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Revealing Latent Value of Clinically Acquired CTs of Traumatic Brain Injury Through Multi-Atlas Segmentation in a Retrospective Study of 1,003 with External Cross-Validation

机译:外部交叉验证回顾性研究1,003通过多图谱分割揭示临床获得的颅脑外伤CT的潜在价值

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Medical imaging plays a key role in guiding treatment of traumatic brain injury (TBI) and for diagnosing intracranial hemorrhage; most commonly rapid computed tomography (CT) imaging is performed. Outcomes for patients with TBI are variable and difficult to predict upon hospital admission. Quantitative outcome scales (e.g., the Marshall classification) have been proposed to grade TBI severity on CT, but such measures have had relatively low value in staging patients by prognosis. Herein, we examine a cohort of 1,003 subjects admitted for TBI and imaged clinically to identify potential prognostic metrics using a "big data" paradigm. For all patients, a brain scan was segmented with multi-atlas labeling, and intensity/volume/texture features were computed in a localized manner. In a 10-fold cross-validation approach, the explanatory value of the image-derived features is assessed for length of hospital stay (days), discharge disposition (five point scale from death to return home), and the Rancho Los Amigos functional outcome score (Rancho Score). Image-derived features increased the predictive R~2 to 0.38 (from 0.18) for length of stay, to 0.51 (from 0.4) for discharge disposition, and to 0.31 (from 0.16) for Rancho Score (over models consisting only of non-imaging admission metrics, but including positiveegative radiological CT findings). This study demonstrates that high volume retrospective analysis of clinical imaging data can reveal imaging signatures with prognostic value. These targets are suited for follow-up validation and represent targets for future feature selection efforts. Moreover, the increase in prognostic value would improve staging for intervention assessment and provide more reliable guidance for patients.
机译:医学影像学在指导创伤性脑损伤(TBI)的治疗和颅内出血的诊断中起着关键作用。最常见的是进行快速计算机断层扫描(CT)成像。 TBI患者的结局参差不齐,入院后难以预测。已经提出了定量结局量表(例如,Marshall分类法)来对CT上的TBI严重性进行分级,但是这种措施在通过预后对患者进行分期方面具有相对较低的价值。在本文中,我们研究了1003名TBI入组并进行临床成像的队列,以使用“大数据”范式确定潜在的预后指标。对于所有患者,脑扫描均使用多图谱标签进行细分,并以局部方式计算强度/体积/纹理特征。在10倍交叉验证方法中,评估了影像来源特征的解释价值,包括住院天数(天),出院安排(从死亡到返回家园的5分制)和Rancho Los Amigos功能结果得分(牧场得分)。图像特征将停留时间的预测R〜2从0.38增加到0.38(从0.18),对于放电处置从R〜2增加到0.51(从0.4),并且Rancho评分从0.36(从0.16)增加到0.31(从0.16)(超过仅由非成像组成的模型)入院指标,但包括放射线CT扫描的阳性/阴性)。这项研究表明,对临床影像数据进行大量回顾性分析可以揭示具有预后价值的影像特征。这些目标适用于后续验证,并代表将来进行功能选择的目标。此外,预后价值的提高将改善干预评估的分期,并为患者提供更可靠的指导。

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