| Literature DB >> 30386924 |
Remco Bastiaannet1, S Cheenu Kappadath2, Britt Kunnen3, Arthur J A T Braat3, Marnix G E H Lam3, Hugo W A M de Jong3.
Abstract
Radioembolization is an established treatment for chemoresistant and unresectable liver cancers. Currently, treatment planning is often based on semi-empirical methods, which yield acceptable toxicity profiles and have enabled the large-scale application in a palliative setting. However, recently, five large randomized controlled trials using resin microspheres failed to demonstrate a significant improvement in either progression-free survival or overall survival in both hepatocellular carcinoma and metastatic colorectal cancer. One reason for this might be that the activity prescription methods used in these studies are suboptimal for many patients.In this review, the current dosimetric methods and their caveats are evaluated. Furthermore, the current state-of-the-art of image-guided dosimetry and advanced radiobiological modeling is reviewed from a physics' perspective. The current literature is explored for the observation of robust dose-response relationships followed by an overview of recent advancements in quantitative image reconstruction in relation to image-guided dosimetry.This review is concluded with a discussion on areas where further research is necessary in order to arrive at a personalized treatment method that provides optimal tumor control and is clinically feasible.Entities:
Keywords: Dose-effect relationship; Dosimetry; Personalized medicine; Radiobiological model; Radioembolization; Theranostics
Year: 2018 PMID: 30386924 PMCID: PMC6212377 DOI: 10.1186/s40658-018-0221-z
Source DB: PubMed Journal: EJNMMI Phys ISSN: 2197-7364
Non-exhaustive overview of recent dose-response studies showing a large variety in all relevant parameters. This variety in outcome measures and reported dose thresholds complicate data pooling and the extraction of reliable clinical dose limits
| Study | Tumor type | Microsphere | Modality | Outcome | Dose model | Tumor dose | Liver dose | Remarks |
|---|---|---|---|---|---|---|---|---|
| Chiesa [ | HCC | Glass | 99mTc-MAA SPECT | Choi 50% (CR and PR) [ | EUD, BED, EUBED, | TCP(50%) 560 Gy ( | NTCP(50%) 97 Gy ( | No scatter correction; dose reported here based on SPECT-based delineation; large influence of tumor volume |
| Srinivas [ | HCC | Glass | 90Y PET | mRECIST (CR, PR) |
| – | Non-significant association | |
| Garin [ | HCC | Glass | 99mTc-MAA SPECT | EASL (CR, PR and SD) |
| Threshold for response = 205 Gy | 84 Gy | Large, heterogeneous tumors probably require higher dose. |
| Chan [ | HCC | Glass | 90Y PET | mRECIST | – | |||
| Kappadath [ | HCC | Glass | bSPECT | mRECIST | TCP (50%) | No complication observed for normal liver | ||
| Fowler [ | HCC, NET, CRC | Resin and glass | 90Y PET/MR | (v)RECIST | – | |||
| Strigari [ | HCC | Resin | bSPECT | EASL/RECIST | BED | TCP(50%) 110–120 Gy | NTCP (50%) 52 Gy | |
| Kao [ | HCC and cholangio | Resin | 90Y PET | mRECIST + ‘minor response’ |
| – | Only patients with TN > =2 on MAA SPECT were selected for this study | |
| Flamen [ | CRC | Resin | 99mTc-MAA SPECT | TLG change > 50% |
| – | Chang’s attenuation correction | |
| Van der Hoven [ | CRC | Resin | 90Y PET | TLG change > 50% | – | Higher baseline TLG leads to a higher reduction | ||
| Willowson [ | CRC | Resin | 90Y PET | TLG change > 50% |
| 50 Gy | – | At lower doses, heterogeneity becomes more important |
| Eaton [ | Metastatic melanoma | Resin | bSPECT | TLG change and SUVmax | Sign. associations | – | No scatter or attenuation correction. 12 mm post-filter; crystal effects neglected | |
| Chansanti [ | NET | Resin | 99mTc-MAA SPECT | mRECIST |
| Patients with moderate to severe toxicity received | Reported response at early (median 2.3 months) follow-up |
HCC hepatocellular carcinoma, NET neuroendocrine tumor, CRC colorectal cancer, Cholangio cholangiocarcinoma, LMER linear mixed-effects regression model, CR complete response, PR partial response, SD stable disease
Fig. 1Adapted from [27]. Absorbed dose to the whole liver was not correlated to the administered activity (a). However, liver weight was negatively correlated with whole liver absorbed dose (r = − 0.723, P < 0.001), leading to patients with small liver being relatively over-dosed and patients with larger liver under-dosed (b)
Fig. 2Exemplar case where a VOI delineation based on SPECT thresholding only (blue contour) does not match the CT-based anatomical tumor definition (teal contour). The mismatch results in a difference in tumor volume and mean tumor uptake
Fig. 4Hypothetical cDVHs illustrating key concepts in voxel-based dosimetry which may be used for outcome prediction. In panel (a) the situation of the red absorbed dose distribution may be expected to have a smaller impact on the tissue under consideration (less toxic or less tumor kill). This is also reflected in the D70 and V100 being lower for the red than that for the blue curve. Due to highly heterogeneous absorbed dose distributions, which is typical for radioembolization, two different cases with cDVHs as depicted in panel b might occur. Which of these cDVHs may be expected to have a larger effect on the tissue, is ambiguous (same D70 and V100) and might depend on the tissue type. c Depicts the hypothetical differences in equivalent uniform doses (EUD), derived from the situation in panel b, potentially resolving the ambiguity
Fig. 3Example of a large neuroendocrine tumor, which was treated with glass microspheres. Activity was prescribed according to the MIRD mono-compartment method to reach 120 Gy. According to the PM model, the average absorbed dose to the tumor was 150 Gy. The patient has shown no response after treatment (RECIST, mRECIST, and EASL). The contrast-enhanced CT shows the tumor as a large enhanced area (orange solid line) and necrosis (yellow dotted line) (a). A strong absorbed dose inhomogeneity can be observed (b). Voxel-based dosimetry and radiobiological models may account for such absorbed dose inhomogeneities
Fig. 5Simulated arterial tree (a) and subsequently simulated microsphere distribution after flow through the arterial tree (b, c), which explains PET ‘mottled’ look often found in patients (d) but not in phantom scans (e). This research was originally published in JNM [72]. Copyright by the Society of Nuclear Medicine and Molecular Imaging, Inc.
Fig. 6a Small clusters (white arrow) and large clusters (black arrow) are apparent in the Monte Carlo simulations by Pasciak. These simulated distributions seem to be consistent with the histological findings of (amongst others) Högberg (b, c, d). Panel a was originally published in JNM [75]. Copyright by the Society of Nuclear Medicine and Molecular Imaging, Inc. Other panels are adapted from [74]