Abstract 2751
Background
Gastrointestinal stromal tumors (GISTs) are rare mesenchymal tumors of the gastrointestinal (GI) tract. The size, the presence of a c-KIT gene mutation and the mitotic index are used to determine the prognosis and to direct systemic treatment choices. This study evaluated the use of radiomics, a technique which uses algorithms for diagnosing and predicting the c-KIT mutational status and mitotic index of GISTs from medical imaging features.
Methods
A combination of machine learning methods was used to distinguish treatment-naive GISTs from other GI tumors resembling GISTs on imaging, based on clinical and molecular characteristics, as well as imaging features extracted from the contrast-enhanced venous phase computed tomography scans. Evaluation was performed in a 100x random-split cross-validation with 20% of the data for testing.
Results
A total of 242 tumors were used for distinguishing GISTs (n = 123) from non-GISTs (n = 119) including leiomyoma (n = 25), schwannoma (n = 21), gastric carcinoma (n = 25), lymphoma (n = 23) and leiomyosarcoma (n = 25).The non-GISTs were located either gastric (23%) or non-gastric (77%) and the GISTs were located either gastric (63%) or non-gastric (37%). A c-KIT mutation was present in the majority of the GISTs (exon 9 n = 10, exon 11 n = 56, exon 13 n = 2). The dataset originated from 65 different scanners, leading to heterogeneity in the imaging protocols. Imaging feature analyses showed a mean area under the curve (mAUC) of 0.70 (95% confidence interval [CI] 0.63-0.76) for distinguishing GIST from non-GISTs. A mAUC of 0.52 (95% CI 0.32-0.72) was found for predicting all c-KIT mutations, a mAUC of 0.51 (95% CI 0.29-0.72) for predicting a c-KIT exon 9 mutation, and a mAUC of 0.61 (95% CI 0.47-0.74) for predicting a c-KIT exon 11 mutation. The mitotic index was available in 83 patients (≤5/50 high power fields (HPFs) n = 53, 43.1%, >5/50 HPFs n = 33, 26.8%), and showed a mAUC of 0.60 (95% CI 0.47-0.73).
Conclusions
This pilot study showed the potential of radiomics to distinguish GIST from other GI tumors, but no potential in predicting c-KIT mutational status and mitotic index of GISTs. Further optimization and validation of the radiomics model is required to incorporate radiomics in the diagnostic routine of GISTs.
Clinical trial identification
Editorial acknowledgement
M.J. Timbergen and M.P.A. Starmans contributed equally to this study.
Legal entity responsible for the study
The authors.
Funding
The Netherlands Organization for Scientific Research.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
5939 - Matrix metalloproteinases and their tissue inhibitors genes abnormal DNA methylation in breast cancer
Presenter: Olga Simonova
Session: Poster Display session 1
Resources:
Abstract
2703 - Uveal melanoma cell lines depend on multiple signaling pathways for survival
Presenter: John Park
Session: Poster Display session 1
Resources:
Abstract
4849 - XAF1 and ZNF313 complex stimulates ER stress-induced apoptosis via direct GRP78 inhibition.
Presenter: Sungchan Jang
Session: Poster Display session 1
Resources:
Abstract
4801 - XAF1 assembles a destructive complex to induce BRCA1-mediated apoptosis via suppressing ERa and switching estrogen function
Presenter: Seung-hun Jang
Session: Poster Display session 1
Resources:
Abstract
3416 - Cancer associated fibroblasts promote cancer progression via Wnt2 secretion in colorectal cancer
Presenter: Hideaki Karasawa
Session: Poster Display session 1
Resources:
Abstract
4273 - Paired-related homeobox 1 overexpression promotes invasion and metastasis and is a prognostic factor for worse disease-free survival in patients with lung cancer
Presenter: Jung-jyh Hung
Session: Poster Display session 1
Resources:
Abstract
4241 - LncRNA-GC1 contributes to gastric cancer chemo-resistance through inhibition of miR-551b-3p and the overexpression of dysbindin
Presenter: Xin Guo
Session: Poster Display session 1
Resources:
Abstract
5388 - GLPG 1790, a new selective EPHA2 inhibitor, is active in colorectal cancer cell lines belonging to the CMS4/mesenchymal-like subtype
Presenter: Pietro Paolo Vitiello
Session: Poster Display session 1
Resources:
Abstract
5208 - Characterisation of growth hormone signal transduction in primary melanoma cell lines
Presenter: Karla Sousa
Session: Poster Display session 1
Resources:
Abstract
3156 - LAPTM5 protein can regulate TGF-β mediated MAPK and Smad signaling pathways in ovarian cancer cell
Presenter: Yan Gao
Session: Poster Display session 1
Resources:
Abstract