| Literature DB >> 32185138 |
Zhan Feng1, Lixia Zhang1, Zhong Qi1, Qijun Shen2, Zhengyu Hu3, Feng Chen1.
Abstract
To evaluate the potential application of computed tomography (CT) radiomics in the prediction of BRCA1-associated protein 1 (BAP1) mutation status in patients with clear-cell renal cell carcinoma (ccRCC). In this retrospective study, clinical and CT imaging data of 54 patients were retrieved from The Cancer Genome Atlas-Kidney Renal Clear Cell Carcinoma database. Among these, 45 patients had wild-type BAP1 and nine patients had BAP1 mutation. The texture features of tumor images were extracted using the Matlab-based IBEX package. To produce class-balanced data and improve the stability of prediction, we performed data augmentation for the BAP1 mutation group during cross validation. A model to predict BAP1 mutation status was constructed using Random Forest Classification algorithms, and was evaluated using leave-one-out-cross-validation. Random Forest model of predict BAP1 mutation status had an accuracy of 0.83, sensitivity of 0.72, specificity of 0.87, precision of 0.65, AUC of 0.77, F-score of 0.68. CT radiomics is a potential and feasible method for predicting BAP1 mutation status in patients with ccRCC.Entities:
Keywords: BAP1 mutation; CT; clear cell renal cell carcinoma; machine learning; radiomics
Year: 2020 PMID: 32185138 PMCID: PMC7058626 DOI: 10.3389/fonc.2020.00279
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 6.244
Demographic and clinical characteristics of patients.
| Mean age (year) | 62 |
| Sex | |
| Female | 25 (46.3%) |
| Male | 29 (53.7%) |
| Absent | 45 (83.4%) |
| Present | 9 (16.6%) |
| Nuclear grade | |
| Fuhrman I/II | 18 (33.3%) |
| Fuhrman III/IV | 36 (66.7%) |
| TNM | |
| I | 20 (37.0%) |
| II | 7 (13.0%) |
| III | 17 (31.5%) |
| IV | 10 (18.5%) |
Figure 1Radiomics analysis pipeline. LOOCV, Leave-one-out-cross-validation; SMOTE, Synthetic Minority Over-sampling Technique.
Selected texture features for random forest classifiers.
| LoG filter (2 mm) | Intensity histogram | Median absolute deviation | 0.93 |
| No filter | Intensity histogram | Kurtosis | 0.93 |
| No filter | Gray level co-occurrence matrix | Informational measure of correlation 2 | 0.94 |
| LoG filter (2 mm) | Gray level co-occurrence matrix | Informational measure of correlation 1 | 0.93 |
| LoG filter (2 mm) | Gray level run length matrix | Gray level non-uniformity | 0.97 |
| LoG filter (2 mm) | Neighbor intensity difference | Contrast | 0.97 |
| No filter | Gray level run length matrix | Local entropy standard deviation | 0.91 |
| LoG filter (8 mm) | Gray level run length matrix | Short run low gray level emphasis | 0.94 |
LoG, Laplacian of Gaussian; ICC, intra-class correlation coefficient.
Figure 2Radiogenomics map of selected features per mutation in the radiogenomics cohort. Each row represented a feature and each column represented a segmentation. The difference of each feature between BAP1 mutated and unmutated can be observed.