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AHRQ Research Studies
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Research Studies is a compilation of published research articles funded by AHRQ or authored by AHRQ researchers.
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1 to 4 of 4 Research Studies DisplayedChen VW, Chidi AP, Dong Y
Risk-adjusted cumulative sum for early detection of hospitals with excess perioperative mortality.
This study’s goal was to compare the risk-adjusted cumulative sum (CUSUM) with episodic evaluation for early detection of hospitals with excess perioperative mortality. The study cohort included 697,566 patients treated at 104 Veterans’ Affairs hospitals across 24 quarters with a mean age of 60.9 years and 91.4% male. These patients underwent a noncardiac operation at a Veterans Affairs hospital, had a record in the Veterans Affairs Surgical Quality Improvement Program (January 1, 2011, through December 31, 2016), and were aged 18 years or older. For each hospital, the median number of quarters detected with observed to expected ratios, at least 1 CUSUM signal, and more than 1 CUSUM signal was 2 quarters (IQR, 1-4 quarters), 8 quarters (IQR, 4-11 quarters), and 3 quarters (IQR, 1-4 quarters). Outlier hospitals were identified 33.3% of the time (830 quarters) with at least 1 CUSUM signal within a quarter, 12.5% (311 quarters) with more than 1 CUSUM signal, and 11.0% (274 quarters) with observed to expected ratios at the end of the quarter. The CUSUM detection occurred a median of 49 days (IQR, 25-63 days) before observed to expected ratio reporting (1 signal, 35 days [IQR, 17-54 days]; 2 signals, 49 days [IQR, 26-61 days]; 3 signals, 58 days [IQR, 44-69 days]; ≥4 signals, 49 days [IQR, 42-69 days]. Of 274 hospital quarters detected with observed to expected ratios, 72.6% were concurrently detected by at least 1 CUSUM signal vs 42.7% by more than 1 CUSUM signal. There was a dose-response relationship between the number of CUSUM signals in a quarter and the median observed to expected ratio (0 signals, 0.63; 1 signal, 1.28; 2 signals, 1.58; 3 signals, 2.08; ≥4 signals, 2.49).
AHRQ-funded; HS013853.
Citation: Chen VW, Chidi AP, Dong Y .
Risk-adjusted cumulative sum for early detection of hospitals with excess perioperative mortality.
JAMA Surg 2023 Nov; 158(11):1176-83. doi: 10.1001/jamasurg.2023.3673..
Keywords: Quality Improvement, Surgery, Hospitals, Patient Safety, Mortality, Quality of Care
Haynes AB, Edmondson LB, Lipsitz SR
Mortality trends after a voluntary checklist-based surgical safety collaborative.
This study sought to determine whether completion of a voluntary, checklist-based surgical quality improvement program is associated with reduced 30-day postoperative mortality. It It found that, despite similar pre-existing rates and trends of postoperative mortality, hospitals in South Carolina completing a voluntary checklist-based surgical quality improvement program had a reduction in deaths after inpatient surgery over the first 3 years of the collaborative compared with other hospitals in the state.
AHRQ-funded; HS019631.
Citation: Haynes AB, Edmondson LB, Lipsitz SR .
Mortality trends after a voluntary checklist-based surgical safety collaborative.
Annals of Surgery 2017 Dec;266(6):923-29. doi: 10.1097/SLA.0000000000002249.
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Keywords: Mortality, Patient Safety, Surgery, Quality Improvement, Quality of Care
Wong SL, Revels SL, Yin H
Variation in hospital mortality rates with inpatient cancer surgery.
The purpose of this national study was to elucidate clinical mechanisms underlying variation in hospital mortality with major cancer surgery. It found that case-fatality rates among patients with complications at high-mortality hospitals were approximately twice as high as at low-mortality hospitals. This study implicates failure to rescue as the major reason for differences in hospital mortality rates with major cancer surgery.
AHRQ-funded; HS020937.
Citation: Wong SL, Revels SL, Yin H .
Variation in hospital mortality rates with inpatient cancer surgery.
Ann Surg 2015 Apr;261(4):632-6. doi: 10.1097/sla.0000000000000690..
Keywords: Mortality, Surgery, Cancer, Patient Safety, Quality of Care
Tamirisa NP, Parmar AD, Vargas GM
Relative contributions of complications and failure to rescue on mortality in older patients undergoing pancreatectomy.
This study evaluated the relative contribution of overall postoperative complications and failure to rescue rates on the observed increased mortality in older patients undergoing pancreatic resection at specialized centers. The study found that patients 80 years and older had no difference in complication rates but higher failure to rescue rates compared to patients younger than 80.
AHRQ-funded; HS022134
Citation: Tamirisa NP, Parmar AD, Vargas GM .
Relative contributions of complications and failure to rescue on mortality in older patients undergoing pancreatectomy.
Ann Surg. 2016 Feb;263(2):385-91. doi: 10.1097/SLA.0000000000001093..
Keywords: Surgery, Mortality, Patient Safety, Quality of Care, Elderly