| Literature DB >> 27331049 |
Laura Airas1, Eero Rissanen1, Juha O Rinne1.
Abstract
Conventional MR imaging (MRI) techniques form the cornerstone of multiple sclerosis (MS) diagnostics and clinical follow-up today. MRI is sensitive in demonstrating focal inflammatory lesions and diffuse atrophy. However, especially in progressive MS, there is increasingly widespread diffuse pathology also outside the plaques, often related to microglial activation and neurodegeneration. This cannot be detected using conventional MRI. Positron emission tomography (PET) imaging using 18-kDa translocator protein (TSPO) binding radioligands has recently shown promise as a tool to detect this diffuse pathology in vivo, and for the first time allows one to follow its development longitudinally. It is becoming evident that the more advanced the MS disease is, the more pronounced is microglial activation. PET imaging allows the detection of MS-related pathology at molecular level in vivo. It has potential to enable measurement of effects of new disease-modifying drugs aimed at reducing neurodegeneration and neuroinflammation. PET imaging could thus be included in the design of future clinical trials of progressive MS. There are still technical issues related to the quality of TSPO radioligands and post-processing methodology, and comparison of studies from different PET centres is challenging. In this review, we summarise the main evidence supporting the use of TSPO-PET as a tool to explore the diffuse inflammation in MS.Entities:
Keywords: Imaging; Microglia; Multiple sclerosis; Progressive disease
Year: 2015 PMID: 27331049 PMCID: PMC4887541 DOI: 10.1007/s40336-015-0147-6
Source DB: PubMed Journal: Clin Transl Imaging ISSN: 2281-5872
Summary of study design and study population characteristics in [11C]PK11195 PET MS studies
| Study design | Disease or subgroup type ( | Age | Disease duration | EDSS | DMT ( | relapse during scan ( | Patients with Gd + lesions ( | |
|---|---|---|---|---|---|---|---|---|
| Vowinckel et al. [ | Cross sectional | RRMS (2) | np | np | np | np | 0¤ | 0¤ |
| Banati et al. [ | Cross sectional | RRMS (8) | 41.3 (13.1) | 8.3 (7.5) | 3.1 (0.9) | IFN-β (1) | 1 | np |
| Debruyne et al. [ | Cross sectional | HC (7) | 33.0 (8.0) | 7.7 (7.9) | 2.7 (1.5) | IFN-β (4)* | 5 | 8 |
| Versijpt et al. [ | Cross sectional | HC (8) | 37.2 (13.0) | 7.7 (7.9) | 2.7 (1.5) | IFN-β (4)* | 6* | 10* |
| Ratchford et al. [ | Treatment study | RRMS (9) | Median 51 | Median 5.3 | Median 2.0 | GA | 0 | np£ |
| Politis et al. [ | Cross sectional | HC (8) | 32.9 (4.6) | – | – | np | np | np§ |
| Giannetti et al. [ | Cross sectional& | RRMS (10) | 38.3 (8.5) | 12.6 (7.3) | 5.3 (1.5) | IFN-β (2), GA (1) | 0 | 0 |
| Rissanen et al. [ | Cross sectional | HC (8) | 49.7 (10.5) | 13.3 (6.3) | 6.3 (1.5) | None | 0 | 5 |
| Giannetti et al. [ | Cross sectional& | HC (8) | 30.2 (5.5) | 0.4 (0.2) | 1.7 (1.0) | None | 0 | np |
EDSS expanded disability status scale, RRMS relapsing–remitting multiple sclerosis, SPMS secondary progressive multiple sclerosis, PPMS primary progressive multiple sclerosis, HC healthy control, PMS (progressive multiple sclerosis), CIS clinically isolated syndrome, np information not provided, DMT disease-modifying treatment, IFN-β beta-interferon, GA glatiramer acetate (initiated after baseline imaging), CP cyclophosphamide, GA glatiramer acetate
¤One patient with a relapse 4 weeks prior to scan, resolving acute lesion in MRI at the time of PET scan
* Of all patients, disease subtype not specified
£Median number (range) of gadolinium-enhancing lesions at baseline: 0 (0–15)
§Median volumes of gadolinium-enhancing lesions: RRMS 144 mm3, SPMS 89 mm3
#8 SPMS patients and 1 PPMS patient pooled into one group of PMS patients
&Longitudinal follow-up for clinical parameters
Summary of PET data processing and modelling methods in [11C]PK11195 PET MS studies
| Scanner (resolution) | PET motion correction | MRI-PET co-registration | Spatial normalisation | Variable of interest | ROI acquisition method | Modelling method | Main findings | |
|---|---|---|---|---|---|---|---|---|
| Vowinckel et al. [ | CTI/Siemens HR1 (intrinsic resolution 4.2 × 4.2 × 4.0 mm) | None/np | np | None/np | Visual assessment of ligand uptake from summed static images (frames 30–60 min in dynamic images) | None | None | Increased uptake in resolving WM lesion with no Gd− enhancement |
| Banati et al. [ | Siemens ECAT 953B (reconstructed to 5.8 mm FWHM) | None/np | Automated method according to Studholme et al. [ | None/np | BPND within manually delineated ROIs from parametric BPND images estimated voxel-by-voxel from dynamic images | Manual (ANALYZE¤) | Parametric BPND images estimated using BF-SRTM* with cluster reference input£ | Correlation of overlap between BPND and T1-hypointensities to total EDSS |
| Debruyne et al. [ | Siemens ECAT 951/31 (transaxial 5.8 mm and axial 5.0 mm FWHM) | None/np | SPM99§ | MNI space | Normalised specific uptake within ROIs from summed static images (frames from 40 to 60 min in dynamic images) | Manual (PMOD#) | Normalised specific uptake calculated as mean activity/volume unit in target ROI divided by mean activity/volume unit in cortical gray matter | Uptake in Gd− enhanced lesions higher than in NAWM |
| Ratchford et al. [ | CPS/CTI HRRT (2.4 mm FWHM) | SPM5§ | SPM5§ | DARTEL&/MNI space | Change in BPND in ROIs on parametric images (ANALYZE¤) and in voxel level in group-wise comparison (using SPM8§) | Manual (ANALYZE¤) | Reference Logan [ | Significant decrease in cortical GM and cerebral WM BPND after 1 year of GA treatment |
| Politis et al. [ | GE Discovery RX PET/CT (5.0 × 5.0 × 5.1 mm) | None/np | SPM2§ | Atlas based automated segmentation (MAPER‡). Atlas image registered to subject space using IRTK¤¤ | BPND within atlas based ROIs derived from parametric BPND images estimated voxel-by-voxel from dynamic images | Automated; MAPER‡, ANALYZE¤, further segmentation to WM and GM (SPM2§) | Parametric BPnd images estimated using BF-SRTM* with SVCA4** gray reference region input | Increased cortical BPND in MS (wider areas in SPMS than RRMS) versus HC |
| Rissanen et al. [ | ECAT HRRT, CTI/Siemens (intrinsic resolution 2.5 × 2.5 × 2,5 mm) | SPM8§ | SPM8§ | DARTEL& normalisation in VBM8££ | Regional DVR estimated from regional time-activity curves from dynamic images. Parametric DVR images estimated voxel-by-voxel using Logan from dynamic images | Manual delineation of individual deep GM ROIs (Carimas§§) and semiautomated segmentation into normal appearing GM and WM, and pathological WM (SPM8§, VBM8££ and LST‡‡) | ROI-based regional DVR estimates and parametric DVR images calculated using Logan¤¤¤ method with SVCA4 gray reference region input | Increased DVR in NAWM of SPMS patients compared to HC |
| Giannetti et al. [ | Discovery RX PET/CT (5.0 × 5.0 × 5.1 mm/5.8 mm FWHM in 3D) | np | SPM2§ | Atlas based automated segmentation (MAPER‡); atlas image registered to subject space using IRTK¤¤ | BPND within atlas based ROIs derived from parametric BPND images estimated voxel-by-voxel from dynamic images | Manual (ANALYZE¤) | Parametric BPND images estimated using BF-SRTM* with SVCA4** gray reference region input | BPND in BHs correlates with EDSS in PMS |
FWMH full width at half maximum, MNI Montreal Neurological Institute, BP binding potential, non-displaceable, ROI region of interest, DVR distribution volume ratio, MS multiple sclerosis, HC healthy controls, RRMS relapsing–remitting multiple sclerosis, SPMS secondary progressive multiple sclerosis, PMS progressive multiple sclerosis, EDSS expanded disability status scale, GM gray matter, WM white matter, NAGM normal appearing gray matter, NAWM normal appearing white matter, GA glatiramer acetate, BH black hole
$Main emphasis of the study in post mortem and animal data, only the in vivo imaging results are reviewed here
¤ANALYZE medical imaging software (version 8.1, Mayo Foundation, USA)
* BF-SRTM = basis function method of simplified reference tissue model [93]
£Cluster analysis according to Gunn et al. [94]
§SPM; statistical parametric mapping, versions SPM99, SPM2, SPM5 and SPM8; Wellcome Department of Imaging Neuroscience, UCL
#PMOD; PMOD Technologies LTD; Zürich, Switzerland
&DARTEL image registration algorithm [95]
‡MAPER = multi-atlas propagation with enhanced registration [96]
¤¤IRTK = Image registration Toolkit [97]
** SVCA4 = Supervised clustering algorithm with 4 tissue classes (SuperPK software, Imperial Innovations)
££VBM8 = Voxel-Based Morphometry toolbox (version VBM8, University of Jena; Jena, Germany)
§§Carimas software, version 2.4, Turku PET Centre, Turku, Finland
‡‡LST = lesion segmentation tool [98]
¤¤¤Logan = Logan graphical method [99]
*** MRI + CIS = Clinically isolated syndrome patients with T2 lesions in baseline MRI
£££MRI–CIS = Clinically isolated syndrome patient with no T2 lesions in baseline MRI
Fig. 1In vivo differentiation of chronic T1 lesions using TSPO-PET. Left image a T1-weighted MRI image with two similar-looking (non-gadolinium-enhancing) T1 black holes. TSPO-PET (on the right) shows that in the upper lesion there is microglial activation, confirming this lesion to be a chronic active lesion, whereas in the lower lesion there is no radioligand uptake, confirming this lesion to be a chronic inactive lesion
Fig. 2PK11195 binding patterns in MS. A schematic drawing of PK11195 binding patterns in T1 lesional (centre of the circle) and perilesional (yellow rim of the circle) WM and NAWM in RRMS compared to SPMS. Red dots PK11195 binding as a sign of microglial activation. RRMS = relapsing–remitting multiple sclerosis; SPMS = secondary progressive multiple sclerosis; Gd + = gadolinium positive; Gd− = gadolinium negative; NAWM = normal appearing white matter