| Literature DB >> 31850202 |
Lingling Ge1, Yuntian Chen2, Chunyi Yan1, Pan Zhao3, Peng Zhang3, Runa A4, Jiaming Liu3.
Abstract
Bladder cancer is a fatal cancer that happens in the genitourinary tract with quite high morbidity and mortality annually. The high level of recurrence rate ranging from 50 to 80% makes bladder cancer one of the most challenging and costly diseases to manage. Faced with various problems in existing methods, a recently emerging concept for the measurement of imaging biomarkers and extraction of quantitative features called "radiomics" shows great potential in the application of detection, grading, and follow-up management of bladder cancer. Furthermore, machine-learning (ML) algorithms on the basis of "big data" are fueling the powers of radiomics for bladder cancer monitoring in the era of precision medicine. Currently, the usefulness of the novel combination of radiomics and ML has been demonstrated by a large number of successful cases. It possesses outstanding strengths including non-invasiveness, low cost, and high efficiency, which may serve as a revolution to tumor assessment and emancipate workforce. However, for the extensive clinical application in the future, more efforts should be made to break down the limitations caused by technology deficiencies, inherent problems during the process of radiomic analysis, as well as the quality of present studies.Entities:
Keywords: bladder cancer; full-cycle management; machine learning; precision medicine; radiomics
Year: 2019 PMID: 31850202 PMCID: PMC6892826 DOI: 10.3389/fonc.2019.01296
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 6.244
Figure 1A typical workflow of radiomics in bladder cancer.
Present studies that combined radiomics and machine learning (ML) in bladder cancer.
| Garapati et al. ( | Retrospective study | Bladder cancer staging | 76 | CTU | LDA, NN, SVM, RAF | Two-fold cross validation | Four types of classifier showed equal promise in bladder cancer staging |
| Zhang et al. ( | Retrospective study | Bladder cancer grading | 61 | MRI | SVM-RFE | Single-center validation | The SVM classifier adapting the optimal feature subset performed best (AUC = 0.861; accuracy 82.9%; sensitivity 78.4%; specificity 87.1%) |
| Wang et al. ( | Retrospective study | Bladder cancer grading | 70 | MRI | LASSO algorithm | Ten-fold cross validation | Joint-Model performed best (AUC = 0.9276) |
| Zheng et al. ( | Retrospective study | Differentiation of NMIBC and MIBC | 199 | MRI | LASSO logistic regression algorithm | Single-center validation | The radiomic-clinical nomogram developed on the basis of three-dimensional features showed favorable usage (AUC 0.922) |
| Wang et al. ( | Retrospective study | Prediction of mortality after radical cystectomy | 117 | Clinical data | BPN, RBFN, ELM, RELM, SVM, NB, and KNN | Ten-fold cross validation | The models with RELM and ELM achieved the highest sensitivity and specificity (over 0.8) |
| Xu et al. ( | Retrospective study | Recurrence stratification of bladder cancer | 71 | MRI | SVM-RFE, LASSO algorithm | Five-fold cross validation | The radiomic clinical nomogram achieved more benefits than the radiomics or clinical model alone |
| Lin et al. ( | Retrospective study | Prediction of progression-free interval | 62 | CECT | LASSO algorithm | Single-center validation | Radiomics risk model (AUC 0.956) and transcriptomics risk model (AUC 0.948) showed independent prognostic role to determine the progression |
| Cha et al. ( | Retrospective study | Assessment of therapy response | 62 | CT | DL-CNN | Leave-one-case-out cross validation | DL-CNN has the potential to assist in the treatment response |
| Cha et al. ( | Retrospective study | Assessment of treatment response | 123 | CT | DL-CNN | Single-center validation | The radiomics-based system is advisable to serve as a second option to assist in therapy evaluation |
| Chalkidou et al. ( | Retrospective study | Evaluation of sensitivity to neoadjuvant chemotherapy | 123 | CT | DL-CNN | Single-center validation | The improvement of the physicians' performance was statistically significant (P <.05) |
LDA, linear discriminant analysis; NN, neural network; DWI, diffusion-weighted imaging; ADC, apparent diffusion coefficient; RFE, recursive feature elimination; BPN, back-propagation neural network; RBFN, radial basis function; ELM, extreme learning machine; RELM, regularized ELM; NB, naive Bayes; KNN, k-nearest neighbor; DL-CNN, deep-learning convolution neural network; MIBC, muscle-invasive bladder cancer; NMIBC, non-muscle-invasive bladder cancer.