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©The Author(s) 2023.
World J Methodol. Jun 20, 2023; 13(3): 46-58
Published online Jun 20, 2023. doi: 10.5662/wjm.v13.i3.46
Published online Jun 20, 2023. doi: 10.5662/wjm.v13.i3.46
Table 1 Circulating biomarkers in pancreatic cancer
Biomarker | Type | Role in pancreatic cancer |
CA19-9 | Protein | Widely used biomarkers to aid in the diagnosis[4] |
Poor screening tool in asymptomatic patients | ||
Elevated in many benign gastrointestinal conditions as well as other malignancies, including pancreatitis, cirrhosis, cholangitis, and colorectal cancer[5] | ||
5%-10% of the caucasian population possesses a Lewis a-/b- genotype and thus does not express CA19-9 | ||
CEA | Glycoprotein | Elevated across several cancers[6] |
Non specific | ||
Inferior sensitivity of CEA compared to ca19-9[7] | ||
CA125 | Glycoprotein | Associated with ovarian cancer, CRC and cholangiocarcinoma[8] |
Superiority to CA19-9 in predicting resectability of PC, along with correlating with metastasis-associated disease burden | ||
Anti-MUC1 antibody | Antibody | Anti-MUC1 antibody assays showed a sensitivity and specificity of 77% and 95%, respectively, in discriminating pancreatic cancer from pancreatitis[9] |
CTCs | Tumour cells | CTCs had moderate diagnostic value in PC[10] |
Several studies have demonstrated isolation of CTCs regardless of stage among localized, locally advanced, or metastatic patients | ||
Conflicting evidence on CTC positivity is correlated with survivability | ||
In ombination with CA19-9, it was reported to have a superior sensitivity and specificity of 97.8% and 83.3% respectively, compared to when used in isolation[11] | ||
The presence of CTCs in 54/72 patients with confirmed PDAC (sensitivity = 75.0%, specificity = 96.4%, AUROC = 0.867, 95%CI: 0.798-0.935, and P < 0.001)[12] | ||
A cut-off of ≥ 3 CTCs in 4 mL blood could differentiate between local/regional and metastatic disease (AUROC: 0.885; 95%CI: 0.800-0.969; and P < 0.001) | ||
cfDNA | DNA | Plasma ctDNA quantification of hot-spot mutations in KRAS and GNAS are useful in predicting tumor burden in patients diagnosed with PC[13] |
Digital PCR provided accurate tumor-derived mutant KRAS detection in plasma in resectable PC and improved post-resection recurrence prediction compared to CA19-9[14] | ||
Detection of plasma cfDNA mutations and copy number alterations may be helpful in pancreatic cancer prognosis and diagnosis | ||
Its sensitivity and specificity in identification of clinically relevant KRAS mutations was 87% and 99% respectively[15] | ||
Cell-free RNA | RNA | Higher expression of lncRNA MALAT1 has been shown to correlate with poorer PDAC survival[16] |
Several microRNAs have also been associated with PDAC (i.e., miR-21 and miR-155), and correlate with tumor stage or prognosis[17] | ||
EVs | Exosomes | KRAS G12D mutations were identified in 7.4% of control patients, 67% of localized PDAC, 80% of locally advanced PDAC, and 85% of metastatic PDAC patients[18] |
GPC1 EVs could be detected in both pancreatic precursor lesions and pancreatic cancer, and could distinguish between any evidence of malignancy and healthy patients with an AUC of 1 (100% sensitivity, 100% specificity)[19] | ||
miRNA isolated from EVs revealed a cocktail of miRNAs (miR-1246, 4644, 3976, 4306) upregulated in 83% of pancreatic cancer derived EV | ||
Glypican-1 exosomes are a potential biomarker for PC |
Table 2 Comparison of usefulness of various liquid biopsies in pancreatic cancer
Item | CTC[20-22]
| Ct DNA[21,23,24]
| Exosomes[20,25-28]
| CA 19-9[20,21,28-30]
|
Origin | Viable tumor cells | cfDNA, viable tumor cells, CTCs | DNA, proteins, lipids, RNAs metabolites, and tumor cells | Ductal cells in the pancreas, biliary system, and epithelial cells in the stomach, colon, uterus, and salivary glands |
Samples used | Plasma | Frozen plasma, urine and other biofluids | Frozen plasma, urine and other biofluids | Plasma |
Methods | CellSearch, MACS, Dynabeads, microfluidic, SE-iFISH, CD45/CEP8/DAPI staining-FISH, anti-EpCAM Portal-vein blood | Real-time quantitative PCR, digital PCR, droplet digital PCR, next-generation sequencing; commercial liquid biopsy platforms: GuardantTM (breast, colon, and lung cancers and multi-cancer detection) FoundationOne® (multi-cancer detection); signateraTM (colorectal cancer), Galleri (multi-cancer detection), CancerSEEK (multi-cancer detection), TempusTM (multi-cancer detection), Caris (bioinformatics testing of both circulating DNA and RNA) | Ultracentrifugation, ExoChip, precipitation, size-based isolation immunoaffinity-based isolation microfluidics-based isolation | Radio immuno assay |
Mutation analysis | Yes | Yes | Yes | No |
Drug delivery vehicle | No | No | Yes | No |
Sensitivity | 76.0% | 65.0% | 50.0%-85.0% | 78.2% |
Specificity | 68.0% | 75.0% | 90.0% | 82.8% |
Usage in clinics | Diagnosis of PDAC, prognosis/prediction of PDAC | Diagnosis of PDAC; monitoring treatment efficacy; monitoring of disease progression | Diagnosis and prognosis of PDAC; prognosis/prediction of PDAC | Combining ct DNA with CA 19-9 levels could improve diagnostic sensitivity to 98%, and specificity to 97%; monitoring treatment efficacy; monitoring of disease progression |
Table 3 Different isolation methods for exosome
Method | Sample volume | Time | Ref. |
Ultracentrifugation | Low | Approximately 5 h | [48,49] |
Density-gradient | Low | Approximately 5 h | [50] |
Nanopillar | 30 μL | Approximately 10 min | [51] |
Acoustic-based | 0.4-0.7 μL/min | < 30 min | [52] |
Inertial lift force-based | 70 μL/min | > 4 h | [53] |
Surface-modified | 4-16 μL/min | < 1 h | [53-55] |
Nanoshearing | Not mentioned | < 3 h | [56] |
Table 4 Different quantifying methods for exosome
Method | Size range | Specificity | Time | Ref. |
Nanoparticle tracking analysis | 10 nm-2 μm | Immunoaffinity | < 1 h | [48] |
Dynamic light scattering | 10 nm-8 μm | Size | < 1 h | [57] |
Electron microscopy | 10 nm | Size | < 1 h | [58,59] |
Nanopore | > 10 nm | Size | < 1 h | [60,61] |
Magnetic resonance | Wide range | Immunoaffinity | < 10 min | [62] |
Electrochemical and plasmonic | Depends on binding | Immunoaffinity | < 10 min | [63,64] |
Table 5 Comparison of various isolation methods for exosomes
Conventional isolation of exosomes | ||||
Methods | Advantages | Disadvantages | Clinical use | Ref. |
Ultracentrifugation | Widely used; high purity; protein and RNA components are not affected | Highly labour intensive; time-consuming; yields are typically low extensive training of personnel needed; expensive; inappropriate for the extraction of exosomes from a small amount of serum samples | Functional study of exosomes | [65,66] |
Ultrafiltration | High yield; simple; less time-consuming; do not require the use of special equipment | Low purity, clogging of pores | Study of sample concentration; used in combination with other methods | [67] |
Precipitation | Widely used; economical | Co-isolation of non-EV particles | For studies with very low purity requirements that do not require omics studies | [68] |
Size exclusion chromatography, OR, and gel filtration | Fast, reliable, and inexpensive; maintain the biological activity and integrity of exosomes; high purity | Nanoscale contaminants like lipoproteins; extensive laboratory equipment requirements | Suitable for exosome research in those requiring high purity, omics, and large volume samples | [69] |
Immunoaffinity capture | Convenient; not affected by exosome size; no need for expensive instruments | Expensive; low capacity; low yields | Suitable for the Separation of specific exosome subgroups | [70] |
Emerging isolation methods | ||||
Stirred ultrafltration | Do not rely on equipment; less time consuming; reduces the destruction of exosomes during the process | Moderate purity of isolated exosomes; loss of exosomes during the process | Isolating exosomes from culture supernatant of bone marrow mesenchymal stem cells | [71] |
ExoTIC (exosome total isolation chip) | Simple, easy-to-use, modular, and facilitates high-yield and high-purity EV isolation from biofluids | Special equipment requirements; lack of tests on clinical samples | Efficiently isolate EVs from small sample volumes; EV-based clinical testing from fingerprick quantities (10-100 μL) of blood | [72,73] |
3D ZnO Nanoarrays | Multifunction; high sensitivity; downstream analysis is possible; enhance the capture of exosomes at a high flow rate | Relatively expensive | Widely used in biosensing and analysis aspects, powerful tools for effective purification and molecular analysis of exosome | [74,75] |
Nano plasmon-enhanced scattering | Rapid, high-throughput, sensitive, and specifc method for the detection of exosomes from trace samples depending on the amount of scatter area, based on calculation of the proportion of the area that contains scattered light | High reagent cost; complex statistical tools; low capacity | Uses antibodies against the cellular markers CD81, CD63, and CD9, which are enriched on most exosome membranes | [76] |
- Citation: Anoop TM, Basu PK, Chandramohan K, Thomas A, Manoj S. Evolving utility of exosomes in pancreatic cancer management. World J Methodol 2023; 13(3): 46-58
- URL: https://www.wjgnet.com/2222-0682/full/v13/i3/46.htm
- DOI: https://dx.doi.org/10.5662/wjm.v13.i3.46