Lung Cancer Clinical Trial
Official title:
Search for Biomarkers to Detect Lung Cancer by Means of a NMR Spectroscopic Analysis of Blood Plasma
Lung cancer is the most common cancer in men and the fourth most common cancer in women
worldwide. Until today no effective method permits the early detection of lung cancer.
Consequently, lung cancer is often diagnosed owing to symptoms of advanced disease. To
address this problem, detection methods with an improved sensitivity and specificity are
urgently needed.
Over the past decade, accumulating evidence shows that the metabolism of cancer cells differs
from that of normal cells. More specifically, the entire metabolism of cancer cells is
reorganized or reprogrammed to increase anabolic reactions that induce cell growth and
survival. Metabolic reprogramming during the development of cancer is driven by aberrant
signaling pathways due to the activation of oncogenes and the loss of tumor suppressor genes.
Furthermore, the microenvironment of the tumor plays a role in metabolic reprogramming. The
altered cancer metabolism is characterized by an increased glycolysis, the production of
lactate and the biosynthesis of macromolecules, such as proteins, lipids and nucleotides.
Cancer cells have a high glycolytic rate and eliminate most of the glucose-derived carbon as
lactate rather than oxidizing it completely via oxidative phosphorylation, a phenomenon known
as the Warburg effect. The breakdown of glucose and other nutrients leads to a high energy
production and provides the Krebs cycle with intermediates, which consequently are allocated
to metabolic pathways that support biosynthesis. Metabolites are the end products of cellular
metabolism and are therefore closely related to the observed phenotype. Disturbances in
biochemical pathways which occur during the development of cancer consequently provoke
changes in the metabolic phenotype. As a result, low-molecular weight metabolites are very
attractive biomarkers for different cancer types. Nuclear magnetic resonance (NMR)
spectroscopy enables the identification and quantitative analysis of complex mixtures of
metabolites, as in plasma and serum, without an extended sample preparation.
The present study aims to determine the metabolic phenotype of lung cancer by means of proton
(1H)-NMR spectroscopy. Once the phenotype determined (training cohort), this has to be
validated by an independent cohort.
Subjects Subjects with lung cancer detected by a computed tomography (CT)-scan and referred
to a positron emission tomography (PET)/CT-scan are included. The diagnosis of lung cancer is
confirmed by means of an pathological biopsy or by a medical doctor specialized in oncology
with respect to radiological or clinical data. The control group consists of subjects who
were referred to the department Nuclear Medicine for an examination of the heart. This
control group represents the average population, consists of healthy subjects and patients
with non-cancer diseases and did not undergo a PET/CT-scan. Exclusion criteria are as
follows: (1) not fasted for at least 6 hours, (2) poorly controlled diabetes (fasting plasma
glucose concentration ≥ 200 mg/dl) in cancer patients, (3) medication intake at the day of
blood sampling and (4) treatment or history of cancer in the preceding 5 years.
The training cohort consists of 80 subject with lung cancer and 80 controls. The validation
cohort consist of 250 subject with lung cancer and 250 controls.
Blood sampling and processing Fasting venous blood samples (BD Vacutainer® LH 17 I.U. 10 ml
tube) are collected and stored at 4°C within 5 to 10 minutes. Around 8 hours after blood
collection, blood samples are transported on crushed ice to the central laboratory and
centrifuged at room temperature (swinging bucket centrifuge, 1600 g, 15 minutes).
Subsequently, 4 plasma aliquots of 500 µl are transferred into sterile cryovials and stored
at -80°C until examination within 6 months. When subjects give permission to store their
biological material, 3 aliquots are stored at the University Biobank Limburg (UBiLim) for
biomedical research purposes.
Prior to NMR analysis, plasma aliquots are thawed and homogenized using a vortex mixer. After
centrifugation at 13000 g for 4 minutes at 4°C (fixed rotor Eppendorf centrifuge 5415 R,
Hamburg, Germany), plasma aliquots are diluted in deuterium oxide (D2O, 99.9%, Cambridge
Isotope Laboratories Inc, Andover, USA) containing 180 µg/µl
trimethylsilyl-2,2,3,3-tetradeuteropropionic acid (TSP, 98%, Cambridge Isotope Laboratories
Inc, Andover, USA) as a chemical shift reference. Finally, the prepared plasma samples are
transferred into a 5 mm NMR tube and analyzed.
1H-NMR analyses and assignment of present resonances The 1H-NMR spectra are recorded on a 400
Megahertz (MHz) NMR spectrometer (Varian/Agilent, Nuclear Magnetic Resonance Instruments,
Palo Alto, California, USA) with a magnetic field strength of 9.4 Tesla at 294 K. Slightly
T2- weighted spectra are acquired using a Carr-Purcell-Meiboom-Gill (CPMG) pulse sequence to
attenuate signals of macromolecules, such as proteins and polysaccharides. Additionally,
water suppression is performed in order to allow optimal detection and quantification of
low-molecular weight metabolites. The 1H-NMR spectra are phased manually, baseline corrected
and referenced to the TSP resonance at 0.015 parts per million (ppm). The assignment of the
present 1H-NMR resonances occurs by means of spiking experiments. A reference plasma sample
is alternately spiked with 34 known metabolites with a concentration of 1 mg compound per 100
µl plasma. The obtained chemical shifts are double checked with Chenomx NMR suite software
(Version 7.5, Chenomx Inc., Edmonton, Alberta, Canada). Finally, 1H-NMR spectra are divided
in 112 spectral regions, which are integrated and normalized relative to the total integrated
area of all spectral regions, irrespective of the remaining water, TSP, fructose and glucose
resonances. The end result corresponds to 110 normalized integration regions (all integration
regions except those of water and TSP).
Statistical analysis At first, the integration values of all 110 spectral regions are
analyzed by means of a student t-test with correction for multiple testing by
Benjamini-Hochberg to identify those which differ significantly between lung cancer patients
and controls (IBM SPSS Version 20.0, Chicago, Illinois, USA). Secondly, multivariate
statistical analyses are performed using SIMCA-P+ (Version 12.0, Umetrics, Umea, Sweden) to
investigate whether the metabolic composition of blood plasma allows to discriminate between
lung cancer patients and controls. An unsupervised principal component analysis (PCA) was
performed to identify intrinsic clusters and outliers within the dataset. After the removal
of outliers (detected by a Hotelling's T2 range plot), an orthogonal partial least squares
discriminant analysis (OPLS-DA), an extension of partial least squares discriminant analysis
(PLS-DA) with an integrated orthogonal signal correction filter, is performed to remove
variability not relevant to class separation. The predicted classification is expressed as
specificity (the percentage of controls that are actually classified as controls) and
sensitivity (the percentage of lung cancer patients that are actually classified as lung
cancer patients). The outcome of using the integration values of the significantly different
spectral regions, obtained by the student t-test with correction for multiple testing by
Benjamini-Hochberg, is compared to the outcome in which the integration values of all 110
spectral regions were used.
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