological sequence analysis in 1970 with his
comprehensive volumes of antibody sequences released with Tai Te Wu between
1980 and 1991.
Genomes. As whole genome sequences became available,
again with the pioneering work of Frederick Sanger, the term bioinformatics was
re-discovered to refer to the creation of databases such as GenBank in 1982.
With the public availability of data tools for their analysis were quickly
developed and described in journals such as Nucleic Acids Research which published
specialized issues on bioinformatics tools as early as 1982.
Goals
In order to study how normal cellular activities are altered
in different disease states, the biological data must be combined to form a
comprehensive picture of these activities. Therefore, the field of
bioinformatics has evolved such that the most pressing task now involves the
analysis and interpretation of various types of data. This includes nucleotide
and amino acid sequences, protein domains, and protein
structures.The actual process of analyzing and interpreting data is
referred to as computational biology. Important
sub-disciplines within bioinformatics and computational biology include:
- the development and implementation of computer programs that enable efficient access to, use and management of, various types of information.
- the development of new algorithms (mathematical formulas) and statistical measures with which to assess relationships among members of large data sets. For example, there are methods to locate a gene within a sequence, to predict protein structure and/or function, and to cluster protein sequences into families of related sequences.
The primary goal of bioinformatics is to increase the
understanding of biological processes. What sets it apart from other
approaches, however, is its focus on developing and applying computationally intensive
techniques to achieve this goal. Examples include: pattern recognition, data mining,
machine
learning algorithms, and visualization. Major research efforts
in the field include sequence alignment, gene
finding, genome assembly, drug design,
drug
discovery, protein structure alignment, protein structure prediction,
prediction of gene expression and protein–protein interactions, genome-wide association studies,
and the modeling of evolution.
Bioinformatics now entails the creation and advancement of
databases, algorithms, computational and statistical techniques, and theory to
solve formal and practical problems arising from the management and analysis of
biological data.
Over the past few decades rapid developments in genomic and
other molecular research technologies and developments in information
technologies have combined to produce a tremendous amount of information
related to molecular biology. Bioinformatics is the name given to these
mathematical and computing approaches used to glean understanding of biological
processes.
Approaches
Common activities in bioinformatics include mapping and
analyzing DNA and protein
sequences, aligning DNA and protein sequences to compare them, and creating and
viewing 3-D models of protein structures.
There are two fundamental ways of modelling a Biological
system (e.g., living cell) both coming under Bioinformatic approaches.
- Static
- Sequences – Proteins, Nucleic acids and Peptides
- Interaction data among the above entities including microarray data and Networks of proteins, metabolites
- Dynamic
- Structures – Proteins, Nucleic acids, Ligands (including metabolites and drugs) and Peptides (structures studied with bioinformatics tools are not considered static anymore and their dynamics is often the core of the structural studies)
- Systems Biology comes under this category including reaction fluxes and variable concentrations of metabolites
- Multi-Agent Based modelling approaches capturing cellular events such as signalling, transcription and reaction dynamics
A broad sub-category under bioinformatics is structural bioinformatics.
Sequence analysis
The sequences of different genes or proteins may be aligned
side-by-side to measure their similarity. This alignment compares protein
sequences containing WPP domains.
Main articles: Sequence alignment and Sequence
database
Since the Phage Φ-X174 was sequenced
in 1977, the DNA sequences of thousands of organisms have been
decoded and stored in databases. This sequence information is analyzed to
determine genes that encode polypeptides (proteins), RNA
genes, regulatory sequences, structural motifs, and repetitive sequences. A
comparison of genes within a species or between different species can show similarities
between protein functions, or relations between species (the use of molecular systematics to construct phylogenetic
trees). With the growing amount of data, it long ago became impractical to
analyze DNA sequences manually. Today, computer
programs such as BLAST
are used daily to search sequences from more than 260 000 organisms, containing
over 190 billion nucleotides. These programs can compensate for mutations
(exchanged, deleted or inserted bases) in the DNA sequence, to identify
sequences that are related, but not identical. A variant of this sequence alignment is used in the sequencing
process itself. The so-called shotgun sequencing technique (which was used,
for example, by The Institute for Genomic Research
to sequence the first bacterial genome, Haemophilus influenzae) does not
produce entire chromosomes. Instead it generates the sequences of many
thousands of small DNA fragments (ranging from 35 to 900 nucleotides long,
depending on the sequencing technology). The ends of these fragments overlap
and, when aligned properly by a genome assembly program, can be used to
reconstruct the complete genome. Shotgun sequencing yields sequence data
quickly, but the task of assembling the fragments can be quite complicated for
larger genomes. For a genome as large as the human
genome, it may take many days of CPU time on large-memory, multiprocessor
computers to assemble the fragments, and the resulting assembly will usually
contain numerous gaps that have to be filled in later. Shotgun sequencing is
the method of choice for virtually all genomes sequenced today, and genome
assembly algorithms are a critical area of bioinformatics research.
Another aspect of bioinformatics in sequence analysis is
annotation. This involves computational gene
finding to search for protein-coding genes, RNA genes, and other functional
sequences within a genome. Not all of the nucleotides within a genome are part
of genes. Within the genomes of higher organisms, large parts of the DNA do not
serve any obvious purpose. This so-called junk DNA may,
however, contain unrecognized functional elements. Bioinformatics helps to
bridge the gap between genome and proteome
projects — for example, in the use of DNA sequences for protein identification.
Genome annotation
In the context of genomics, annotation is the process of marking the genes and
other biological features in a DNA sequence. The first genome annotation
software system was designed in 1995 by Owen White, who was part of the
team at The Institute for Genomic Research
that sequenced and analyzed the first genome of a free-living organism to be
decoded, the bacterium Haemophilus influenzae. White built a
software system to find the genes (fragments of genomic sequence that encode
proteins), the transfer RNAs, and to make initial assignments of function to
those genes. Most current genome annotation systems work similarly, but the
programs available for analysis of genomic DNA, such as the GeneMark
program trained and used to find protein-coding genes in Haemophilus influenzae, are constantly
changing and improving.
Computational evolutionary biology
Evolutionary biology is the study of the
origin and descent of species, as well as their change over time. Informatics has assisted evolutionary
biologists by enabling researchers to:
- trace the evolution of a large number of organisms by measuring changes in their DNA, rather than through physical taxonomy or physiological observations alone,
- more recently, compare entire genomes, which permits the study of more complex evolutionary events, such as gene duplication, horizontal gene transfer, and the prediction of factors important in bacterial speciation,
- build complex computational models of populations to predict the outcome of the system over time
- track and share information on an increasingly large number of species and organisms
Future work endeavours to reconstruct the now more complex tree
of life.
The area of research within computer
science that uses genetic algorithms is sometimes confused with
computational evolutionary biology, but the two areas are not necessarily
related.
Comparative genomics
The core of comparative genome analysis is the establishment
of the correspondence between genes (orthology analysis) or other genomic features in
different organisms. It is these intergenomic maps that make it possible to
trace the evolutionary processes responsible for the divergence of two genomes.
A multitude of evolutionary events acting at various organizational levels
shape genome evolution. At the lowest level, point mutations affect individual
nucleotides. At a higher level, large chromosomal segments undergo duplication,
lateral transfer, inversion, transposition, deletion and insertion. Ultimately,
whole genomes are involved in processes of hybridization, polyploidization and endosymbiosis,
often leading to rapid speciation. The complexity of genome evolution poses
many exciting challenges to developers of mathematical models and algorithms,
who have recourse to a spectra of algorithmic, statistical and mathematical
techniques, ranging from exact, heuristics,
fixed parameter and approximation algorithms for problems
based on parsimony models to Markov Chain Monte Carlo algorithms for Bayesian
analysis of problems based on probabilistic models.
Many of these studies are based on the homology detection
and protein families computation.
Genetics of Disease
With the advent of next-generation sequencing we are
obtaining enough sequence data to map the genes of complex diseases such as infertility,
breast
cancer or Alzheimer's Disease. Genome-wide association
studies are essential to pinpoint the mutations for such complex diseases.
Analysis of mutations in cancer
In cancer, the genomes of affected cells are rearranged in
complex or even unpredictable ways. Massive sequencing efforts are used to
identify previously unknown point
mutations in a variety of genes in cancer. Bioinformaticians continue to produce specialized
automated systems to manage the sheer volume of sequence data produced, and
they create new algorithms and software to compare the sequencing results to
the growing collection of human genome sequences and germline
polymorphisms. New physical detection technologies are employed, such as oligonucleotide
microarrays to identify chromosomal gains and losses (called comparative genomic hybridization),
and single-nucleotide polymorphism
arrays to detect known point mutations. These detection methods
simultaneously measure several hundred thousand sites throughout the genome,
and when used in high-throughput to measure thousands of samples, generate terabytes of
data per experiment. Again the massive amounts and new types of data generate
new opportunities for bioinformaticians. The data is often found to contain
considerable variability, or noise, and thus Hidden Markov model and change-point analysis
methods are being developed to infer real copy number changes.
Another type of data that requires novel informatics
development is the analysis of lesions found to be recurrent among many tumors.
Gene and protein expression
Analysis of gene expression
The expression of many genes can be determined by
measuring mRNA levels with multiple techniques including microarrays,
expressed cDNA sequence tag (EST)
sequencing, serial analysis of gene expression
(SAGE) tag sequencing, massively parallel signature
sequencing (MPSS), RNA-Seq, also known as "Whole Transcriptome Shotgun
Sequencing" (WTSS), or various applications of multiplexed in-situ
hybridization. All of these techniques are extremely noise-prone and/or subject
to bias in the biological measurement, and a major research area in
computational biology involves developing statistical tools to separate signal from noise in
high-throughput gene expression studies. Such studies are often used to determine
the genes implicated in a disorder: one might compare microarray data from
cancerous epithelial
cells to data from non-cancerous cells to determine the transcripts that are up-regulated
and down-regulated in a particular population of cancer cells.
Analysis of protein expression
Protein microarrays and high throughput (HT) mass
spectrometry (MS) can provide a snapshot of the proteins present in a
biological sample. Bioinformatics is very much involved in making sense of
protein microarray and HT MS data; the former approach faces similar problems
as with microarrays targeted at mRNA, the latter involves the problem of
matching large amounts of mass data against predicted masses from protein
sequence databases, and the complicated statistical analysis of samples where
multiple, but incomplete peptides from each protein are detected.
Analysis of regulation
Regulation is the complex orchestration of events starting
with an extracellular signal such as a hormone and
leading to an increase or decrease in the activity of one or more proteins.
Bioinformatics techniques have been applied to explore various steps in this
process. For example, promoter analysis involves the identification and study
of sequence
motifs in the DNA surrounding the coding region of a gene. These motifs
influence the extent to which that region is transcribed into mRNA. Expression
data can be used to infer gene regulation: one might compare microarray
data from a wide variety of states of an organism to form hypotheses about the
genes involved in each state. In a single-cell organism, one might compare
stages of the cell cycle, along with various stress conditions (heat
shock, starvation, etc.). One can then apply clustering
algorithms to that expression data to determine which genes are
co-expressed. For example, the upstream regions (promoters) of co-expressed genes
can be searched for over-represented regulatory elements. Examples of clustering
algorithms applied in gene clustering are k-means clustering, self-organizing maps (SOMs), hierarchical clustering, and consensus clustering methods such as the Bi-CoPaM. The
later, namely Bi-CoPaM,
has been actually proposed to address various issues specific to gene discovery
problems such as consistent co-expression of genes over multiple microarray
datasets.
Structural bioinformatics
Prediction of protein structure
Protein structure prediction is another important
application of bioinformatics. The amino acid
sequence of a protein, the so-called primary
structure, can be easily determined from the sequence on the gene that
codes for it. In the vast majority of cases, this primary structure uniquely
determines a structure in its native environment. (Of course, there are
exceptions, such as the bovine spongiform encephalopathy –
a.k.a. Mad Cow Disease – prion.) Knowledge of
this structure is vital in understanding the function of the protein. For lack
of better terms, structural information is usually classified as one of secondary, tertiary and quaternary structure. A viable general
solution to such predictions remains an open problem. Most efforts have so far
been directed towards heuristics that work most of the time.
One of the key ideas in bioinformatics is the notion of homology. In the genomic branch of
bioinformatics, homology is used to predict the function of a gene: if the
sequence of gene A, whose function is known, is homologous to the
sequence of gene B, whose function is unknown, one could infer that B
may share A's function. In the structural branch of bioinformatics, homology is
used to determine which parts of a protein are important in structure formation
and interaction with other proteins. In a technique called homology modeling,
this information is used to predict the structure of a protein once the
structure of a homologous protein is known. This currently remains the only way
to predict protein structures reliably.
One example of this is the similar protein homology between
hemoglobin in humans and the hemoglobin in legumes (leghemoglobin).
Both serve the same purpose of transporting oxygen in the organism. Though both
of these proteins have completely different amino acid sequences, their protein
structures are virtually identical, which reflects their near identical
purposes.
Other techniques for predicting protein structure include
protein threading and de novo (from scratch) physics-based modeling.
Network and systems biology
Network analysis seeks to understand the
relationships within biological networks such as metabolic
or protein-protein
interaction networks. Although biological networks can be constructed from
a single type of molecule or entity (such as genes), network biology often
attempts to integrate many different data types, such as proteins, small
molecules, gene expression data, and others, which are all connected physically
and/or functionally.
Systems biology involves the use of computer simulations of cellular
subsystems (such as the networks of metabolites and enzymes which
comprise metabolism,
signal transduction pathways and gene regulatory networks) to both analyze
and visualize the complex connections of these cellular processes. Artificial
life or virtual evolution attempts to understand evolutionary processes via
the computer simulation of simple (artificial) life forms.
Molecular interaction networks
Interactions between proteins are frequently visualized and
analyzed using networks. This network is made up of protein-protein
interactions from Treponema pallidum, the causative agent
of syphilis
and other diseases.
Main articles: Protein–protein interaction
prediction and interactome
Tens of thousands of three-dimensional protein structures
have been determined by X-ray crystallography and protein nuclear magnetic
resonance spectroscopy (protein NMR) and a central question in structural
bioinformatics is whether it is practical to predict possible protein–protein
interactions only based on these 3D shapes, without performing protein–protein interaction
experiments. A variety of methods have been developed to tackle the protein–protein docking problem, though it
seems that there is still much work to be done in this field.
Other interactions encountered in the field include
Protein–ligand (including drug) and protein–peptide. Molecular
dynamic simulation of movement of atoms about rotatable bonds is the
fundamental principle behind computational algorithms,
termed docking algorithms, for studying molecular
interactions.
Others
Literature analysis
The growth in the number of published literature makes it
virtually impossible to read every paper, resulting in disjointed sub-fields of
research. Literature analysis aims to employ computational and statistical
linguistics to mine this growing library of text resources. For example:
- abbreviation recognition – identify the long-form and abbreviation of biological terms,
- named entity recognition – recognizing biological terms such as gene names
- protein-protein interaction – identify which proteins interact with which proteins from text
The area of research draws from statistics
and computational linguistics.
High-throughput image analysis
Computational technologies are used to accelerate or fully
automate the processing, quantification and analysis of large amounts of
high-information-content biomedical imagery. Modern image analysis systems
augment an observer's ability to make measurements from a large or complex set
of images, by improving accuracy, objectivity, or speed. A fully developed
analysis system may completely replace the observer. Although these systems are
not unique to biomedical imagery, biomedical imaging is becoming more important
for both diagnostics
and research. Some examples are:
- high-throughput and high-fidelity quantification and sub-cellular localization (high-content screening, cytohistopathology, Bioimage informatics)
- morphometrics
- clinical image analysis and visualization
- determining the real-time air-flow patterns in breathing lungs of living animals
- quantifying occlusion size in real-time imagery from the development of and recovery during arterial injury
- making behavioral observations from extended video recordings of laboratory animals
- infrared measurements for metabolic activity determination
- inferring clone overlaps in DNA mapping, e.g. the Sulston score
High-throughput single cell data analysis
Computational techniques are used to analyse
high-throughput, low-measurement single cell data, such as that obtained from flow
cytometry. These methods typically involve finding populations of cells
that are relevant to a particular disease state or experimental condition.
Biodiversity Informatics
Biodiversity informatics deals with the collection and
analysis of biodiversity data, such as taxonomic databases, or microbiome
data. Examples of such analyses include phylogenetics,
niche
modelling, species richness mapping, or species
identification tools.
Databases
Databases are essential for bioinformatics research and
applications. There is a huge number of available databases covering almost
everything from DNA and protein sequences, molecular structures, to phenotypes
and biodiversity. Databases generally fall into one of three types. Some
contain data resulting directly from empirical methods such as gene knockouts.
Others consist of predicted data, and most contain data from both sources.
There are meta-databases that incorporate data compiled from multiple other
databases. Some others are specialized, such as those specific to an organism.
These databases vary in their format, way of accession and whether they are
public or not. Some of the most commonly used databases are listed below. For a
more comprehensive list, please check the link at the beginning of the
subsection.
- Used in Motif Finding: GenomeNet MOTIF Search
- Used in Gene Ontology: DAVID, FuncAssociate, GATHER
- Used in Gene Finding: Hidden Markov Model
- Used in finding Protein Structures/Family: PFAM
- Used for Next Generation Sequencing: (Not database but data format), FASTQ Format
- Used in Gene Expression Analysis: GEO
- Used in Network Analysis: Interaction Analysis Databases(BioGRID, MINT, HPRD), Functional Networks (STRING, KEGG)
Please keep in mind that this is a quick sampling and
generally most computation data is supported by wet lab data as well.
Software and tools
Software tools for bioinformatics range from simple
command-line tools, to more complex graphical programs and standalone
web-services available from various bioinformatics companies or public
institutions.
Open-source bioinformatics software
Many free and open-source software tools
have existed and continued to grow since the 1980s. The combination of a
continued need for new algorithms for the analysis of emerging types of biological
readouts, the potential for innovative in silico
experiments, and freely available open code
bases have helped to create opportunities for all research groups to contribute
to both bioinformatics and the range of open-source software available, regardless
of their funding arrangements. The open source tools often act as incubators of
ideas, or community-supported plug-ins in commercial applications. They may
also provide de
facto standards and shared object models for assisting with the
challenge of bioinformation integration.
The range of open-source
software packages includes titles such as Bioconductor,
BioPerl, Biopython, BioJava, BioRuby, Bioclipse, EMBOSS, .NET Bio, Taverna
workbench, and UGENE.
In order to maintain this tradition and create further opportunities, the
non-profit Open Bioinformatics Foundation[23]
have supported the annual Bioinformatics Open Source
Conference (BOSC) since 2000.
Web services in bioinformatics
SOAP-
and REST-based
interfaces have been developed for a wide variety of bioinformatics
applications allowing an application running on one computer in one part of the
world to use algorithms, data and computing resources on servers in other parts
of the world. The main advantages derive from the fact that end users do not
have to deal with software and database maintenance overheads.
Basic bioinformatics services are classified by the EBI into three categories: SSS (Sequence Search Services), MSA (Multiple Sequence Alignment), and BSA (Biological Sequence Analysis). The availability
of these service-oriented bioinformatics resources
demonstrate the applicability of web-based bioinformatics solutions, and range
from a collection of standalone tools with a common data format under a single,
standalone or web-based interface, to integrative, distributed and extensible bioinformatics workflow
management systems.
Bioinformatics workflow management systems
A Bioinformatics workflow
management system is a specialized form of a workflow management system designed
specifically to compose and execute a series of computational or data
manipulation steps, or a workflow, in a Bioinformatics application. Such
systems are designed to
- provide an easy-to-use environment for individual application scientists themselves to create their own workflows
- provide interactive tools for the scientists enabling them to execute their workflows and view their results in real-time
- simplify the process of sharing and reusing workflows between the scientists.
- enable scientists to track the provenance of the workflow execution results and the workflow creation steps.
Education platforms
Software platforms designed to teach bioinformatics concepts
and methods include Rosalind and online courses offered
through the Swiss Institute of Bioinformatics
Training Portal.
Conferences
There are several large conferences that are concerned with
bioinformatics. Some of the most notable examples are Intelligent Systems for
Molecular Biology (ISMB), European Conference on
Computational Biology (ECCB), Research in Computational Molecular Biology
(RECOMB) and American Society of Mass Spectrometry (ASMS).
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