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Assessing the prognostic impact of 3D CT image tumour rind texture features on lung cancer survival modelling

机译:评估3D CT图像的外皮纹理特征对肺癌生存模型的预后影响

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In this paper we examine a technique for developing prognostic image characteristics, termed radiomics, for non-small cell lung cancer based on a tumour edge region-based analysis. Texture features were extracted from the rind of the tumour in a publicly available 3D CT data set to predict two-year survival. The derived models were compared against the previous methods of training radiomic signatures that are descriptive of the whole tumour volume. Radiomic features derived solely from regions external, but neighbouring, the tumour were shown to also have prognostic value. By using additional texture features an increase in accuracy, of 3%, is shown over previous approaches for predicting two-year survival, upon examining the outside rind including the volume compared to the volume without the rind. This indicates that while the centre of the tumour is currently the main clinical target for radiotherapy treatment, the tissue immediately around the tumour is also clinically important.
机译:在本文中,我们基于肿瘤边缘区域的分析,研究了一种用于开发非小细胞肺癌预后图像特征的技术,称为放射组学。在可公开获得的3D CT数据集中从肿瘤的外皮中提取纹理特征,以预测两年的生存期。将衍生的模型与训练放射学特征的先前方法进行了比较,该方法描述了整个肿瘤的体积。放射学特征仅来源于肿瘤的外部区域,但与肿瘤相邻也具有预后价值。通过使用额外的纹理特征,在检查包括外皮在内的外皮与不外皮的体积相比,可预测两年生存率的精度提高了3%。这表明尽管肿瘤中心目前是放射治疗的主要临床靶标,但紧邻肿瘤的组织在临床上也很重要。

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