| Literature DB >> 35389071 |
Hugh G Pemberton1,2,3, Lyduine E Collij4, Fiona Heeman4, Ariane Bollack5, Mahnaz Shekari6,7,8, Gemma Salvadó6,9, Isadora Lopes Alves4,10, David Vallez Garcia4, Mark Battle11,9, Christopher Buckley11, Andrew W Stephens12, Santiago Bullich12, Valentina Garibotto13,14, Frederik Barkhof5,15,4, Juan Domingo Gispert6,7,8,16, Gill Farrar11.
Abstract
Amyloid-β (Aβ) pathology is one of the earliest detectable brain changes in Alzheimer's disease (AD) pathogenesis. The overall load and spatial distribution of brain Aβ can be determined in vivo using positron emission tomography (PET), for which three fluorine-18 labelled radiotracers have been approved for clinical use. In clinical practice, trained readers will categorise scans as either Aβ positive or negative, based on visual inspection. Diagnostic decisions are often based on these reads and patient selection for clinical trials is increasingly guided by amyloid status. However, tracer deposition in the grey matter as a function of amyloid load is an inherently continuous process, which is not sufficiently appreciated through binary cut-offs alone. State-of-the-art methods for amyloid PET quantification can generate tracer-independent measures of Aβ burden. Recent research has shown the ability of these quantitative measures to highlight pathological changes at the earliest stages of the AD continuum and generate more sensitive thresholds, as well as improving diagnostic confidence around established binary cut-offs. With the recent FDA approval of aducanumab and more candidate drugs on the horizon, early identification of amyloid burden using quantitative measures is critical for enrolling appropriate subjects to help establish the optimal window for therapeutic intervention and secondary prevention. In addition, quantitative amyloid measurements are used for treatment response monitoring in clinical trials. In clinical settings, large multi-centre studies have shown that amyloid PET results change both diagnosis and patient management and that quantification can accurately predict rates of cognitive decline. Whether these changes in management reflect an improvement in clinical outcomes is yet to be determined and further validation work is required to establish the utility of quantification for supporting treatment endpoint decisions. In this state-of-the-art review, several tools and measures available for amyloid PET quantification are summarised and discussed. Use of these methods is growing both clinically and in the research domain. Concurrently, there is a duty of care to the wider dementia community to increase visibility and understanding of these methods.Entities:
Keywords: Alzheimer’s; Amyloid; Brain; Centiloid; Dementia; PET; Quantification; SUVr
Mesh:
Substances:
Year: 2022 PMID: 35389071 PMCID: PMC9308604 DOI: 10.1007/s00259-022-05784-y
Source DB: PubMed Journal: Eur J Nucl Med Mol Imaging ISSN: 1619-7070 Impact factor: 10.057
Fig. 1Illustrative PET images derived from the five most commonly used amyloid tracers on different patients. The left column shows Aß negative subjects (all ~0 Centiloid) and right column shows Aß positive subjects (all ~50 Centiloid, for further details, see “Centiloid scaling” section). Colour schemes used for regulatory approved tracers are in line with each of their FDA label prescribing information: [18F]flutemetamol (https://www.accessdata.fda.gov/drugsatfda_docs/label/2016/203137s005lbl.pdf), [18F]florbetaben (https://www.accessdata.fda.gov/drugsatfda_docs/label/2014/204677s000lbl.pdf), [18F]florbetapir (https://www.accessdata.fda.gov/drugsatfda_docs/label/2012/202008s000lbl.pdf)
Fig. 2Example of the most common reference and target regions used when generating SUVr
Conversion equations using the whole cerebellum as reference region applicable to the standard CL processing pipeline for generating CL scores with the most commonly used tracers, adapted from [101]
| 12.0 | 4.6 | 0.54 | 0.5 | 0.89 | 175.4*SUVRfbp–182.3 | |
| 5.4 | 1.54 | 0.78 | 0.2 | 0.95 | 121.4*SUVRflute–121.2 | |
| 6.8 | 1.96 | 0.61 | 0.4 | 0.96 | 153.4*SUVRfbb–154.9 | |
| 3.5 | n/a | n/a | n/a | n/a | 93.7*SUVRpib–94.6 |
Fig. 3Bar graph showing the increasing use of CLs in academic publications. The numbers were obtained through a PubMed search for “Centiloid” in all fields on 7th September 2021
Fig. 4Summary of the various CL thresholds established in the literature and in use for clinical current clinical trial inclusion
Comparison of the various methods available for amyloid PET quantification
| Metric | Units | Basis of measure | Utility/widespread use | Validation | Imaging needs | Strengths | Weaknesses |
|---|---|---|---|---|---|---|---|
| SUVr | Ratio | Ratio of tracer uptake between a target and reference region | Widely implemented through CE/FDA-approved software | Versus visual read in controls, MCI, and AD patients [ Test-retest [ Histopathology [ | Static PET Structural MRI, although SUVr can be calculated PET only from template ROIs | Easy to calculate across multiple regions Available through CE/FDA-approved software Widely validated against other measures on a variety of clinical populations | Dependent on tracer, reference/target region, and analytical implementation Variability in longitudinal studies [ |
| CL | Centiloids (0–100), unbounded | Mean amyloid deposition of young healthy controls (0) to typical AD patients (100) | Increasingly widely used in research and clinical settings, available through CE/FDA-approved software | Against SUVr, and including test-retest [ Neuropathologically [ Positivity threshold validation [ | Static PET Structural MRI recommended Needs to be calibrated via [11C]PiB or a surrogate reference tracer | Universal, tracer independent metric available through CE/FDA-approved software Widely validated against other measures on a variety of clinical populations Easily interpreted | MRI recommended, although more recent iterations have removed this requirement [ Currently only validated for global/whole brain ROIs rather than regional — not as sensitive to focal uptake as regional measures |
| Standard deviations | Difference from mean of a cognitively healthy population | Widely implemented through CE/FDA-approved software | Widely validated statistical metric for amyloid positivity [ | Static PET | Well known and widely used metric available through CE/FDA-approved software Easy to calculate across multiple regions, easily interpreted | Reliant on accurate SUVr measurements Dependent on reference/target region and analytical implementation Requires a normative reference database | |
| Aβ load | % | Global Aβ burden | Not widely used | Against SUVr [ | Static [18F]florbetapir PET Structural MRI | Larger effect sizes than SUVr — increased power in clinical trials Easily interpreted as a % | Unavailable through CE/FDA-approved software Tracer specific ([18F]florbetapir), although work is ongoing for other tracers Not yet widely validated Assumes spatially harmonised pattern of amyloid accumulation according to the maximum carrying capacity of each region |
| Aβ index | −1, 1 | Global Aβ burden/specific binding | Not widely used | Against SUVr, CSF, visual read, and neuropathology [ | Static [18F]florbetapir and [18F]flutemetamol [18F]florbetaben work is ongoing [ | Does not require an MRI Interchangeable across [18F]florbetapir and [18F]flutemetamol PET Independent of reference and target regions | Unavailable through CE/FDA-approved software, although planned to be incorporated as part of Hermes Medical Solutions’ Not yet widely validated or implemented |
| AMYQ | 0–100, unbounded | Global Aβ burden | Not widely used | Against CL and neuropathology [ | Static PET | Does not require an MRI Interchangeable across tracers Independent of reference and target regions | Unavailable through CE/FDA-approved software Not yet widely validated or implemented |
Fig. 5Example of quantitative metrics computed on two subjects from the AIBL dataset scanned with [18F]flutemetamol. Low amyloid uptake (left image) and high amyloid uptake (right image), including demographics. It was not possible to compute AMYQ due to the proprietary nature of the software. Abbreviations: mini-mental state examination (MMSE), standardised uptake value ratio (SUVr); amyloid-β (Aβ)
Overview of current validation requirements in amyloid PET quantification and the associated AMYPAD studies currently underway
| What research is still required to validate amyloid PET quantification? | What studies are in place to perform this validation? |
|---|---|
| Measure agreement among quantification and visual read across cohorts to assess robustness across populations | Diagnostic and Patient Management Study (DPMS) [ |
| Evaluate the utility and robustness of longitudinal quantification measures | Systematic review ( |
| Calculate the impact of data harmonisation on global CL quantification | Ongoing work presented at AAIC 2020: “Harmonization of Amyloid PET Scans Minimizes the Impact of Reconstruction Parameters on Centiloid Values” [ |
| Assess CL stability as a function of pipeline design, reference region selection, cortical target, and image resolution. Provide optimal pipeline for multi-centre studies | Ongoing work presented at AAIC 2021: “Evaluating robustness of the Centiloid scale against variations in amyloid PET image resolution” [ |
| Compare static acquisition derived metrics with full quantitation derived from dual-time window dynamic imaging | “Parametric imaging of dual-time window [18F]flutemetamol and [18F]florbetaben studies” [ |
| Determine clinical utility of amyloid PET quantification using a randomised-controlled trial design | Primary outcome of the DPMS [ |
| Formally test if and when quantification approaches support visual assessment of difficult cases | Secondary outcome of the DPMS [ |
| Assess the value of regional visual read and quantification in routine clinical settings | Tertiary outcome of the DPMS [ |
| Assess value of quantification to improve risk stratification and individualised disease trajectory in the earliest stages of AD | Primary outcome of the PNHS [ |