| Literature DB >> 31286200 |
Marius E Mayerhoefer1,2, Christopher C Riedl3, Anita Kumar4, Peter Gibbs3, Michael Weber5, Ilan Tal6, Juliana Schilksy3, Heiko Schöder3.
Abstract
PURPOSE: To determine whether [18F]FDG PET/CT-derived radiomic features alone or in combination with clinical, laboratory and biological parameters are predictive of 2-year progression-free survival (PFS) in patients with mantle cell lymphoma (MCL), and whether they enable outcome prognostication.Entities:
Keywords: FDG; Lymphoma; PET/CT; Prognosis
Year: 2019 PMID: 31286200 PMCID: PMC6879438 DOI: 10.1007/s00259-019-04420-6
Source DB: PubMed Journal: Eur J Nucl Med Mol Imaging ISSN: 1619-7070 Impact factor: 9.236
Fig. 1A 66-year-old patient with stage IV mantle cell lymphoma: left [18F]FDG PET maximum intensity projection image; right 3D radiomic analysis based on the total metabolic tumour volumes (blue) constructed using the previously recommended 41% SUVmax threshold; the SUVmax (red dot) was measured in the periportal nodal bulk
Fig. 2CONSORT diagram
Baseline demographic, clinical, laboratory and biological data of 107 MCL patients, and the results of binary logistic regression analyses for continuous and categorical data
| Characteristic | Frequency | Univariate analysis for 2-year PFS | |
|---|---|---|---|
| OR (95% CI) | |||
| Age | – | 1.000 (0.961–1.041) | 1.0 |
| ≥65 years | 51 (47.7%) | 1.251 (0.557–2.810) | 0.59 |
| Ann Arbor stage | – | – | – |
| I | 5 (4.7%) | 1 | – |
| II | 13 (12.1%) | 1.286 (0.158–10.450) | 0.81 |
| II | 23 (21.5%) | 0.417 (0.054–3.221) | 0.40 |
| IV | 66 (61.7%) | 0.750 (0.117–4.822) | 0.76 |
| Blastoid differentiation | 20 (18.7%) | 0.857 (0.298–2.462) | 0.78 |
| Blastic | 18 (16.8%) | – | – |
| Pleormorphic | 2 (1.9%) | – | – |
| WBC | – | 1.017 (0.982–1.053) | 0.35 |
| Elevated | 18 (16.8%) | 1.837 (0.653–5.165) | 0.25 |
| Ki-67 index | – | 1.007 (0.991–1.022) | 0.39 |
| ≥30% | 56 (52.3%) | 0.890 (0.396–2.001) | 0.78 |
| LDH level | – | 1.004 (0.999–1.009) | 0.096 |
| Elevated | 29 (27.1%) | 1.116 (0.453–2.748) | 0.81 |
| ECOG performance status | – | – | – |
| ≥2 | 7 (6.5%) | 1.594 (0.337–7.545) | 0.56 |
OR odds radio, CI confidence interval
Fig. 3Results of the multi-layer perceptron (MLP) neural network-based prediction of 2-year PFS. With a single “hidden” layer with four neurons (top H(1:1) to H(1:4)), and SUVmean, Entropy, lactate dehydrogenase level (LDH), white blood count (WBC), Ki-67 index and ECOG performance status as inputs, the receiver operating characteristic (ROC) curve (bottom) yielded an area under the curve (AUC) of 0.83, whereas the use of just the two radiomic features (SUVmean and Entropy) as input for the neural network yielded an AUC of 0.73
Descriptive data and results of log-rank tests for MIPIs, with and without modification due to “metabolic risk” on [18F]FDG PET/CT, for 107 MCL patients
| Characteristic | Frequency | Median PFS (months) | Hazard radio (95% CI) | |
|---|---|---|---|---|
| Metabolic riska – two category model | – | – | – | 0.005 |
| Low risk | 80 (74.8%) | 20.3 | 1 | – |
| High risk | 27 (25.2%) | 39.4 | 2.285 (1.264–4.131) | 0.005 |
| Metabolic riska – three category model | – | – | – | 0.017 |
| Low risk | 31 (29.0%) | 38.2 | 1 | – |
| Intermediate risk | 49 (45.8%) | 40.3 | 1.225 (0.590–2.543) | 0.59 |
| High risk | 27 (25.2%) | 20.3 | 2.597 (1.212–5.564) | 0.14 |
| MIPI | – | – | – | 0.27 |
| Low risk | 30 (28.0%) | 41.7 | 1 | – |
| Intermediate risk | 45 (42.1%) | 38.1 | 0.866 (0.424–1.771) | 0.69 |
| High risk | 32 (29.9%) | 27.7 | 1.463 (0.715–2.992) | 0.30 |
| MIPI-b | – | – | – | 0.37 |
| Low risk | 15 (14.0%) | 43.8 | 1 | – |
| Intermediate risk | 36 (33.6%) | 35.7 | 1.441 (0.523–3.969) | 0.48 |
| High risk | 56 (52.3%) | 32.0 | 1.872 (0.724–4.843) | 0.20 |
| MIPI-mb | – | – | – | 0.14 |
| Low risk | 35 (32.7%) | 41.7 | 1 | – |
| Intermediate risk | 41 (38.3%) | 37.6 | 1.344 (0.657–2.750) | 0.42 |
| High risk | 31 (29.0%) | 26.6 | 2.013 (0.984–4.120) | 0.055 |
| MIPI-bmb | – | – | – | 0.005 |
| Low risk | 20 (18.7%) | 43.2 | 1 | – |
| Intermediate risk | 58 (54.2%) | 38.2 | 2.675 (0.935–7.653) | 0.066 |
| High risk | 29 (27.1%) | 20.3 | 4.884 (1.647–14.607) | 0.004 |
HR hazard radio, relative to low risk group, CIconfidence interval
aBased on the radiomic signature (combination of dichotomized SUVmean and Entropy)
bModified according to metabolic risk
Fig. 4Kaplan–Meier estimates and log-rank tests show that the [18F]FDG PET/CT radiomic signature (combination of SUVmean and Entropy), which reflects “metabolic risk”, enables PFS prognostication. MIPI and MIPI-b are clearly improved by combining with metabolic risk, as assessed on [18F]FDG PET/CT. The best results are achieved with MIPI-bm (i.e. combination of MIPI-b and metabolic risk)