Systems-based Strategies Improve Positive Screening Fecal Immunochemical Testing Follow-up and Reduce Time to Diagnostic Colonoscopy

MILITARY MEDICINE(2022)

引用 2|浏览2
暂无评分
摘要
Introduction Fecal immunochemical testing (FIT) is the most commonly used colorectal cancer (CRC) screening tool worldwide and accounts for 10% of all CRC screening in the United States. Potential vulnerabilities for patients enrolled to facilities within the military health system have recently come to light requiring reassessment of best practices. We studied the impact of a process improvement initiative designed to improve the safety and quality of care for patients after a positive screening FIT given previously published reports of poor organization performance. Methods During a time of increased utilization of nonendoscopic means of screening, we assessed rates of colonoscopy completion and time to colonoscopy after positive FIT after a multi-faceted process improvement initiative was implemented, compared against an institutional control period. The interventions included mandatory indication labeling at the time of order entry, as well as utilization of subspecialty nurse navigators to facilitate rapid follow-up even the absence of a referral from primary care. Results Preintervention, 34.8% of patients did not have appropriate follow-up of a positive FIT. Those that did had a variable and prolonged wait time of 140.1 +/- 115.9 days. Postintervention, a standardized order mandating test indication labeling allowed for proactive gastroenterology involvement. Colonoscopy follow-up rate increased to 91.9% with an average interval of 21.9 +/- 12.3 days. Conclusion The addition of indication labels and patient navigation after positive screening FIT was associated with 57.1% absolute increase in timely diagnostic colonoscopy. Similar highly reliable systems-based solutions should be adopted for CRC screening, and further implementation for other preventative screening interventions should be pursued.
更多
查看译文
关键词
diagnostic colonoscopy,screening,testing,systems-based
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要