Mukkada Sheena, Smith Cristel Kate, Aguilar Delta, Sykes April, Tang Li, Dolendo Mae, Caniza Miguela A
Department of Infectious Diseases, St. Jude Children's Research Hospital, Memphis, Tennessee.
Division of Infectious Diseases, Department of Pediatrics, University of Tennessee Health Sciences Center, Memphis, Tennessee.
Pediatr Blood Cancer. 2018 Feb;65(2). doi: 10.1002/pbc.26790. Epub 2017 Sep 12.
In low- and middle-income countries (LMICs), inconsistent or delayed management of fever contributes to poor outcomes among pediatric patients with cancer. We hypothesized that standardizing practice with a clinical algorithm adapted to local resources would improve outcomes. Therefore, we developed a resource-specific algorithm for fever management in Davao City, Philippines. The primary objective of this study was to evaluate adherence to the algorithm.
This was a prospective cohort study of algorithm adherence to assess the types of deviation, reasons for deviation, and pathogens isolated. All pediatric oncology patients who were admitted with fever (defined as an axillary temperature >37.7°C on one occasion or ≥37.4°C on two occasions 1 hr apart) or who developed fever within 48 hr of admission were included. Univariate and multiple linear regression analyses were used to determine the relation between clinical predictors and length of hospitalization.
During the study, 93 patients had 141 qualifying febrile episodes. Even though the algorithm was designed locally, deviations occurred in 70 (50%) of 141 febrile episodes on day 0, reflecting implementation barriers at the patient, provider, and institutional levels. There were 259 deviations during the first 7 days of admission in 92 (65%) of 141 patient episodes. Failure to identify high-risk patients, missed antimicrobial doses, and pathogen isolation were associated with prolonged hospitalization.
Monitoring algorithm adherence helps in assessing the quality of pediatric oncology care in LMICs and identifying opportunities for improvement. Measures that decrease high-frequency/high-impact algorithm deviations may shorten hospitalizations and improve healthcare use in LMICs.
在低收入和中等收入国家(LMICs),对发热的处理不一致或延迟会导致癌症患儿预后不良。我们假设,采用适合当地资源的临床算法来规范诊疗行为会改善预后。因此,我们针对菲律宾达沃市的发热管理制定了一种因地制宜的算法。本研究的主要目的是评估对该算法的依从性。
这是一项关于算法依从性的前瞻性队列研究,旨在评估偏差类型、偏差原因以及分离出的病原体。纳入所有因发热入院(定义为一次腋温>37.7°C或两次间隔1小时的腋温≥37.4°C)或入院后48小时内出现发热的儿科肿瘤患者。采用单因素和多元线性回归分析来确定临床预测因素与住院时间之间的关系。
在研究期间,93例患者出现了141次符合条件的发热发作。尽管该算法是在当地设计的,但在第0天的141次发热发作中有70次(50%)出现了偏差,这反映了患者、医护人员和机构层面的实施障碍。在141例患者发作中有92例(65%)在入院的前7天出现了259次偏差。未能识别高危患者、漏用抗菌药物剂量以及病原体分离与住院时间延长有关。
监测算法依从性有助于评估低收入和中等收入国家儿科肿瘤护理的质量,并确定改进机会。减少高频/高影响算法偏差的措施可能会缩短低收入和中等收入国家的住院时间并改善医疗资源利用。