Hubler Adam, Wakefield Daniel V, Makepeace Lydia, Carnell Matt, Sharma Ankur M, Jiang Bo, Dove Austin P, Garner Wesley B, Edmonston Drucilla, Little John G, Ozdenerol Esra, Hanson Ryan B, Martin Michelle Y, Shaban-Nejad Arash, Pisu Maria, Schwartz David L
Department of Radiation Oncology, University of Tennessee Health Science Center, Memphis, Tennessee.
Tennessee Oncology, Nashville, Tennessee.
Adv Radiat Oncol. 2022 Jul 30;7(6):101041. doi: 10.1016/j.adro.2022.101041. eCollection 2022 Nov-Dec.
Radiation treatment interruption associated with unplanned hospitalization remains understudied. The intent of this study was to benchmark the frequency of hospitalization-associated radiation therapy interruptions (HARTI), characterize disease processes causing hospitalization during radiation, identify factors predictive for HARTI, and localize neighborhood environments associated with HARTI at our academic referral center.
This retrospective review of electronic health records provided descriptive statistics of HARTI event rates at our institutional practice. Uni- and multivariable logistic regression models were developed to identify significant factors predictive for HARTI. Causes of hospitalization were established from primary discharge diagnoses. HARTI rates were mapped according to patient residence addresses.
Between January 1, 2015, and December 31, 2017, 197 HARTI events (5.3%) were captured across 3729 patients with 727 total missed treatments. The 3 most common causes of hospitalization were malnutrition/dehydration (n = 28; 17.7%), respiratory distress/infection (n = 24; 13.7%), and fever/sepsis (n = 17; 9.7%). Factors predictive for HARTI included African-American race (odds ratio [OR]: 1.48; 95% confidence interval [CI], 1.07-2.06; = .018), Medicaid/uninsured status (OR: 2.05; 95% CI, 1.32-3.15; = .0013), Medicare coverage (OR: 1.7; 95% CI, 1.21-2.39; = .0022), lung (OR: 5.97; 95% CI, 3.22-11.44; < .0001), and head and neck (OR: 5.6; 95% CI, 2.96-10.93; .0001) malignancies, and prescriptions >20 fractions (OR: 2.23; 95% CI, 1.51-3.34; < .0001). HARTI events clustered among Medicaid/uninsured patients living in urban, low-income, majority African-American neighborhoods, and patients from middle-income suburban communities, independent of race and insurance status. Only the wealthiest residential areas demonstrated low HARTI rates.
HARTI disproportionately affected socioeconomically disadvantaged urban patients facing a high treatment burden in our catchment population. A complementary geospatial analysis also captured the risk experienced by middle-income suburban patients independent of race or insurance status. Confirmatory studies are warranted to provide scale and context to guide intervention strategies to equitably reduce HARTI events.
与非计划住院相关的放射治疗中断仍未得到充分研究。本研究旨在确定与住院相关的放射治疗中断(HARTI)的频率,描述放射治疗期间导致住院的疾病过程,确定HARTI的预测因素,并在我们的学术转诊中心确定与HARTI相关的社区环境。
对电子健康记录进行的这项回顾性研究提供了我们机构实践中HARTI事件发生率的描述性统计数据。建立单变量和多变量逻辑回归模型以确定HARTI的重要预测因素。根据主要出院诊断确定住院原因。根据患者居住地址绘制HARTI发生率图。
在2015年1月1日至2017年12月31日期间,3729例患者中发生了197起HARTI事件(5.3%),共错过727次治疗。住院的3个最常见原因是营养不良/脱水(n = 28;17.7%)、呼吸窘迫/感染(n = 24;13.7%)和发热/败血症(n = 17;9.7%)。HARTI的预测因素包括非裔美国人种族(比值比[OR]:1.48;95%置信区间[CI],1.07 - 2.06;P = 0.018)、医疗补助/未参保状态(OR:2.05;95%CI,1.32 - 3.15;P = 0.0013)、医疗保险覆盖(OR:1.7;95%CI,1.21 - 2.39;P = 0.0022)、肺癌(OR:5.97;95%CI,3.22 - 11.44;P < 0.0001)和头颈部(OR:5.6;95%CI,2.96 - 10.93;P < 0.0001)恶性肿瘤,以及处方超过20次分割(OR:2.23;95%CI,1.51 - 3.34;P < 0.0001)。HARTI事件集中在居住在城市、低收入、非裔美国人占多数社区的医疗补助/未参保患者以及来自中等收入郊区社区的患者中,与种族和保险状态无关。只有最富裕的居民区HARTI发生率较低。
在我们的服务人群中,HARTI对面临高治疗负担的社会经济弱势城市患者影响尤为严重。一项补充性的地理空间分析还发现了中等收入郊区患者独立于种族或保险状态所面临的风险。有必要进行验证性研究,以提供规模和背景信息,指导干预策略,公平地减少HARTI事件。