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Quantification of Local Metabolic Tumor Volume Changes by Registering Blended PET-CT Images for Prediction of Pathologic Tumor Response

机译:通过注册混合的PET-CT图像来进行局部代谢肿瘤体积的定量来改变用于预测病理肿瘤反应的预测

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Quantification of local metabolic tumor volume (MTV) changes after Chemo-radiotherapy would allow accurate tumor response evaluation. Currently, local MTV changes in esophageal (soft-tissue) cancer are measured by registering follow-up PET to baseline PET using the same transformation obtained by deformable registration of follow-up CT to baseline CT. Such approach is suboptimal because PET and CT capture fundamentally different properties (metabolic vs. anatomy) of a tumor. In this work we combined PET and CT images into a single blended PET-CT image and registered follow-up blended PET-CT image to baseline blended PET-CT image. B-spline regularized diffeomorphic registration was used to characterize the large MTV shrinkage. Jacobian of the resulting transformation was computed to measure the local MTV changes. Radiomic features (intensity and texture) were then extracted from the Jacobian map to predict pathologic tumor response. Local MTV changes calculated using blended PET-CT registration achieved the highest correlation with ground truth segmentation (R = 0.88) compared to PET-PET (R = 0.80) and CT-CT (R = 0.67) registrations. Moreover, using blended PET-CT registration, the multi-variate prediction model achieved the highest accuracy with only one Jacobian co-occurrence texture feature (accuracy = 82.3%). This novel framework can replace the conventional approach that applies CT-CT transformation to the PET data for longitudinal evaluation of tumor response.
机译:化学放射治疗后局部代谢肿瘤体积(MTV)变化的定量将允许准确的肿瘤反应评估。目前,使用通过可变形CT的可变形CT与基线CT的可变形登记获得的相同的转化将随访PET注册到基线PET来测量食管(软组织)癌症的局部MTV变化。这种方法是次优,因为PET和CT捕获肿瘤的根本不同的性质(代谢与解剖学)。在这项工作中,我们将PET和CT图像组合成单个混合的PET-CT图像和注册的后续混合PET-CT图像,以基线混合PET-CT图像。 B样条花键正则弥漫晶体注册用于表征大型MTV收缩。计算结果转换的雅各比比亚比亚可以测量局部MTV变化。然后从Jacobian地图中提取射致辐射特征(强度和质地)以预测病理肿瘤反应。与PET-PET(r = 0.80)和CT-CT(R = 0.67)注册相比,使用混合PET-CT注册计算的局部MTV变化与地面真理分割(R = 0.88)实现了最高的相关性。此外,使用混合的PET-CT注册,多变化预测模型实现了最高精度,只有一个雅可比共同发生纹理特征(精度= 82.3%)。这种新颖的框架可以取代将CT-CT转化应用于PET数据的常规方法,以进行肿瘤反应的纵向评估。

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