| Literature DB >> 33693966 |
Arthur Jochems1, Turkey Refaee1,2, Henry C Woodruff1,3, Philippe Lambin1,3, Guangyao Wu4,5,6, Abdalla Ibrahim1,3,7,8, Chenggong Yan1,9, Sebastian Sanduleanu1.
Abstract
INTRODUCTION: Lung cancer ranks second in new cancer cases and first in cancer-related deaths worldwide. Precision medicine is working on altering treatment approaches and improving outcomes in this patient population. Radiological images are a powerful non-invasive tool in the screening and diagnosis of early-stage lung cancer, treatment strategy support, prognosis assessment, and follow-up for advanced-stage lung cancer. Recently, radiological features have evolved from solely semantic to include (handcrafted and deep) radiomic features. Radiomics entails the extraction and analysis of quantitative features from medical images using mathematical and machine learning methods to explore possible ties with biology and clinical outcomes.Entities:
Keywords: Artificial intelligence; Lung cancer; Medical imaging; Radiomics
Mesh:
Year: 2021 PMID: 33693966 PMCID: PMC8484174 DOI: 10.1007/s00259-021-05242-1
Source DB: PubMed Journal: Eur J Nucl Med Mol Imaging ISSN: 1619-7070 Impact factor: 10.057
Fig. 1Composition of functional and structural imaging for tumors. Structural imaging refers to techniques, which are used to visualize and analyze the anatomical information of the human body. Functional imaging refers to approaches that are the study of tumor physiology and molecular process
Fig. 2A comparison of semantic, handcrafted radiomic, and deep radiomic features
Summary of some radiomic studies using both structural and functional images
| Study | Study design | Modality | Population | Features type | Features selection | Model algorithm | Type of validation | Outcome |
|---|---|---|---|---|---|---|---|---|
Du et al. (2020) | Retrospective Single-center | PET/CT | 77 Tuberculosis 79 Lung cancers | Clinical Semantic Handcrafted radiomic | LASSO | LR | Leave one out Without external validation | Diagnosis |
Sibille et al. (2020) | Retrospective Single-center | PET/CT | 302 lung cancer 327 lymphoma | Deep radiomic | CNN | CNN | Leave one out Without external validation | Diagnosis |
Kang et al. (2019) | Retrospective Single-center | PET/CT | 157 malignant 111 benign patients | Clinical Handcrafted radiomic | LASSO | LR | Bootstrapping validation Without external validation | Diagnosis |
Han et al. (2020) | Retrospective Single-center | PET/CT | 867 adenocarcinomas 552 SCCs | Handcrafted radiomic Deep radiomic | Ten feature selection methods | 10 ML models and the VGG16 | Leave one out Without external validation | Diagnosis |
Kirienko et al. (2018) | Retrospective Single-center | PET/CT | 534 Lung lesions | Handcrafted radiomic | – | LDA | Leave one out Without external validation | Primary or metastatic lung lesions |
Shao et al. (2020) | Retrospective Single-center | PET/CT | 91 GGNs | Semantic Handcrafted radiomic | LASSO | LR | Bootstrapping validation Without external validation | Lepidic or acinar-papillary growth |
Zhang et al. (2020) | Retrospective Single-center | PET/CT | 248 NSCLCs | Clinical Handcrafted radiomic | LASSO | LR | Leave one out Without external validation | EGFR mutation |
Liu et al. (2020) | Retrospective Single-center | PET/CT | 148 Adenocarcinomas | Handcrafted radiomic | RF/LR | Xgboost | Leave one out Without external validation | EGFR mutation |
Mu et al. (2020) | Retrospective Multi-center | PET/CT | 681 NSCLCs | Deep radiomic | CNN | CNN | Leave one out With external validation | EGFR mutation Treatment response |
Yang et al. (2020) | Retrospective Single-center | PET/CT | 315 NSCLCs | Clinical Handcrafted radiomic | LASSO | LR | Leave one out Without external validation | Survival |
Mu et al. (2019) | Retrospective/ prospective Single-center | PET/CT | 194 Stage IIIB-IV NSCLCs | Clinical Handcrafted radiomic | LASSO | LR | Leave one out With external validation | Survival after immunotherapy |
Dissaux et al. (2020) | Retrospective Multi-center | PET/CT | 87 Early-stage NSCLCs | Clinical Semantic Handcrafted radiomic | Univariate/ Multivariate analysis | Cox | Leave one out With external validation | Local Recurrence after radiotherapy |
SCC, squamous cell carcinoma; NSCLC, non-small cell lung cancer; GGN, ground-glass nodule; LASSO, least absolute shrinkage and selection operator; CNN, convolutional neural network; RF, random forest; LR, logistic regression; ML, machine learning; EGFR, epidermal growth factor receptor
Fig. 3The pipeline of federated learning, which includes the main four steps: data registration among local databases, sending initial parameters to each local center from federated server, sending trained parameters to federated server from local centers, and federated server aggregates the received parameters to update local model and to give a feedback to local database
Fig. 4A scope of fusion of multi-discipline or multi-omics to form a “Medomics.” Other omics can be included in the Medomics, such as pathomics and lipidomics