| Literature DB >> 32296901 |
Constantin Dreher1, Philipp Linde2, Judit Boda-Heggemann3, Bettina Baessler4.
Abstract
Current research, especially in oncology, increasingly focuses on the integration of quantitative, multiparametric and functional imaging data. In this fast-growing field of research, radiomics may allow for a more sophisticated analysis of imaging data, far beyond the qualitative evaluation of visible tissue changes. Through use of quantitative imaging data, more tailored and tumour-specific diagnostic work-up and individualized treatment concepts may be applied for oncologic patients in the future. This is of special importance in cross-sectional disciplines such as radiology and radiation oncology, with already high and still further increasing use of imaging data in daily clinical practice. Liver targets are generally treated with stereotactic body radiotherapy (SBRT), allowing for local dose escalation while preserving surrounding normal tissue. With the introduction of online target surveillance with implanted markers, 3D-ultrasound on conventional linacs and hybrid magnetic resonance imaging (MRI)-linear accelerators, individualized adaptive radiotherapy is heading towards realization. The use of big data such as radiomics and the integration of artificial intelligence techniques have the potential to further improve image-based treatment planning and structured follow-up, with outcome/toxicity prediction and immediate detection of (oligo)progression. The scope of current research in this innovative field is to identify and critically discuss possible application forms of radiomics, which is why this review tries to summarize current knowledge about interdisciplinary integration of radiomics in oncologic patients, with a focus on investigations of radiotherapy in patients with liver cancer or oligometastases including multiparametric, quantitative data into (radio)-oncologic workflow from disease diagnosis, treatment planning, delivery and patient follow-up.Entities:
Keywords: Artificial intelligence; Big data; Computed tomography; Magnetic resonance imaging; Stereotactic body radiation therapy
Mesh:
Year: 2020 PMID: 32296901 PMCID: PMC7498486 DOI: 10.1007/s00066-020-01615-x
Source DB: PubMed Journal: Strahlenther Onkol ISSN: 0179-7158 Impact factor: 3.621
Radiomics for predictive use
| Author | Aims | Imaging modality | Number | Conclusion |
|---|---|---|---|---|
| Lewis et al. [ | To distinguish hepatocellular carcinoma (HCC) from other primary liver cancers (intrahepatic cholangiocarcinoma [ICC] and combined HCC-ICC) through volumetric quantitative apparent diffusion coefficient (ADC) histogram parameters and LI-RADS categorization | MRI | 63 | Combination of quantitative ADC histogram parameters and LI-RADS categorization yielded the best prediction accuracy for distinction of HCC compared to ICC and combined HCC-ICC |
| Wu et al. [ | To evaluate the feasibility of using radiomics with precontrast MRI for classifying HCC and hepatic haemangioma (HH) | MRI | 369 | Radiomics-based assessments could be used to distinguish between HCC and HH on precontrast images, thereby allowing noninvasively efficient identification and minimizing errors from visual inspection |
| Oyama et al. [ | To evaluate the accuracy for classification of hepatic tumours | MRI | 37 HCCs, 23 metastatic tumours, and 33 HHs | Using texture analysis or topological data analysis allows for classification of the three hepatic tumours with considerable accuracy |
| Wu et al. [ | To predict histopathological grading for HCC cases | MRI | 170 | A computed radiomics signature itself or combined with clinical factors could help to classify the patients into high-grade or low-grade HCC |
The columns Aims and Conclusion are directly based on the original work as cited in the column Author (wording partly adapted).
CECT contrast-enhanced computed tomography, ER early recurrence, HCC hepatocellular carcinoma, LI-RADS Liver Imaging Reporting and Data System, MRI magnetic resonance imaging, MVI microvascular invasion
Fig. 1Exemplary radiomics workflow for liver imaging. Schematic illustration of the entire patient journey including image acquisition, analysis utilizing radiomics, and the derived patient-specific therapy and prognosis. Symptomatic patients undergo CT (computed tomography) or MR (magnetic resonance) scans. After image segmentation, radiomic features are extracted. High-level statistical modelling involving machine learning is applied for disease classification, patient clustering and individual risk stratification
Auto-planning and predictive use of radiomics
| Author | Aims | Imaging modality | Number, (training (T) and validation (V) set, where available) | Conclusion |
|---|---|---|---|---|
| Chen et al. [ | To develop a radiomics model based on gadolinium-ethoxybenzyl-diethylenetriamine (Gd-EOB-DTPA)-enhanced MRI for pretreatment prediction of immunoscore in HCC | MRI | 207 T: 150 V: 57 | MRI-based combined radiomics nomogram shows effectiveness in predicting immunoscore in HCC |
| Shan et al. [ | To predict recurrence of HCC (hepatocellular carcinoma) after curative treatment | CECT | 156 T: 109 V: 47 | A radiomics model effectively predicts early recurrence (ER) of HCC and is more efficient than conventional imaging features and models |
| Xu et al. [ | To predict microvascular invasion (MVI) and clinical outcomes in patients with HCC | CECT | 495 T: 350 V: 145 | The computational approach demonstrates good performance for predicting MVI and clinical outcomes |
| Vivanti et al. [ | To automatically delineate liver tumours in longitudinal CT studies | CECT | 31 | The system showed the ability to predict failures and the ability to correct them |
| Vorontsov et al. [ | To bring up a semi-automatic tumour segmentation method | CECT | 40 | The proposed method can deal with highly variable data |
| Bakr et al. [ | To predict MVI | CECT | 28 | RF (Radiomic features) computed with single-phased or combined-phased images were correlated with MVI |
| Peng et al. [ | To develop and validate a radiomics nomogram for the preoperative prediction of prognosis in patients with HCC undergoing partial hepatectomy | CECT | 304 T: 184 V: 120 | Radiomics nomogram showed excellent performance for the individualized and non-invasive estimation of disease-free survival, which may help clinicians better identify patients with HBV-related HCC who can benefit from the surgery |
| Zhou et al. [ | To predict ER of HCC | CECT | 215 | Radiomics signature was a significant predictor for ER in HCC |
| Liu et al. [ | To develop and validate a learning-based method to derive electron density from routine anatomical MRI for potential MRI-based SBRT treatment planning; CT and MRI for CT synthesis | (co-registered) CT and MRI | 21 | Image similarity and dosimetric agreement between synthetic CT and original CT |
| Fu et al. [ | To expedite the contouring process for MRI-guided adaptive radiotherapy (MR-IGART), a convolutional neural network deep-learning model is proposed to accurately segment the liver, kidneys, stomach, bowel and duodenum in 3D MR images | CEMRI | 120 T: 100 V: 10 Test: 10 | The proposed method can automatically segment the liver, kidneys, stomach, bowel, and duodenum in 3D MR images with good accuracy |
| Zhang et al. [ | To build a knowledge-based model of liver cancer for auto-planning | CECT | 70 T: 20 | Auto-planning shows availability and effectiveness |
| Li et al. [ | CT textural feature analysis for the stratification of single large HCCs >5 cm, and the subsequent determination of patient suitability for liver resection (LR) or transcatheter arterial chemoembolization (TACE) | CECT | 130 | Texture analysis demonstrated the feasibility of using HCC patient stratification for determining the suitability of LR vs. TACE |
The columns Aims and Conclusion directly based on the original work as cited in the column Author (wording partly adapted).
CECT contrast-enhanced computed tomography, ER early recurrence, HCC hepatocellular carcinoma, MRI magnetic resonance imaging, MVI microvascular invasion
Radiomics for predicting patient outcome
| Author | Aims | Imaging modality | Number, (training (T) and validation (V) set, where available) | Conclusion |
|---|---|---|---|---|
| Cai et al. [ | To develop and validate a radiomics-based nomogram for the preoperative prediction of posthepatectomy liver failure (PHLF) in patients with HCC | CECT | 112 T: 80 V: 32 | A nomogram based on the Radiomics-score, model for end-stage liver disease (MELD), and performance status (PS) can predict PHLF |
| Ibragimov et al. [ | To predict toxicity beyond the existing dose/volume histograms | CECT | 125 | A framework offers clinically accurate tools for hepatobiliary toxicity prediction and automatic identification of anatomical regions that are critical to spare during stereotactic body radiation therapy |
| Park et al. [ | To develop and validate a radiomics-based model for staging liver fibrosis | Gadoxetic acid-enhanced hepatobiliary phase MRI | 436 | Radiomics analysis of gadoxetic acid-enhanced hepatobiliary phase images allows for accurate diagnosis of liver fibrosis |
| Dogan et al. [ | To determine the changes in image texture features (delta-radiomics) measured on daily low-field MRI and whether delta-radiomics features could be used to assess treatment response and predict patient outcomes | MRI | 10 | Dogan et al. demonstrated that three delta-radiomics texture features extracted from low-field MRI during SBRT in liver were able to differentiate between local disease control and local control failure |
The columns Aims and Conclusion are directly based on the original work as cited in the column Author (wording partly adapted).
CECT contrast-enhanced computed tomography, ER early recurrence, HCC hepatocellular carcinoma, MRI magnetic resonance imaging, MVI microvascular invasion
Radiomics for monitoring/follow-up
| Author | Aims | Imaging modality | Number, (training (T) and validation (V) set, where available) | Conclusion |
|---|---|---|---|---|
| Reimer et al. [ | To determine whether post-treatment MRI-based texture analysis of liver metastases may be suitable for predicting therapy response to transarterial radioembolization (TARE) during follow-up | CEMRI | 37 | The model indicates the potential of MRI-based texture analysis at arterial- and venous-phase MRI for the early prediction of progressive disease after TARE |
| Cozzi et al. [ | To predict overall survival and local control | Non-contrast CT | 138 | Survival could be predicted using a radiomics signature made by a single shape-based feature |
| Kim et al. [ | To predict survival (overall and progression-free survival) | CECT | 88 | A combination of clinical and radiomic features better predicted survival |
| Mokrane et al. [ | To enhance clinicians’ decision-making by diagnosing HCC in cirrhotic patients with indeterminate liver nodules using quantitative imaging features | CECT | 178 T: 142 V: 36 | Radiomics can be used to non-invasively diagnose HCC in cirrhotic patients with indeterminate liver nodules, which could be used to optimize patient management |
| Donghui et al. [ | To identify aggressive behaviour and predict recurrence of HCC after liver transplantation (LT) | CECT | 133 T: 93 V: 40 | Radiomics signature extracted from CT images may be a potential imaging biomarker for liver cancer invasion and enable accurate prediction of HCC recurrence after LT |
| Zhao et al. [ | To investigate the combined predictive performance of qualitative and quantitative MRI features and prognostic immunohistochemical markers for the ER of intrahepatic mass-forming cholangiocarcinoma (IMCC) | CEMRI | 47 | The combined model was the superior predictive model of ER |
The columns Aims and Conclusion are directly based on the original work as cited in the column Author (wording partly adapted).
CECT contrast-enhanced computed tomography, ER early recurrence, HCC hepatocellular carcinoma, MRI magnetic resonance imaging, MVI microvascular invasion
Fig. 2Longitudinal changes of a hepatic metastasis in the right liver lobe after stereotactic radiotherapy (SBRT). MRI sequences: diffusion-weighted imaging (DWI) transverse (a–c), contrast-enhanced T1-weighted sequence (portal-venous phase) transverse (d–f) and coronal (g–i). MRI prior to SBRT (a, d, g), 3 months after SBRT (b, e, h) and 12 months after SBRT (c, f, i). Morphological response of DWI restriction, T1‑w hypointensity after SBRT with longitudinal reduction of peritumoral changes of the normal tissue. White arrows highlight the region of interest including the hepatic metastasis in the right liver lobe and the peritumoral changes after SBRT