| Literature DB >> 33415015 |
Ruichuan Shi1,2,3,4, Weixing Chen5, Bowen Yang1,2,3,4, Jinglei Qu1,2,3,4, Yu Cheng1,2,3,4, Zhitu Zhu6, Yu Gao6, Qian Wang7, Yunpeng Liu1,2,3,4, Zhi Li1,2,3,4, Xiujuan Qu1,2,3,4.
Abstract
There is a critical need for development of improved methods capable of accurately predicting the RAS (KRAS and NRAS) and BRAF gene mutation status in patients with advanced colorectal cancer (CRC). The purpose of this study was to investigate whether radiomics and/or semantic features could improve the detection accuracy of RAS/BRAF gene mutation status in patients with colorectal liver metastasis (CRLM). In this retrospective study, 159 patients who had been diagnosed with CRLM in two hospitals were enrolled. All patients received lung and abdominal contrast-enhanced CT (CECT) scans prior to radiation therapy and chemotherapy. Semantic features were independently assessed by two radiologists. Radiomics features were extracted from the portal venous phase (PVP) of the CT scan for each patient. Seven machine learning algorithms were used to establish three scores based on the semantic, radiomics and the combination of both features. Two semantic and 851 radiomics features were used to predict the mutation status of RAS and BRAF using an artificial neural network method (ANN). This approach performed best out of the seven tested algorithms. We constructed three scores which were based on radiomics, semantic features and the combined scores. The combined score could distinguish between wild-type and mutant patients with an AUC of 0.95 in the primary cohort and 0.79 in the validation cohort. This study proved that the application of radiomics together with semantic features can improve non-invasive assessment of the gene mutation status of RAS (KRAS and NRAS) and BRAF in CRLM. AJCREntities:
Keywords: BRAF; RAS; artificial neural network; colorectal cancer; radiomics
Year: 2020 PMID: 33415015 PMCID: PMC7783758
Source DB: PubMed Journal: Am J Cancer Res ISSN: 2156-6976 Impact factor: 6.166