2020
DOI: 10.21203/rs.3.rs-48361/v1
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Value of contrast-enhanced CT based radiomic machine learning algorithm in differentiating gastrointestinal stromal tumors with KIT exon 11 mutation: a two-center study

Abstract: Background Knowing the genetic phenotype of gastrointestinal stromal tumors (GISTs) is essential for patients who receive therapy with tyrosine kinase inhibitors.Methods We enrolled 106 patients (80 in the training set, 26 in the validation set) with clinicopathologically confirmed GISTs from two centers. Preoperative and postoperative clinical characteristics were selected and analyzed to construct the clinical model. Arterial phase (A-phase), venous phase (V-phase), delayed phase (D-phase), and combined radi… Show more

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“…On this basis, Liu et al further expanded the sample size, including three-phase CE-CT images, and sketched tumor ROIs layer by layer, which extracted more kinds of radiomics features; the preoperative radiomics nomogram was found to have a good ability to predict the KIT exon 11 mutation state of GISTs (training set and verification set AUCs were 0.913 and 0.715, respectively). 33 However, no related studies have explored whether radiomics can effectively predict the presence of KIT exon 9 gene mutations in GISTs. In this retrospective study, we established and verified clinical and CE-CT-based radiomics models, and combined these two models to construct a more intuitive and simple-to-use radiomics nomogram.…”
Section: Discussionmentioning
confidence: 99%
“…On this basis, Liu et al further expanded the sample size, including three-phase CE-CT images, and sketched tumor ROIs layer by layer, which extracted more kinds of radiomics features; the preoperative radiomics nomogram was found to have a good ability to predict the KIT exon 11 mutation state of GISTs (training set and verification set AUCs were 0.913 and 0.715, respectively). 33 However, no related studies have explored whether radiomics can effectively predict the presence of KIT exon 9 gene mutations in GISTs. In this retrospective study, we established and verified clinical and CE-CT-based radiomics models, and combined these two models to construct a more intuitive and simple-to-use radiomics nomogram.…”
Section: Discussionmentioning
confidence: 99%