Department of Neurosurgery, Shanghai General Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Department of Neurosurgery, the People's Hospital of Qiannan, Guizhou, China.
J Neurotrauma. 2023 Feb;40(3-4):250-259. doi: 10.1089/neu.2022.0277. Epub 2022 Oct 13.
This study aimed to assess intracranial hypertension in patients with traumatic brain injury non-invasively using computed tomography (CT) radiomic features. Fifty patients from the primary cohort were enrolled in this study. The clinical data, pre-operative cranial CT images, and initial intracranial pressure readings were collected and used to develop a prediction model. Data of 20 patients from another hospital were used to validate the model. Clinical features including age, sex, midline shift, basilar cistern status, and ventriculocranial ratio were measured. Radiomic features-i.e., 18 first-order and 40 second-order features- were extracted from the CT images. LASSO method was used for features filtration. Multi-variate logistic regression was used to develop three prediction models with clinical (CF model), first-order (FO model), and second-order features (SO model). The SO model achieved the most robust ability to predict intracranial hypertension. Internal validation showed that the C-statistic of the model was 0.811 (95% confidence interval [CI]: 0.691-0.931) with the bootstrapping method. The Hosmer Lemeshow test and calibration curve also showed that the SO model had excellent performance. The external validation results showed a good discrimination with an area under the curve of 0.725 (95% CI: 0.500-0.951). Although the FO model was inferior to the SO model, it had better prediction ability than the CF model. The study shows that the radiomic features analysis, especially second-order features, can be used to evaluate intracranial hypertension non-invasively compared with conventional clinical features, given its potential for clinical practice and further research.
本研究旨在使用计算机断层扫描(CT)放射组学特征无创评估创伤性脑损伤患者的颅内高压。本研究纳入了来自原始队列的 50 名患者。收集了临床数据、术前头颅 CT 图像和初始颅内压读数,并用于开发预测模型。另一家医院的 20 名患者的数据用于验证该模型。测量了临床特征,包括年龄、性别、中线移位、基底池状态和脑室颅比。从 CT 图像中提取了放射组学特征,即 18 个一阶特征和 40 个二阶特征。使用 LASSO 方法进行特征筛选。多变量逻辑回归用于建立三个具有临床特征(CF 模型)、一阶特征(FO 模型)和二阶特征(SO 模型)的预测模型。SO 模型在预测颅内高压方面具有最稳健的能力。内部验证显示,该模型的 C 统计量为 0.811(95%置信区间[CI]:0.691-0.931),采用 bootstrap 方法。Hosmer-Lemeshow 检验和校准曲线也表明 SO 模型具有出色的性能。外部验证结果显示,曲线下面积为 0.725(95%CI:0.500-0.951),具有良好的判别能力。尽管 FO 模型不如 SO 模型,但与 CF 模型相比,其预测能力更好。研究表明,与传统临床特征相比,放射组学特征分析,尤其是二阶特征,可用于无创评估颅内高压,具有潜在的临床实践和进一步研究价值。