| Literature DB >> 32369927 |
Masahiko Aoki1,2,3, Hirokazu Shoji2, Ayumi Kashiro1, Keiko Takeuchi1, Yoshihiro Shimizu4, Kazufumi Honda1.
Abstract
The comprehensive analysis of biological and clinical aspects of circulating tumor cells (CTCs) has attracted interest as a means of enabling non-invasive, real-time monitoring of cancer patients and enhancing our fundamental understanding of tumor metastasis. However, CTC populations are extremely small when compared to other cell populations in the blood, limiting our comprehension of CTC biology and their clinical utility. Recently developed proteomic and genomic techniques that require only a small amount of sample have attracted much interest and expanded the potential utility of CTCs. Cancer heterogeneity, including specific mutations, greatly impacts disease diagnosis and the choice of available therapeutic strategies. The CTC population consists primarily of cancer stem cells, and CTC subpopulations are thought to undergo epithelial-mesenchymal transition during dissemination. To better characterize tumor cell populations, we demonstrated that changes in genomic profiles identified via next-generation sequencing of liquid biopsy samples could be expanded upon to increase sensitivity without decreasing specificity by using a combination of assays with CTCs and circulating tumor DNA. To enhance our understanding of CTC biology, we developed a metabolome analysis method applicable to single CTCs. Here, we review-omics studies related to CTC analysis and discuss various clinical and biological issues related to CTCs.Entities:
Keywords: circulating tumor cells (CTCs); circulating tumor dna (ctDNA); genomics; heterogeneity; metabolomics; single cell
Year: 2020 PMID: 32369927 PMCID: PMC7281475 DOI: 10.3390/cancers12051135
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.639
Technologies for circulating tumor cell (CTC) enrichment.
| Method | Principle of Technology | Feature |
|---|---|---|
| Inertial microfluidics | Position of cells in a flow channel. Size-dependent separation. | Label-free. Enrich intact and viable cells, but false-negatives due to size. |
| Immunoaffinity techniques | Antibodies and target antigens. Positive (CTC) or negative (other blood cells) selection. | Relatively high sensitivity, but false-negatives due to epithelial–mesenchymal transition. |
| Density gradient centrifugation | Migration of cells through a medium of varying density. | Label-free. Low cost, but low purity. |
| Microfiltration in two and three dimensions | Filtration of a sample through an array of microscale constrictions. Size- and deformation-dependent separation. | Label-free. Low cost, but low purity and false negatives due to size variations. |
| Dielectrophoresis | Electrical properties of target cells as they pass through a non-uniform alternating current field. | Enables capture of single cells, but pre-enrichment is required. |
| Acoustophoresis | Acoustophoretic mobility of cells. Size-dependent separation. | High cell viability. Recovery efficiency dependent on blood concentration. |
| Direct imaging modalities | Identification of specific subpopulations of cells using microscopy and flow cytometry. | Real-time fluorescence intensity. Time consuming. |
| Functional assays | Bioactivity of viable cells. Enrichment of target cells. | High sensitivity, but time consuming and requires continuous activity. |
Summary of combination assays for circulating tumor cells (CTCs), circulating tumor DNA (ctDNA), and cell-free DNA (cfDNA).
| Cancer Type | CTC Enrichment | Number of Patients and Sensitivity | Average Number of CTCs (range) | CTC Analysis Method | ctDNA and cfDNA Analysis Method | Authors |
|---|---|---|---|---|---|---|
| Breast cancer | Immunoaffinity | 91 | 2 CTCs/sample in all patients | Number of detected CTCs | Panel with NGS (ctDNA) | Rossi et al. [ |
| Breast cancer | Immunoaffinity | 112 | 5 CTCS/sample in CTC-positive patients | Number of detected CTCs | Panel with NGS and digital droplet PCR (ESR1, PIK3CA, KRAS) (cfDNA) | Shaw et al. [ |
| Follicular lymphoma | - | 133 | 7 CTCs/103 peripheral blood cells in CTC-positive patients | Number of detected CTCs | Digital droplet PCR (bcl2-JH) | Delfau-Larue et al. [ |
| Non-small cell lung cancer | Immunoaffinity | 28 | 6.5 CTCs/sample in CTC-positive patients | Number of detected CTCs | Real-time PCR (EGFR) | Isobe et al. [ |
| Non-small cell lung cancer | Microfiltration in two and three dimensions | 89 | 2 CTCs/sample in all patients | Number of detected CTCs | Quantitative PCR (telomerase reverse transcript) | Alama et al. [ |
| Urothelial cancer | Immunoaffinity | 16 | 2.5 CTCs/sample in all patients | Number of detected CTCs | Panel with NGS (ctDNA) | Chalfin et al. [ |
| Head and neck, gastrointestinal cancer | Inertial microfluidics | 37 | 14.5 CTCs/mL in CTC-positive patients | Genome | Panel with NGS (ctDNA) | Onidani et al. [ |
| Multiple myeloma | Immunoaffinity | 28 | Not provided | Genome | Copy number alterations with WGS and WES | Manier et al. [ |
CKs, cytokeratins; EpCAM, epithelial cell adhesion molecule; NGS, next-generation sequencing; PCR, polymerase chain reaction; WEG, whole-exome sequencing; WGS, whole-genome sequencing.
Figure 1Combined analysis of genomic alterations in circulating tumor cells (CTCs) and circulating tumor DNA (ctDNA) using targeted next-generation sequencing. (A) Genomic alterations in CTCs of head and neck cancer, esophageal cancer, gastric cancer, and colorectal cancer patients. The number of CTCs is indicated in the columns. * The number of CTCs could not be determined in 4 patients. (B) Genomic alterations in ctDNA from patients with head and neck cancer, gastric cancer, and colorectal cancer. ctDNA could not be extracted from 2 patients with colorectal cancer. Blue, yellow, orange, green, purple, and black spaces represent missense mutations, nonsense mutations, synonymous mutations, intronic mutations, frameshift deletions, and frameshift insertions, respectively [62].
Figure 2Schematic illustration of the live single-cell mass spectrometry (LSC-MS) method. Blood samples were collected from patients with gastric cancer and colorectal cancer. A microfluidics technique was used to enrich circulating tumor cells (CTCs). Single CTCs were sampled and analyzed using the LSC-MS system [64]. PCA-DA, principal component analysis–discriminant analysis; EDTA, ethylenediaminetetraacetic acid; RBC, red blood cell.
Figure 3Profiling of gastric cancer (GC) and colorectal cancer (CRC) circulating tumor cells (CTCs) at the single-cell level. (A) Principle component analysis–discriminant analysis to distinguish GC CTCs, CRC CTCs, and blank cells. Each dot represents a single cell. (B) Histogram of the frequency of peak distribution across the m/z scale for GC and CRC [64].
Figure 4Graphical overview of tumor heterogeneity and circulating tumor cell (CTC) analysis. Heterogeneity is caused by (1) subclones present within the primary lesion, (2) selected cancer cells shed from the primary lesion that invade the blood vessels (e.g., interaction with the microenvironment surrounding tumor). CTC analysis is a useful tool for characterizing this heterogeneity.
Summary of representative circulating tumor cell (CTC) clinical trials.
| Cancer Type | CTC Enrichment | Number of Patients | Objective | Treatment |
|---|---|---|---|---|
| Breast cancer [ | Immunoaffinity | 547 | Risk stratification for late recurrence | Chemotherapy |
| Breast cancer [ | Immunoaffinity | 177 | Predict prognosis | Chemotherapy, hormonal treatment, and immunotherapy |
| Pancreatic cancer [ | Immunoaffinity | 69 | Predict prognosis | Surgery |
| Colorectal cancer [ | Immunoaffinity | 430 | Predict prognosis | Chemotherapy |
| Prostate cancer [ | Immunoaffinity | 231 | Predict prognosis | Chemotherapy |