| Literature DB >> 31480470 |
Clément Bailly1,2, Caroline Bodet-Milin1,2, Mickaël Bourgeois1,2,3, Sébastien Gouard1, Catherine Ansquer2, Matthieu Barbaud2, Jean-Charles Sébille2, Michel Chérel1,3,4, Françoise Kraeber-Bodéré1,2,4, Thomas Carlier5,6.
Abstract
Personalized medicine represents a major goal in oncology. It has its underpinning in the identification of biomarkers with diagnostic, prognostic, or predictive values. Nowadays, the concept of biomarker no longer necessarily corresponds to biological characteristics measured ex vivo but includes complex physiological characteristics acquired by different technologies. Positron-emission-tomography (PET) imaging is an integral part of this approach by enabling the fine characterization of tumor heterogeneity in vivo in a non-invasive way. It can effectively be assessed by exploring the heterogeneous distribution and uptake of a tracer such as 18F-fluoro-deoxyglucose (FDG) or by using multiple radiopharmaceuticals, each providing different information. These two approaches represent two avenues of development for the research of new biomarkers in oncology. In this article, we review the existing evidence that the measurement of tumor heterogeneity with PET imaging provide essential information in clinical practice for treatment decision-making strategy, to better select patients with poor prognosis for more intensive therapy or those eligible for targeted therapy.Entities:
Keywords: PET; SUV; heterogeneity; nuclear medicine; radiomics; radiopharmaceuticals
Year: 2019 PMID: 31480470 PMCID: PMC6770004 DOI: 10.3390/cancers11091282
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.639
Main validated positron-emission-tomography (PET) tracers and their principal indications (based on [10,11]).
| Tracer | Metabolic Process | Principal Oncological Indications |
|---|---|---|
| 11C-Methionine | Amino acid transport and protein synthesis | Diagnosis and grading of brain tumors |
| 18F-Choline (FCH) | Phosphatidylcholine metabolism and cellular membrane turnover | Biopsy guidance of prostate cancer recurrence/primary staging in high-risk prostate cancer before surgical procedures or planning external beam radiation |
| 18F-Fluoro-Deoxyglucose (FDG) | Glucose metabolism | Diagnosis/restaging of lung cancer, colorectal cancer, breast cancer, lymphoma, sarcoma, melanoma, head and neck cancer |
| 18F-DOPA | Dopamine uptake and metabolism | Diagnosis of neuroendocrine tumors (NET)/documented NET metastasis in unknown primary |
| 68Ga-DOTA-Peptides | Somatostatin receptors | Identification of primary tumor in patients with documented NET metastasis/assessment of NET disease extent before treatment |
| 18F-Fluoroestradiol (FES) | Estrogen receptor | Status of tumor lesions to determine need for endocrine therapy in breast cancer |
| 18F-Fluorothymidine (FLT) | Cellular proliferation and | Differential diagnosis between benign and malignant lesions/lymphoma staging and therapeutic evaluation |
| 18-Sodium Fluoride (NaF) | Bone metabolism | Detection of bone involvement in tumors with elevated risk of bone metastasis |
| 68Ga-Prostate-Specific Membrane Antigen (PSMA) | PSMA expression | Localization of tumor tissue in recurrent prostate cancer |
Figure 1An example of a 46-year-old patient with pluri-metastatic intestinal neuroendocrine tumor (grade 2, ki67 at 4%). 68Ga DOTA-TOC (A), FDG-PET (18F-fluoro-deoxyglucose- positron-emission-tomography) (B) and FDOPA (18F-fluorodihydroxyphenylalanine) (C) imaging were realized. MIP (maximum intensity projections) images from the respective PET data sets are shown. The subject has positive on both FDOPA and somatostatine-receptor imaging, dominant disease which exhibits no FDG uptake (green arrows). One hepatic lesion was FDOPA-negative and 68Ga-DOTA-TOC-positive (red arrow) and one gastric lesion was FDOPA-positive and 68Ga-DOTA-TOC negative (blue arrow). Images courtesy of Pr C. Bodet-Milin.
Figure 2An example of 37-year-old patient with pluri-metastatic paraganglioma. MIP (maximum intensity projections) images of the realized 123MIBG-scintigraphy (A), FDG-PET (B) and FDOPA-PET (C) are shown. The subject has a mediastinal lesion, barely seen on 123MIBG-scintigraphy and clearly positive with the others tracers (red arrows). Pulmonary and skull lesions (green arrows) were only visible on FDOPA-PET. Images courtesy of Dr C. Ansquer © Catherine Ansquer
Figure 3Selection of regions of interest in 57-y-old patient before chemotherapy. (A) Graded color-scaled parametric analysis applied in reconstructed coronal PET image shows most active tumor in upper abdomen. (B) Transverse PET image with a higher scale reveals celiac tumor (T) with activity profile crossing the hottest point (red spot). (C) Corresponding activity profile in counts-per-pixel. Isocontours are drawn with lower autocontour threshold of 4500 counts-per-pixel (red isocontour at inset in B). (D) Normal background tissue (N): two large ROIs are manually selected on gluteal muscles, avoiding iliac bone marrow activity. This research was originally published in JNM [76]. © SNMMI.
Common imaging heterogeneity parameters. (Based on [61,91]).
| Order | Matrix | Name of the Parameter | Description of the Parameter |
|---|---|---|---|
|
| SUVmax | SUV value of the maximum intensity voxel within a region of interest (ROI) | |
| SUVpeak | Average SUV within a small ROI (usually, a 1-cm3 spherical volume) | ||
|
| SUVmean | Average measure of SUV within a defined ROI | |
| Metabolic tumor volume (MTV) | Volume of a defined ROI | ||
| Total lesion glycolysis (TLG) | Product of SUVmean × MTV | ||
|
| Contrast | Local variations in the GLCM | |
| Correlation | Joint probability occurrence of the specified pixel pairs | ||
| Entropy | Texture randomness or irregularity | ||
| Energy | Sum of squared elements in the GLCM | ||
| Homogeneity | Closeness of the distribution of elements to the diagonal | ||
|
|
| Short run emphasis (SRE) | Distribution of short runs |
| Long run emphasis (LRE) | Distribution of long runs | ||
| High gray level run emphasis (HGRE) | Distribution of high grey level values runs | ||
| Grey-level non-uniformity (GLNU) | Similarity of grey level values throughout the image | ||
| Run percentage (RP) | Homogeneity and distribution of runs of an image in a specific direction | ||
|
| High gray-level zone emphasis (HGZE) | Distribution of high grey level values zones | |
| Zone length non uniformity (ZLNU) | Similarity of zone length throughout the image | ||
| Zone percentage (ZP) | Homogeneity and distribution of zones of an image in a specific direction | ||
| Short zone emphasis (SZE) | Distribution of small zones | ||
|
| Coarseness | Granularity within an image. |
Figure 4Whole-body 18F-FDG PET scan (A) tumor segmentation (B) and voxel-intensity resampling (C) allowing extraction of different features (D) by analysis of consecutive voxels in a direction (for cooccurrence matrices) (a), alignment of voxels with same intensity (b), difference between voxels and their neighbors (c), and zones of voxels with same intensity (d). This research was originally published in JNM [90]. © SNMMI.
Figure 5Workflow of a nomogram construction combining tumor and heterogeneity features extracted from both PET and CT components of routinely acquired FDG-PET scans in non-small cell lung cancers, allowing for better stratification among patients with stage II–III, compared to stage I. This research was originally published in EJNMMI [104]. © Springer.