| Literature DB >> 32344538 |
Elsa Parr1, Qian Du2, Chi Zhang2, Chi Lin1, Ahsan Kamal1, Josiah McAlister1, Xiaoying Liang3, Kyle Bavitz1, Gerard Rux1, Michael Hollingsworth1, Michael Baine1, Dandan Zheng1.
Abstract
(1) Background: Radiomics use high-throughput mining of medical imaging data to extract unique information and predict tumor behavior. Currently available clinical prediction models poorly predict treatment outcomes in pancreatic adenocarcinoma. Therefore, we used radiomic features of primary pancreatic tumors to develop outcome prediction models and compared them to traditional clinical models. (2)Entities:
Keywords: SBRT; pancreatic cancer; prognosis prediction; radiomics
Year: 2020 PMID: 32344538 PMCID: PMC7226523 DOI: 10.3390/cancers12041051
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.639
Patient and treatment characteristics.
| Characteristic | Number of Patients (Percentage) |
|---|---|
| Gender | |
| Male | 45 (60.8%) |
| Female | 29 (39.2%) |
| Median age (range) | 62 (34–86) |
| Head | 59 (79.7%) |
| Neck | 3 (4.1%) |
| Tail | 3 (4.1%) |
| Body | 6 (8.1%) |
| Uncinate | 3 (4.1%) |
| N stage | |
| 0 | 41 (55.4%) |
| 1 | 33 (44.6%) |
| T stage | |
| 2 | 5 (6.8%) |
| 3 | 44 (59.5%) |
| 4 | 25 (33.8%) |
| Use of SBRT a | |
| Definitive | 51 (68.9%) |
| Neoadjuvant | 23 (31.1%) |
| Concurrent chemotherapy | |
| None | 13 (17.6%) |
| Infusional 5-FU b | 4 (5.4%) |
| Capecitabine | 11 (14.9%) |
| Nelfinavir | 46 (62.2%) |
| Survival | |
| Alive | 5 (6.8%) |
| Deceased | 69 (93.2%) |
| Median overall survival (months (95% CI c)) | |
| From diagnosis | 15 (14–17) |
| From SBRT | 11 (10–14) |
| Days since diagnosis (alive patients) | 116–1776 |
| Median days to death (recorded deaths) | 452.5 |
a SBRT—stereotactic body radiation therapy; b 5-FU—5-fluorouracil; c CI—confidence interval.
Figure 1Radiomic heatmap of the studied pancreatic cancer patients. Clinical parameter legend: For N stage, 0 = N0 and 1 = N1; For T stage, 0 = T2, 1 = T3, and 2 = T4; For gender, 0 = female and 1 = male; For Site, 0 = head, 1 = neck, 2 = tail, 3 = body, and 4 = uncinated; For resection, 0 = no and 1 = yes.
Figure 2Forest plot of the univariate analysis of the 6 radiomic features chosen for overall survival prediction as well as that of the 5 clinical parameters. The univariate CIs are shown with the 95% confidence interval.
Figure 3Concordance indices of the survival prediction on the testing datasets achieved using the clinical model, the radiomic model, and the combined model.
Figure 4Average Kaplan-Meier survival curves of high- and low-risk patients with pancreatic adenocarcinoima, as predicted by the clinical model (a), the radiomic model (b), and the combined model (c), on the test datasets.
Radiomic features selected for the recurrence prediction model and their corresponding univariate FDR-adjusted p values.
| Feature | FDR-Adjusted |
|---|---|
| wavelet_HLH_glszm_SmallAreaEmphasis | 0.004 |
| wavelet_HLL_firstorder_Kurtosis | 0.050 |
| wavelet_HHH_gldm_DependenceNonUniformityNormalized | 0.098 |
| wavelet_HHL_gldm_SmallDependenceHighGrayLevelEmphasis | 0.029 |
| wavelet_HHH_firstorder_Skewness | 0.166 |
| wavelet_LLL_glcm_Correlation | 0.152 |
| wavelet_HHL_glrlm_ShortRunHighGrayLevelEmphasis | 0.028 |
Figure 5Area under the receiver operating characteristic curve of the recurrence prediction using the clinical model, the radiomic model, and the combined model.
Figure 6Radiomic analysis workflow.