Esper Garrett W, Meltzer-Bruhn Ariana T, Ganta Abhishek, Egol Kenneth A, Konda Sanjit R
Orthopedic Surgery, New York University Langone Health, New York, USA.
Orthopedic Surgery, State University of New York Upstate Medical University, Syracuse, USA.
Cureus. 2022 Jul 3;14(7):e26530. doi: 10.7759/cureus.26530. eCollection 2022 Jul.
Background The incidence of geriatric hip fractures, respiratory infections (e.g., coronavirus disease 2019 (COVID-19), influenza), and mortality is higher during the fall and winter. The purpose of this study is to assess whether the addition of seasonality to a validated geriatric inpatient mortality risk tool will improve the predictive capacity and risk stratification for geriatric hip fracture patients. We hypothesize that seasonality will improve the predictive capacity. Methodology Between October 2014 and August 2021, 2,421 patients >55-year-old treated for hip fracture were analyzed for demographics, date of presentation, COVID-19 status (for patients after February 2020), and mortality. Patients were grouped by season based on their admission dates into the following four cohorts: fall (September-November), winter (December-February), spring (March-May), and summer (June-August). Patients presenting during the fall/winter and spring/summer were compared. The baseline Score for Trauma Triage in the Geriatric and Middle-Aged (STTGMA) tool for hip fractures (STTGMAHIP_FX_SCORE) and the seasonality iteration (STTGMA_SEASON) were also compared. Sub-analysis was conducted on 687 patients between February 2020 and August 2021 amid the COVID-19 pandemic. The baseline score (STTGMAHIP_FX_SCORE) and the COVID-19 iteration (STTGMACOVID_ORIGINAL_2020) were modified to include seasonality (STTGMA_COVID/SEASON). Patients were stratified by risk score and compared. The predictive ability of the models was compared using DeLong's test. Results For the overall cohort, patients who presented during the fall/winter had a higher rate of inpatient mortality (2.87% vs. 1.25%, p < 0.01). STTGMA_SEASON improved the predictive capacity for inpatient mortality compared to STTGMAHIP_FX_SCORE but not significantly (0.773 vs. 0.672, p = 0.105) On sub-analysis, regression weighting showed a coefficient of 0.643, with fall and winter having a greater absolute effect size (fall = 2.572, winter = 1.929, spring = 1.286, summer = 0.643). STTGMA_COVID/SEASON improved the predictive capacity for inpatient mortality compared to STTGMAHIP_FX_SCORE (0.882 vs. 0.581, p < 0.01) and STTGMACOVID_ORIGINAL_2020 (0.882 vs. 0.805, p = 0.04). The highest risk quartile contained 89.5% of patients who expired during their index inpatient hospitalization (p < 0.01) and 68.2% of patients who died within 30 days of discharge (p < 0.01). Conclusions Seasonality may play a role in both the incidence and impact of COVID-19 and additional respiratory infections. Including seasonality improves the predictive capacity and risk stratification of the STTGMA tool during the COVID-19 pandemic. This allows for effective triage and closer surveillance of high-risk geriatric hip fracture patients by better accounting for the increased respiratory infection incidence and the associated mortality risk seen during fall and winter.
老年髋部骨折、呼吸道感染(如2019冠状病毒病(COVID-19)、流感)的发病率以及死亡率在秋冬季节更高。本研究的目的是评估在经过验证的老年住院患者死亡风险工具中加入季节性因素是否会提高老年髋部骨折患者的预测能力和风险分层。我们假设季节性因素会提高预测能力。方法:在2014年10月至2021年8月期间,对2421名年龄大于55岁的髋部骨折患者进行人口统计学、就诊日期、COVID-19状态(2020年2月之后的患者)以及死亡率分析。根据患者的入院日期按季节分组,分为以下四个队列:秋季(9月至11月)、冬季(12月至2月)、春季(3月至5月)和夏季(6月至8月)。比较在秋冬季节和春夏季就诊的患者。还比较了髋部骨折的老年和中年创伤分诊基线评分工具(STTGMA)(STTGMAHIP_FX_SCORE)和季节性迭代评分(STTGMA_SEASON)。在2020年2月至2021年8月COVID-19大流行期间,对687名患者进行了亚分析。将基线评分(STTGMAHIP_FX_SCORE)和COVID-19迭代评分(STTGMACOVID_ORIGINAL_2020)进行修改以纳入季节性因素(STTGMA_COVID/SEASON)。根据风险评分对患者进行分层并比较。使用德龙检验比较模型的预测能力。结果:对于整个队列,在秋冬季节就诊的患者住院死亡率更高(2.87%对1.25%,p<0.01)。与STTGMAHIP_FX_SCORE相比,STTGMA_SEASON提高了住院死亡率的预测能力,但差异不显著(0.773对0.672,p = 0.105)。在亚分析中,回归权重显示系数为0.643,秋季和冬季的绝对效应量更大(秋季 = 2.572,冬季 = 1.929,春季 = 1.286,夏季 = 0.643)。与STTGMAHIP_FX_SCORE(0.882对0.581,p<0.01)和STTGMACOVID_ORIGINAL_2020(0.882对0.805,p = 0.04)相比,STTGMA_COVID/SEASON提高了住院死亡率的预测能力。最高风险四分位数包含89.5%在其首次住院期间死亡的患者(p<0.01)以及68.2%在出院后30天内死亡的患者(p<0.01)。结论:季节性因素可能在COVID-19和其他呼吸道感染的发病率及影响方面发挥作用。在COVID-19大流行期间,纳入季节性因素可提高STTGMA工具的预测能力和风险分层。这有助于通过更好地考虑秋冬季节呼吸道感染发病率增加及相关死亡风险,对高危老年髋部骨折患者进行有效的分诊和更密切的监测。