Lei Mingxing, Li Yan, Cheng Longcan, Tang Nan, Song Jie, Song Mi, Su QingQing, Liu Mingxuan, Fu Shihui, Lin Feng, Gao Yuan
Department of Nursing, The First Medical Center of Chinese People's Liberation Army General Hospital, Beijing, People's Republic of China.
Department of Orthopaedic Surgery, Hainan Hospital of Chinese People's Liberation Army General Hospital, Beijing, People's Republic of China.
Cardiovasc Diabetol. 2025 Jul 12;24(1):286. doi: 10.1186/s12933-025-02812-7.
Stress hyperglycemia ratio (SHR) has emerged as a potential prognostic marker in critical illness, but its association with mortality in cardiovascular disease remains incompletely characterized. This study investigated the relationship between SHR and all-cause mortality in critically ill patients with cardiovascular disease, adjusting for a variety of confounding factors using propensity score matching (PSM).
A cohort of 3,352 critically ill patients with cardiovascular disease was stratified by SHR quartiles (Q1-Q4). Baseline characteristics, comorbidities (e.g., heart failure, diabetes), and severity scores (OASIS, APSIII, SOFA) were extracted from a large database containing de-identified health data patients admitted to the intensive care units (ICUs) of Beth Israel Deaconess Medical Center. PSM (670 matched pairs) balanced covariates between high (SHR > 1.355) and low SHR groups. The associations between SHR and mortality risk (in-hospital, 28-day, 90-day, 365-day) were evaluated using Cox models, restricted cubic spline (RCS) analysis, and Kaplan-Meier survival curves. Cox proportional hazards models were implemented with three sequential adjustment levels: Model 1 (unadjusted); Model 2 (adjusted for demographic factors and comorbidities); and Model 3 (fully adjusted). Predictive performance of SHR combined with severity scores was assessed via area under the curve (AUC) improvement.
Higher SHR quartiles exhibited greater comorbidity burden (e.g., acute kidney injury: 84.6% in Q4 vs. 79.7% in Q1, P < 0.001) and severity scores (P < 0.001). Unadjusted analysis showed a significant association between SHR and mortality, with Q4 having the highest in-hospital (Q4: 16.3% vs. Q1-Q3: 5.1-6.4%, P < 0.001) and 365-day mortality (Q4: 29.2% vs. Q1-Q3: 15.7-16.9%, P < 0.001). The RCS analysis revealed a U-shaped mortality risk, with average optimal SHR cutoffs of 1.355. After PSM, cox proportional hazard models confirmed that high SHR (Q4) remained associated with early mortality (in-hospital HR = 2.117, [95% CI: 1.223-3.665], P = 0.007; 28-day HR = 1.859, [95% CI: 1.100-3.141], P = 0.020) but not long-term outcomes (90-day mortality, P = 0.127; 365-day mortality, P = 0.123) in the Model 1. Similar trends were obtained after adjusting for demographic factors and comorbidities (Model 2) and in the fully adjusted model (Model 3). Adding SHR improved short-term mortality prediction performance (e.g., OASIS AUC: +0.034 for in-hospital, P < 0.001), though benefits diminished post-PSM (e.g., OASIS: +0.012 for in-hospital, P = 0.009). However, incorporating SHR did not enhance the predictive performance of OASIS and SAPSII for 90-day and 365-day mortality prediction after PSM.
Elevated SHR contributes to early mortality in patients with cardiovascular disease, even after rigorous confounder adjustment. The incremental predictive value of SHR support its utility for risk stratification, particularly for short-term outcomes, but its prognostic value fades for long-term mortalities. These findings highlight SHR as a favorable biomarker for clinical decision-making in acute cardiovascular care.
应激性高血糖比率(SHR)已成为危重症患者潜在的预后标志物,但其与心血管疾病死亡率之间的关联仍未完全明确。本研究通过倾向得分匹配(PSM)对各种混杂因素进行校正,探讨了危重症心血管疾病患者中SHR与全因死亡率之间的关系。
将3352例危重症心血管疾病患者按SHR四分位数(Q1-Q4)分层。从贝斯以色列女执事医疗中心重症监护病房(ICU)收治的去识别化健康数据患者的大型数据库中提取基线特征、合并症(如心力衰竭、糖尿病)和严重程度评分(OASIS、APSIII、SOFA)。PSM(670对匹配)平衡了高SHR组(SHR>1.355)和低SHR组之间的协变量。使用Cox模型、限制性立方样条(RCS)分析和Kaplan-Meier生存曲线评估SHR与死亡风险(住院、28天、90天、365天)之间的关联。Cox比例风险模型采用三个连续调整水平:模型1(未调整);模型2(根据人口统计学因素和合并症进行调整);模型3(完全调整)。通过曲线下面积(AUC)改善评估SHR与严重程度评分相结合的预测性能。
较高的SHR四分位数显示出更大的合并症负担(如急性肾损伤:Q4中为84.6%,Q1中为79.7%,P<0.001)和严重程度评分(P<0.001)。未调整分析显示SHR与死亡率之间存在显著关联,Q4的住院死亡率最高(Q4:16.3%,Q1-Q3:5.1-6.4%,P<0.001)和365天死亡率最高(Q4:29.2%,Q1-Q3:15.7-16.9%,P<0.001)。RCS分析显示死亡率风险呈U形,平均最佳SHR临界值为1.355。PSM后,Cox比例风险模型证实高SHR(Q4)仍与早期死亡率相关(住院HR=2.117,[95%CI:1.223-3.665],P=0.007;28天HR=1.859,[95%CI:1.100-3.141],P=0.020),但在模型1中与长期结局无关(90天死亡率,P=0.127;365天死亡率,P=0.123)。在根据人口统计学因素和合并症进行调整后(模型2)以及在完全调整模型(模型3)中也获得了类似趋势。添加SHR可改善短期死亡率预测性能(如住院时OASIS AUC:增加0.034,P<
0.001),尽管PSM后益处减弱(如住院时OASIS:增加0.012,P=0.009)。然而,纳入SHR并未提高PSM后OASIS和SAPSII对90天和365天死亡率预测的性能。
即使经过严格的混杂因素校正,SHR升高仍与心血管疾病患者的早期死亡率相关。SHR的增量预测价值支持其在风险分层中的应用,特别是对于短期结局,但对于长期死亡率,其预后价值减弱。这些发现突出了SHR作为急性心血管护理中临床决策的良好生物标志物。