| Literature DB >> 31432278 |
Mathieu Sinigaglia1, Tarek Assi2, Florent L Besson3,4, Samy Ammari5, Myriam Edjlali6, Whitney Feltus7, Laura Rozenblum-Beddok8, Binsheng Zhao7, Lawrence H Schwartz7, Fatima-Zohra Mokrane7,9, Laurent Dercle10,11.
Abstract
Immunotherapies that employ immune checkpoint modulators (ICMs) have emerged as an effective treatment for a variety of solid cancers, as well as a paradigm shift in the treatment of cancers. Despite this breakthrough, the median survival time of glioblastoma patients has remained at about 2 years. Therefore, the safety and anti-cancer efficacy of combination therapies that include ICMs are being actively investigated. Because of the distinct mechanisms of ICMs, which restore the immune system's anti-tumor capacity, unconventional immune-related phenomena are increasingly being reported in terms of tumor response and progression, as well as adverse events. Indeed, immunotherapy response assessments for neuro-oncology (iRANO) play a central role in guiding cancer patient management and define a "wait and see strategy" for patients treated with ICMs in monotherapy with progressive disease on MRI. This article deciphers emerging research trends to ameliorate four challenges unaddressed by the iRANO criteria: (1) patient selection, (2) identification of immune-related phenomena other than pseudoprogression (i.e., hyperprogression, the abscopal effect, immune-related adverse events), (3) response assessment in combination therapies including ICM, and (4) alternatives to MRI. To this end, our article provides a structured approach for standardized selection and reporting of imaging modalities to enable the use of precision medicine by deciphering the characteristics of the tumor and its immune environment. Emerging preclinical or clinical innovations are also discussed as future directions such as immune-specific targeting and implementation of artificial intelligence algorithms.Entities:
Keywords: Artificial Intelligence; Durvalumab; Gliblastoma; Imaging; Immunotherapy; MR; Nivolumab; PET; Pembrolizumab; Pidilizumab; RANO; Radiomics; iRANO
Year: 2019 PMID: 31432278 PMCID: PMC6702257 DOI: 10.1186/s13550-019-0542-5
Source DB: PubMed Journal: EJNMMI Res ISSN: 2191-219X Impact factor: 3.138
Prospective studies currently recruiting for Anti-PD1 treatment in Glioblastoma
Note: Details on clinical trials were obtained on ClinicalTrials.gov website (https://clinicaltrials.gov/ct2/home). Last upadate, December 1, 2018. IDO-1 cytosolic enzyme indoleamine 2,3-dioxygenase-1, TTF Tumor treating Fields, TIL tumor infiltrating lymphocytes, GITR Glucocorticoid induced TNF receptor, ND not discolsed, DCE: dynamic contrast-enhanced
Fig. 1Imaging of actionable molecular pathways in patients with glioblastoma: the concept of supervoxels. Imaging allows non-invasive evaluation of the action of immune checkpoint modulators in patients with glioblastoma. Currently, most clinicians perform a visual and qualitative assessment. Alternatively, artificial intelligence can be trained to extract imaging biomarkers by measuring the signal in each unique voxel of a region of interest provided by each imaging technique. Ultimately, artificial intelligence can resume the information provided by multiple voxels from multiple imaging modality to provide one single quantitative probability map using supervoxels (synthetic summary of all voxels from the same volume of interest using different imaging modalities)
MRI imaging biomarkers for assessment of the immune and tumor environment of glioblastoma
| Hallmark | Threshold | Advantages | Limitations |
|---|---|---|---|
| Cellular proliferation | Specificity | Tumor heterogeneity Low sensitivity (mM) No specific patterns Acquisition time (MRS) Peripheral lesions (MRS: pitfalls with bone and skin) No absolute reference value (ADC) | |
| Membrane proliferation | Low sensitivity (mM) | ||
| Structural complexity | ↑Diffusion kurtosis imaging ↓ Fractional anisotropy (brain fibers) | Specificity Sensitivity | Availability Still experimental |
| Aminoacid metabolism | – | – | – |
| Glucose metabolism | – | Pitfalls: lymphoma, lactates (TE = 35 ms) | |
| Angiogenesis | ↑Ktrans on DCE-MR (permeability) ↓BOLD fMRI signal | Level of evidence | Software Steroids Non specific |
| Perfusion | ↑Relative CBV on DCE-MR | Robust software | Normalization is required Operator dependent Nonspecific of gliomas |
| Invasiveness | ↑FLAIR ↓ADC (except in the edema) ↓FA (experimental) | Sensitivity | Non-standardized Operator dependent Normalization is required |
| Hypoxia | ↓19F-MRI | Specificity | Non-standardized |
| Necrosis | ↓DWI ↓ADC | Specificity | Non-standardized |
| Edema | ↑ADC ↑T2FLAIR | Sensitivity | Specificity |
| Infiltration of cytotoxic T cells | – | – | – |
| Anergy of T cells | – | – | – |
| Activated microglia | – | – | – |
Note: [6]. MRS magnetic resonance spectroscopy, Chomax maximum concentration of choline-containing compounds, Chomean mean concentration of choline-containing compounds, Cr creatinine, mI myoinositol, NAA N-acetyl-aspartate, BBB blood-brain barrier, CBV cerebral blood volume, CBF cerebral blood flow, rCBV related CBV, FLAIR fluid-attenuated inversion recovery, ADC apparent diffusion coefficient, FA fractional anisotropy. BOLD blood oxygenation level dependent, fMRI functional magnetic resonance imaging, TE EchoTime (ms), ↓ decrease, ↑ increase
PET imaging biomarkers for assessment of the immune and tumor environment of gliobastoma
| Hallmark | Threshold | Advantages | Limitations |
|---|---|---|---|
| Cellular proliferation | ↑18F-FLT | Correlated to Ki-67 High sensitivity (nM) Absolute quantification | Does not cross the intact blood-brain barrier (BBB) High cortical background activity Low specificity Challenging production |
| Membrane proliferation | ↑18F-choline | High sensitivity (nM) Absolute quantification Radiation necrosis vs. recurrence | Does not cross the intact BBB Inflammation vs. Tumor tissue High cortical background activity Availability |
| Structural complexity | – | – | – |
| Aminoacid metabolism | ↑11C-methionine ↑18F-FET ↑18F-FDOPA | Cross the intact BBB Specificity | Half-life (11C- methionine = 20 min) Availability |
| Glucose metabolism | ↑18F-FDG | Availability Cross the intact BBB No side effects | High cortical background activity Non-specific: inflammation vs. tumor |
| Angiogenesis | ↑18F-RGD | Marker for αVβ3 expression | Primarily an experimental application |
| Perfusion | ↑15O-H2O | Quantification in mL/100 g per min | Availability Time and cost consuming |
| Invasiveness | – | – | – |
| Hypoxia | ↑18F-FMISO ↑18F-FAZA ↓15O-H2O | Identification of radiation resistant areas | Primarily experimental application |
| Necrosis | – | – | – |
| Edema | – | – | – |
| Infiltration of cytotoxic T cells | ↑18F-FHBG | Track HSV1-tk reporter gene expression (cytotoxic T cells) | Preclinical experimental application |
| ↑ 89Zr-PEGylated-anti-CD8-VHH | Track CD8+ T cells | Primarily experimental application | |
| ↑68Ga-DOTA-D-Phe1-Tyr3-Octreotide | Activated immune cells | Primarily experimental application | |
| Anergy of T cells | ↑PD-1 or PD-L1 | Prediction of the effectiveness of anti-PD1 | Still experimental on mouse tumor models |
| Activated microglia | ↑TSPO (immuno-PET) | Nonspecific: tumor vs. neuro-inflammation |
F-FLT 18F-fluorothymidine, BBB blood-brain barrier, 18F-FDG 18F-fluorodeoxyglucose, F-FET 18F-fluoroethyltyrosine, C-MET 11C-methionine, F-RGD 18F-arginine-glycine-aspartic acid, F-FMISO 18F-fluoromisonidazole, F-FHBG 18F-fluoro-3-(hydroxymethyl)butylguanin, ↓ decrease, ↑ increase
Fig. 2Detection of a potential hyperprogression in a patient with glioblastoma. This case illustrates the potential risk of hyperprogression. Imaging of an 18 year old patient with a diagnosis of glioblastoma treated with anti-PD-1. MRIs were obtained at 3-month intervals (baseline, a–e; 3 months, f, g). a–e Baseline T1 post-contrast MRI prior to immunotherapy and re-gamma knife therapy demonstrating an enhancing lesion with increased perfusion. f, g MRI post-initiation of immunotherapy showing fast interval growth of the lesion, as well as a life-threatening mass effect. This case illustrates the potential life-threatening local complications of hyperprogression
Fig. 3Multimodal image-guided management in a PD-1, PD-L1, TILs glioblastoma. This case illustrates the potential interest of pre-immunotherapy immuno-PET imaging biomarkers since the immune escaping environment (i.e., pathology was negative for PD-1, PD-L1 and, tumor infiltrating lymphocytes) explaining the insensitivity of this patient to immunotherapy was demonstrated only on the pathology post-resection at the end of immunotherapy. Existing imaging techniques demonstrated treatment insensitivity (a–h) but were not able to decipher the immune contexture for an early prediction of outcome. Imaging of a patient with recurrent glioblastoma in the left parietal lobe treated with combined immunotherapy (nivolumab) and re-gamma knife. MRIs were obtained at 3-month intervals. a Baseline T1 post-contrast MRI prior to immunotherapy and re-gamma knife therapy demonstrating a 6 × 5 mm enhancing lesion in the left parietal lobe. b MRI post-initiation of immunotherapy and pre-re-gamma knife therapy showing interval growth of the lesion. c MRI perfusion demonstrating growth and increased flow along the anterior margin of the tumor. d, e PET/CT demonstrating continued growth and increased FDG activity along the margin of the lesion. f Subsequent MRI demonstrating significant growth, increased peripheral nodular enhancement, and central necrosis. g Post-contrast MRI post-resection showing mild non-specific enhancement around the resection margin. h Follow-up MRI 7 months after resection demonstrating progression of disease
Current precision diagnosis and treatment approaches using radiomics on standard of care MRI sequences in patients with glioblastoma
| Year, Author | Sequence | Training and Validation set | Extracted radiomics features, selection, and statistical learning | Biologic correlation and relevance |
|---|---|---|---|---|
| 2008, Diehn | T1, T1+ T2 | T, 22 pts V, 110 pts | -10 binary imaging traits (enhancement, necrosis, mass effect, T2 edema, cortical involvement, SVZ involvement, C:N ratio, contrast/T2 ratio, T2 edema, T2 heterogeneity). - Unsupervised hierarchical clustering, Spearman rank-correlation coefficient. | - Associations between angiogenesis, tumor hypoxia, and the contrast enhancement imaging phenotype; proliferation gene-expression signature and mass effect phenotype; EGFR protein overexpression and contrast:necrosis imaging trait. |
| 2011, Zinn | FLAIR | T, 26 pts V, 26 pts | - Quantitative models of edema/invasion, enhancing tumor, necrosis. - Comparative marker selection, ingenuity pathway analysis. | - Imaging traits associated with upregulation of mRNA involved in cellular migration/invasion (PERIOSTIN),which was seen to correlate with decreased survival. |
| 2014, Rahman | ADC-/+ T2/FLAIR | T, 91 pts | - 6 variables extracted from histograms of apparent diffusion coefficient were measured at three times (baseline, post-treatment and change). - Cox proportional hazards model adjusted for clinical variables. | - ADC histogram analysis within both enhancing and nonenhancing components of tumor can be used to stratify for PFS and OS in patients with recurrent glioblastoma treated with Bevacizumab. |
| 2014, Jamshidi | T1, T1+ T2 Flas | T, 23 pts | - (1) infiltrative versus edematous T2 abnormality, (2) degree of contrast enhancement, (3) necrosis, (4) supraventricular zone (SVZ) involvement, (5) mass effect, and (6) contrast-to-necrosis ratio. - Resampling statistics, analysis of variance, Pearson correlation coefficient. | - Gene-to-trait associations were found such as contrast-to-necrosis ratio with KLK3 and RUNX3, SVZ involvement with the Ras oncogene family and the metabolic enzyme TYMS, and vasogenic edema with the oncogene FOXP1 and PIK3IP1. |
| 2015, Lee | T1+Flair | T, 65 pts | - 36 spatial habitat diversity (regions with distinctly different intensity characteristics) features based on pixel abundances w/in ROIs. - Overall coefficient of variation, symbolic regression method. | - Association with OS and EGFR+ status - Could be a useful prognostic tool for MRIs of patients with glioblastomas. |
| 2016, Kickingereder | T1, T1+ Flair | T, 112 pts V, 60 pts | - 4842 total - 17 first-order features, 9 volume and shape features, 162 texture features. - Supervised principal component analysis, Cox proportional hazard models, integrated Brier scores. | - An 72-feature radiomics-based classification of recurrent glioblastoma permits the prediction of treatment outcome to antiangiogenic therapy through PFS and OS. |
| 2016, Kickingereder | T1+ Flair | T, 79 pts V, 40 pts | - 12,190 indexes - Supervised principal component analysis. | - An 11-feature radiomic signature allowed prediction of PFS and OS, stratification of patients with newly diagnosed glioblastoma, and improved performance compared with that of established clinical and radiologic risk models. |
| 2016, Grossmann | T1+ FLAIR | T, 144 pts (gene, 91 pts) | - Volumetric features such as the necrotic core, contrast enhancement, abnormal tumor volume, tumor-associated edema, and total tumor volume (TV), as well as ratios of these tumor components. - Spearman rho, C-index, Noether test. | - Association of imaging features with immune response pathways and apoptosis, signal transduction and protein folding processes, homeostasis and cell cycling pathways, as well as OS. |
| 2016, McGarry | T1, T1+ ADC FLAIR | T, 81 pts | - Map containing 81 (34) potential voxel-wise codes. A 4-digit code was assigned to each voxel. The digit order chosen was T1, ADC, T1+, and FLAIR. Codes ranged from 1111 (dark voxels on all images) to 3333. - Log-rank Kaplan-Meier survival analysis, Cox proportional hazards model, combined classifier. | - Radiomic signature predicted poorer prognosis at tumor diagnosis in newly diagnosed glioblastoma |
| 2017, Prasanna | T1 FLAIR T2 | T, 65 pts | - 402 radiomic features were obtained for each region: enhancing lesion, peritumoral brain zone and tumor necrosis. - Redundancy maximum relevance feature selection , random forest (RF) classifier, threefold cross-validation. | - Ten radiomic “peritumoral” MRI features, suggestive of intensity heterogeneity and textural patterns, were predictive of survival on treatment-naïve pre-operative glioblastoma. |
| 2017, Yu | FLAIR | T, 110 pts V, 30 pts | - 671 high-throughput features were extracted from grade II glioma. - Classification by support vector machine and AdaBoost, leave-one-out cross-validation. | - 110 features were selected for the noninvasive IDH1 status estimation of grade II glioma. |
| 2017, Xi | T1, T1+ T2 | T, 98 pts V, 20 pts | - 1665 imaging features - Reduced using LASSO regularization, classification by support vector machine. | - The best classification system for predicting MGMT promoter methylation status in preoperative gliobastoma originated from the combination of 36 T1, T2, and enhanced T1 images features. |
| 2017, Kickingereder | T1, T1+ FLAIR T2 | T, 120 pts V, 60 pts | - 1043 imaging features - Penalized Cox model with 10-fold cross-validation. | - The 8-feature radiomic signature increased the prediction accuracy for PFS and OS beyond the assessed molecular, clinical, and standard imaging parameters in newly diagnosed glioblastoma prior to standard-of-care treatment. |
| 2017, Li | T1+ | T, 96 pts | - 555 imaging features - Student’s tests ( | - Glioblastoma in different age groups (< 45 and ≥ 45 years old) present different radiomics-feature patterns, suggesting different pathologic, protein, or genic origins. - 101 features showing the consistency with the age groups, and unsupervised clustering results of those features also show coherence with the age difference. |
| 2017, Grossmann | T1+ FLAIR | T, 126 pts V, 165 pts | - 65 imaging features from T1 and FLAIR scans at baseline (pretreatment) and follow-up after 6 weeks (post treatment initiation) - Unbiased unsupervised feature selection (PCA), selection of variant features (coefficient of variation). - Minimal redundancy maximal relevance algorithm, Cox proportional hazards model for PFS or OS. | - Multivariable analysis of features derived at baseline imaging resulted in significant stratification of OS and PFS. - These stratifications were stronger compared with clinical or volumetric covariates prognostic value for survival and progression in patients with recurrent glioblastoma receiving bevacizumab treatment. |
| 2017, Kanas | T1+ FLAIR | T, 86 pts | - 10 quantitative variables and 24 qualitative variables were calculated from the volumes of three distinct regions: edema/invasion, tumor enhancement (tumor), and necrosis. - Isometric feature mapping, locally linear embedding, Laplacian eigenmaps, linear discriminant analysis, factor analysis, principal components analysis, stochastic proximity embedding, random forest, k-nearest neighbors, Gaussian naive Bayes, and the J48 tree. | - The status of MGMT promoter methylation was predicted with an accuracy of up to 73.6%. - Experimental analysis showed that the edema/necrosis volume ratio, tumor/necrosis volume ratio, edema volume, and tumor location and enhancement characteristics were the most significant variables in respect to the status of MGMT promoter methylation in glioblastoma. |
| 2010, Drabycz | T1+ T2 FLAIR | T, 59 pts | - 4 visual qualitative texture features (cysts, ring/nodular enhancement, margins, homogeneity), volume, 11 regions/sectors features and space–frequency texture analysis based on the S-transform. - Two-way repeated-measures analysis of variance (ANOVA) tests. | - Ring enhancement assessed visually is significantly associated with unmethylated MGMT promoter status. -Texture features on T2 images assessed by the space–frequency analysis were significantly different between methylated and unmethylated cases. |
Flas fast low-angle shot, OS overall survival, PFS progression free survival, MGMT O6-methylguanine-DNA-methyltransferase, IDH isocitrate deshydrogenase
Fig. 4Multimodal image-guided management using artificial intelligence in glioblastoma. This case illustrates the potential interest of imaging biomarkers extracted using artificial intelligence. Imaging of a patient with glioblastoma. a Baseline T1 post-contrast MRI prior to therapy demonstrating an enhancing lesion. b Baseline 18F-Dopa PET showing an increased amino acid uptake outside of the enhancing lesion on MRI. c Analysis of the MRI by artificial intelligence demonstrating areas with high heterogeneity (red) and low heterogeneity in normal healthy brain tissue (blue). This map is a parametric map of local entropy computed using the baseline T1 post-contrast MRI. The only limit in the analysis of the local heterogeneity/entropy is that contours/edge/interface are always heterogeneous. d Fused image of the Baseline 18F-Dopa PET (b) and of the parametric map of local entropy (c)