| Literature DB >> 22647088 |
Mikael Montelius1, Maria Ljungberg, Michael Horn, Eva Forssell-Aronsson.
Abstract
BACKGROUND: Animal models are frequently used to assess new treatment methods in cancer research. MRI offers a non-invasive in vivo monitoring of tumour tissue and thus allows longitudinal measurements of treatment effects, without the need for large cohorts of animals. Tumour size is an important biomarker of the disease development, but to our knowledge, MRI based size measurements have not yet been verified for small tumours (10-2-10-1 g). The aim of this study was to assess the accuracy of MRI based tumour size measurements of small tumours on mice.Entities:
Mesh:
Year: 2012 PMID: 22647088 PMCID: PMC3434048 DOI: 10.1186/1471-2342-12-12
Source DB: PubMed Journal: BMC Med Imaging ISSN: 1471-2342 Impact factor: 1.930
Figure 1a) 3D-160 MR image of a subcutaneous GOT1 tumour positioned in the neck of the mouse. The tumour is visible as the hyper-intense region central to the image, marked by the 1 cm vertical bar. b) The global segmentation threshold is applied and regions of failed segmentation appear outside the tumour. c) The manual delineation excludes the areas of failed segmentation, and the final result is shown in d) where white pixels represent the region that will be accounted for as tumour volume.
Figure 2Tumour mass calculated from 3D-160 MR images,, vs. tumour mass measured after resection,, n = 17. There is a strong correlation between the parameters. The inserted figure shows the same data when only small tumours (<0.2 g) are included (m = 0.90m + 0.00, R2 = 0.98, n = 10).
Figure 3Tumour mass calculated from a) gauge block measurements,, and b) 2D images,, vs. tumour mass measured after resection,. a)m vs. m (n = 12). The correlation was strong when all tumour sizes were included (R2 = 1.0), but was lower in the assessment of small tumours only (inserted figure; m <0.2 g, n = 9, m = 0.78m + 0.00, R2 = 0.65). The corresponding correlation for m vs. m for the same set of tumours was m = 0.93m + 0.00, R2 = 1.00 (m <0.2 g: m = 0.90m + 0.00, R2 = 0.97). b) m vs. m (n = 15). The correlation was strong when all tumour sizes were included (R2 = 0.99), and persisted in the assessment of small tumours only (inserted figure, m <0.2 g, n = 9, m = 0.94m + 0.00, R2 = 0.96). The corresponding correlation for m vs. m for the same set of tumours was m = 0.93m + 0.01, R2 = 1.0 (<0.2 g: m = 0.91m + 0.00, R2 = 0.98).
The coefficient of variation (CV) calculated for the five intraobserver variability assessments. The CV is based on 10 volume calculations performed on each of the five image series
| 0.01 | 3D-160 | 3.1 |
| 2D | 6.9 | |
| 0.10 | 3D-160 | 3.1 |
| 0.87 | 3D-160 | 2.1 |
| 2D | 1.9 |
Interobserver variation. The interobserver variation of tumour mass measurements for three observers given as relative deviation (in per cent) from the average value of the mass (n = 10) obtained by observer 1 for three different tumours and two imaging methods studied
| 0.02 | 3D-160 | − | 0.7 | −4.7 |
| 0.02 | 2D | − | 23 | 11 |
| 0.10 | 3D-160 | − | 1.2 | −4.3 |
| 0.91 | 3D-160 | − | −1.4 | 0.1 |
| 0.99 | 2D | − | 2.2 | −9.0 |
Influence of partial volume effect on volume determination. The maximum possible influence of the partial volume effect (PVE) on tumour volume estimations, assuming isotropic voxels and a spherical tumour, determined by simulations
| 70 | 6 | −6 |
| 45 | 10 | −10 |
| 28 | 16 | −14 |
| 12 | 39 | −31 |
The voxels-per-tumour-diameter ratio is listed with the corresponding results from the simulation. The relative difference between over- and underestimated tumour volumes and the analytically calculated volume are given as a percentage of true tumour volume.