Urszula Demkow
Dept. of Laboratory Diagnostics and
Clinical Immunology of Developmental Age, Medical University of
Warsaw
Correspondence
urszula.demkow@litewska.edu.pl

Abstract
Advances in technology, especially in molecular biology,
allow for a fast expansion of diagnostic methods in routine
clinical practice. New proteomics and genomics technologies could
be used for disease specific biomarker discovery and to monitor
patient response to the therapy. Genomics and proteomics may also
help to establish new, molecular classification of the
disease. Applying genomic and proteomic methods to body
fluids (serum, cerebrospinal fluid, urine, etc) and tissue extracts
would place valuable objective analytical power in the hands of the
clinician however validation of those methods is an important
issue. The rapid expansion of the diagnostic tools based on
developments in proteomic and genomic technologies can be
fundamental for the development of personalized medicine.
Introduction
Nowadays in modern clinical laboratories chemical, hematologic
and immuno-chemical parameters can be efficiently measured
using automated equipment. Advances in technology with improved
understanding of molecular pathology, allow for a fast expansion of
diagnostic methods and multiplication of the parameters measured in
the laboratory. The development of miniature laboratory chips will
reduce the clinical sample and reagent volumes and allow more data
to be obtained in a shorter period of time (1). Currently
laboratory tests are used for diagnosis and monitoring of disease
activity or therapy. The future tests will focus on predisposition
testing, targeted monitoring, and prevention of diseases through
nutrition, lifestyle and drug therapy (2). Modern diagnostics is
changing from isolated medicine to personalized medicine (2). This
approach may create a greater opportunity to prevent diseases. The
rapid expansion of the diagnostic tools can be attributed to
developments in proteomic and genomic technologies.
Genomics
The human genome sequence was described in 2001, creating an
opportunity for personalized medicine (3). Genomics is a scientific
discipline that characterizes the complete genome of an organism.
Its primary approach is to determine the entire sequence of DNA and
the relations between different parts of the genome.
Transcriptomics is the part of the genomics that describes
mRNAs encoding individual proteins.
Genomics-based devices have the potential to become first line
tools to identify patients at risk for developing certain diseases
or predict unusual reactions to certain drugs. This knowledge could
be widely used in clinical medicine. Previously, genes for
monogenic or Mendelian disorders were easily discovered (4, 5).
Genomic's tools may allow to find genetic background for complex,
multi-factorial disorders like autoimmune diseases, cancer,
cardiovascular disorders or even schizophrenia (2, 4). The location
of numerous DNA markers can be compared in samples from patients
and healthy controls, and calculated statistical difference can
confirm or deny the linkage (4). Such investigations has been
undertaken in cancer or schizophrenia patients (2, 4).
An array of high-throughput technologies dedicated to genomics
research are used to characterize the biological function of genes
and genomes (6, 7, 8). For example PCR and DNA sequencing are
frequently used to search for genetic variants associated with the
development of a disease (8). Innovative, high-throughput
microfluidic systems and automating of the processes involved in
genomics research including: extraction and purification of
nucleic acids, set up of PCR reaction, automation of RT-PCR as well
as the separation and direct detection of DNA and RNA, are on the
development too (9, 10, 11). These advanced technologies combine
microelectronics with molecular biology tools. The study of gene
expression is enabled through microarrays and qRT-PCR techniques
that measure RNA levels related to specific gene transcription
processes, as well as other RNA-mediated processes
(12).
A gene microarray (gene chip) is a miniaturized slide that carries
numerous probes of nucleic acids, which are arranged in a grid
pattern on the chip. Microarrays are useful because of their small
size and because they can examine a very large number of genes.
Microarrays can rapidly provide a detailed view of the simultaneous
expression of all the genes (around 30 000) in an entire
genome, and provide new insights into gene function, disease
pathology and classification, and drug development (13). The main
challenge in microarray technology results from the technical
complexity of the process and the large amounts of data generated
in the experiment (12, 13).
Advanced array technologies includegenome sequencing, genotyping,
transcriptome analysis but also protein analysis, functional cell
microarrays and tissue microarrays (14). Genomic microarrays enable
to measure the expression of genes under different medical
conditions. A small amount of body fluid has the ability to look at
30 000 genes (12, 13, 14). Genomic microarrays may become useful in
early screening of diseases such as lung cancer, which usually are
not diagnosed until they are advanced and less treatable (15). In
the future, microarray-generated data may help clinicians with
earlier cancer classification and diagnosis. The emergence of
high-throughput microarray profiling allowed the rapid and
economical assaying of thousands of gene's expression levels.
Whenever genetic material from a patient's sample is placed on the
DNA chip, the probes react (6, 8, 13, 14). Those reactions can be
detected and used to screen for the presence of particular genetic
sequences, such as those related to diseases or can predict unusual
reaction to certain medications (6, 8). For example cytochrome P450
genotyping tests detects variations in a gene that affects liver
metabolism of certain drugs, such as antidepressants,
antipsychotics and selected chemotherapeutic agents (16). Then the
drug's dosage for an individual patient can be adjusted.
Microarray technologies under development include search for
genotypes related to different types of cancer, allergy, autoimmune
diseases, cystic fibrosis and genes having impact on drug
metabolism and response (6, 16). Specific medical applications will
also include screening for inherited genetic disorders (such as
amyotrophic lateral sclerosis and muscular dystrophy), combating
diseases of the nervous system (such as Alzheimer's disease,
Parkinson's disease and new variant Creutzfeldt-Jakob disease),
cardiovascular diseases, rare diseases, as well as for detection of
infectious agents (14, 15, 16, 17). For example, cystic fibrosis
genomic tests find genetic variations in one of the genes
that causes cystic fibrosis - the most common fatal genetic
disease. Those tests help to diagnose cystic fibrosis in children
and identify adults carrying the defective gene (18). Other
projects being studied are the diagnostic gene expression
microarrays for allergy. Microarrays are currently used to search
for the antigen HLA B27 in rheumatic disease patients and HLA DQ2,
DQ8 in celiac disease (20).
New methods for array-based resequencing include oligonucleotide
fingerprinting, iFRET technology to detect hybridization, nanoscale
hybridizations in nanowells, and MALDI mass spectrometry to detect
oligonucleotide composition (21). A high throughput resequencing
device may become a very competitive tool, which would create
possibilities for genome-wide sequence evaluation of patient
biological material as a routine procedure (21, 22). Moreover
monitoring the activity of a genome by measuring mRNA expression
levels provides important biological insights.
Another recently introduced method is RNA interference (RNAi), an
effective mechanism for selective inhibition of gene expression
which, has become the preferred method for inhibiting expression of
targeted genes (23). As well as functional genomics applications,
it also shows tremendous potential for diagnostics and
therapeutics. RNAi libraries covering the entire genome are being
developed to secure a functional validation of gene targets.
Recent clinical studies demonstrate that expression analysis of
large gene sets can identify molecular profiles correlated to
disease states, which may be used for the construction of
diagnostic tools (24, 25). However, frequently, the molecular
characterization of clinical sample is limited by the available
volume of sample. Amplification of the starting material or of the
signal to be detected, or frequently miniaturization of the method
can help to overcome this problem (24, 25). Novel means are also
required to measure gene expression with allele-specific and
splice-variant-specific profiles (24, 25). The above mentionned
technologies will likely be a big step from bench to bedside.
However, the performance of a microarray-based method has to be
properly evaluated before transfer to the clinic. These methods
need to be highly automated, miniaturized, easy to use and
inexpensive as well as must assure the ability to analyze DNA
sequences accurately and rapidly. The expansion of microarray-based
technologies will probably have a major impact on the evaluation of
laboratory tests as diagnostic tools. However, advanced techniques
such as microarrays leave many opportunities for errors. The lack
of standardization for naming and identifying the genes used on
different DNA microarray platforms could cause potential errors.
Before microarrays can be consistently and reliably used in
clinical practice, and in decision making, standards, quality
control, and interpretation issues need to be settled (26).
Proteomics
Although genomic data may discover novel information on the
pathogenesis of numerous disorders, finding useful diagnostic
laboratory markers may be within the scope of proteomics (27). Gene
expression does not consistently correlate with protein
expressions, and cannot identify post-transcriptional and
post-translational modifications, major modulators of protein
function (4, 28). In the "post-genomic" era, the progress is
towards examining proteins as the main effectors of physiological
functions (4). Detailed characterization of the proteome (total
body proteins) is a major goal of proteomics, that analyses disease
mechanisms by examining changes in the patterns of proteins in
patient's body fluids and tissues. The analysis of complex protein
mixtures such as serum, other body fluids or tissues by profiling
hundreds of proteins in the same time, creates pattern of response
characteristic for various cellular states or disease conditions.
Detailed proteome analysis has become more realistic today with the
high-resolution mass spectrometers capable of faster sequencing in
a high-throughput fashion and with the emergence of new techniques
such as microarrays. A promising area is the application of
advanced mass spectrometric and other quantitative proteomic
methodologies to laboratory diagnostics (28, 29, 30). The
major proteomic projects of the last decade have shaped
proteome-wide sequencing, mapping, and analysis (4). For example,
the creation of the Human Proteome Organization's Human Brain
Proteome Project foster the effective international exchange of
brain related proteomic data (4, 31). Complex diseases are now
rapidly investigated by novel high-throughput biochemical
technologies to uncover disease activity, clinical markers, and
drug targets. Such diagnostic technologies will lead to
personalized medicine.
Opposite to the genome, the proteome is composed of an active
array of molecules constantly being modified and with special
localization. Proteomic approaches are able to characterize also
post-translational modifications, by which the cell quickly
modifies protein functions. Protein profiling and identification
techniques using advanced mass spectrometry and bioinformatics can
lead to the discovery, identification, and characterization of
protein biomarkers (32). Comprehensive proteomic profiling is able
to identify thousands of proteins from various clinical
samples. Comparison of the proteomes of patient's and control
sample may result in the identification of diseases specific
proteins.Similar to gene expression profiling, several protein
profiling techniques do not require a priori knowledge of
candidate proteins (4). New tools for highly specific, sensitive,
parallel protein analyses both in body fluids and tissue extracts
will make a profound impact on clinical diagnostics in the near
future. Profiling the proteomes of diseased and healthy tissues
allows for the discovery of peptide or protein molecular change,
which potentially reveals information on pathogenesis or diagnosis,
or both (4).
Current proteomic research follows at least two pathways. In the
first, the identification of proteins in patient's samples can be
used as diagnostic or prognostic disease markers. The second goal
is to discover cellular proteins related to the response to various
therapies. Once tools for conducting comprehensive proteome
analysis became available, much of the interest turned towards
analyzing proteins for the purpose of finding novel biomarkers of
diseases, such as cancer (33). In the future, the ability to
routinely identify thousands of proteins in the body fluids will be
available. Because of the unique protein content of these samples,
strategies for removing highly abundant proteins needed to be
developed (33). Several highly expressed proteins, particularly
serum albumin, transferin, and immunoglobulins, often mask lower
abundance proteins. Thus purification measures to fractionate and
better resolve protein population have to be undertaken. One of the
biggest challenges in finding biomarkers in clinical samples was
throughput. To obtain the identification of thousands of proteins
in a sample a high throughput technique is needed (33). Unless
there is a major breakthrough in technology, biomarker discovery
studies using comprehensive proteomic identification will remain
low-throughput compared to genomic microarray analysis.
Initial proteomic studies relied on 2D-gel electrophoresis, which
separates proteins based on isoelectric point and molecular weight
(4). This process has limited reproducibility, is complicated and
not robust. Moreover weakly soluble proteins cannot be easily
resolved and only a tiny portion of the proteome can be effectively
stained. Another shortcoming of this method is that low-level
expressed proteins can be masked by greater expression within a
similar molecular weight or isoelectric point, or both. Edgar et
al. applied this approach to the hippocampal proteome of
schizophrenia patients (4, 34).
Proteomics advanced dramatically with the advent of mass
spectrometric analysis for peptides (MALDI) (27, 35). There are
four steps in mass spectrometry. First, the ion sourcegenerates
ionized proteins from the sample. Second, the mass analyzersorts
and resolves proteins based on their mass/charge ratio. Third, the
ion detectorspots the ions and composes data on the ion mass/charge
ratio, quantity, and time of flight (TOF), or the time it took to
reach the detector. Finally, bioinformatic analysis
allowsinterpretation of the raw data (30, 31, 32). After a mass
spectrometry run, in a process called peptide mass fingerprinting,
the peptides are arranged into several databases to allow protein
identification. Although peptide mass fingerprinting is a method of
protein identification, it often requires extensive and often
complex purification, as it tenders to interpret protein match by
peptide masses rather than by sequences (30, 31, 32). Mass
spectrometry has evolved to incorporate tandem mass spectrometric
technology that permits effective sequencing. The MALDI-TOF is an
advanced technology, a cutting-edge proteomic tool with direct
amino acid sequencing and characterization capabilities (27, 30,
32). As mass spectroscopy continues to improve, it may replace
immunoassays as the best method for measuring specific analytes in
biologic samples.
Surface Enhanced Laser/Desorption Ionization (SELDI), a variation
of MALDI, is a new generation of mass spectrometric analysis,
and offers better accuracy with built in chromatography (27, 30 31,
35). The central technology platform is a protein chip mass
spectrometer, which uses a powerful new approach (surface-enhanced
laser desorption/ionization time-of-flight mass spectrometry, or
SELDI-TOF MS) to the analysis of complex protein mixtures such as
serum and tissue extracts by profiling hundreds of proteins in the
same time, thus creating characteristic patterns related to various
cellular states or disease conditions (27, 35). Each chip contains
a unique chromatographic surface for selective protein capture. The
recent emergence of methods for rapid profiling thousands of
protein markers by use of mass spectrometry has raised hope for the
rapid identification of novel cancer biomarkers (27, 35). Specific
questions concerns the reproducibility of SELDI-TOF, possible
changes in protocols, calibration, and the ability of SELDI to
detect low-abundance tumor markers. Additionally, observations that
spectra can vary depending on analytical factors such as the time
of processing have been noted during large profiling experiments
(27, 36). Semmes et al demonstrated that relevant part of SELDI-TOF
profiles can be measured reproducibly and used to distinguish a
reference set of prostate cancer samples from controls (27, 37).
This study was an encouraging step toward defining the analytical
reproducibility of serum proteome profiling, although it
highlighted the need for rigorous calibration of instruments and
adherence to standardized technical procedures (27, 37). Although
promising, the variation attributable to differences in sample
collection and other sources of preanalytical bias that can be
expected in routine clinical practice (27). A more comprehensive
list of issues that must be addressed to understand the effects of
preanalytical, analytical, and postanalytical factors on SELDI-TOF
and matrix-assisted laser desorption/ionization (MALDI)-TOF
profiles has recently been proposed (27, 38). The data provide
evidence that preanalytical and analytical variation can affect
profiled markers, and this must raise awareness of the strong risk
for bias in serum profiling experiments that are not carefully
controlled (27, 38).
Functional studyemployed the profiling and sequencing properties
of tandem mass spectrometric analysis. However, several studies
have demonstrated the potential of this technology in determining
the complexities of the dynamic proteome (4). Sequence analysis can
detect important post-translation protein modifications such as
methylation, acetylation, sulfation, phosphorylation,
ubiquitylation and glycosylation (4, 39, 40). Protein detection can
be performed on microarrays, however heterogeneity and relative
instability of proteins is a challenge (29, 41). Current research
focus both on protein microarray construction and molecular
strategies for specific and sensitive detection (29, 41). Antibody
arrays can be used for protein expression studies and as diagnostic
and discovery tools in autoimmunity (42).
One of the important tools in clinical proteomics are tissue
microarrays (43). They allow to analyze hundreds of tissue
specimens in the same time. Tissue arrays investigate the
distribution of proteins directly at the disease site (43). The
obtained results can be assessed manually or automatically and can
be analysed together with clinical data (43).
An important issue in the search for potential diagnostic marker
is validation of diagnostic method (44). At the validation stage,
thousands of samples must be analyzed, therefore the throughput of
the method is of tremendous importance. Another very important
distinction between analysis of proteins at the discovery and
validation stage involves the stringency in quantitation of the
analytes (44, 45). In the discovery phase, measurements
quantitating differences in analytes between samples usually are
not particularly accurate or precise (44). The confidence level in
very small differences in abundance between analytes in different
samples is generally low for mass specrometry measurements of
complex peptide mixtures (44, 46). This low confidence level is
tolerated for the sake of throughput and knowledge that any
potential marker will necessarily go through a rigorous validation
before it is ever used in a clinical setting (44). Another
important issue in validation is low specificity of majority of the
potential disease-specific biomarkers. Many of these proteins
belong to acute-phase proteins whose concentrations universally
change in response to infection or inflammation (44). Other
proteins that have been reported to be potential biomarkers are
induced by factors such as diet and medication and may have
absolutely no relationship to the underlying disease (44).
Unfortunately these proteins generally rank among the highest
abundant proteins in serum or plasma (44).
Correct patient recruitment is another challenge in biomarker
discovery and validation (44). The challenge is considerably
greater in validation simply because a much larger number of
samples need to be analyzed. For validation study patients must be
randomly selected with the correct demographics, medical history
and lifestyle. Beyond patient samples, proper controls must also be
acquired from individuals with similar demographics as the patients
but being disease-free (44). Calculations need to be performed to
determine the number of cases and controls that provide adequate
statistical power once the results are analyzed. By incorporating
proteins as standards, more robust absolute quantitation can be
achieved by introducing the standards into sample preparation as
early as possible, and even more important, to easily monitor
multiple peptides derived from the same protein. To carry out
global absolute quantitative proteomics, Silva et al.
developed a method based on the discovery that the average mass
spectrometry signal for the three most intense tryptic peptides per
mole of any protein is constant within a coefficient of variation
of less than ±10% (44, 47). Based on this hypothesis absolute
protein amounts for all identified proteins in a sample can be
calculated on the basis of an internal standard protein at
known concentration. (44). All of the above practical issues can be
important for the successful biomarker discovery and validation
(44).
The number of diagnostic tools has been steadily expanding since
the advent of modern medicine. New -omics technologies will allow
thousands of results per sample to be generated. Novel clinical
tests could be used to determine therapy type, duration, and dose;
and its efficiency. Genomics and proteomics may also reveal
distinct etiologies and subtypes for better classification of the
disease. Applying genomic and proteomic methods to clinically
accessible body fluids (e.g., serum, cerebrospinal fluid, and
urine) would place valuable objective analytical power in the hands
of the clinician (33, 41, 48). With personalized medicine, therapy
will be based on individual patient characteristics that
become known through bioinformatics. The expected results will give
the response rates close to 100%, as well as increased survival
rates, improved quality of life, cost savings, and reduced
morbidity and mortality. For several years proteomics research has
been expected to lead to the finding of new markers that will
translate into clinical tests applicable to numerous clinical
samples such as serum, plasma and urine (33, 41, 48). Attempts to
implement technologies applied in proteomics, in particular protein
arrays and surface-enhanced laser desorption ionization
time-of-flight mass spectrometry (SELDI-TOF MS), as diagnostic
tools have initiated constructive discussions on opportunities and
challenges. Genome and proteome-based research offer the promise of
more effective diagnostic tools, greater understanding of an
individual's healthcare needs, and targeted treatments for diseases
that affect a vast majority of the population such as cancer,
diabetes and cardiovascular disease (49, 50). The role of
genomics and proteomics in health care is increasingly driven by
the need for integrated approaches to disease prevention, earlier
diagnosis and overall response to therapy - the new era of
personalized medicine (24, 25, 50).
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