Department of Neurosurgery, Chongqing University Central Hospital, Chongqing Emergency Medical Center, Chongqing, China.
Bioengineering College, Chongqing University, Chongqing, China.
J Neurotrauma. 2024 Jun;41(11-12):1337-1352. doi: 10.1089/neu.2023.0410. Epub 2024 Feb 29.
Hemorrhagic progression of contusion (HPC) often occurs early in cerebral contusions (CC) patients, significantly impacting their prognosis. It is vital to promptly assess HPC and predict outcomes for effective tailored interventions, thereby enhancing prognosis in CC patients. We utilized the Attention-3DUNet neural network to semi-automatically segment hematomas from computed tomography (CT) images of 452 CC patients, incorporating 695 hematomas. Subsequently, 1502 radiomic features were extracted from 358 hematomas in 261 patients. After a selection process, these features were used to calculate the radiomic signature (Radscore). The Radscore, along with clinical features such as medical history, physical examinations, laboratory results, and radiological findings, was employed to develop predictive models. For prognosis (discharge Glasgow Outcome Scale score), radiomic features of each hematoma were augmented and fused for correlation. We employed various machine learning methodologies to create both a combined model, integrating radiomics and clinical features, and a clinical-only model. Nomograms based on logistic regression were constructed to visually represent the predictive procedure, and external validation was performed on 170 patients from three additional centers. The results showed that for HPC, the combined model, incorporating hemoglobin levels, Rotterdam CT score of 3, multi-hematoma fuzzy sign, concurrent subdural hemorrhage, international normalized ratio, and Radscore, achieved area under the receiver operating characteristic curve (AUC) values of 0.848 and 0.836 in the test and external validation cohorts, respectively. The clinical model predicting prognosis, utilizing age, Abbreviated Injury Scale for the head, Glasgow Coma Scale Motor component, Glasgow Coma Scale Verbal component, albumin, and Radscore, attained AUC values of 0.846 and 0.803 in the test and external validation cohorts, respectively. Selected radiomic features indicated that irregularly shaped and highly heterogeneous hematomas increased the likelihood of HPC, while larger weighted axial lengths and lower densities of hematomas were associated with a higher risk of poor prognosis. Predictive models that combine radiomic and clinical features exhibit robust performance in forecasting HPC and the risk of poor prognosis in CC patients. Radiomic features complement clinical features in predicting HPC, although their ability to enhance the predictive accuracy of the clinical model for adverse prognosis is limited.
挫伤内出血进展(HPC)在脑挫伤(CC)患者中常早期发生,显著影响其预后。及时评估 HPC 并预测结果对于有效的针对性干预至关重要,从而改善 CC 患者的预后。我们利用 Attention-3DUNet 神经网络对半自动地从 452 例 CC 患者的计算机断层扫描(CT)图像中分割血肿,共纳入 695 个血肿。随后,从 261 例患者的 358 个血肿中提取了 1502 个放射组学特征。经过选择过程,这些特征用于计算放射组学特征(Radscore)。Radscore 与临床特征(如病史、体格检查、实验室结果和影像学发现)一起用于开发预测模型。对于预后(出院格拉斯哥结局量表评分),为了相关性,对每个血肿的放射组学特征进行了扩充和融合。我们采用了多种机器学习方法来创建一个综合模型,整合放射组学和临床特征,以及一个仅基于临床的模型。基于逻辑回归的列线图用于直观地表示预测过程,并在来自三个额外中心的 170 例患者中进行了外部验证。结果表明,对于 HPC,联合模型,纳入血红蛋白水平、罗特丹 CT 评分 3 分、多血肿模糊征、并发硬脑膜下血肿、国际标准化比值和 Radscore,在测试和外部验证队列中的受试者工作特征曲线(ROC)曲线下面积(AUC)值分别为 0.848 和 0.836。预测预后的临床模型,使用年龄、头部简明损伤量表、格拉斯哥昏迷量表运动成分、格拉斯哥昏迷量表言语成分、白蛋白和 Radscore,在测试和外部验证队列中的 AUC 值分别为 0.846 和 0.803。选定的放射组学特征表明,形状不规则和高度异质性的血肿增加了 HPC 的可能性,而较大的加权轴向长度和较低的血肿密度与预后不良的风险较高相关。联合放射组学和临床特征的预测模型在预测 CC 患者的 HPC 和不良预后风险方面表现出稳健的性能。放射组学特征补充了临床特征在预测 HPC 中的作用,尽管它们增强临床模型对不良预后预测准确性的能力有限。