Review and Perspective Infectious Diseases Biobanking as a catalyst towards personalized medicine: M. tuberculosis paradigm
Fotini Betsou1*, Shreemanta K. Parida2, Martine Guillerm3
1Integrated Biobank of Luxembourg; 6 rue Ernest Barble, L-1210 Luxembourg
2Vaccine Grand Challenges Program, Dept. of Biotechnology, Govt. of India, New Delhi,
3The UNICEF/UNDP/World Bank/WHO Special Programme for Research and Training in
Disclaimer: The opinions expressed in this article are those of the authors and are not to be
construed as official or as representing the opinion of respective organizations. Keywords: infectious diseases, tuberculosis, biobank, biomarker
*Corresponding author: F. Betsou, Integrated Biobank of Luxembourg, 6 rue Ernest Barble,
L1210 Luxembourg. Tel. 0035227446456. Fax 0035227446464. Email
Abstract
Research for biomarkers supporting personalized medicine in infectious diseases is needed,
especially for tuberculosis in which the existing toolbox does not yet address the public health
priorities. Biobanks are essential infrastructures in this effort by collecting, authenticating and
preserving human and/or bacterial specimens. A broad range of specimens should be collected
prior to, during and following treatment, with a comprehensive characterisation of the sample
donors and the samples themselves to accommodate the most recent technological platforms
in biomarker research. This review explains current state-of-the-field biobanking practices in
tuberculosis and suggests technical and managerial improvements to ensure long-term
preservation and optimal use of the specimens. Open-access and certified biobanks are an
essential component of a strategy supporting the development of drugs and diagnostic tests for
both public health and personalised medicine. Biobanks have a role to play in the interaction
between these two - not always compatible - approaches. Introduction
Tuberculosis is a major public health problem which infects one third of the world population
and kills more than two million people every year1. The progression of M. tuberculosis
infection to disease manifestations characterized by chronic granuloma and caseation
necrosis, or containment of the disease manifested by granuloma formation with arrest of
on resistance and immune responses of the host. The
granuloma formed as the result of the infection may either resolve or progress to massive
necrosis of lung tissue, or develop into a chronic lesion. Though TB primarily affects lungs, it
can also affect other organs such as lymph nodes, bones, gastro-intestinal system, genito-
urinary system, skin and even eyes. The diagnostic specimens (though predominantly are
fresh sputum and blood) may thus include gastric washings, urine, pleural fluid, cerebrospinal
fluid, joint fluid or biopsy material.
The differential development of clinical disease probably has a genetic component. This has
not been clearly delineated but seems to involve the natural resistance associated macrophage
protein 1 (NRAMP1), which regulates macrophage activation2. The relatively low proportion
of individuals who progress to active disease after infection can probably be ascribed to innate
resistance in most infected individuals, since vaccination using BCG or a previous episode of
TB does not work reliably or effectively to confer protection in high burden parts of the
world3. Environmental factors, such as under-nutrition and various other “personal” factors,
including age, cell-mediated immunity, anti-inflammatory treatments, and coexisting diseases
(diabetes, other infections) may also influence the disease outcome.
Multi-drug resistance to both isoniazid and rifampin is an increasing worldwide problem and
second-line drugs, such as kanamycin or ofloxacin, are more toxic and/or less effective. In
addition to the threat of multi-drug resistance (MDR) TB, the last few years have seen an
explosion of the newly-emerging threat of extensively-drug resistant (XDR) TB which is
resistant to isoniazid and rifampin plus resistant to any fluoroquinolone and at least one of
three injectable second-line drugs (i.e. amikacin, kanamycin or capreomycin) 4. Significant
research efforts are oriented towards identification of biomarkers with potential application as
vaccine antigens (immunogenic virulence factors), as early and specific diagnostic tools of
latent or active disease, prognostic tools of severity of disease, and as predictive tools of
response to therapeutic regimens5, 6, 7. Early response to treatment might be an indication for a
shortened course of antibiotic therapy. This response pattern potentially affecting treatment
time is why early classification of patients into risk groups requiring different durations of
antibiotic therapy may be important in improving adherence and clinical outcome - which is
the goal of personalized medicine (the right treatment to the right patient at the right time, and
Biobanks, as organized collections and providers of biospecimens, have become strategic and
essential tools in research efforts for identification and validation of surrogate biomarkers.
Biobankers collect, authenticate, preserve and offer independent access to biological
materials, such as specimens and cultures for research purposes. Biospecimens are prepared in
multiple aliquots for long-term storage so that future researchers will be able to use them as
new technologies and knowledge evolve over time. In the area of infectious diseases, human
material of infected sample donors and isolated microbial strains are key elements of such
biobank initiatives. In this case, microbial strains isolated from culture of collected human
samples correspond to derivatives of these samples. Other derivatives include host and
characterization/authentication of the derivative strains is crucial for correct diagnosis as well
as for epidemiological analyses and our understanding in the spectrum of pathogenesis of the
disease with different variants. These efforts are critically important, for both prevention of
disease transmission and efficient use of the stored samples in research. In this paper, we
argue that biobanks need to guarantee the authenticity and reliable characterization of all the
supplied biomaterials, in order to fully realize their value as enhancers of research towards
personalized medicine and public health amelioration in the infectious diseases area, and we
use the M. tuberculosis as example. Definitions:
A ‘bank’ is a place where individuals or groups deposit their own assets for short- or long-
term periods. The bank holds it safely for them, uses it, takes care of it (and protects its value)
- but doesn’t own it. And a depositor is free to withdraw his/her assets anytime. Similarly, a
biobank is a facility for safekeeping and storage of biological specimens for research.
Research participant: A research participant is someone who freely consents to be part of a
prospective research project (not usually the case in retrospective research).
Sample donor: A ‘sample donor’ is someone who freely consents to make a gift /‘donation’,
independent of a specific research project. The status of M. tuberculosis biobanking
Apart from collections of biological material which may be stored in hospitals or clinical
laboratories, organized M. tuberculosis biobanks are very few. Organized biobanks, having
established procedures and technologies for the systematic collection, annotation and very
long term preservation of biospecimens, are expected to achieve both the necessary quantity
and quality of samples to allow efficient research to be conducted. In terms of numbers of
donors, and assuming a 5% relapse rate after initial therapy of drug sensitive TB patients over
a 6-9 months period, a biobank should collect samples from at least 2,400 donors, in order to
be able to provide 120 recurrence cases. Assuming a 25-35% relapse rate of MDR TB patients
over the same period, a biobank should collect samples from at least 350-480 drug resistant
patients, in order to be able to provide 120 recurrence cases. The numbers must be adequate to
differentiate in the test systems to give statistical power for meaningful conclusions and
sufficient to provide reference intervals of newly identified biomarkers. Guidelines
promulgated by the Expert Panel on Theory of Reference Values of the International
Federation of Clinical Chemistry (IFCC) specify that a minimum sample size of 120 reference
subjects should be used for estimation of a reference interval8. The ideal sample type for
reliable tuberculosis biomarkers is still unknown; therefore, as many different types of
samples as possible should be collected (within funding capabilities).
The TB Immunology Group Research Tissue Bank in the UK has announced collection of
blood, sputum, urine, pleural fluid, pleural biopsies, pericardial fluid, ascitic fluid, CSF,
bronchoalveolar lavage specimens, transbronchial lung biopsies, open lung biopsies, renal,
adrenal, liver, gastric/bowel, laryngeal, muscle, bone marrow, lymph node and skin biopsies,
to be used in collaborative research studies on the physiopathology of tuberculosis
The Global Alliance for TB Drug Development (TBA) has launched the REMox TB clinical
trial incorporating moxifloxacin treatment ().
Funding has recently been secured, allowing development of a biobank. This biobank will
collect whole blood, RNA of M.tuberculosis strains, sputum, and urine from study
participants with tuberculosis undergoing treatment in the trial.
proposed the establishment of a Consortium for TB Biomarkers (CTB2) with the National
Institute of Allergy and Infectious Diseases (NIAID)’s AIDS Clinical Trials Group (ACTG)
and the U.S. Centers for Disease Control and Prevention (CDC)’s TB Trials Consortium
(TBTC), to combine their biorepository efforts in order to 1) agree on standards for collection,
processing and storage of a core set of relevant samples, including use of common data
standards and elements, where possible; 2) establish an appropriate Biorepository of the
agreed upon samples, and 3) establish a peer review system for making the samples available
to qualified scientists throughout the world for TB biomarker and diagnostics discovery and
development, to enable discovery and ultimately qualification of biomarkers of TB drug
effect, including a marker of stable TB cure vs. relapse as
communication, E. Gunter, A. Ginsberg).
The WHO/TDR( World Health Oragnization Special Programme for Research and Training
in Tropical Diseases) assembled a collection of well characterized serum, saliva, sputum and
urine samples using a standardized protocol for prospective collection, characterization,
storage and maintenance. Samples were collected in collaboration with research teams from
13 different countries worldwide from untreated TB suspect patients. Clinical and biological
information is recorded from each patient. The WHO/TDR TB Specimen Bank applies an
open access policy through which specimens are available for no cost, (except shipping and
distribution fees) to any scientist or diagnostic product developer after examination of the
request by an independent scientific Review Committee. The TDR Specimen Bank is the only
open-access collection of samples from well-characterized patients from different geographic
locations representing a wide spectrum of samples from different patient cohorts, which are
made available to any researcher or organization interested in developing diagnostic tools for
use in poor resource settings. Since its formal launch in 2000, 95 applications have been
reviewed and 65 (68%) approved for use by interested investigators across the world. The
specimen bank was intended to stimulate commercial R & D for simple point-of-care assay
development, set high standards of quality for tools in development, assist in quality control,
limit the need for field trials, facilitate the approval process and simplify direct comparison of
new and existing diagnostic kits. For 10 years this biobank has been approached by private
companies and academic researchers and facilitated the development and the evaluation of a
characteristics of the main TB biobanking initiatives. From biobanks to personalized medicine
Most of the discourse around personalized medicine is focused around cancer because of its
higher prevalence in affluent countries9. However, personalized medicine also applies to
infectious diseases treatment, and is not limited simply to avoiding penicillin administration
to allergic patients. Surrogate and “personalized” biomarkers are now needed to classify
patients in genetic predisposition groups; to administer the most appropriate antibiotics for the
most appropriate durations, to accurately and differentially diagnose primary active infections
from chronic infections, re-infections, or reactivations; and to adjust vaccine administration to
previous immune status and/or HLA background. In this perspective, TB represents a case
where effective implementation of surrogate biomarkers could allow stratification of patients
before starting chemotherapy, and thus have a significant impact on the global burden of the
disease. Therapy could become more efficient, and resistance due to patient non-adherence
could be diminished, and evaluation of novel anti-tuberculosis drugs could also be
accelerated10. Moreover, there is a need for effective personalized prognostic biomarkers in
clinical trials, since the only unequivocal clinical end-point to date is bacteriological cure at
the completion of therapy and absence of relapse for one to two years, which makes the
duration and cost of such clinical trials extremely high.
Table 2 provides a summary of examples of research with potential personalized medicine
applications. Predictive, prognostic and diagnostic studies have indicated multiplex
signatures, based on either soluble markers or gene expression levels. Multiplex biosignatures
are generally more promising in terms of diagnostic performance than single biomarkers.
These recent studies have broadened our understanding in deciphering the disease
pathogenesis and thereby paving the way for development of better diagnostics, therapeutics
and vaccines. However, the introduction of these biomarkers in clinical practice is still
pending reproduction of the initial results in validation population sets.
Finally, personalized approaches do not only concern the patient himself, but also the
bacterial strains. Closely related clinical isolates of M. tuberculosis have been shown to vary
as related to a significant number of their structural and functional proteins by iTRAC
proteomics analysis24. Genotypically, distinct phylogeny of Mtb has been described with
specific geographic prevalence which has been implicated in the disease diversity25. In this
respect, TB represents a particular challenge, since different bacillary sub-populations, with
different anatomical localisations and metabolic profiles can coexist in a patient and semi-
dormant bacillary populations could be more resistant to antibiotics. Most of the currently
used anti-tubercular drugs act on the multiplying Mtb, hence less efficient on the
metabolically altered Mtb sub-populations representing persisting or dormant bacilli.
Despite the important number of studies performed, very few biomarkers have succeeded in
entering clinical practice. The example of interferon-gamma release assays (IGRA) from
PBMCs, incubated with mycobacterial antigens, is borderline, since IFN- can hardly be
considered as a “specific” biomarker. All of these studies are based on the analysis of human
samples or microbial derivatives. Thus, the accurate characterization and the biomolecular
quality of the samples used have a direct impact on the validity and applicability of the
results. Yet, not all studies use samples from well-organized biobanks as either test or
validation sets26. Moreover, as it always happens with retrospective studies, establishment of
associations is not informative on whether the biomarker is a cause or a result of the
corresponding clinical endpoint, and does not guarantee predictive value at the individual
level. For instance, IFN- in sputum or sIL-2R in serum have both been independently
associated to treatment response but their predictive value is unknown27, 28. Prospective
studies, and thus prospective biobanking with high traceability of the follow-up of the sample
donors, are required for this purpose. Critical factors in the catalysis of personalized medicine by biobanking Types and processing of samples
The type and processing of biospecimens may differ depending on the anticipated end-use. It
is often difficult for a biobank to anticipate all the different future uses of the samples;
therefore, the most stringent processing requirements should be followed for the biobank to be
able to provide samples to as many researchers as possible.
Mycobacterial infection can be localized or systemic; therefore, the types of samples that can
be collected during clinical practice include body secretions, exudates, tissue, or fluids. Using
left-overs from clinical diagnostic procedures for biobanking purposes is generally not the
optimal practice. Instead, specimens dedicated to biobanking and research should be collected
at the same time with specimens for clinical diagnosis, but in separate containers and
processed through separate standardized workflows. As usual, the devil is in the sample
processing details and in each processing method’s critical steps. Specimens intended for microbiological analyses:
Direct detection of Mycobacteria can be performed by smear microscopy or culture.
Mycobacteria are relatively resistant to chemical agents because of the hydrophobic nature of
the cell surface with high lipid content and their clumped growth. Therefore, tubercle bacilli
may survive for long periods in dried sputum. Furthermore, the intracellular localization of
mycobacteria in monocytes, reticuloendothelial cells, or giant cells facilitates microbial
persistence. Specimens intended for direct diagnosis by acid-fast stains or culture from non-
sterile sites, such as sputum, can be liquefied with 2% N-acetyl-L-cysteine, decontaminated
with 1% NaOH, neutralized with buffer, and concentrated by centrifugation. However, best
practice is to send unenriched specimens to a reference laboratory to increase the efficiency of
strain identification. First morning sputum and urine samples are optimal for recovery of acid-
fast bacteria. It is recommended to separately process at least two sputum samples during a
two-day period; one on the spot sample and the second on a next morning sample (some
countries use three samples; however, two samples identify 95% of smear-positive cases)29.
In cases of suspected renal tuberculosis, three consecutive first morning urine specimens
should be submitted to the reference laboratory. Sputum and urine specimens should be
processed within 2 hours from collection. If a delay of more than two hours is anticipated,
urine and expectorate sputum should be refrigerated, whereas induced sputum should be kept
at room temperature for a maximum of 24 hours30. Since children are often unable to produce
sputum, tracheal aspirates can be collected in pediatric populations. When a specimen is
centrifuged to sediment the mycobacteria, the relative centrifugal force (RCF) applied is also
a critical factor and should be at least 3000 x g for 15 minutes31. If culture is performed, the
selections of optimal media, inoculation, incubation conditions, and decontamination are all
critical issues. Most gram-positive antimicrobials cannot be used, since they will also inhibit
mycobacteria. Suspensions of positive primary cultures, adjusted to the McFarland No. 1
turbidity standard, can be stored at -70 °C ± 10 °C.
Blood samples to be used for identification of mycobacteria by today’s standard methods
should be collected in either sodium polyanethosulfonate (SPS) or heparin-containing tubes,
but not in EDTA or ACD tubes31. The delay between collection and separation should not
exceed 24 hr at room temperature. However, Nucleic Acid Amplification Tests (NAATs) for
direct detection of mycobacteria in clinical specimens involve processing steps such as heat,
sonication, alkali and/or nonionic detergent treatment. Contrary to the above specifications, in
this case, heparin collection tubes should be avoided, and EDTA tubes are preferred. Specimens intended for non-microbiological analyses:
If samples are intended to be used for immunological, molecular biology, or proteomic
analyses, critical in-vitro preanalytical steps should be accurately recorded for biological
fluids or solid tissues collected. For biological fluids, this information includes type of
primary collection tube, pre-centrifugation time delay and temperature, centrifugation
conditions, post-centrifugation time delay and temperature, and long-term storage duration
and temperature. For solid tissues, this descriptive information includes warm and cold
ischemia times, type and duration of fixation, and long-term storage duration and conditions32.
Finally, if metabolomics applications are anticipated, in-vivo preanalytical data, including the
time of the day when the blood or urine samples were collected, medications, and food intake
should also be collected and recorded in appropriate capability databases. A review of
Standard Operating Procedures (SOPs) for different types of biospecimens being collected
and processed in the context of tuberculosis biobanks is currently under preparation by the
London School of Hygiene and Tropical Medicine (personal communication, G. Eckhoff, R.Characterization of samples
Accurate characterization of the samples supplied by a biobank concerns both the
authentication and the integrity of the biomaterial. When a biobank supplies a serum from a
patient with acute M. tuberculosis infection, this should indeed represent M. tuberculosis, true
acute infection status (authenticity), and the serum sample should not have been compromised
by any type of pre-analytical bias. Initial characterization of the bacterial strain, which is a
derivative of the sputum sample, should be performed by a gCLP (Good Clinical Laboratory
Practice), CLIA (Clinical Laboratory Improvement Amendments) or ISO15189 (Medical
Laboratories - Particular Requirements for Quality and Competence)-compliant subcontracted
laboratory, unless the biobank itself runs such a facility.
Method validation is an important aspect in all sample or derivative characterization assays.
Method validation allows confidence that detected differences are due to different clinical
populations, and not to different organism strains, different human genetic backgrounds, or
different methodologies. For instance, with each analysis, and whenever new reagents are
introduced, a known positive and a known negative sample should be incorporated. In
comparative studies of cytokine levels in culture supernatants, it may be important to verify
through lot-testing that blood collection tubes do not contain any endotoxin which may induce
cytokine production during subsequent culture of blood cells. This time, the devil is in the
assay’s details and in each assay method’s critical steps.
If phenotypic methods are used for strain identification, growth rate, pigment production,
microscopic morphology of culture, colony morphology and conventional biochemical tests
should be documented. If genotypic methods are used, these may be based either on use of
probes (in-solution hybridization, solid format reverse hybridization), on amplification
followed by DNA sequencing, or on amplification followed by restriction enzyme analysis. A
immunochromatographic detection of a species-specific secreted antigen. This test can be
used on cultures, but not directly on clinical specimens.
Little is known about the kinetics and stability of the different genomics and proteomics
biomarkers assessed, but this knowledge is necessary for corresponding method validation.
Even in the case of the IGRA commercialized assays, the stability of the positive responses
over time is not well known. Once again, prospective studies and thus prospective biobanking
with high traceability of the follow-up of the sample donors are required for validation.
There are actually no data available on the value of potential quality control tools allowing
assessment of the collection procedures, shipping and storage conditions. However,
homogeneity in these steps is key to the quality of multicenter research studies. In order to
proceed to effective quality control of retrospective collections, biobank managers can
proceed in different ways. Quality control can be performed on every specimen received at
the biobank. In some instances, this is highly recommended and cost effective. For example,
quality control of the sputum samples to assess how representative of the lower respiratory
tract secretions they are, and therefore how suitable for culture applications, can be done by
simple direct gram-negative staining and microscopic observation. A properly collected
specimen should contain a minimum of gram-negative bacteria, squamous epithelial cells
(signaling gross contamination with oropharyngeal flora), and significant numbers of
polymorphonuclear leucocytes. A good quality specimen should have less than 10 squamous
cells per 100X field28. In other instances, generalized quality control at biobank reception is
not cost-effective; for example, if the intended use of the specimens is DNA extraction and
analysis. In this case, quality control before distribution of samples to researchers may be
performed (eg DNA concentration, purity, Taq amplifiability), provided such quality control
is not destructive for the sample. Finally, retrospective quality control can always be
performed. Here, two options are available: either apply quality control testing to a defined
percentage of the collected specimens, selected on the basis of randomization, or apply quality
control testing to the samples which are susceptible to having undergone the most
“inconsistent” processing. The first approach allows comparisons between different collection
sites, whereas the second approach allows targeted assessment of the “highest risk” samples.
The following Quality Control assays may be performed by either the biobank or the end-user
who finally receives the samples or a sub-contracting laboratory. Quality control tests
allowing more accurate characterization and ensuring more efficient downstream analyses
include, but are not limited to, the following: (1) C-Reactive Protein (CRP) measurement in
serum allows assessment of the inflammation degree and corresponding normalization of
downstream proteomic analyses. (2) Albumin measurement in urine allows evaluation of the
risk of adsorption of low concentration antigens in downstream immunoenzymatic assays. (3)
M. tuberculosis mRNA measurement in sputum of culture positive patients allows evaluation
of usability of the samples in RT PCR applications, but also assessment of bacterial viability.
Quality control tests allowing assessment of shipping, processing and storage conditions
include, but are not limited to, the following: (1). Serum IgM detection in culture positive
patients allows assessment of the possible use of the serum samples in immunologic assays
targeting specific IgM. (2) Serum sCD40L measurement allows assessment of the time the
serum samples were exposed to ambient temperatures33. (3) Haemoglobin measurement in
serum or plasma allows assessment of haemolysis which may have taken place during
collection or prolonged pre-centrifugation delays of blood samples. (4) Serum fingerprinting
can be performed for assessment of the identity of different serum samples34. (5)
Microparticles can be counted in serum or plasma to assess centrifugation conditions and
efficiency. (6) Selected platelet components can be measured in order to assess platelet
activation during sample processing.
These considerations for method validation and quality control highlight how biobanking
joins biospecimen research. For both targeted and whole genome, transcriptome, or proteome-
derived biomarkers, biospecimen research allows assessment of the robustness of the
biomarker relative to the pre-analytical variations, which are anticipated to take place during
sample collection and processing in the real life35. For instance, cytokines such as G-CSF,
CXCL10, MIF, Serpin E1, CXCL12 have been shown to decrease with increasing freeze-thaw
cycles33, and careful attention should be paid in studies targeting cytokines to avoid any
One suggestion in biobanking for research on infectious diseases would be to systematically
keep record of the most important preanalytical steps, as part of the biobank database. One
possible way of doing this is using the Standard PReanalytical Code (SPREC) developed by
the International Society for Biological and Environmental Repositories (ISBER)32. Biobanking, personalized medicine and public health objectives
The physiology and transmissibility of M. tuberculosis have led to a tuberculous infection risk
in the form of an iceberg (Figure 1). A visible level includes sputum-positive, contagious
subjects, but an invisible high risk level includes both previously-infected subjects and
uninfected subjects coming in contact with the bacterium. The donors of samples to biobanks
represent the larger community, and generously consent to the use of their samples for
research in the hope and the expectation that this research will finally result in their
community’s health improvement. The protection and improvement of community health
requires effective preventive medicine. In the case of tuberculosis, this corresponds to two
levels of action: decrease of infection rate through association of diagnosis and treatment, and
protection of non-contaminated people either by vaccination or by chemoprophylaxis.
The most effective public health means of prevention of future TB cases is rapid diagnosis
followed by immediate and effective treatment. There may be a fundamental incompatibility
between these public health prerogatives and personalized medicine. A diagnostic biomarker
with no specificity for latent versus acute M. tuberculosis infection and with 70% positive
predictive value in highly endemic countries may be judged as inappropriate in a personalized
medicine approach in developed countries. Research in the M. tuberculosis area should
primarily consider the emerging countries’ public health concerns and adapt the personalized
Biobanking still has a crucial role to play in this respect. Research teams and diagnostic
industry should not lose time in conducting evaluation studies on unreliable biomarkers.
Unreliable biomarkers may have been identified by previous comparisons between cases and
controls in which samples were collected, processed and stored in different conditions. Here,
the difference between cases and controls may simply reflect pre-analytical differences
traceability are required to avoid this loss of time and financial resources. Whereas such pre-
analytical sensitivity is to be avoided, high-quality biobanking should not drive us into the
trap of excessive standardization which could be detrimental to the public health requirements
and induce incompatibility between personalized medicine and public health needs. Indeed, a
diagnostic, prognostic, or predictive biomarker whose detection depends on very strict pre-
analytical requirements (e.g., pre-centrifugation time of less than 30 min, and temperature of
less than 10 °C), although potentially useful in clinical trials, would prove useless in everyday
clinical practice, especially in emerging countries. Therefore, useful biomarkers in clinical
practice will be those which have sufficient pre-analytical robustness allowing their largest
possible implementation and use. High-level biobanking organization and traceability are
again required because the variability in the sample processing and storage conditions should
be recorded and effectively managed.
Thus, the biobanking discipline can drive personalized medicine to converge with public
health considerations, considerations which are highly prevalent to the infectious diseases
Management of samples
If the previously described technical and scientific considerations are critical to the fulfillment
of the promise of biobanks to the public, certain organizational and logistical considerations
The infective dose of M. tuberculosis is very low (ie, ID50<10 bacilli), thus biosafety aspects
are particularly pertinent to mycobacteriology biobanking. Aerosol-producing manipulations
of specimens must be performed under a Biological Safety Cabinet (BSC) at a Biosafety
Level 3 (BSL-3) laboratory. Alternatively, mycobacteria can be rendered nonviable by
addition of equal volume of 5% sodium hypochlorite to an aliquot of the specimen for 15 min,
or by heating if the specimens are meant for DNA analysis. Shipping of samples must follow international regulations, with biological substances being
shipped in triple containers with a UN3373 label (“Biological Substance Category B”) placed
on the outside of the outer container37. Geographical settings and different ethnic origins: In genetic case/control studies, it is
important to compare groups of similar ethnic origins to avoid bias linked to different genetic
backgrounds. Indeed, several important candidate genes like human leucocyte antigen/alleles
and non-human leucocyte antigen genes, such as cytokines and their receptors, chemokines
and their receptors, pattern recognition receptors (including toll-like receptors, mannose-
binding lectin, and the dendritic cell-specific intercellular adhesion molecule-3 grabbing non-
integrin), solute carrier family 11A member 1 (SLC11A), and purinergic P2X7 receptor gene
polymorphisms, have been associated with differential susceptibility to TB in various ethnic
populations. This heterogeneity has been explained by host–pathogen and gene–environment
interactions and evolutionary selection pressures38. Data standardization and validation is also a critical issue. All clinical and laboratory data
for the donor from whom the specimens are collected for the biobank need to be meticulously
recorded and associated with the specimens. There are standard methods for reporting the
average number of Acid Fast Bacilli (AFB) observed in clinical specimens, proposed by
WHO and the CDC, based on the number of AFB found at 1000X per optical field and on the
number of colonies observed in culture on solid media. Clinical data of the subjects in
standardized and exchangeable formats are essential for meaningful interpretation of the
laboratory/research results. Therefore, use of standards, such as the ones proposed by the
Clinical Data Interchange Standards Consortium (CDISC, ) is
Apart from the biobank databases, which include all relevant data on sample types, numbers
and availability, research databases including research results are being developed. The
Tuberculosis Database (TBDB) is an integrated database providing access to TB comparative
genomics and gene expression data from both in vitro experiments and host infected tissues
). Mtb bacterial genome sequences can also be found on BioHealth Base
resistance associated mutations can be found on the Tuberculosis Drug Resistance Mutation
databvase (, while DNA and protein data can be found on
can be found on the TDR targets database and small molecule libraries
of compounds already tested against Mtb can be found on the Collaborative Drug Discovery
Tuberculosis Database (http://www.collaborativedrug.com)40. It can be argued that linking these
public research databases to local databases with patients’ genomic or transcriptomic
information, obtained from biobanked samples, will be the ultimate catalyst towards
Open access to biomaterials is probably the most critical managerial aspect for biobanks to
meet the public health requirements. If collected samples remain the “property” of a research
scientist or team, with no possible distribution to third parties, this practice definitely
minimizes their potential usefulness and the collection’s global return on investment.
Providing access to biomaterials should be a sine qua non condition for a biobank to be
considered and certified as such. Management of this activity can take into account possible
benefit sharing considerations, by avoiding exclusive patent applications leading to
monopoply situations, or by requiring non-exclusive licenses for the benefit of the local
populations who have contributed to the research by donating their samples. Implementation
of open access is not always the case in privately funded biobanks (Table 1). Legal and ethical issues cannot be neglected. Informed consent is necessary and should not
be restricted to a specific project but rather be open to all kinds of future testing of the
samples, including genetic research in the domain of tuberculosis. The benefit-sharing issues
need to be addressed upfront with clear operating procedures spelt out and including fair
return of the goodwill gesture of the community involved in the voluntary donation of their
precious body fluids, in terms of privileged access to the new tools or interventions at
preferential terms and prices. TDR prioritized the collaboration with local teams engaged in
the field of TB detection by contracting research teams for the specimen collection and
characterization. The study protocols were cleared by the WHO and the national legal
authorities and all the patients were asked to read and sign a translated inform consent prior
collection. In addition to standardizing the collection of specimens, the collaboration resulted
in the strengthening of the laboratory capacity for detection of tuberculosis through training
and purchase of equipment(s). Conducted outside of clinical trials, the collection of specimens
was meant to be a component of a strategy leading to mutual benefits between the
collaborating centers, WHO and the potential users of the specimens. Concomitant capacity
building has empowered the community with adequate tools which enhance case detection
rate for successful national TB control programs. Certification of biobanks and Reference Materials
Few countries have elaborated regulatory schemas requiring national government-issued
authorizations for biobanks. The objective of these systems of national authorizations is to
ensure observance of biosafety rules, collection of informed consent and to enable funding
allocation through authorization conditions. However, pharmaceutical and diagnostic
regulatory agencies acting at either national or international levels have not promoted any
kind of requirement in terms of biobank certification yet. Certification of biobanks to
international standards such as ISO9001 (Quality Management Systems – Requirements) by
an independent certification body is a proof of effective organization and management of the
bank. Furthermore, subcontracting to testing laboratories, which are themselves accredited to
international standards such as ISO17025 (General Requirements for the Competence of
Testing and Calibration Laboratories) or ISO15189 (Medical Laboratories – Particular
Requirements for Quality and Competence) by a national accreditation body, is a proof of
reliable processes for sample characterization. For the moment, compliance to these
standards, however important, essentially remains a voluntary approach of each individual
Biobanks are expected to provide the means for scientific replication of experiments.
Therefore, they may not only be certified for the activities of collection, processing,
characterization, preservation and procurement of biological materials, but may also certify
these research materials. The American Type Culture Collection (ATCC) provides the first
example of a biobank accredited to ISO Guide 34 as reference material producer. A reference
material producer is able to provide materials to which he has assigned a quantitative or
qualitative value, with a certain degree of confidence. Biobanks in the infectious diseases area
can probably take the lead in this aspect, in relation to tumour banks, since characterization
methods for the infectious agents is more amenable to accreditation than pathology.
Until now, regulatory agencies delivering authorizations for commercial use of in vitro
diagnostic assays, have not expressed clear and explicit requirements relative to the nature
and quality of the samples that have been used for assay validation. We suggest that, based on
our previously described considerations on management, method validation and quality
control, some infectious diseases biobanks could achieve the level of organization allowing
them to produce certified reference panels, such as reference panels, characterized as “M.tuberculosis acute” or “latent infection”, or “relapse of disease”. Ideally, evaluation of
diagnostic tests should be performed by accredited independent laboratories, receiving the InVitro Diagnostic (IVD) kits from the manufacturer and reference samples from a biobank.
The Office of In Vitro Diagnostic Device Evaluation and Safety of the U.S. Food and Drug
Administration as well as the CE marking accreditation agencies in Europe could engage into
Conclusion
The discovery of clinically relevant biomarkers can be applied to the development of M.tuberculosis-specific diagnostic tools. Both targeted and –omics analyses have identified
different genotypes, gene expression signatures and proteins, linked to either bacterial
persistence or to host immune responses. If such surrogate biomarkers could be brought into
clinical practice, this effort would allow more efficient and timely diagnosis and efficient
categorization of patients into specific therapeutic regimens. Such tools are necessary to
objectively monitor in a personalized way both the risk of developing disease in exposed
individuals and the progression of disease and the response to therapy in infected patients, as
well as to develop effective vaccine-based interventions. There are likely important
biomarkers of vaccine efficacy or drug effect that would be useful in the context of TB
vaccine or drug clinical trials but not at all useful for clinical practice, due to differences in
available infrastructure or cost considerations. However, public health concerns are of
primary importance in infectious diseases. Therefore, identification and validation of these
biomarkers should be conducted in a way ensuring their robustness and their applicability in
the real everyday clinical practice. We show that well organized biobanks have a critical role
to play in ensuring that both types of research can occur and the health improvement promises
to the public will be kept. Because standardization and Quality Assurance are expensive
undertakings, research funders should include biobanking in project designing, including that
of clinical trials on drug effect or vaccine efficacy.
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The TB “iceberg” including different categories of sample donors (ranging from the most
apparent “infected, from clinical trials” to the less apparent, “household contacts”), with the
corresponding types of specimens which can be collected by a biobank, and the corresponding
types of biomarkers which can be discovered in the research laboratory.
Safety Data Sheet Lidocaine Ointment 5%, USP SDS DATE: 9/22/11 SECTION 1: PRODUCT AND COMPANY IDENTIFICATION Product Name: Lidocaine Ointment 5%, USP NDC #: Tube 57539-0221-5 Chemical Name (for active ingredient): 2-(Diethylamino)- N -(2,6-dimethylphenyl)-acetamide Chemical Family (for active ingredient): Acetamide Formula (for active ingredient): C14H22N2O
Basic Requirements: Provisions of Section 15010, BASIC MECHANICALREQUIREMENTS are a part of this Section. General: Provide those piping specialties which are required for the pipingsystems specified in other sections of these specifications. Related Sections: Other Sections of Division 15 which relate to therequirements of this Section may include but are not limited to thefollowing:1. 15050, B