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Evaluation of prognostic models developed using standardised image features from different PET automated segmentation methods

机译:使用不同PET自动分割方法的标准化图像特征开发的预后模型的评估

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摘要

BackgroundPrognosis in oesophageal cancer (OC) is poor. The 5-year overall survival (OS) rate is approximately 15%. Personalised medicine is hoped to increase the 5- and 10-year OS rates. Quantitative analysis of PET is gaining substantial interest in prognostic research but requires the accurate definition of the metabolic tumour volume. This study compares prognostic models developed in the same patient cohort using individual PET segmentation algorithms and assesses the impact on patient risk stratification.Consecutive patients (n = 427) with biopsy-proven OC were included in final analysis. All patients were staged with PET/CT between September 2010 and July 2016. Nine automatic PET segmentation methods were studied. All tumour contours were subjectively analysed for accuracy, and segmentation methods with < 90% accuracy were excluded. Standardised image features were calculated, and a series of prognostic models were developed using identical clinical data. The proportion of patients changing risk classification group were calculated.
机译:背景食管癌(OC)的预后很差。 5年总生存率约为15%。希望个性化医学可以提高5年和10年OS率。 PET的定量分析在预后研究中引起了广泛的兴趣,但需要准确定义代谢肿瘤的体积。本研究比较了使用单独的PET分割算法在同一患者队列中开发的预后模型,并评估了对患者风险分层的影响。最终分析中包括经活检证实的OC的连续患者(n = 427)。所有患者均于2010年9月至2016年7月接受PET / CT分期。研究了9种自动PET分割方法。主观分析所有肿瘤轮廓的准确性,并排除准确性<90%的分割方法。计算出标准化的图像特征,并使用相同的临床数据开发了一系列预后模型。计算改变风险分类组的患者比例。

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