scholarly journals Improving Child Development Screening: Implications for Professional Practice and Patient Equity

2022 ◽  
Vol 13 ◽  
pp. 215013192110626
Author(s):  
John Meurer ◽  
Robert Rohloff ◽  
Lisa Rein ◽  
Ilya Kanter ◽  
Nayanika Kotagiri ◽  
...  

Introduction and Objectives: A pediatric group with 25 clinics and 150 providers used multifaceted approaches to implement workflow processes and an electronic health record (EHR) flowsheet to improve child developmental screening. The key outcome was developmental screening done for every patient during 3 periods between ages 8 and 36 months. Identification of developmental concerns was the secondary study outcome. Screening rates and referrals were hypothesized to be optimized for children regardless of demographic backgrounds. Methods: During preventive visits, developmental screens targeted patients in age groups 8 to 12, 13 to 24, and 25 to 36 months. EHRs were analyzed for screening documentation, results, and referrals by patient demographics. Fifteen pediatric professionals were interviewed about their qualitative experiences. Quality improvement interventions included appointing clinic champions, training staff about the screening process and responsibilities, using a standardized tool, employing plan-do-study-act cycles, posting EHR prompts, providing financial incentives, and monitoring screening rates using control charts. Results: Within 25 months, screening rates improved from 60% to >95% within the 3 preventive visit age groups for a total of more than 30 000 children. Professionals valued the team process improvements. Children enrolled in Medicaid, black children, and those living in lower income zip codes had lower screening rates than privately insured, white children, and those living in higher income areas. Ages and Stages Questionnaire 3rd edition results were significantly different by gender, race/ethnicity, insurance, and income categories across all groups. Referral rates varied by race/ethnicity and zip code of residence. Conclusions: This project resulted in an effective and efficient process to improve child developmental screening that was valued by pediatric professionals. Analyses of patient demographics revealed disparities in services for the most vulnerable families. Ongoing quality improvement, health services research, and advocacy offer hope to improve health equity.

FACE ◽  
2021 ◽  
pp. 273250162199244
Author(s):  
Elizabeth M. Boudiab ◽  
Thomas D. Zaikos ◽  
Christopher Issa ◽  
Kongkrit Chaiyasate ◽  
Stephen M. Lu

Electric scooters are an increasingly common and convenient mode of transportation worldwide and have effectively revolutionized the shared micromobility industry. As electric scooter sharing companies have increased in popularity there has been a concomitant increase in the frequency of all electric scooter-related injuries. The purpose of this study is to describe the most up-to-date trends in craniofacial fractures and lacerations related to electric scooter use among all age groups. We queried the National Electronic Injury Surveillance System (NEISS) for craniofacial fractures and lacerations related to e-scooters between 2010 and 2019. We then compared injury trends over time and between time periods before and after 2017 when electric scooter share apps revolutionized micromobility. We compared incidence of injury overall and by day of the week, patient demographics, and case severity based on clinical disposition. We identified an increase in the frequency of craniofacial lacerations and fractures in the 3 years following the introduction of electric scooter share services in 2017 (2017 and 2019), compared to the 3 years before this time (2014-2016). Young adults (18-39 years) were the age group with the greatest interval increase in craniofacial injuries. There was also an increase in number of craniofacial injuries occurring on Mondays and a decrease number occurring on Fridays in the later time period. Finally, patients who presented with electric scooter-related craniofacial injuries in this later time period showed a higher frequency of overnight observation and hospital admission for their injuries. The number of craniofacial injuries secondary to electric scooter use has increased dramatically since the introduction of share services. Craniofacial fractures and lacerations are a common reason for craniofacial or maxillofacial surgery consultation and understanding these patterns of injury will help prepare surgeons for patient care, preventative education, and public advocacy.


2021 ◽  
Vol 10 (Suppl 1) ◽  
pp. e001404
Author(s):  
Shuchi Jain ◽  
Pramod Kumar ◽  
Manish Jain ◽  
Megha Bathla ◽  
Shiv Joshi ◽  
...  

Abnormal prolonged labour and its effects are important contributors to maternal and perinatal mortality and morbidity worldwide. E-partograph is a modern tool for real-time computerised recording of labour data which improves maternal and neonatal outcome. The aim was to improve the rates of e-partograph plotting in all eligible women in the labour room from existing 30% to achieve 90% in 6 months through a quality improvement (QI) process.A team of nurses, obstetricians, postgraduates and a data entry operator did a root cause analysis to identify the possible reasons for the drop in e-partograph plotting to 30%. The team used process flow mapping and fish bone analysis. Various change ideas were tested through sequential Plan-Do-Study-Act (PDSA) cycles to address the issues identified.The interventions included training labour room staff, identification of eligible women and providing an additional computer and internet facility for plotting and assigning responsibility of plotting e-partographs. We implemented these interventions in five PDSA cycles and observed outcomes by using control charts. A set of process, output and outcome indicators were used to track if the changes made were leading to improvement.The rate of e-partograph plotting increased from 30% to 93% over the study period of 6 months from August 2018 to January 2019. The result has been sustained since the last PDSA cycle. The maternal outcome included a decrease in obstructed and prolonged labour with its associated complications from 6.2% to 2.4%. The neonatal outcomes included a decrease in admissions in the neonatal intensive care unit for birth asphyxia from 8% to 3.4%. It can thus be concluded that a QI approach can help in improving adherence to e-partography plotting resulting in improved maternal health services in a rural maternity hospital in India.


Children ◽  
2021 ◽  
Vol 8 (4) ◽  
pp. 301
Author(s):  
Andrew M. Dylag ◽  
Jamey Tulloch ◽  
Karen E. Paul ◽  
Jeffrey M. Meyers

Background: Prevention of chronic lung disease (CLD) requires a multidisciplinary approach spanning from the delivery room to Neonatal Intensive Care Unit (NICU) discharge. In 2018, a quality improvement (QI) initiative commenced in a level 4 NICU with the goal of decreasing chronic lung disease rates below the Vermont Oxford Network (VON) average of 24%. Methods: Improvement strategies focused on addressing the primary drivers of ventilation strategies, surfactant administration, non-invasive ventilation, medication use, and nutrition/fluid management. The primary outcome was VON CLD, defined as need for mechanical ventilation and/or supplemental oxygen use at 36 weeks postmenstrual age. Statistical process control charts were used to display and analyze data over time. Results: The overall CLD rate decreased from 33.5 to 16.5% following several interventions, a 51% reduction that has been sustained for >18 months. Changes most attributable to this include implementation of the “golden hour” gestational age (GA) based delivery room protocol that encourages early surfactant administration and timely extubation. Fewer infants were intubated across all GA groups with the largest improvement among infants 26–27 weeks GA. Conclusions: Our efforts significantly decreased CLD through GA-based respiratory guidelines and a comprehensive, rigorous QI approach that can be applicable to other teams focused on improvement.


2021 ◽  
pp. 019459982110133
Author(s):  
Ellen S. Deutsch ◽  
Sonya Malekzadeh ◽  
Cecelia E. Schmalbach

Simulation training has taken a prominent role in otolaryngology–head and neck surgery (OTO-HNS) as a means to ensure patient safety and quality improvement (PS/QI). While it is often equated to resident training, this tool has value in lifelong learning and extends beyond the individual otolaryngologists to include simulation-based learning for teams and health systems processes. Part III of this PS/QI primer provides an overview of simulation in medicine and specific applications within the field of OTO-HNS. The impact of simulation on PS/QI will be presented in an evidence-based fashion to include the use of run and statistical process control charts to assess the impact of simulation-guided initiatives. Last, steps in developing a simulation program focused on PS/QI will be outlined with future opportunities for OTO-HNS simulation.


BMJ Open ◽  
2018 ◽  
Vol 8 (2) ◽  
pp. e018826 ◽  
Author(s):  
Jacquie Boyang Lu ◽  
Kristin J Danko ◽  
Michael D Elfassy ◽  
Vivian Welch ◽  
Jeremy M Grimshaw ◽  
...  

BackgroundSocially disadvantaged populations carry a disproportionate burden of diabetes-related morbidity and mortality. There is an emerging interest in quality improvement (QI) strategies in the care of patients with diabetes, however, the effect of these interventions on disadvantaged groups remains unclear.ObjectiveThis is a secondary analysis of a systematic review that seeks to examine the extent of equity considerations in diabetes QI studies, specifically quantifying the proportion of studies that target interventions toward disadvantaged populations and conduct analyses on the impact of interventions on disadvantaged groups.Research design and methodsStudies were identified using Medline, HealthStar and the Cochrane Effective Practice and Organisation of Care database. Randomised controlled trials assessing 12 QI strategies targeting health systems, healthcare professionals and/or patients for the management of adult outpatients with diabetes were eligible. The place of residence, race/ethnicity/culture/language, occupational status, gender/sexual identity, religious affiliations, education level, socioeconomic status, social capital, plus age, disability, sexual preferences and relationships (PROGRESS-Plus) framework was used to identify trials that focused on disadvantaged patient populations, to examine the types of equity-relevant factors that are being considered and to explore temporal trends in equity-relevant diabetes QI trials.ResultsOf the 278 trials that met the inclusion criteria, 95 trials had equity-relevant considerations. These include 64 targeted trials that focused on a disadvantaged population with the aim to improve the health status of that population and 31 general trials that undertook subgroup analyses to assess the extent to which their interventions may have had differential impacts on disadvantaged subgroups. Trials predominantly focused on race/ethnicity, socioeconomic status and place of residence as potential factors for disadvantage in patients receiving diabetes care.ConclusionsLess than one-third of diabetes QI trials included equity-relevant considerations, limiting the relevance and applicability of their data to disadvantaged populations. There is a need for better data collection, reporting, analysis and interventions on the social determinants of health that may influence the health outcomes of patients with diabetes.PROSPERO registration numberCRD42013005165.


2021 ◽  
Vol 36 (Supplement_1) ◽  
Author(s):  
M F Kragh ◽  
J T Lassen ◽  
J Rimestad ◽  
J Berntsen

Abstract Study question Do AI models for embryo selection provide actual implantation probabilities that generalise across clinics and patient demographics? Summary answer AI models need to be calibrated on representative data before providing reasonable agreements between predicted scores and actual implantation probabilities. What is known already AI models have been shown to perform well at discriminating embryos according to implantation likelihood, measured by area under curve (AUC). However, discrimination performance does not relate to how models perform with regards to predicting actual implantation likelihood, especially across clinics and patient demographics. In general, prediction models must be calibrated on representative data to provide meaningful probabilities. Calibration can be evaluated and summarised by “expected calibration error” (ECE) on score deciles and tested for significant lack of calibration using Hosmer-Lemeshow goodness-of-fit. ECE describes the average deviation between predicted probabilities and observed implantation rates and is 0 for perfect calibration. Study design, size, duration Time-lapse embryo videos from 18 clinics were used to develop AI models for prediction of fetal heartbeat (FHB). Model generalisation was evaluated on clinic hold-out models for the three largest clinics. Calibration curves were used to evaluate the agreement between AI-predicted scores and observed FHB outcome and summarised by ECE. Models were evaluated 1) without calibration, 2) calibration (Platt scaling) on other clinics’ data, and 3) calibration on the clinic’s own data (30%/70% for calibration/evaluation). Participants/materials, setting, methods A previously described AI algorithm, iDAScore, based on 115,842 time-lapse sequences of embryos, including 14,644 transferred embryos with known implantation data (KID), was used as foundation for training hold-out AI models for the three largest clinics (n = 2,829;2,673;1,327 KID embryos), such that their data were not included during model training. ECEs across the three clinics (mean±SD) were compared for models with/without calibration using KID embryos only, both overall and within subgroups of patient age (<36,36-40,>40 years). Main results and the role of chance The AUC across the three clinics was 0.675±0.041 (mean±SD) and unaffected by calibration. Without calibration, overall ECE was 0.223±0.057, indicating weak agreements between scores and actual implantation rates. With calibration on other clinics’ data, overall ECE was 0.040±0.013, indicating considerable improvements with moderate clinical variation. As implantation probabilities are both affected by clinical practice and patient demographics, subgroup analysis was conducted on patient age (<36,36-40,>40 years). With calibration on other clinics’ data, age-group ECEs were (0.129±0.055 vs. 0.078±0.033 vs. 0.072±0.015). These calibration errors were thus larger than the overall average ECE of 0.040, indicating poor generalisation across age. Including age as input to the calibration, age-group ECEs were (0.088±0.042 vs. 0.075±0.046 vs. 0.051±0.025), indicating improved agreements between scores and implantation rates across both clinics and age groups. With calibration including age on the clinic’s own data, however, the best calibrations were obtained with ECEs (0.060±0.017 vs. 0.040±0.010 vs. 0.039±0.009). The results indicate that both clinical practice and patient demographics influence calibration and thus ideally should be adjusted for. Testing lack of calibration using Hosmer-Lemeshow goodness-of-fit, only one age-group from one clinic appeared miscalibrated (P = 0.02), whereas all other age-groups from the three clinics were appropriately calibrated (P > 0.10). Limitations, reasons for caution In this study, AI model calibration was conducted based on clinic and age. Other patient metadata such as BMI and patient diagnosis may be relevant to calibrate as well. However, for both calibration and evaluation on the clinic’s own data, a substantiate amount of data for each subgroup is needed. Wider implications of the findings With calibrated scores, AI models can predict actual implantation likelihood for each embryo. Probability estimates are a strong tool for patient communication and clinical decisions such as deciding when to discard/freeze embryos. Model calibration may thus be the next step in improving clinical outcome and shortening time to live birth. Trial registration number This work is partly funded by the Innovation Fund Denmark (IFD) under File No. 7039-00068B and partly funded by Vitrolife A/S


2014 ◽  
Vol 120 (1) ◽  
pp. 173-177 ◽  
Author(s):  
Seunggu J. Han ◽  
Rajiv Saigal ◽  
John D. Rolston ◽  
Jason S. Cheng ◽  
Catherine Y. Lau ◽  
...  

Object Given economic limitations and burgeoning health care costs, there is a need to minimize unnecessary diagnostic laboratory tests. Methods The authors studied whether a financial incentive program for trainees could lead to fewer unnecessary laboratory tests in neurosurgical patients in a large, 600-bed academic hospital setting. The authors identified 5 laboratory tests that ranked in the top 13 of the most frequently ordered during the 2010–2011 fiscal year, yet were least likely to be abnormal or influence patient management. Results In a single year of study, there was a 47% reduction in testing of serum total calcium, ionized calcium, chloride, magnesium, and phosphorus. This reduction led to a savings of $1.7 million in billable charges to health care payers and $75,000 of direct costs to the medical center. In addition, there were no significant negative changes in the quality of care delivered, as recorded in a number of metrics, showing that this cost savings did not negatively impact patient care. Conclusions Engaging physician trainees in quality improvement can be successfully achieved by financial incentives. Through the resident-led quality improvement incentive program, neurosurgical trainees successfully reduced unnecessary laboratory tests, resulting in significant cost savings to both the medical center and the health care system. Similar programs that engage trainees could improve the value of care being provided at other academic medical centers.


2019 ◽  
Vol 6 (Supplement_2) ◽  
pp. S339-S340
Author(s):  
Kathleen R Sheridan ◽  
Joshua Wingfield ◽  
Lauren McKibben ◽  
Natalie Clouse

Abstract Background OPAT is a well-established model of care for the monitoring of patients requiring long-term IV antibiotics1. We have previously reported a reduction in the 30-day readmission rate to our facility for patients managed in our OPAT program. However, little has been published to date regarding outcomes in OPAT patients over 80 years of age 2–3. Our OPAT program was established in 2013. Patients can be discharged to a facility or home to complete their course of antibiotics. Methods We conducted a retrospective chart review of all OPAT patients discharged from our facility from 2015 to 2018. Patients were divided into two groups based on age, <80 (n = 4618) and >80 (n = 562). Results Patient demographics are listed in Table 1. The overall 30-day readmission rate for patients older than 80 was 27.8%. For patients over 80 that had a follow-up ID clinic appointment, the 30-day readmission rate decreased to 15.7%. For patients younger than 80, the 30-day readmission rate was 36.0% with a decrease to 16.2% if patients were evaluated in the outpatient clinic. Figure 1. Staphylococcus Aureus was the predominant organism in both age categories. Vancomycin was the most common antibiotic used in both age groups followed by β lactams. Conclusion In general, patients aged over 80 years were more likely to be discharged to a facility to complete their antibiotic course than younger patients. These patients also were more likely to have other comorbidities. The 30-day readmission rate in each age group was relatively similar. OPAT in patients over age 80 can have similar 30-day readmission rates as for patients less than 80 years of age Disclosures All authors: No reported disclosures.


2020 ◽  
Vol 32 (Supplement_1) ◽  
pp. 84-88 ◽  
Author(s):  
Peter Hibbert ◽  
Faisal Saeed ◽  
Natalie Taylor ◽  
Robyn Clay-Williams ◽  
Teresa Winata ◽  
...  

Abstract This paper examines the principles of benchmarking in healthcare and how benchmarking can contribute to practice improvement and improved health outcomes for patients. It uses the Deepening our Understanding of Quality in Australia (DUQuA) study published in this Supplement and DUQuA’s predecessor in Europe, the Deepening our Understanding of Quality improvement in Europe (DUQuE) study, as models. Benchmarking is where the performances of institutions or individuals are compared using agreed indicators or standards. The rationale for benchmarking is that institutions will respond positively to being identified as a low outlier or desire to be or stay as a high performer, or both, and patients will be empowered to make choices to seek care at institutions that are high performers. Benchmarking often begins with a conceptual framework that is based on a logic model. Such a framework can drive the selection of indicators to measure performance, rather than their selection being based on what is easy to measure. A Donabedian range of indicators can be chosen, including structure, process and outcomes, created around multiple domains or specialties. Indicators based on continuous variables allow organizations to understand where their performance is within a population, and their interdependencies and associations can be understood. Benchmarking should optimally target providers, in order to drive them towards improvement. The DUQuA and DUQuE studies both incorporated some of these principles into their design, thereby creating a model of how to incorporate robust benchmarking into large-scale health services research.


2019 ◽  
Author(s):  
Vy Kim Nguyen ◽  
Adam Kahana ◽  
Julien Heidt ◽  
Katelyn Polemi ◽  
Jacob Kvasnicka ◽  
...  

AbstractBackgroundStark racial disparities in disease incidence among American women remains a persistent public health challenge. These disparities likely result from complex interactions between genetic, social, lifestyle, and environmental risk factors. The influence of environmental risk factors, such as chemical exposure, however, may be substantial and is poorly understood.ObjectivesWe quantitatively evaluated chemical-exposure disparities by race/ethnicity and age in United States (US) women by using biomarker data for 143 chemicals from the National Health and Nutrition Examination Survey (NHANES) 1999-2014.MethodsWe applied a series of survey-weighted, generalized linear models using data from the entire NHANES women population and age-group stratified subpopulations. The outcome was chemical biomarker concentration and the main predictor was race/ethnicity with adjustment for age, socioeconomic status, smoking habits, and NHANES cycle.ResultsThe highest disparities across non-Hispanic Black, Mexican American, Other Hispanic, and other race/multiracial women were observed for pesticides and their metabolites, including 2,5-dichlorophenol, o,p’-DDE, beta-hexachlorocyclohexane, and 2,4-dichlorophenol, along with personal care and consumer product compounds. The latter included parabens, monoethyl phthalate, and several metals, such as mercury and arsenic. Moreover, for Mexican American, Other Hispanic, and non-Hispanic black women, there were several exposure disparities that persisted across age groups, such as higher 2,4- and 2,5-dichlorophenol concentrations. Exposure differences for methyl and propyl parabens, however, were the starkest between non-Hispanic black and non-Hispanic white children with average differences exceeding 4 folds.DiscussionsWe systematically evaluated differences in chemical exposures across women of various race/ethnic groups and across age groups. Our findings could help inform chemical prioritization in designing epidemiological and toxicological studies. In addition, they could help guide public health interventions to reduce environmental and health disparities across populations.


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