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基于配准的轮廓传播在食管癌病理反应预测纹理分析中的应用。

Use of registration-based contour propagation in texture analysis for esophageal cancer pathologic response prediction.

作者信息

Yip Stephen S F, Coroller Thibaud P, Sanford Nina N, Huynh Elizabeth, Mamon Harvey, Aerts Hugo J W L, Berbeco Ross I

机构信息

Department of Radiation Oncology, Brigham and Women's Hospital, Dana-Farber Cancer Institute and Harvard Medical School, Boston, MA 02115, USA.

出版信息

Phys Med Biol. 2016 Jan 21;61(2):906-22. doi: 10.1088/0031-9155/61/2/906. Epub 2016 Jan 7.

Abstract

Change in PET-based textural features has shown promise in predicting cancer response to treatment. However, contouring tumour volumes on longitudinal scans is time-consuming. This study investigated the usefulness of contour propagation in texture analysis for the purpose of pathologic response prediction in esophageal cancer. Forty-five esophageal cancer patients underwent PET/CT scans before and after chemo-radiotherapy. Patients were classified into responders and non-responders after the surgery. Physician-defined tumour ROIs on pre-treatment PET were propagated onto the post-treatment PET using rigid and ten deformable registration algorithms. PET images were converted into 256 discrete values. Co-occurrence, run-length, and size zone matrix textures were computed within all ROIs. The relative difference of each texture at different treatment time-points was used to predict the pathologic responders. Their predictive value was assessed using the area under the receiver-operating-characteristic curve (AUC). Propagated ROIs from different algorithms were compared using Dice similarity index (DSI). Contours propagated by the fast-demons, fast-free-form and rigid algorithms did not fully capture the high FDG uptake regions of tumours. Fast-demons propagated ROIs had the least agreement with other contours (DSI = 58%). Moderate to substantial overlap were found in the ROIs propagated by all other algorithms (DSI = 69%-79%). Rigidly propagated ROIs with co-occurrence texture failed to significantly differentiate between responders and non-responders (AUC = 0.58, q-value = 0.33), while the differentiation was significant with other textures (AUC = 0.71-0.73, p < 0.009). Among the deformable algorithms, fast-demons (AUC = 0.68-0.70, q-value < 0.03) and fast-free-form (AUC = 0.69-0.74, q-value < 0.04) were the least predictive. ROIs propagated by all other deformable algorithms with any texture significantly predicted pathologic responders (AUC = 0.72-0.78, q-value < 0.01). Propagated ROIs using deformable registration for all textures can lead to accurate prediction of pathologic response, potentially expediting the temporal texture analysis process. However, fast-demons, fast-free-form, and rigid algorithms should be applied with care due to their inferior performance compared to other algorithms.

摘要

基于正电子发射断层扫描(PET)的纹理特征变化在预测癌症治疗反应方面已显示出前景。然而,在纵向扫描上勾勒肿瘤体积很耗时。本研究调查了轮廓传播在纹理分析中对预测食管癌病理反应的有用性。45例食管癌患者在放化疗前后接受了PET/CT扫描。术后将患者分为反应者和无反应者。使用刚性和十种可变形配准算法将医师在治疗前PET上定义的肿瘤感兴趣区域(ROI)传播到治疗后PET上。PET图像被转换为256个离散值。在所有ROI内计算共生、游程长度和大小区域矩阵纹理。不同治疗时间点各纹理的相对差异用于预测病理反应者。使用受试者操作特征曲线(AUC)下的面积评估其预测价值。使用骰子相似性指数(DSI)比较不同算法传播的ROI。由快速恶魔算法、快速自由形式算法和刚性算法传播的轮廓未能完全捕捉肿瘤的高氟代脱氧葡萄糖(FDG)摄取区域。快速恶魔算法传播的ROI与其他轮廓的一致性最低(DSI = 58%)。在所有其他算法传播的ROI中发现了中度到高度的重叠(DSI = 69%-79%)。具有共生纹理的刚性传播ROI未能显著区分反应者和无反应者(AUC = 0.58,q值 = 0.33),而与其他纹理的区分则很显著(AUC = 0.71-0.73,p < 0.009)。在可变形算法中,快速恶魔算法(AUC = 0.68-0.70,q值 < 0.03)和快速自由形式算法(AUC = 0.69-0.74,q值 < 0.04)的预测性最低。所有其他具有任何纹理的可变形算法传播的ROI都能显著预测病理反应者(AUC = 0.72-0.78,q值 < 0.01)。对所有纹理使用可变形配准传播的ROI可准确预测病理反应,可能会加快时间纹理分析过程。然而,由于快速恶魔算法。快速自由形式算法和刚性算法与其他算法相比性能较差,应谨慎应用。

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