People's Liberation Army Joint Logistic Support Force 904th Hospital (Wuxi Taihu Hospital), Department of Neurosurgery, Wuxi, China.
Turk Neurosurg. 2023;33(3):363-372. doi: 10.5137/1019-5149.JTN.29764-20.3.
To establish, and validate a practical nomogram to predict recurrence of chronic subdural hematoma (CSDH) in patients after initial burr-hole surgery.
The prediction model was developed from a training set of 272 patients with CSDH who had undergone standard burr hole with irrigation surgery. A separate external validation cohort comprising 112 patients who underwent the same operation was also included. Least absolute shrinkage and selection operator (LASSO) regression was adopted to minimize the high dimension of data and predictor selection. Binary logistic regression was used to develop the present model. Subsequently, a nomogram was established as the ultimate representation of the prediction model. Area under the curve (AUC) was used to identify the discrimination of the designed predictive nomogram. The calibration plot was used to verify the goodness-of-fit of the nomogram. Finally, Decision curve analysis (DCA) was employed to appraise the clinical applicability of the present nomogram.
A total of 3 independent variables were filtered by LASSO analysis from the 22 candidate factors. The AUC of the training and validation sets were 0.833 (95%CI: 0.774-0.894) and 0.817 (95%CI: 0.711-0.922), respectively, which indicated a good discrimination ability. The calibration charts showed that the prediction probability and the actual probability fitted well. The DCA of the prediction model indicated an excellent clinical efficacy.
The proposed nomogram can quantitatively and conveniently predict the recurrence rate of CSDH after burr hole with irrigation surgery. Besides it can facilitate customized treatment adjustment and follow-up of patients who are at a high-risk of recurrence.
建立并验证一种实用的列线图模型,以预测初次颅骨钻孔冲洗术后慢性硬脑膜下血肿(CSDH)患者的复发情况。
该预测模型基于 272 例接受标准颅骨钻孔冲洗术治疗的 CSDH 患者的训练集建立。同时还纳入了 112 例接受相同手术的外部验证队列。采用最小绝对收缩和选择算子(LASSO)回归来最小化数据和预测因子选择的高维性。采用二元逻辑回归来开发本模型。随后,建立列线图作为预测模型的最终表现形式。曲线下面积(AUC)用于确定设计的预测列线图的判别能力。校准图用于验证列线图的拟合优度。最后,采用决策曲线分析(DCA)评估本列线图的临床适用性。
通过 LASSO 分析,从 22 个候选因素中筛选出 3 个独立变量。训练集和验证集的 AUC 分别为 0.833(95%CI:0.774-0.894)和 0.817(95%CI:0.711-0.922),表明具有良好的判别能力。校准图显示预测概率与实际概率拟合良好。DCA 分析表明该预测模型具有良好的临床效果。
本研究所提出的列线图可定量且便捷地预测颅骨钻孔冲洗术后 CSDH 的复发率。此外,它可以帮助高复发风险患者进行个体化治疗调整和随访。