1.Evaluation of ICUs and weight of quality control indicators: an exploratory study based on Chinese ICU quality data from 2015 to 2020.
Longxiang SU ; Xudong MA ; Sifa GAO ; Zhi YIN ; Yujie CHEN ; Wenhu WANG ; Huaiwu HE ; Wei DU ; Yaoda HU ; Dandan MA ; Feng ZHANG ; Wen ZHU ; Xiaoyang MENG ; Guoqiang SUN ; Lian MA ; Huizhen JIANG ; Guangliang SHAN ; Dawei LIU ; Xiang ZHOU
Frontiers of Medicine 2023;17(4):675-684
This study aimed to explore key quality control factors that affected the prognosis of intensive care unit (ICU) patients in Chinese mainland over six years (2015-2020). The data for this study were from 31 provincial and municipal hospitals (3425 hospital ICUs) and included 2 110 685 ICU patients, for a total of 27 607 376 ICU hospitalization days. We found that 15 initially established quality control indicators were good predictors of patient prognosis, including percentage of ICU patients out of all inpatients (%), percentage of ICU bed occupancy of total inpatient bed occupancy (%), percentage of all ICU inpatients with an APACHE II score ⩾15 (%), three-hour (surviving sepsis campaign) SSC bundle compliance (%), six-hour SSC bundle compliance (%), rate of microbe detection before antibiotics (%), percentage of drug deep venous thrombosis (DVT) prophylaxis (%), percentage of unplanned endotracheal extubations (%), percentage of patients reintubated within 48 hours (%), unplanned transfers to the ICU (%), 48-h ICU readmission rate (%), ventilator associated pneumonia (VAP) (per 1000 ventilator days), catheter related blood stream infection (CRBSI) (per 1000 catheter days), catheter-associated urinary tract infections (CAUTI) (per 1000 catheter days), in-hospital mortality (%). When exploratory factor analysis was applied, the 15 indicators were divided into 6 core elements that varied in weight regarding quality evaluation: nosocomial infection management (21.35%), compliance with the Surviving Sepsis Campaign guidelines (17.97%), ICU resources (17.46%), airway management (15.53%), prevention of deep-vein thrombosis (14.07%), and severity of patient condition (13.61%). Based on the different weights of the core elements associated with the 15 indicators, we developed an integrated quality scoring system defined as F score=21.35%xnosocomial infection management + 17.97%xcompliance with SSC guidelines + 17.46%×ICU resources + 15.53%×airway management + 14.07%×DVT prevention + 13.61%×severity of patient condition. This evidence-based quality scoring system will help in assessing the key elements of quality management and establish a foundation for further optimization of the quality control indicator system.
Humans
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China/epidemiology*
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Cross Infection/epidemiology*
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Intensive Care Units/statistics & numerical data*
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Quality Control
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Quality Indicators, Health Care/statistics & numerical data*
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Sepsis/therapy*
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East Asian People/statistics & numerical data*
2.Analysis of the quality of notifiable infectious disease report in Beijing medical treatment organizations.
Xue-qin XIE ; Chen CHEN ; Xiao-ying YANG ; Zai-hua WEI ; Jing-long LIU
Chinese Journal of Preventive Medicine 2008;42(5):335-338
OBJECTIVETo evaluate the quality of the infectious diseases reporting via network in Beijing hospitals and to filtrate factors that affect the reporting quality.
METHODSWe collected 5536 infectious disease cases randomly and investigated 52 medical treatment organizations. Information was collected by field questionnaire survey, interview and gathering routine reporting data for analyzing the quality.
RESULTSThe result showed that the timeliness of the 52 medical treatment organizations was 94.18%, the consistency was 80.84%, the completeness was 88.47%, and the misreport was 13.73%. The reporting quality of the second level hospitals was higher than that of the first level hospitals, township health centers and the third level hospitals. The reporting quality of urban hospitals was higher than that of the suburb hospitals. The reporting quality of outpatient and inpatient departments was higher than that of the laboratory. The laboratory was the primary part of underreporting.
CONCLUSIONStrengthening guidance, training and paying attention to each weak portion would certainly ameliorate the quality of infectious diseases reporting via network.
China ; Communicable Disease Control ; organization & administration ; Communicable Diseases ; epidemiology ; Disease Notification ; statistics & numerical data ; Hospitals ; Humans ; Infection Control ; Public Health Informatics ; Quality Indicators, Health Care
3.Improving door-to-balloon times in primary percutaneous coronary intervention for acute ST-elevation myocardial infarction: the value of an audit-driven quality initiative.
Rabind A CHARLES ; Shiou Liang WEE ; Bernard W K KWOK ; Caren TAN ; Swee Han LIM ; Venkataraman ANANTHARAMAN ; Wasantha HEMANTHAKUMARI ; Terrance S J CHUA
Annals of the Academy of Medicine, Singapore 2008;37(7):568-572
INTRODUCTIONThe study was designed to reduce door-to-balloon times in primary percutaneous coronary intervention for patients presenting to the Emergency Department with acute ST-elevation myocardial infarction, using an audit as a quality initiative.
MATERIALS AND METHODSA multidisciplinary work group performed a pilot study over 3 months, then implemented various process and work-flow strategies to improve overall door-to-balloon times.
RESULTS AND CONCLUSIONWe developed a guideline-based, institution-specific written protocol for triaging and managing patients who present to the Emergency Department with symptoms suggestive of STEMI, resulting in shortened median door-to-balloon times from 130.5 to 109.5 minutes (P<0.001).
Angioplasty, Balloon, Coronary ; Emergency Service, Hospital ; statistics & numerical data ; utilization ; Health Care Surveys ; Humans ; Medical Audit ; Myocardial Infarction ; physiopathology ; therapy ; Pilot Projects ; Program Development ; Quality Indicators, Health Care ; Quality of Health Care ; Singapore ; Time Factors ; Triage
4.Impact of Nurse, Nurses' Aid Staffing and Turnover Rate on Inpatient Health Outcomes in Long Term Care Hospitals.
Yunmi KIM ; Ji Yun LEE ; Hyuncheol KANG
Journal of Korean Academy of Nursing 2014;44(1):21-30
PURPOSE: This study was conducted to explore the impact of registered nurse/nurses' aid (RN/NA) staffing and turnover rate on inpatient health outcomes in long term care hospitals. METHODS: A secondary analysis was done of national data from the Health Insurance Review and Assessment Services including evaluation of long term care hospitals in October-December 2010 and hospital general characteristics in July-September 2010. Final analysis of data from 610 hospitals included RN/NA staffing, turnover rate of nursing staff and 5 patient health outcome indicators. RESULTS: Finding showed that, when variables of organization and community level were controlled, patients per RN was a significant indicator of decline in ADL for patients with dementia, and new pressure ulcer development in the high risk group and worsening of pressure ulcers. Patients per NA was a significant indicator for new pressure ulcer development in the low risk group. Turnover rate was not significant for any variable. CONCLUSION: To maintain and improve patient health outcomes of ADL and pressure ulcers, policies should be developed to increase the staffing level of RN. Studies are also needed to examine causal relation of NA staffing level, RN staffing level and patient health outcomes with consideration of the details of nursing practice.
Activities of Daily Living
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Dementia/physiopathology
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Humans
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Inpatients/*psychology
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Long-Term Care
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National Health Programs
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Nursing Staff, Hospital/psychology/*statistics & numerical data
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Personnel Turnover
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Pressure Ulcer/etiology
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*Quality Indicators, Health Care
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Risk Factors
5.Effects of Physician Volume on Readmission and Mortality in Elderly Patients with Heart Failure: Nationwide Cohort Study.
Joo Eun LEE ; Eun Cheol PARK ; Suk Yong JANG ; Sang Ah LEE ; Yoon Soo CHOY ; Tae Hyun KIM
Yonsei Medical Journal 2018;59(2):243-251
PURPOSE: Readmission and mortality rates of patients with heart failure are good indicators of care quality. To determine whether hospital resources are associated with care quality for cardiac patients, we analyzed the effect of number of physicians and the combined effects of number of physicians and beds on 30-day readmission and 1-year mortality. MATERIALS AND METHODS: We used national cohort sample data of the National Health Insurance Service (NHIS) claims in 2002–2013. Subjects comprised 2345 inpatients (age: >65 years) admitted to acute-care hospitals for heart failure. A multivariate Cox regression was used. RESULTS: Of the 2345 patients hospitalized with heart failure, 812 inpatients (34.6%) were readmitted within 30 days and 190 (8.1%) had died within a year. Heart-failure patients treated at hospitals with low physician volumes had higher readmission and mortality rates than high physician volumes [30-day readmission: hazard ratio (HR)=1.291, 95% confidence interval (CI)=1.020–1.633; 1-year mortality: HR=2.168, 95% CI=1.415–3.321]. Patients admitted to hospitals with low or middle bed and physician volume had higher 30-day readmission and 1-year mortality rates than those admitted to hospitals with high volume (30-day readmission: HR=2.812, 95% CI=1.561–5.066 for middle-volume beds & low-volume physicians, 1-year mortality: HR=8.638, 95% CI=2.072–36.02 for middle-volume beds & low-volume physicians). CONCLUSION: Physician volume is related to lower readmission and mortality for heart failure. Of interest, 30-day readmission and 1-year mortality were significantly associated with the combined effects of physician and institution bed volume.
Aged
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Aged, 80 and over
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Cohort Studies
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Female
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Heart Failure/diagnosis/*mortality/therapy
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Hospitalization
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*Hospitals, High-Volume/statistics & numerical data
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*Hospitals, Low-Volume/statistics & numerical data
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Humans
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Male
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Middle Aged
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Patient Readmission/*statistics & numerical data
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Physicians/economics/*supply & distribution
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Proportional Hazards Models
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Quality Improvement
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Quality Indicators, Health Care/*statistics & numerical data
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Time Factors
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Treatment Outcome