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Multi-site evaluation of stable radiomic features for more accurate evaluation of pathologic downstaging on MRI after chemoradiation for rectal cancers

机译:稳定放射学特征的多部位评估,可更准确地评估直肠癌化学放疗后MRI的病理学分级

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Tumor downstaging after neoadjuvant chemoradiation (CRT) in rectal cancer patients is typically assessed via Magnetic Resonance Imaging (MRI) in order to determine follow-up surgical interventions, but is associated with marked inter-reader variability and limited performance. While radiomic features have shown promise for evaluating chemoradiation response and tumor stage in rectal cancers, there is a need to determine how reproducible these features are across different MRI scanners and acquisitions. In this study, we evaluated radiomic feature reprodueibility in terms of feature instability within a uniquely curated "true healthy" rectum cohort in order to construct a stability-informed radiomic classifier for differentiating poorly from markedly downstaged rectal tumors after chemoradiation in a multi-site setting. We utilized a cohort of 156 patients, with (a) 74 MRIs visualizing the healthy rectum, (b) 52 post-CRT MRI scans in the discovery cohort, and (c) 30 post-CRT MRI scans in a second-site validation cohort; the latter 2 being from rectal cancer patients. 764 radiomic features were extracted from within the entire rectal wall on each MRI scan. Feature instability was used to quantify how reproducible each radiomic feature was between the discovery cohort and the healthy rectum cohort, using locations along the rectum that were spatially distinct from the treated tumor region. From the resulting "stability-informed" feature set. the most relevant features were identified to distinguish pathologic tumor stage groups in the discovery cohort via a QDA classifier with cross-validation to ensure robustness. The top 4 radiomic features were then evaluated in hold-out fashion on scans from the validation cohort. We found that utilizing a stability-informed radiomic model (which comprised features that were reproducible in 100% of all comparisons) was significantly more accurate in identifying pathological tumor stage regression in both discovery (AUC=0.66±0.09) and validation (AUC=0.73) cohorts, compared to a basic radiomic model that used all extracted features (AUC=0.60 ±0.07 in discovery. AUC=0.62 in validation). Evaluating feature instability with respect to healthy rectal tissue may thus enhance the performance of radiomic models in characterizing pathologic downstaging in rectal cancers, via MRI.
机译:通常通过磁共振成像(MRI)评估直肠癌患者新辅助化学放疗(CRT)后的肿瘤分期,以确定后续的手术干预措施,但与明显的读者间变异性和有限的性能相关。虽然放射学特征已显示出有望评估直肠癌化学放疗反应和肿瘤分期的希望,但仍需要确定这些特征在不同的MRI扫描仪和采集设备中的可重复性。在这项研究中,我们根据独特的“真正健康”直肠队列中的特征不稳定性评估了放射学特征的可重复性,以构建一种稳定性告知的放射学分类器,以在多部位环境中进行化学放射治疗后与明显下调的直肠肿瘤区别开来。 。我们利用了156名患者的队列,其中(a)74例MRI显示了健康的直肠,(b)在发现队列中进行了52次CRT后MRI扫描,以及(c)在第二个验证队列中进行了30次CRT MRI扫描。 ;后2个来自直肠癌患者。每次MRI扫描都从整个直肠壁中提取了764个放射特征。使用特征不稳定性来量化每个放射特征在发现队列和健康直肠队列之间的可重复性,方法是使用沿着直肠的与治疗肿瘤区域在空间上不同的位置。根据生成的“稳定性通知”功能集。通过交叉验证的QDA分类器确定了最相关的特征,以区分发现队列中的病理性肿瘤分期,以确保鲁棒性。然后在验证队列的扫描中以保留方式对前4个放射学特征进行了评估。我们发现,在发现(AUC = 0.66±0.09)和验证(AUC = 0.73)方面,利用告知稳定性的放射学模型(包括在所有比较中均具有100%可重复性的特征)可以更准确地识别病理性肿瘤分期。 )队列,与使用所有提取特征的基本放射学模型(发现时,AUC = 0.60±0.07;验证中,AUC = 0.62)相比。因此,相对于健康的直肠组织而言,评估特征的不稳定性可以通过MRI增强放射学模型在表征直肠癌病理性分级方面的性能。

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