National Healthcare Quality and Disparities Report
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AHRQ Research Studies Date
Topics
- Adverse Drug Events (ADE) (4)
- Adverse Events (5)
- Antimicrobial Stewardship (1)
- Asthma (1)
- Autism (2)
- Behavioral Health (1)
- Blood Clots (1)
- Cardiovascular Conditions (2)
- Care Management (2)
- Children/Adolescents (7)
- Chronic Conditions (2)
- (-) Clinical Decision Support (CDS) (44)
- Clinician-Patient Communication (1)
- Communication (1)
- Community-Acquired Infections (1)
- Comparative Effectiveness (1)
- Data (2)
- Diagnostic Safety and Quality (6)
- Digestive Disease and Health (1)
- Domestic Violence (1)
- Ear Infections (1)
- Electronic Health Records (EHRs) (15)
- Emergency Department (3)
- Emergency Medical Services (EMS) (1)
- Evidence-Based Practice (3)
- Genetics (1)
- Guidelines (1)
- Healthcare-Associated Infections (HAIs) (1)
- Healthcare Costs (2)
- Healthcare Delivery (2)
- Healthcare Utilization (1)
- Health Information Technology (HIT) (27)
- Health Services Research (HSR) (1)
- Heart Disease and Health (3)
- Hepatitis (1)
- Home Healthcare (1)
- Hospitalization (2)
- Hospitals (1)
- Imaging (2)
- Infectious Diseases (1)
- Kidney Disease and Health (1)
- Medical Errors (3)
- Medication (9)
- Medication: Safety (1)
- Neurological Disorders (1)
- Nursing (1)
- Obesity (2)
- Obesity: Weight Management (1)
- Outcomes (1)
- Pain (1)
- Patient-Centered Healthcare (1)
- Patient-Centered Outcomes Research (3)
- Patient Safety (9)
- Patient Self-Management (1)
- Pneumonia (1)
- Practice Patterns (3)
- Pregnancy (1)
- Prevention (1)
- Primary Care (3)
- Public Reporting (1)
- Quality Improvement (2)
- Quality of Care (1)
- Respiratory Conditions (1)
- Risk (2)
- Screening (2)
- Sepsis (1)
- Shared Decision Making (13)
- Surgery (1)
- Transplantation (2)
- Women (1)
- Workflow (1)
AHRQ Research Studies
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Research Studies is a compilation of published research articles funded by AHRQ or authored by AHRQ researchers.
Results
1 to 25 of 44 Research Studies DisplayedDowns SM, Bauer NS, Saha C
Effect of a computer-based decision support intervention on autism spectrum disorder screening in pediatric primary care clinics: a cluster randomized clinical trial.
This study examined outcomes for implementation of a decision support system called CHICA (Child Health Improvement Through Computer Automation) to improve screening rates for autism in children aged 18 to 24 months. A random sample of 274 children in four urban clinics was used. Two clinics participated in the intervention, and two served as controls. Because participating clinics requested intervention be discontinued for children aged 18 months, only results for those aged 24 months was analyzed. Of the 263 children with reviewed results, 92% were enrolled in Medicaid, 52.5% were African American, and 36.5% were Hispanic. Screening rates increased from 0% at baseline to 100% in 24 months during the study period of November 2010 to November 2012. Screening results were positive for 265 of 980 children screened by CHICA in the time period, with 2 children from the intervention group positively diagnosed in the time frame of the study.
AHRQ-funded; HS018453.
Citation: Downs SM, Bauer NS, Saha C .
Effect of a computer-based decision support intervention on autism spectrum disorder screening in pediatric primary care clinics: a cluster randomized clinical trial.
JAMA Netw Open 2019 Dec 2;2(12):e1917676. doi: 10.1001/jamanetworkopen.2019.17676..
Keywords: Autism, Clinical Decision Support (CDS), Shared Decision Making, Health Information Technology (HIT), Primary Care, Children/Adolescents, Screening
Levy AE, Shah NR, Matheny ME
Determining post-test risk in a national sample of stress nuclear myocardial perfusion imaging reports: implications for natural language processing tools.
The authors investigated whether Natural Language Processing (NLP) tools could potentially help estimate myocardial perfusion imaging (MPI) risk. Subjects were VA patients who underwent stress MPI and coronary angiography 2009-11; stress test reports were randomly selected for analysis. The authors found that post-test ischemic risk was determinable but rarely reported in this sample of stress MPI reports. They conclude that this supports the potential use of NLP to help clarify risk and recommend further study of NLP in this context.
AHRQ-funded; HS022998.
Citation: Levy AE, Shah NR, Matheny ME .
Determining post-test risk in a national sample of stress nuclear myocardial perfusion imaging reports: implications for natural language processing tools.
J Nucl Cardiol 2019 Dec;26(6):1878-85. doi: 10.1007/s12350-018-1275-y..
Keywords: Imaging, Risk, Clinical Decision Support (CDS), Health Information Technology (HIT), Diagnostic Safety and Quality, Cardiovascular Conditions, Heart Disease and Health
Lambert BL, Galanter W, Liu KL
Automated detection of wrong-drug prescribing errors.
Investigators assessed the specificity of an algorithm designed to detect look-alike/sound-alike (LASA) medication prescribing errors in electronic health record (EHR) data. They found that automated detection of LASA medication errors is feasible and can reveal errors not currently detected by other means. Additionally, real-time error detection is not possible with the current system. They suggested that further development should replicate their analysis in other health systems and on a larger set of medications and should decrease clinician time spent reviewing false-positive triggers by increasing specificity.
AHRQ-funded; HS021093.
Citation: Lambert BL, Galanter W, Liu KL .
Automated detection of wrong-drug prescribing errors.
BMJ Qual Saf 2019 Nov;28(11):908-15. doi: 10.1136/bmjqs-2019-009420..
Keywords: Adverse Drug Events (ADE), Adverse Events, Clinical Decision Support (CDS), Electronic Health Records (EHRs), Health Information Technology (HIT), Medical Errors, Medication, Patient Safety
Blecker S, Austrian JS, Horwitz LI
Interrupting providers with clinical decision support to improve care for heart failure.
The goal of this study was to develop a clinical decision support (CDS) system to recommend an angiotenson converting enzyme (ACE) inhibitor during hospitalization so it could be promoted for continuation at discharge. Patients who were hospitalized with reduced ejection fraction were pseudo-randomized to deliver interruptive or non-interruptive CDS alerts to providers based on the patients’ even or odd medical record number. The utilization rate was higher for interruptive alert versus non-interruptive alert hospitalizations for a sample of 958. This resulted in improved quality of care for heart failure patients.
AHRQ-funded; HS023683.
Citation: Blecker S, Austrian JS, Horwitz LI .
Interrupting providers with clinical decision support to improve care for heart failure.
Int J Med Inform 2019 Nov;131:103956. doi: 10.1016/j.ijmedinf.2019.103956..
Keywords: Clinical Decision Support (CDS), Shared Decision Making, Heart Disease and Health, Cardiovascular Conditions, Medication, Medication: Safety, Patient Safety, Quality Improvement, Quality of Care
Cochran AL, Rathouz PJ, Kocher KE
A latent variable approach to potential outcomes for emergency department admission decisions.
The authors sought to provide a general framework to evaluate admission decisions from electronic healthcare records. They estimated that while admitting a patient with higher latent needs reduced the 30-day risk of revisiting the emergency department or later being admitted through the emergency department by over 79%, admitting a patient with lower latent needs actually increased these 30-day risks by 3.0% and 7.6%, respectively.
AHRQ-funded; HS024160.
Citation: Cochran AL, Rathouz PJ, Kocher KE .
A latent variable approach to potential outcomes for emergency department admission decisions.
Stat Med 2019 Sep 10;38(20):3911-35. doi: 10.1002/sim.8210..
Keywords: Electronic Health Records (EHRs), Health Information Technology (HIT), Emergency Department, Clinical Decision Support (CDS), Shared Decision Making, Hospitalization
Wissel BD, Greiner HM, Glauser TA
Investigation of bias in an epilepsy machine learning algorithm trained on physician notes.
Racial disparities in the utilization of epilepsy surgery are well documented, but it is unknown whether a natural language processing (NLP) algorithm trained on physician notes would produce biased recommendations for epilepsy presurgical evaluations. To assess this, an NLP algorithm was trained to identify potential surgical candidates using 1097 notes from 175 epilepsy patients with a history of resective epilepsy surgery and 268 patients who achieved seizure freedom without surgery (total N = 443 patients).
AHRQ-funded; HS024977.
Citation: Wissel BD, Greiner HM, Glauser TA .
Investigation of bias in an epilepsy machine learning algorithm trained on physician notes.
Epilepsia 2019 Sep;60(9):e93-e98. doi: 10.1111/epi.16320..
Keywords: Neurological Disorders, Surgery, Clinical Decision Support (CDS), Healthcare Utilization, Health Information Technology (HIT), Shared Decision Making
Gance-Cleveland B, Leiferman J, Aldrich H
Using the technology acceptance model to develop startsmart: mHealth for screening, brief intervention, and referral for risk and protective factors in pregnancy.
The purpose of this study was to develop StartSmart, a mobile health (mHealth) intervention to support evidence-based prenatal screening, brief intervention, and referral to treatment for risk and protective factors in pregnancy. Expert clinicians provided guidance on the screening instruments, resources, and practice guidelines. Clinicians suggested identifying specific prenatal visits for the screening. Patients reported that the tablet-based screening was useful to promote adherence to guidelines and provided suggestions for improvement.
AHRQ-funded; HS024738.
Citation: Gance-Cleveland B, Leiferman J, Aldrich H .
Using the technology acceptance model to develop startsmart: mHealth for screening, brief intervention, and referral for risk and protective factors in pregnancy.
J Midwifery Womens Health 2019 Sep;64(5):630-40. doi: 10.1111/jmwh.13009..
Keywords: Health Information Technology (HIT), Domestic Violence, Clinical Decision Support (CDS), Shared Decision Making, Pregnancy, Women, Evidence-Based Practice, Screening, Prevention
Nguyen BP, Reese T, Decker S
Implementation of clinical decision support services to detect potential drug-drug interaction using clinical quality language.
The authors report on the implementation and evaluation of CDS Services which represent potential drug-drug interactions knowledge with Clinical Quality Language (CQL). Their suggested solution is based on emerging standards including CDS Hooks, FHIR, and CQL. They selected two use cases, implemented them with CQL rules, and tested them.
AHRQ-funded; HS023826; HS025984.
Citation: Nguyen BP, Reese T, Decker S .
Implementation of clinical decision support services to detect potential drug-drug interaction using clinical quality language.
Stud Health Technol Inform 2019 Aug 21;264:724-28. doi: 10.3233/shti190318..
Keywords: Clinical Decision Support (CDS), Adverse Drug Events (ADE), Medication, Adverse Events, Patient Safety, Health Information Technology (HIT)
Liang C, Miao Q, Kang H
Leveraging patient safety research: efforts made fifteen years since To Err Is Human.
The present study sought to explore the associations between federal incentives of patient safety research and the outcomes from 1995 to 2014, in which two historical events - the release of To Err Is Human and the American Recovery and Reinvestment Act - were considered in the analysis. They concluded that their findings suggested a positive outcome in patient safety research.
AHRQ-funded; HS022895.
Citation: Liang C, Miao Q, Kang H .
Leveraging patient safety research: efforts made fifteen years since To Err Is Human.
Stud Health Technol Inform 2019 Aug 21;264:983-87. doi: 10.3233/shti190371..
Keywords: Patient Safety, Medical Errors, Adverse Events, Clinical Decision Support (CDS), Health Information Technology (HIT)
Hoonakker PLT, Carayon P, Salwei ME
The design of PE Dx, a CDS to support pulmonary embolism diagnosis in the ED.
One possible explanation for user resistance to clinical decision support (CDS) procedures may be poor CDS design. This study describes the design of PE Dx, a CDS built to aid in the diagnosis of pulmonary embolism in the emergency department using human factors methods.
AHRQ-funded; HS022086.
Citation: Hoonakker PLT, Carayon P, Salwei ME .
The design of PE Dx, a CDS to support pulmonary embolism diagnosis in the ED.
Stud Health Technol Inform 2019 Aug 9;265:134-40. doi: 10.3233/shti190152..
Keywords: Blood Clots, Clinical Decision Support (CDS), Shared Decision Making, Diagnostic Safety and Quality, Emergency Department, Respiratory Conditions
Harle CA, DiIulio J, Downs SM
Decision-centered design of patient information visualizations to support chronic pain care.
The objective of this study was to describe a decision-centered design process, and resultant interactive patient information displays, to support key clinical decision requirements in chronic noncancer pain care. Through critical decision method interviews and a half-day multidisciplinary design workshop, researchers designed an interactive prototype, the Chronic Pain Treatment Tracker. This prototype summarizes the current treatment plan, past treatment history, potential future treatments, and treatment options that require caution. The researchers concluded that the Chronic Pain Treatment Tracker presents clinicians with the information they need in a structure that promotes quick uptake, understanding, and action.
AHRQ-funded; HS023306.
Citation: Harle CA, DiIulio J, Downs SM .
Decision-centered design of patient information visualizations to support chronic pain care.
Appl Clin Inform 2019 Aug;10(4):719-28. doi: 10.1055/s-0039-1696668..
Keywords: Pain, Chronic Conditions, Shared Decision Making, Health Information Technology (HIT), Clinical Decision Support (CDS), Care Management, Healthcare Delivery
Ruaño G, Holford T, Seip RL
Pharmacogenetic clinical decision support for psychiatric hospitalization: design of the CYP-GUIDES randomized controlled trial.
The CYP-GUIDES (Cytochrome Psychotropic Genotyping Under Investigation for Decision Support) trial aims to establish evidence for clinical pharmacogenetics in psychotropic prescription in severely depressed inpatients. This article describes the design of a Randomized Controlled Trial (RCT) of CYP2D6 genotype-guided versus standard care psychotropic prescription. The CYP-GUIDES trial will assess whether clinical prescribing guided by CYP2D6 functional status can improve the treatment of psychiatric inpatients, shorten the length of hospitalization, and reduce readmission.
AHRQ-funded; HS022304.
Citation: Ruaño G, Holford T, Seip RL .
Pharmacogenetic clinical decision support for psychiatric hospitalization: design of the CYP-GUIDES randomized controlled trial.
Contemp Clin Trials 2019 Aug;83:27-36. doi: 10.1016/j.cct.2019.06.008..
Keywords: Behavioral Health, Hospitalization, Clinical Decision Support (CDS), Health Information Technology (HIT), Genetics
Patterson BW, Pulia MS, Ravi S
Scope and influence of electronic health record-integrated clinical decision support in the emergency department: a systematic review.
This systematic review examined the scope and influence of electronic health record-integrated clinical decision support (CDS) technologies implemented in hospital emergency departments. A literature search was conducted using 4 databases from the inception of these CDS systems through January 2018. Out of 2,558 potential studies identified, 42 met inclusion criteria. Common uses for CDS technologies included medication and radiology ordering practices, and more comprehensive systems supporting diagnosis and treatment for specific diseases. The majority of studies (83%) reported positive effects on outcomes, with most studies using a pre-post experimental design (76%). The authors concluded that although most studies show positive effects of CDS technologies, many of the studies were small and poorly controlled.
AHRQ-funded; HS024342; HS024558; HS022086.
Citation: Patterson BW, Pulia MS, Ravi S .
Scope and influence of electronic health record-integrated clinical decision support in the emergency department: a systematic review.
Ann Emerg Med 2019 Aug;74(2):285-96. doi: 10.1016/j.annemergmed.2018.10.034..
Keywords: Clinical Decision Support (CDS), Electronic Health Records (EHRs), Health Information Technology (HIT), Emergency Department
Asti L, Bartsch SM, Umscheid CA
The potential economic value of sputum culture use in patients with community-acquired pneumonia and healthcare-associated pneumonia.
Researchers developed a decision model to determine the economic and clinical value of using sputum cultures in the treatment of community-acquired pneumonia (CAP) and healthcare-associated pneumonia (HCAP) from the hospital perspective under various conditions. They found that, overall, obtaining sputum cultures does not provide significant clinical or economic benefits for CAP or HCAP patients; however, it can reduce costs and shorten overall length of stay under some circumstances. They recommended that clinicians consider their local conditions when making decisions about sputum culture use.
AHRQ-funded; HS023317.
Citation: Asti L, Bartsch SM, Umscheid CA .
The potential economic value of sputum culture use in patients with community-acquired pneumonia and healthcare-associated pneumonia.
Clin Microbiol Infect 2019 Aug;25(8):1038.e1-38.e9. doi: 10.1016/j.cmi.2018.11.031..
Keywords: Pneumonia, Community-Acquired Infections, Healthcare-Associated Infections (HAIs), Infectious Diseases, Healthcare Costs, Clinical Decision Support (CDS), Shared Decision Making
Powers EM, Shiffman RN, Melnick ER
Efficacy and unintended consequences of hard-stop alerts in electronic health record systems: a systematic review.
Clinical decision support (CDS) hard-stop alerts-those in which the user is either prevented from taking an action altogether or allowed to proceed only with the external override of a third party-are increasingly common but can be problematic. To understand their appropriate application, the investigators explored 3 key questions: (1) To what extent are hard-stop alerts effective in improving patient health and healthcare delivery outcomes? (2) What are the adverse events and unintended consequences of hard-stop alerts? (3) How do hard-stop alerts compare to soft-stop alerts?
AHRQ-funded; HS024332.
Citation: Powers EM, Shiffman RN, Melnick ER .
Efficacy and unintended consequences of hard-stop alerts in electronic health record systems: a systematic review.
J Am Med Inform Assoc 2018 Nov;25(11):1556-66. doi: 10.1093/jamia/ocy112..
Keywords: Clinical Decision Support (CDS), Electronic Health Records (EHRs), Health Information Technology (HIT), Healthcare Delivery, Patient Safety
Goldstein SL
Automated/integrated real-time clinical decision support in acute kidney injury.
The author argues that early, real-time identification and notification to healthcare providers of patients at risk for, or with, acute or chronic kidney disease can drive simple interventions to reduce harm. Similarly, he believes that screening patients at risk for acute kidney injury with these platforms to alert research personnel will lead to improve study subject recruitment.
AHRQ-funded; HS023763; HS021114.
Citation: Goldstein SL .
Automated/integrated real-time clinical decision support in acute kidney injury.
Curr Opin Crit Care 2015 Dec;21(6):485-9. doi: 10.1097/mcc.0000000000000250.
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Keywords: Clinical Decision Support (CDS), Kidney Disease and Health, Electronic Health Records (EHRs), Patient-Centered Outcomes Research, Diagnostic Safety and Quality
Almario CV, Chey WD, Iriana S
Computer versus physician identification of gastrointestinal alarm features.
This study's objective was to compare the number of alarms documented by physicians during usual care vs. that collected by a computer algorithm called Automated Evaluation of Gastrointestinal Symptoms (AEGIS). AEGIS identified more patients with positive alarm features compared to physicians and also documented more positive alarms. Moreover, clinicians documented only 30% of the positive alarms self-reported by patients through AEGIS.
AHRQ-funded; HS000046.
Citation: Almario CV, Chey WD, Iriana S .
Computer versus physician identification of gastrointestinal alarm features.
Int J Med Inform 2015 Dec;84(12):1111-7. doi: 10.1016/j.ijmedinf.2015.07.006.
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Keywords: Clinical Decision Support (CDS), Diagnostic Safety and Quality, Digestive Disease and Health, Electronic Health Records (EHRs), Patient Safety
Liang C, Gong Y
Enhancing patient safety event reporting by K-nearest neighbor classifier.
The debate on structured or unstructured data entry reveals not only a trade-off problem among data accuracy, completeness, and timeliness, but also a technical gap on text mining. The reesarchers suggested a text classification method for predicting subject categories. Their results demonstrated the feasibility of their system and indicated the advantage of such an application to raise data quality and clinical decision support in reporting patient safety events.
AHRQ-funded; HS022895.
Citation: Liang C, Gong Y .
Enhancing patient safety event reporting by K-nearest neighbor classifier.
Stud Health Technol Inform 2015;218:40603.
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Keywords: Adverse Events, Medical Errors, Patient Safety, Public Reporting, Clinical Decision Support (CDS), Health Information Technology (HIT), Data
Lo Re V, 3rd, Haynes K, Forde KA
Risk of acute liver failure in patients with drug-induced liver injury: evaluation of Hy's Law and a new prognostic model.
The researchers aimed to develop a highly sensitive model to identify drug-induced liver injury (DILI) patients at increased risk of acute liver failure (ALF). negative predictive value (0.99), but low level of sensitivity (0.68) and positive predictive value (0.02). Their model, comprising data on platelet count and total bilirubin level, identified patients with ALF with a C statistic of 0.87 and enabled calculation of a risk score (Drug-Induced Liver Toxicity ALF Score).
AHRQ-funded; HS018372.
Citation: Lo Re V, 3rd, Haynes K, Forde KA .
Risk of acute liver failure in patients with drug-induced liver injury: evaluation of Hy's Law and a new prognostic model.
Clin Gastroenterol Hepatol 2015 Dec;13(13):2360-8. doi: 10.1016/j.cgh.2015.06.020.
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Keywords: Antimicrobial Stewardship, Medication, Chronic Conditions, Adverse Drug Events (ADE), Clinical Decision Support (CDS)
Panahiazar M, Taslimitehrani V, Pereira NL
Using EHRs for heart failure therapy recommendation using multidimensional patient similarity analytics.
The authors developed a multidimensional patient similarity assessment technique that leverages multiple types of information from the electronic health records and predicts a medication plan for each new patient based on prior knowledge and data from similar patients.Their findings suggest that it is feasible to harness population-based information for an individual patient-specific assessment.
AHRQ-funded; HS023077.
Citation: Panahiazar M, Taslimitehrani V, Pereira NL .
Using EHRs for heart failure therapy recommendation using multidimensional patient similarity analytics.
Stud Health Technol Inform 2015;210:369-73.
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Keywords: Clinical Decision Support (CDS), Data, Electronic Health Records (EHRs), Heart Disease and Health, Patient-Centered Healthcare
Islam R, Weir CR, Jones M
Understanding complex clinical reasoning in infectious diseases for improving clinical decision support design.
The purpose of the study was to examine the constituents of decision complexity and explore the cognitive strategies clinicians use to control and adapt to their information environment. The following three themes emerged as the constituents of decision complexity experienced by the Infectious Diseases experts: 1) the overall clinical picture does not match the pattern, 2) a lack of comprehension of the situation and 3) dealing with social and emotional pressures such as fear and anxiety.
AHRQ-funded; HS023349.
Citation: Islam R, Weir CR, Jones M .
Understanding complex clinical reasoning in infectious diseases for improving clinical decision support design.
BMC Med Inform Decis Mak 2015 Nov 30;15:101. doi: 10.1186/s12911-015-0221-z.
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Keywords: Clinical Decision Support (CDS), Health Services Research (HSR), Practice Patterns
Wright A, Sittig DF, Ash JS
Lessons learned from implementing service-oriented clinical decision support at four sites: a qualitative study.
This study identified challenges, lessons learned and best practices for service-oriented clinical decision support, based on the results of the Clinical Decision Support Consortium, a multi-site study which developed, implemented and evaluated clinical decision support services in a diverse range of electronic health records. Based on the challenges and lessons learned, there were eight best practices for developers and implementers of service-oriented clinical decision support.
AHRQ-funded; 290200810010.
Citation: Wright A, Sittig DF, Ash JS .
Lessons learned from implementing service-oriented clinical decision support at four sites: a qualitative study.
Int J Med Inform 2015 Nov;84(11):901-11. doi: 10.1016/j.ijmedinf.2015.08.008.
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Keywords: Clinical Decision Support (CDS), Electronic Health Records (EHRs), Shared Decision Making, Health Information Technology (HIT)
Gephart S, Carrington JM, Finley B
A systematic review of nurses' experiences with unintended consequences when using the electronic health record.
The purpose of this article is to present the state of the science on nurses' experiences with unintended consequences of electronic health records (EHRs). Findings demonstrate that nurses experience changes to workflow, must continually adapt to meet patient's needs in the context of imperfect EHR systems, and have difficulty accessing the information they need to make patient care decisions. Implications for nurse administrators include the need for continual engagement with nurses along the continuum of EHR design, as well as the need to encourage nurses to speak up and acknowledge workflow changes that threaten patient safety or do not support work efficiency.
AHRQ-funded; HS021074.
Citation: Gephart S, Carrington JM, Finley B .
A systematic review of nurses' experiences with unintended consequences when using the electronic health record.
Nurs Adm Q 2015 Oct-Dec;39(4):345-56. doi: 10.1097/naq.0000000000000119.
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Keywords: Adverse Events, Clinical Decision Support (CDS), Electronic Health Records (EHRs), Nursing, Workflow
Fumo DE, Kapoor V, Reece LJ
Historical matching strategies in kidney paired donation: the 7-year evolution of a web-based virtual matching system.
Failure to convert computer-identified possible kidney paired donation (KPD) exchanges into transplants has prohibited KPD from reaching its full potential. This study analyzes the progress of exchanges in moving from "offers" to completed transplants. The "offer" and 1-way success rates were 21.9 and 15.5 percent, respectively. Three reasons for failure were found that could be prospectively prevented by changes in protocol or software.
AHRQ-funded; HS020610.
Citation: Fumo DE, Kapoor V, Reece LJ .
Historical matching strategies in kidney paired donation: the 7-year evolution of a web-based virtual matching system.
Am J Transplant 2015 Oct;15(10):2646-54. doi: 10.1111/ajt.13337.
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Keywords: Health Information Technology (HIT), Transplantation, Shared Decision Making, Clinical Decision Support (CDS)
Bray M, Wang W, Song PX
Planning for uncertainty and fallbacks can increase the number of transplants in a kidney-paired donation program.
The researchers outlined and examined, through example and by simulation, four schemes for selecting potential matches in a realistic model of a kidney-paired donation system. Their proposed schemes take account of probabilities that chosen transplants may not be completed as well as allowing for contingency plans when the optimal solution fails.
AHRQ-funded; HS020610.
Citation: Bray M, Wang W, Song PX .
Planning for uncertainty and fallbacks can increase the number of transplants in a kidney-paired donation program.
Am J Transplant 2015 Oct;15(10):2636-45. doi: 10.1111/ajt.13413.
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Keywords: Transplantation, Clinical Decision Support (CDS), Health Information Technology (HIT)