自动病变分析提高外伤性脑损伤预后预测效率

Margherita Rosnati, E. Soreq, M. Monteiro, Lucia M. Li, Neil S N Graham, K. Zimmerman, C. Rossi, G. Carrara, G. Bertolini, D. Sharp, B. Glocker
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引用次数: 3

摘要

创伤性脑损伤(TBI)患者的准确预后是困难的,但对治疗、患者管理和长期术后护理至关重要。患者特征,如年龄、运动和瞳孔反应性、缺氧和低血压以及计算机断层扫描(CT)的放射学表现,已被确定为预测TBI预后的重要变量。CT是临床实践中首选的急性成像方式,因为它的获取速度快,可用性广。然而,这种方式主要用于定性和半定量的评估,如马歇尔评分系统,容易出现主观性和人为错误。这项工作探索了使用最先进的深度学习TBI病变分割方法从常规获得的医院入院CT扫描中提取的成像生物标志物的预测能力。我们使用病变体积和相应的病变统计数据作为扩展的TBI预后预测模型的输入。我们将我们提出的特征的预测能力与马歇尔评分进行了比较,独立地,当与经典的TBI生物标志物配对时。我们发现自动提取的定量CT特征在预测不利的TBI结果方面的表现与马歇尔评分相似或更好。利用自动寰图对齐,我们还确定了额叶轴外病变作为预后不良的重要指标。我们的工作可能有助于更好地了解TBI,并为如何使用自动神经成像分析来改善TBI后的预后提供新的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic lesion analysis for increased efficiency in outcome prediction of traumatic brain injury
The accurate prognosis for traumatic brain injury (TBI) patients is difficult yet essential to inform therapy, patient management, and long-term after-care. Patient characteristics such as age, motor and pupil responsiveness, hypoxia and hypotension, and radiological findings on computed tomography (CT), have been identified as important variables for TBI outcome prediction. CT is the acute imaging modality of choice in clinical practice because of its acquisition speed and widespread availability. However, this modality is mainly used for qualitative and semi-quantitative assessment, such as the Marshall scoring system, which is prone to subjectivity and human errors. This work explores the predictive power of imaging biomarkers extracted from routinely-acquired hospital admission CT scans using a state-of-the-art, deep learning TBI lesion segmentation method. We use lesion volumes and corresponding lesion statistics as inputs for an extended TBI outcome prediction model. We compare the predictive power of our proposed features to the Marshall score, independently and when paired with classic TBI biomarkers. We find that automatically extracted quantitative CT features perform similarly or better than the Marshall score in predicting unfavourable TBI outcomes. Leveraging automatic atlas alignment, we also identify frontal extra-axial lesions as important indicators of poor outcome. Our work may contribute to a better understanding of TBI, and provides new insights into how automated neuroimaging analysis can be used to improve prognostication after TBI.
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