Luo Xinqun, Song Keming, Zhuo Lingyun, Lin Fuxin, Gao Zhuyu, He Qiu, Zheng Yan, Lian Kunbin, Shangguan Huangcheng, Luo Xingguang, Lin Yuanxiang, Kang Dezhi, Fang Wenhua
Department of Neurosurgery, Neurosurgery Research Institute, The First Affiliated Hospital, Fujian Medical University, No. 20 Chazhong Road, Taijiang District, Fuzhou, 350005, Fujian, China.
Department of Neurosurgery, National Regional Medical Center, Binhai Campus of the First Affiliated Hospital, Fujian Medical University, Fuzhou, 350212, Fujian, China.
Sci Rep. 2025 May 22;15(1):17759. doi: 10.1038/s41598-025-01754-0.
Due to the absence of direct visualization during the operative field in stereotactic surgery for sICH, there exists individual variability in hematoma evacuation (HE) rates, with about 42% of patients not attaining the expected threshold for HE. The aim of this study was to find the relevant factors affecting HE during the treatment of sICH with stereotactic surgery. We pooled individual data from our prospective ICH database, encompassing patients who underwent stereotactic aspiration and catheter drainage. The primary outcome was HE rates prior to extubation. Multivariate logistic regression using the stepwise forward method to identify the independent risk factors. A predictive scoring model was developed based on regression coefficients. To evaluate its discrimination performance, we conducted ROC curve analysis and calculated the AUC. Additionally, we employed calibration curves as an indicator of concordance. The bootstrap internal validation was used to ascertain the model's stability. DCA was performed to determine the clinical utility. The study included 90 patients, of whom 43 (47.8%) patients achieved HE rates ≥ 70%. The multivariate logistic analysis showed that blend sign (OR 7.003, 95% CI 2.118-23.161, P = 0.001), irregular shape (OR 0.235, 95% CI 0.067-0.821, P = 0.023), two drainage tubes (OR 28.643, 95% CI 1.872-438.181, P = 0.016), diabetes (OR 0.078, 95% CI 0.006-0.948, P = 0.045), and hematoma edge linked to ventricle (OR 0.145, 95% CI 0.032-0.659, P = 0.012) were independent risk factors. For clinical use, the Model-score was established, with a total score ranging from -6 to 5. The AUC values of the Model-logit and Model-score were 0.820 (95% CI 0.733-0.906) and 0.822 (95% CI 0.737-0.908) respectively. The cutoff values were 0.275 and -0.5. Calibration curves demonstrated excellent agreement between predicted probabilities and observed outcomes in both models. Utilizing the bootstrap method for internal validation, the mean AUC values were determined to be 0.819 (95% CI 0.736-0.903) for Model-logit and 0.823 (95% CI 0.742-0.903) for Model-score, demonstrating stability across the resampled datasets. The DCA confirmed that both models provide superior net benefit for predicting HE rates ≥ 70% when the individualized threshold ranges from 10 to 82%. The predictive model of HE rates ≥ 70% prior to extuation has demonstrated predictive capability, holds the potential to assist clinicians in optimizing surgical efficiency.
由于在立体定向手术治疗幕上脑出血(sICH)过程中手术视野缺乏直接可视化,血肿清除(HE)率存在个体差异,约42%的患者未达到预期的HE阈值。本研究的目的是找出立体定向手术治疗sICH过程中影响HE的相关因素。我们汇总了来自前瞻性脑出血数据库的个体数据,纳入了接受立体定向抽吸和导管引流的患者。主要结局是拔管前的HE率。采用逐步向前法进行多变量逻辑回归以识别独立危险因素。基于回归系数建立了预测评分模型。为评估其判别性能,我们进行了ROC曲线分析并计算了AUC。此外,我们采用校准曲线作为一致性指标。采用自助法进行内部验证以确定模型的稳定性。进行决策曲线分析(DCA)以确定临床实用性。该研究纳入了90例患者,其中43例(47.8%)患者的HE率≥70%。多变量逻辑分析显示,混合征(OR 7.003,95%CI 2.118 - 23.161,P = 0.001)、不规则形状(OR 0.235,95%CI 0.067 - 0.821,P = 0.023)、两根引流管(OR 28.643,95%CI 1.872 - 438.181,P = 0.016)、糖尿病(OR 0.078,95%CI 0.006 - 0.948,P = 0.045)以及血肿边缘与脑室相连(OR 0.145,95%CI 0.032 - 0.659,P = 0.012)是独立危险因素。为临床应用,建立了模型评分,总分范围为 - 6至5。模型对数和模型评分的AUC值分别为0.820(95%CI 0.733 - 0.906)和0.822(95%CI 0.737 - 0.908)。截断值分别为0.275和 - 0.5。校准曲线表明两个模型的预测概率与观察结果之间具有良好的一致性。采用自助法进行内部验证,模型对数的平均AUC值为0.819(95%CI 0.736 - 0.903),模型评分为0.823(95%CI 0.742 - 0.903),表明在重采样数据集中具有稳定性。DCA证实,当个体化阈值范围为10%至82%时,两个模型在预测HE率≥70%方面均提供了更高的净效益。拔管前HE率≥70%的预测模型已显示出预测能力,有可能帮助临床医生优化手术效率。