| Literature DB >> 36010975 |
Cristina V Berenguer1, Ferdinando Pereira2, Jorge A M Pereira1, José S Câmara1,3.
Abstract
Despite the spectacular advances in molecular medicine, including genomics, proteomics, transcriptomics, lipidomics, and personalized medicine, supported by the discovery of the human genome, prostate cancer (PCa) remains the most frequent malignant tumor and a leading cause of oncological death in men. New methods for prognostic, diagnostic, and therapy evaluation are mainly based on the combination of imaging techniques with other methodologies, such as gene or protein profiling, aimed at improving PCa management and surveillance. However, the lack of highly specific and sensitive biomarkers for its early detection is a major hurdle to this goal. Apart from classical biomarkers, the study of endogenous volatile organic metabolites (VOMs) biosynthesized by different metabolic pathways and found in several biofluids is emerging as an innovative, efficient, accessible, and non-invasive approach to establish the volatilomic biosignature of PCa patients, unravelling potential biomarkers. This review provides a brief overview of the challenges of PCa screening methods and emergent biomarkers. We also focus on the potential of volatilomics for the establishment of PCa biomarkers from non-invasive matrices.Entities:
Keywords: diagnosis; prostate cancer; tumor biomarkers; volatilomics
Year: 2022 PMID: 36010975 PMCID: PMC9406416 DOI: 10.3390/cancers14163982
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.575
Figure 1Prostate-cancer screening methods.
Potential clinical utility, characteristics, and availability of prostate cancer biomarkers.
| Biomarker Test | Molecular Markers | Potential Clinical Utility | Characteristics | Availability |
|---|---|---|---|---|
| Serum biomarkers | ||||
| PSA | PSA | Treatment monitoring | Sensitivity: 60% [ | |
| 4KScore | Total PSA, free PSA, intact PSA, hK2 | Unnecessary biopsy reduction of 43% [ | Sensitivity: 75% [ | CLIA-certified |
| PHI | Total PSA, free PSA, p2PSA isoform | Unnecessary biopsy reduction of 40% [ | Sensitivity: 82% [ | FDA-approved |
| Urinary biomarkers | ||||
| Progensa (PCA3) | Long non-coding RNAs (ratio of PCA3 mRNA:PSA mRNA) | Unnecessary biopsy reduction of 23–38% [ | Sensitivity: 69% [ | FDA-approved |
| SelectMDx | HOXC6 and DLX1 mRNA | Unnecessary biopsy reduction of 53% [ | Sensitivity: 91% [ | CLIA-certified |
| MPS | PCA3 and TMPRSS2-ERG mRNA | Unnecessary biopsy reduction of 35–47% [ | Sensitivity: 93% [ | CLIA-certified |
| EPI | Exosomal RNA (SPDEF, PCA3, ERG) | Unnecessary biopsy reduction of 27% [ | Sensitivity: 92% [ | CLIA-certified |
| Tissue biomarkers | ||||
| ConfirmMDx | DNA hypermethylation GSTP1, APC, and RASSF1 | Prediction of true negative prostate biopsies | Sensitivity: 68% [ | Not FDA-approved yet |
| OncotypeDX | mRNA expression (17 genes) | Monitoring of tumor aggressiveness | AUC: 0.73 [ | Not FDA-approved yet |
| Prolaris | mRNA expression (31 genes) | Monitoring of tumor aggressiveness | AUC: 0.78 [ | FDA-approved |
| Decipher | mRNA expression (22 genes) | Treatment monitoring | Sensitivity: 73% [ | CLIA-certified |
| ProMark | Protein biomarker test (8 proteins) | Monitoring of tumor aggressiveness | Sensitivity: 90% [ | CLIA-certified |
Legend: AUC—area under the receiver operating characteristic (ROC) curve; CLIA—Clinical Laboratory Improvement Amendments; FDA—Food and Drug Administration.
Figure 2Emergent prostate cancer biomarkers for urine, serum, and tissue samples have been developed and can be used for diagnostic, prognostic, or risk stratification purposes. Legend: EPI, ExoDx Prostate IntelliScore; MPS, MyProstateScore; PCA3, prostate cancer gene 3; PHI, Prostate Health Index; 4KScore, Four-Kallikrein test.
Figure 3General flowchart of volatilomics approaches.
Studies on volatile organic compounds for the identification of cancer biomarkers in non-invasive matrices.
| Cancer Type | Analytical Approach | Biomarker’s Candidates | Prediction Model | Validation Characteristics | Reference |
|---|---|---|---|---|---|
| Urine | |||||
| Head and neck | HS-SPME/GC–MS | PLS-DA | NA | [ | |
| Head and neck | HS-SPME/GC–MS | 2,6-dimethyl-7-octen-2-ol, 1-butanol, | PLS-DA, ROC | NA | [ |
| Leukaemia, colorectal, lymphoma | dHS-SPME/GC–qMS | 16 VOMs were found statistically significant | PCA | NA | [ |
| Breast | dHS-SPME/GC–qMS | Heptanal, dimethyl disulfide and 2-methyl-3-phenyl-2-propenal | PCA | NA | [ |
| Renal cell carcinoma | HS-SPME/GC–MS | 11 VOMs | PCA, PLSDA | NA | [ |
| Pancreatic | TD-GC–TOF-MS GC–IMS | 2,6-dimethyl-octane, nonanal, 4-ethyl-1,2-dimethyl-benzene, 2-pentanone | Repeated | NA | [ |
| Exhaled breath | |||||
| Lung | HS-SPME/GC–MS | Acetone, methyl acetate, isoprene, methyl vinyl ketone, cyclohexane, 2-methylheptane, cyclohexanone | DFA, ANN | Sensitivity: 80% | [ |
| Lung | HS-SPME/GC–MS | Caprolactam and propanoic acid | PCA, OPLS-DA, PLSDA | NA | [ |
| Pancreatic | TD-GC–MS | Formaldehyde, acetone, acetoin, undecane, isopropyl alcohol, pentane, n-hexane, 1-butanol, 1-(methylthio)-propane, benzaldehyde, tetradecane, amylene hydrate | ROC | Sensitivity: 81% | [ |
| Colorectal | TD-GC–MS | 15 specific VOMs | PNN | Sensitivity: 86% | [ |
| Gastric | PTR-TOF-MS | Propanal, aceticamide, isoprene, 1,3-propanediol | ROC | Sensitivity: 61% | [ |
| Saliva | |||||
| Head and neck | HS-SPME/GC–MS | 1,4-dichlorobenzene, 1,2-decanediol, 2,5-bis1,1-dimethylethylphenol, E-3-decen-2-ol | ROC, OPLS-DA | NA | [ |
| Colorectal/stomach | GC–FID | Acetaldehyde, acetone, 2-propanol, ethanol, methanol | ROC | Sensitivity: 95.7% | [ |
| Breast | HS-SPME/GC–MS | 3-methyl-pentanoic acid, 4-methyl-pentanoic acid, phenol, p-tert-butyl-phenol (Portuguese samples) and acetic, propanoic, benzoic acids, 1,2-decanediol, 2-decanone, decanal (Indian samples) | PLS-DA, OPLS-DA | NA | [ |
| Breast | dHS-SPME/GC–qMS | Phenol, 2-ethyl-1-hexanol | PCA | NA | [ |
| Oral | HS-SPME/GC–MS | 1-octen-3-ol, hexanoic acid, E-2-octenal, heptanoic acid, octanoic acid, E-2-nonenal, nonanoic acid, 2,4-decadienal, 9-undecenoic acid | PCA | Sensitivity: 100% | [ |
Legend: ANN, artificial neural network; AUC, area under the receiver operating characteristic (ROC) curve; CV, cross-validation; DFA, discriminant function analysis; dHS-SPME, dynamic headspace solid-phase microextraction; GC–IMS, gas chromatography–ion migration spectroscopy; GC–MS, gas chromatography-mass spectrometry; GC–qMS, gas chromatography–quadrupole mass spectrometry; HS-SPME, headspace solid-phase microextraction; NA, not analyzed; PCA, principal component analysis; OPLS-DA, orthogonal partial least-squares discriminant analysis; PLS-DA, partial least-squares discriminant analysis; PNN, probabilistic neural network; PTR-TOF-MS, proton-transfer-reaction time-of-flight mass spectrometry; ROC, receiver operating characteristic; TD-GC–MS, thermal desorption gas chromatography-mass spectrometry; TD-GC–TOF-MS, two-dimensional gas chromatography and time of flight mass spectrometer.
Figure 4Cancer-related metabolic and biochemical activities can be detected through volatile organic metabolites. The establishment of a volatilomic biosignature can lead to the discovery of biomarkers for prostate cancer diagnosis.
Studies on volatile organic compounds for the identification of prostate cancer biomarkers.
| Sample Groups | Analytical Approach | Biomarker’s Candidates | Prediction Model | Validation Characteristics | Reference |
|---|---|---|---|---|---|
| Urine | |||||
| PCa: 59 | HS-SPME/GC–MS | 2,6-dimethyl-7-octen-2-ol, pentanal, 3-octanone, 2-octanone | Repeated | NA | [ |
| PCa: 58 | HS-SPME/GC–MS | hexanal, 2,5-dimethylbenzaldehyde, 4-methylhexan-3-one, dihydroedulan IA, methylglyoxal, 3-phenylpropionaldehyde | PLS-DA, ROC | Sensitivity: 89% | [ |
| PCa: 20 | HS-SPME/GC–MS | methylglyoxal, hexanal, 3-phenylpropionaldehyde, 4-methylhexan-3-one, 2,5-dimethylbenzaldehyde, dihydroedulan IA, ethylbenzene, heptan-2-one, heptan-3-one, 4-(2-methylpropoxy)butan-2-one, methyl benzoate, 3-methyl-benzaldehyde | PLS-DA | Sensitivity: 76% | [ |
| PCa: 32 | GC–MS | VOMs involved in amino acids, purine, glucose, urea, Krebs cycle biochemical pathways | PCA, PLS-DA | NA | [ |
| PCa: 108 | SBSE/TD-GC–MS | 11 VOMs | ROC | Sensitivity: 87% | [ |
| PCa: 29 | HS-SPME/GC–MS | furan, | - | NA | [ |
| BC: 15 | GC–TOF-MS and GC–IMS | 35 VOMs | ROC, Repeated 10-Fold CV | GC–IMS method | [ |
| PCa: 88 | Urine headspace conditioning, followed by e-nose analysis | The study tested the ability of urinary volatilome profiling to distinguish patients with PCa from HC | ROC | Sensitivity: 85.2% | [ |
| PCa: 133 | Urine headspace conditioning, followed by e-nose analysis (Cyranose C320) | The study tested the ability of urinary volatilome profiling to distinguish patients with PCa from HC | PCA, ROC | Sensitivity: 82.7% | [ |
| PCa: 132 | Urine headspace conditioning, followed by e-nose analysis (Cyranose C320) | The study tested the ability of urinary volatilome profiling to distinguish patients with PCa from HC | PCA | Sensitivity: 82% | [ |
| HCC: 31 | SPME, followed by analysis with | The study tested the ability of urinary volatilome profiling to distinguish patients with PCa from HC | PCA, ROC | PCa detection | [ |
| Exhaled breath | |||||
| LC: 30 | HS-SPME/GC–MS | 6 VOMs for LC, 6 VOMs for CC, 5 VOMs for BTC, 4 VOMs for PCa | PCA | NA | [ |
| PCa: 32 | E-nose analysis (Cyranose C320) | The study tested the ability of exhaled breath volatilome profiling to distinguish patients with PCa from HC | ANN | Sensitivity: 84% | [ |
Legend: ANN, artificial neural network; AUC, area under the ROC curve; BC, bladder cancer; BPH, benign prostate hyperplasia; BTC, breast cancer; CC, colon cancer; CV, cross-validation; GC–IMS, gas chromatography–ion mobility spectrometry; GC–MS, gas chromatography–mass spectrometry; GC–TOF-MS, gas chromatography coupled to time-of-flight mass spectrometry; HC, healthy control; HCC, hepatocellular cancer; HS-SPME, headspace solid-phase microextraction; kNN, k-nearest neighbor; LC, lung cancer; NA, not analyzed; PCA, principal component analysis; PLS-DA, partial least-squares discriminant analysis; RC, renal cancer; ROC, receiver operating characteristic; SBSE, stir bar sorptive extraction; TD-GC–MS, thermal desorption gas chromatography–mass spectrometry.