| Literature DB >> 35330068 |
Angelo Castello1, Massimo Castellani1, Luigia Florimonte1, Luca Urso2, Luigi Mansi3, Egesta Lopci4.
Abstract
Immune checkpoint inhibitors (ICI) have demonstrated encouraging results in terms of durable clinical benefit and survival in several malignancies. Nevertheless, the search to identify an "ideal" biomarker for predicting response to ICI is still far from over. Radiomics is a new translational field of study aiming to extract, by dedicated software, several features from a given medical image, ranging from intensity distribution and spatial heterogeneity to higher-order statistical parameters. Based on these premises, our review aims to summarize the current status of radiomics as a potential predictor of clinical response following immunotherapy treatment. A comprehensive search of PubMed results was conducted. All studies published in English up to and including December 2021 were selected, comprising those that explored computed tomography (CT), magnetic resonance imaging (MRI), and positron emission tomography (PET) for radiomic analyses in the setting of ICI. Several studies have demonstrated the potential applicability of radiomic features in the monitoring of the therapeutic response beyond the traditional morphologic and metabolic criteria, as well as in the prediction of survival or non-invasive assessment of the tumor microenvironment. Nevertheless, important limitations emerge from our review in terms of standardization in feature selection, data sharing, and methods, as well as in external validation. Additionally, there is still need for prospective clinical trials to confirm the potential significant role of radiomics during immunotherapy.Entities:
Keywords: PET/CT; deep learning; immune checkpoint inhibitors; lung cancer; radiomics; response assessment; survival; texture analysis
Year: 2022 PMID: 35330068 PMCID: PMC8948743 DOI: 10.3390/jcm11061740
Source DB: PubMed Journal: J Clin Med ISSN: 2077-0383 Impact factor: 4.241
Figure 1Illustration of the main steps involved in radiomic analysis and model development.
Figure 2PRISMA flowchart of the study.
Summary of general study features.
| Author | Pts | Cancer | Design | Imaging | Timing | ICI | Outcomes | Combination with Non-Radiomics Predictors |
|---|---|---|---|---|---|---|---|---|
| Mu [ | 194 | NSCLC | Retro-, prospective | PET/CT, CT | Pre-ICI | Anti-PD-(L)1 | DCB, PFS, OS | Histology, ECOG, metastases |
| Ravanelli [ | 104 | NSCLC | Retrospective | CT | Pre-ICI | Nivolumab | PFS, OS | NR |
| Polverari [ | 57 | NSCLC | Retrospective | PET/CT | Pre-ICI | Anti-PD-(L)1 | RECIST, PFS, OS | NR |
| Ladwa [ | 47 | NSCLC | Retrospective | CT | Pre-ICI | Nivolumab | TTP, PFS, OS | NR |
| Shen [ | 63 | NSCLC | Retrospective | CT | Pre-ICI | Anti-PD-(L)1 | iRECIST, PD vs non-PD | NR |
| Liu [ | 46 | NSCLC | Retrospective | CT | Pre-ICI | Nivolumab | PFS, OS | NR |
| Khorrami [ | 139 | NSCLC | Retrospective | CT | Pre-and post 3-4 cycles of ICI | Anti-PD-(L)1 | RECIST, OS | Gender, smoker status |
| Nardone [ | 59 | NSCLC | Retrospective | CT | Pre-ICI | Nivolumab | PFS, OS | NR |
| Dercle [ | 92 | NSCLC | Retrospective | CT | Pre-and post 3-4 cycles of ICI | Nivolumab | iRECIST, BOR | NR |
| Liu [ | 197 | NSCLC | Retrospective | CT | Pre-and post 3-4 cycles of ICI | Nivolumab | iRECIST | NR |
| Valentinuzzi [ | 30 | NSCLC | Retrospective | PET/CT | Pre-, 1mo, and 4mo post-ICI | Pembrolizumab | iRADIOMICS | NR |
| Tunali [ | 228 | NSCLC | Prospective | CT | Pre-ICI | Anti-PD-(L)1 | hyperprogression | Metastases, prior therapy, NLR |
| Vaidya [ | 109 | NSCLC | Retrospective | CT | Pre-ICI | Anti-PD-(L)1 | hyperprogression | NR |
| Tang [ | 290 | NSCLC | Retrospective | CT+tumor immune sample | Pre-ICI | Anti-PD-L1 | OS | Lesion size, N-status, histology, age at surgery, prior therapy |
| Yoon [ | 149 | NSCLC | Retrospective | CT | Pre-ICI | Anti-PD-L1 | T-cell infiltration | Age, female, smoker status, EGFR+ |
| Sun [ | 135 | HNSCC, NSCLC, HCC, BLCA | Retrospective | CT | Pre-ICI | Anti-PD-(L)1 | CD8 expression | Tumor volume, prior therapy, Royal Marsden Hospital prognostic score |
| Jiang [ | 399 | NSCLC | Retrospective | PET/CT | Pre-ICI | Anti-PD-(L)1 | PD-L1 expression | NR |
| Tunali [ | 332 | NSCLC | Retrospective | CT | Pre-ICI | Anti-PD-(L)1 | PFS, OS | Albumin, metastases |
| He [ | 123 | NSCLC | Retrospective | CT | Pre-ICI | Anti-PD-(L)1 | TMB | NR |
| Yang [ | 92 | NSCLC | Retrospective | CT | Pre-ICI | Anti-PD-(L)1 | DCB, PFS | age, metastases |
| Trebeschi [ | 123 | NSCLC, melanoma | Retrospective | CT | Pre-ICI | Anti-PD-1 | RECIST | NR |
| Mu [ | 210 | NSCLC | Retrospective | PET/CT | Pre-ICI | Anti-PD-(L)1 | cachexia, PFS, OS | BMI, metastases, ECOG |
| Bathia [ | 88 | Melanoma | Retrospective | MRI | Pre-ICI | Anti-PD-(L)1 | PFS, OS | ECOG, LDH |
| Basler [ | 112 | Melanoma | Retrospective | PET/CT | Pre-ICI | Anti-PD-1 ± anti-CTLA4 | pseudoprogression | LDH, S100 |
Abbreviations: BLCA, bladder endothelial carcinoma; BOR, best overall response; DCB, durable clinical benefit; ECOG, Eastern Cooperative Oncology Group performance status; HCC, hepatocellular carcinoma; HNSCC, head and neck squamous cell carcinoma; ICI, immune checkpoint inhibitors; LDH, lactate dehydrogenase; NLR, neutrophils-to-lymphocytes ratio; NSCLC, non-small cell lung cancer; NR, not reported; PFS, progression-free survival; OS, overall survival; TMB, tumor mutational burden; TTP, time-to-progression.
Summary of radiomic features.
| Author | Radiomic Software | Total/Reduced Radiomic Features | Validation | Model Building Test | Phase | RQS (%) |
|---|---|---|---|---|---|---|
| Mu [ | MATLAB | 790/8 | Split sample | AIC, HL | III | 24 (68.1) |
| Ravanelli [ | TexRAD | NR | Cross-validation | Cox proportional hazards | II | 10 (27.8) |
| Polverari [ | LIFEx | NR | NR | NR | Discovery science | −3 (0.0) |
| Ladwa [ | MATLAB | NR | Cross-validation | General model for combining pairs of texture parameters | 0 | 2 (5.6) |
| Shen [ | Mazda | NR/10 | NR | LDA, NDA, PCA | 0 | 4 (11.1) |
| Liu [ | Python | 1106/3 | Cross-validation | SVM, LR, GNB | 0 | 11 (29.1) |
| Khorrami [ | 3D Slicer, MATLAB | 99/8 | Split sample, external | LDR | II | 11 (30.6) |
| Nardone [ | LifeX, X-Tile | NR | Split sample, external | Texture score | I | 3 (8.3) |
| Dercle [ | MATLAB | 1160/4 | Split sample | RF | 0 | 13 (36.1) |
| Liu [ | in-house software | 402/7 | Split sample | LR | II | 17 (45.8) |
| Valentinuzzi [ | 3D Slicer | 490/12 | Cross-validation | LR | 0 | 13 (36.1) |
| Tunali [ | MATLAB | 600/409 | NR | LR | Discovery science | 5 (15.3) |
| Vaidya [ | 3D Slicer, MATLAB | 198/3 | Split sample | RF, LDA, DLDA, QDA, SVM | II | 11 (29.2) |
| Tang [ | 3D Slicer, IBEX | 12/4 | Split sample | Cox proportional hazards | II | 14 (38.9) |
| Yoon [ | AVIEW | 63/8 | Internal, bootstrapping | LR | II | 15 (41.7) |
| Sun [ | LIFEx | 84/5 | External | LEN | II | 18 (50) |
| Jiang [ | Python | 1744/24 | Cross-validation | LR, RF | II | 8 (22.1) |
| Tunali [ | MATLAB, C++ | 213/2 | External | Cox proportional hazards | Discovery science | 22 (61.1) |
| He [ | 3D Slicer, Python | 1688/1020 | Split sample | deep learning | II | 16 (44.4) |
| Yang [ | Python | 110/88 | Cross-validation | RF | 0 | 14 (37.5) |
| Trebeschi [ | NR | 5865/68 | Split sample | RF | II | 11 (31.9) |
| Mu [ | ITK-SNAP, MATLAB | 1053/9 | Cross-validation | LR | II | 17 (45) |
| Bathia [ | ITK-SNAP, CERR | 21/12 | Cross-validation | LR | 0 | 7 (19.4) |
| Basler [ | Python | 344/NR | Cross-validation | LR | II | 14 (38.8) |
Abbreviations: AIC, Akaike information criteria; DLDA, diagonal linear discriminant analysis; GNB, Gaussian naïve Bayes; HL, Hosmer–Lemeshow; LDA, linear discriminant analysis; LEN, linear elastic-net; LR, logistic regression; NDA, non-linear discriminant analysis; NR, not reported; PCA, principal component analysis; QDA, quadratic discriminant analysis; RF, random forest; SVM, support vector machine.
Summary of the ongoing clinical trials with ICI and radiomic analysis (source: https://clinicaltrials.gov/, accessed on 14 February 2022).
| Cancer Type | Trial Identifier Number | Phase/Status | ICI | Radiomics Aim |
|---|---|---|---|---|
| Lung Cancer | NCT04984148 | recruiting | not specified | PD-L1 expression, PFS, OS, pneumonitis |
| NCT03305380 | completed | not specified | pneumonitis | |
| NCT04364776 | III, recruiting | durvalumab | PFS, OS | |
| NCT04994795 | not yet recruiting | pembrolizumab ± chemo | PFS, OS, DoR, TTP | |
| NCT04007068 | unknown | pembrolizumab | iRADIOMICS vs. irRC | |
| NCT03311672 | withdrawn | pembrolizumab ± RT | AraG PET-CT radiomic analyses | |
| NCT04541251 | II, recruiting | camrelizumab ± chemo | therapy efficacy and decision-making assistance | |
| NCT04452058 | recruiting | not specified | assist surgery, PFS, OS, ORR, CBR | |
| Lung, melanoma | NCT04193956 | recruiting | not specified | treatment response, toxicity |
| Merkel | NCT03304639 | not recruiting | pembrolizumab ± RT | pneumonitis |
| Esophageal | NCT04821765 | II, recruiting | tislelizumab ± chemo, RT | pathologic response, OS |
| NCT04821778 | III, recruiting | not specified ± chemo ± RT | treatment adverse events, pathologic response, OS | |
| NCT04821843 | III, recruiting | not specified ± chemo ± RT (neoadjuvant) | pathologic response, OS | |
| Urothelial | NCT03237780 | II, recruiting | atezolizumab ± chemo | changes in tumor |
| NCT03387761 | I, completed | Ipilimumab ± nivolumab | responders vs. non-responders | |
| Solid tumors | NCT04079283 | completed | not specified ± chemo | treatment response |
| NCT04892849 | recruiting | not specified | tumor tissue pattern | |
| NCT04954599 | I-II, not yet recruiting | multiple | hypoxia |
Abbreviations: PD-L1, programmed death ligand-1; PFS, progression-free survival; OS, overall survival; DoR, duration of response; TTP, time-to-progression; ORR, overall response rate; CBR, clinical benefit rate.
Summary of main issues and possible solutions for radiomic studies.
| Limitations | Suggestions |
|---|---|
| Small cohort from single center | Multicenter clinical trials |
| Heterogeneous data (“center effect”) | - prospective studies: imaging protocols can be harmonized before data acquisition (e.g., EARL recommendations) |
| - retrospective studies: phantom acquisition, post-filtering steps, or ComBat method | |
| Repeatability and Reproducibility | Open-source software packages with detailed description of the workflow used in the studies; |
| Compliant with the IBSI guidelines | |
| Results | Both positive and negative should be reported to avoid the misuse of algorithms or excessive generalization of results |
| Interpretability (“black box”) | Graph-based or visualization tools for improving the interpretability of radiomic results |
| Model Validation | Preferably performed on external and independent groups, prospectively collected, ideally within clinical trials |
| Accessibility | Shared databases among different institutions (anonymized), able to be used as validation sets; |
| Incorporated into or interfaced with existing RIS/PACS systems |
Abbreviations: EARL, EANM Research GmbH; IBSI, image biomarker standardization initiative; RIS, Radiology Information System; PACS, Picture Archiving and Communication System.