首页> 外文会议>Conference on Medical Imaging: Image-Guided Procedures, Robotic Interventions, and Modeling >Texture kinetic features from pre-treatment DCE MRI for predicting pathologic tumor stage regression after neoadjuvant chemoradiation in rectal cancers
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Texture kinetic features from pre-treatment DCE MRI for predicting pathologic tumor stage regression after neoadjuvant chemoradiation in rectal cancers

机译:预处理DCE MRI的纹理动力学特征可预测直肠癌新辅助化学放疗后病理性肿瘤分期

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Dynamic contrast-enhanced (DCE) MRI is increasingly used to stage and evaluate rectal cancer extent in vivo in order to plan and target interventions for locally advanced tumors. The major clinical challenge faced with rectal cancers today is to personalize interventions through early identification of patients will benefit from neoadjuvant chemoradiation (nCRT) alone and who will benefit from aggressive surgery (with adjuvant radiation) instead; via baseline imaging. In this study, we evaluated texture kinetic features of rectal tumors using baseline DCE MRI scans, in order to predict pathologic tumor stage regression in response to nCRT. Our texture kinetics approach utilized a combination of texture features (from multiple DCE uptake phases) and polynomial curve fitting to uniquely quantify spatiotemporal patterns of lesion texture during contrast uptake and diffusion that were different between responders and non-responders t.o nCRT. We utilized a cohort, of 48 rectal cancer patients for whom pre-nCRT 3 T DCE MRI was available, including pre-, early-, and delayed-enhancement phases. All DCE MRI phases were processed for motion and spatial alignment artifacts via rigid co-registration, and the tumor ROI on all 3 contrast phases was normalized with respect, to non-enhancing muscle. 191 texture features were extracted from each of 3 contrast phases separately, following which each feature was plotted with respect to time to yield a feature enhancement curve. Polynomial fitting was applied to each feature enhancement curve to result in a vector of coefficients which was considered the texture kinetic representation of that feature. All 191 features were evaluated in terms of their texture kinetic representation as well as the raw feature enhancement, for predicting pathologically regressed tumor stages (ypT0-2) from non-regressed tumors (ypT3-4) via a cross-validated QDA classifier. Texture kinetics of gradient XY enhancement yielded the best overall AUC=0.762 ± 0.053, which was significantly higher than any feature enhancement representation (best AUC=0.696 ± 0.050). Texture kinetic representations also outperformed their corresponding raw feature enhancement representations in 54.5% of the features compared, and performed significantly worse in only 13% of the comparisons. Non-invasive guidance of interventions in rectal cancers could therefore be enhanced through the use of texture kinetic features from DCE MRI, which may better characterize spatiotemporal differences between responders and non-responders on baseline imaging.
机译:动态对比增强(DCE)MRI越来越多地用于体内分期和评估直肠癌的程度,以计划和靶向针对局部晚期肿瘤的干预措施。当今直肠癌面临的主要临床挑战是​​通过早期识别患者来个性化干预措施,这些患者将仅从新辅助化学放疗(nCRT)中受益,而从积极外科手术(伴有辅助放射)中受益。通过基线成像。在这项研究中,我们使用基线DCE MRI扫描评估了直肠肿瘤的纹理动力学特征,以预测对nCRT的病理性肿瘤分期。我们的纹理动力学方法结合了纹理特征(来自多个DCE吸收阶段)和多项式曲线拟合的组合,可以唯一量化病变吸收和扩散过程中病变纹理的时空模式,这在响应者和非响应者之间差异很大。我们采用了队列研究的48位直肠癌患者,他们可以使用nCRT 3 T DCE MRI前检查,包括增强前,早期和延迟阶段。通过刚性共配准对所有DCE MRI阶段进行了运动和空间对齐伪影处理,并且将所有3个对比阶段的肿瘤ROI相对于非增强肌肉进行了标准化。从3个对比阶段分别提取191个纹理特征,然后针对时间绘制每个特征,以生成特征增强曲线。将多项式拟合应用于每个特征增强曲线以产生系数向量,该系数向量被认为是该特征的纹理动力学表示。通过交叉验证的QDA分类器,根据纹理动力学表示形式和原始特征增强对所有191个特征进行了评估,以预测未消退肿瘤(ypT3-4)的病理消退肿瘤阶段(ypT3-4)。梯度XY增强的纹理动力学产生了最佳的总体AUC = 0.762±0.053,这显着高于任何特征增强表示(最佳AUC = 0.696±0.050)。在所比较的特征中,纹理动力学表示也优于相应的原始特征增强表示,占54.5%,而在比较中只有13%表现差得多。因此,可以通过使用DCE MRI的纹理动力学特征来增强对直肠癌干预措施的非侵入性指导,这可以更好地表征基线成像中反应者和非反应者之间的时空差异。

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