Ding Gang-Yu, Xu Jian-Hua, He Ji-Hong, Nie Zhi-Yu
Department of Neurology, Jiading District Central Hospital Affiliated Shanghai University of Medicine and Health Sciences, Shanghai, China.
Department of Neurology, Shanghai Tongji Hospital, Tongji University School of Medicine, Shanghai, China.
Front Neurol. 2022 Aug 5;13:935150. doi: 10.3389/fneur.2022.935150. eCollection 2022.
The clinical nomogram is a popular decision-making tool that can be used to predict patient outcomes, bringing benefits to clinicians and patients in clinical decision-making. This study established a simple and effective clinical prediction model to predict the 3-month prognosis of acute ischemic stroke (AIS), and based on the predicted results, improved clinical decision-making and improved patient outcomes.
From 18 December 2021 to 8 January 2022, a total of 146 hospitalized patients with AIS confirmed by brain MR were collected, of which 132 eligible participants constituted a prospective study cohort. The least absolute shrinkage and selection operator (LASSO) regression was applied to a nomogram model development dataset to select features associated with poor prognosis in AIS for inclusion in the logistic regression of our risk scoring system. On this basis, the nomogram was drawn, evaluated for discriminative power, calibration, and clinical benefit, and validated internally by bootstrap. Finally, the optimal cutoff point for each independent risk factor and nomogram was calculated using the Youden index.
A total of 132 patients were included in this study, including 85 men and 47 women. Good outcome was found in 94 (71.212%) patients and bad outcome in 38 (28.788%) patients during the follow-up period. A total of eight (6.061%) deaths were reported over this period, of whom five (3.788%) died during hospitalization. Five factors affecting the 3-month prognosis of AIS were screened by LASSO regression, namely, age, hospital stay, previous stroke, atrial fibrillation, and NIHSS. Further multivariate logistic regression revealed three independent risk factors affecting patient outcomes, namely, age, previous stroke, and NIHSS. The area under the curve of the nomogram was 0.880, and the 95% confidence interval was 0.818-0.943, suggesting that the nomogram model has good discriminative power. The -value for the calibration curve is 0.925, indicating that the nomogram model is well-calibrated. According to the decision curve analysis results, when the threshold probability is >0.01, the net benefit obtained by the nomogram is the largest. The concordance index for 1,000 bootstrapping calculations is 0.869. The age cutoff for predicting poor patient outcomes using the Youden index was 76.5 years (specificity 0.777 and sensitivity 0.684), the cutoff for the NIHSS was 7.5 (specificity 0.936, sensitivity 0.421), and the cutoff for total nomogram score was 68.8 (sensitivity 81.6% and specificity 79.8%).
The nomogram model established in this study had good discrimination, calibration, and clinical benefits. A nomogram composed of age, previous stroke, and NIHSS might predict the prognosis of stroke after AIS. It might intuitively and individually predict the risk of poor prognosis in 3 months of AIS and provide a reference basis for screening the treatment plan of patients.
临床列线图是一种常用的决策工具,可用于预测患者预后,为临床医生和患者的临床决策带来益处。本研究建立了一种简单有效的临床预测模型,以预测急性缺血性卒中(AIS)的3个月预后,并根据预测结果改善临床决策,提高患者预后。
2021年12月18日至2022年1月8日,共收集146例经脑部磁共振成像确诊的住院AIS患者,其中132例符合条件的参与者构成前瞻性研究队列。将最小绝对收缩和选择算子(LASSO)回归应用于列线图模型开发数据集,以选择与AIS预后不良相关的特征,纳入我们风险评分系统的逻辑回归分析。在此基础上绘制列线图,评估其判别力、校准度和临床效益,并通过自抽样法进行内部验证。最后,使用约登指数计算每个独立危险因素和列线图的最佳截断点。
本研究共纳入132例患者,其中男性85例,女性47例。随访期间,94例(71.212%)患者预后良好,38例(28.788%)患者预后不良。在此期间共报告8例(6.061%)死亡,其中5例(3.788%)在住院期间死亡。通过LASSO回归筛选出影响AIS 3个月预后的5个因素,即年龄、住院时间、既往卒中史、心房颤动和美国国立卫生研究院卒中量表(NIHSS)评分。进一步的多因素逻辑回归分析显示,影响患者预后的3个独立危险因素为年龄、既往卒中史和NIHSS评分。列线图的曲线下面积为0.880,95%置信区间为0.818 - 0.943,表明列线图模型具有良好的判别力。校准曲线的P值为0.925,表明列线图模型校准良好。根据决策曲线分析结果,当阈值概率>0.01时,列线图获得的净效益最大。1000次自抽样计算的一致性指数为0.869。使用约登指数预测患者预后不良的年龄截断点为76.5岁(特异性0.777,敏感性0.684),NIHSS评分的截断点为7.5(特异性0.936,敏感性0.421),列线图总分的截断点为68.8(敏感性81.6%,特异性79.8%)。
本研究建立的列线图模型具有良好的判别力、校准度和临床效益。由年龄、既往卒中史和NIHSS评分组成的列线图可能预测AIS后卒中的预后。它可以直观地、个体化地预测AIS患者3个月内预后不良的风险,为筛选患者的治疗方案提供参考依据。