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1.
Appl Clin Inform ; 12(4): 800-807, 2021 08.
Article in English | MEDLINE | ID: mdl-34470056

ABSTRACT

BACKGROUND: The American College of Obstetricians and Gynecologists (ACOG) provides numerous narrative documents containing formal recommendations and additional narrative guidance within the text. These guidelines are not intended to provide a complete "care pathway" for patient management, but these elements of guidance can be useful for clinical decision support (CDS) in obstetrical and gynecologic care and could be exposed within electronic health records (EHRs). Unfortunately, narrative guidelines do not easily translate into computable CDS guidance. OBJECTIVE: This study aimed to describe a method of translating ACOG clinical guidance into clear, implementable items associated with specific obstetrical problems for integration into the EHR. METHODS: To translate ACOG clinical guidance in Obstetrics into implementable CDS, we followed a set of steps including selection of documents, establishing a problem list, extraction and classification of recommendations, and assigning tasks to those recommendations. RESULTS: Our search through ACOG clinical guidelines produced over 500 unique documents. After exclusions, and counting only sources relevant to obstetrics, we used 245 documents: 38 practice bulletins, 113 committee opinions, 16 endorsed publications, 1 practice advisory, 2 task force and work group reports, 2 patient education, 2 obstetric care consensus, 60 frequently asked questions (FAQ), 1 women's health care guidelines, 1 Prolog series, and 9 others (non-ACOG). Recommendations were classified as actionable (n = 576), informational (n = 493), for in-house summary (n = 124), education/counseling (n = 170), policy/advocacy (n = 33), perioperative care (n = 4), delivery recommendations (n = 50), peripartum care (n = 13), and non-ACOG (n = 25). CONCLUSION: We described a methodology of translating ACOG narrative into a semi-structured format that can be more easily applied as CDS in the EHR. We believe this work can contribute to developing a library of information within ACOG that can be continually updated and disseminated to EHR systems for the most optimal decision support. We will continue documenting our process in developing executable code for decision support.


Subject(s)
Obstetrics , Female , Humans , Point-of-Care Systems , Pregnancy , Research Design , United States
3.
AMIA Annu Symp Proc ; 2020: 687-696, 2020.
Article in English | MEDLINE | ID: mdl-33936443

ABSTRACT

Clinical Practice Guidelines (CPG), meant to express best practices in healthcare, are commonly presented as narrative documents communicating care processes, decision making, and clinical case knowledge. However, these narratives in and of themselves lack the specificity and conciseness in their use of language to unambiguously express quality clinical recommendations. This impacts the confidence of clinicians, uptake, and implementation of the guidance. As important as the quality of the clinical knowledge articulated, is the quality of the language(s) and methods used to express the recommendations. In this paper, we propose the BPM+ family of modeling languages as a potential solution to this challenge. We present a formalized process and framework for translating CPGs into a standardized BPM+ model. Further, we discuss the features and characteristics of modeling languages that underpin the quality in expressing clinical recommendations. Using an existing CPG, we defined a systematic series of steps to deconstruct the CPG into knowledge constituents, assign CPG knowledge constituents to BPM+ elements, and re-assemble the parts into a clear, precise, and executable model. Limitations of both the CPG and the current BPM+ languages are discussed.


Subject(s)
Practice Guidelines as Topic , Programming Languages , Computer Simulation , Delivery of Health Care , Humans
4.
Appl Clin Inform ; 10(5): 935-943, 2019 10.
Article in English | MEDLINE | ID: mdl-31860113

ABSTRACT

BACKGROUND: The Centers for Disease Control and Prevention (CDC) produced a 72-page document titled "U.S. Selective Practice Recommendations for Contraceptive Use" in 2016. This document contains the medical eligibility criteria (MEC) for contraceptive initiation or continuation based on a patient's current health status. Notations such as Business Process Model and Notation (BPMN) and Decision Model and Notation (DMN) might be useful to model such recommendations. OBJECTIVE: Our objective was to use BPMN and DMN to model and standardize the processes and decisions involved in initiating birth control according to the CDC's MEC for birth control initiation. This model could then be incorporated into an electronic health records system or other digital platform. METHODS: Medical terminology, processes, and decisions were modeled in coordination with the CDC to ensure correctness. Challenges in terminology bindings were identified and categorized. RESULTS: A model was successfully produced. Integration of clearly defined data elements proved to be the biggest challenge. CONCLUSION: BPMN and DMN have strengths and weaknesses when modeling medical processes; however, they can be used to successfully create models for clinical pathways.


Subject(s)
Contraception/statistics & numerical data , Critical Pathways/statistics & numerical data , Models, Statistical , Centers for Disease Control and Prevention, U.S. , Humans , United States
5.
Anesthesiology ; 131(2): 238-253, 2019 08.
Article in English | MEDLINE | ID: mdl-31094750

ABSTRACT

BACKGROUND: The number of pregnancy-related deaths and severe maternal complications continues to rise in the United States, and the quality of obstetrical care across U.S. hospitals is uneven. Providing hospitals with performance feedback may help reduce the rates of severe complications in mothers and their newborns. The aim of this study was to develop a risk-adjusted composite measure of severe maternal morbidity and severe newborn morbidity based on administrative and birth certificate data. METHODS: This study was conducted using linked administrative data and birth certificate data from California. Hierarchical logistic regression prediction models for severe maternal morbidity and severe newborn morbidity were developed using 2011 data and validated using 2012 data. The composite metric was calculated using the geometric mean of the risk-standardized rates of severe maternal morbidity and severe newborn morbidity. RESULTS: The study was based on 883,121 obstetric deliveries in 2011 and 2012. The rates of severe maternal morbidity and severe newborn morbidity were 1.53% and 3.67%, respectively. Both the severe maternal morbidity model and the severe newborn models exhibited acceptable levels of discrimination and calibration. Hospital risk-adjusted rates of severe maternal morbidity were poorly correlated with hospital rates of severe newborn morbidity (intraclass correlation coefficient, 0.016). Hospital rankings based on the composite measure exhibited moderate levels of agreement with hospital rankings based either on the maternal measure or the newborn measure (κ statistic 0.49 and 0.60, respectively.) However, 10% of hospitals classified as average using the composite measure had below-average maternal outcomes, and 20% of hospitals classified as average using the composite measure had below-average newborn outcomes. CONCLUSIONS: Maternal and newborn outcomes should be jointly reported because hospital rates of maternal morbidity and newborn morbidity are poorly correlated. This can be done using a childbirth composite measure alongside separate measures of maternal and newborn outcomes.


Subject(s)
Birth Certificates , Delivery, Obstetric/statistics & numerical data , Infant Mortality , Infant, Newborn, Diseases/epidemiology , Maternal Mortality , Puerperal Disorders/epidemiology , Adolescent , Adult , California , Female , Humans , Infant , Infant, Newborn , Middle Aged , Pregnancy , Young Adult
6.
Appl Clin Inform ; 10(1): 87-95, 2019 01.
Article in English | MEDLINE | ID: mdl-30727002

ABSTRACT

OBJECTIVE: This article describes lessons learned from the collaborative creation of logical models and standard Health Level Seven (HL7) Fast Healthcare Interoperability Resources (FHIR) profiles for family planning and reproductive health. The National Health Service delivery program will use the FHIR profiles to improve federal reporting, program monitoring, and quality improvement efforts. MATERIALS AND METHODS: Organizational frameworks, work processes, and artifact testing to create FHIR profiles are described. RESULTS: Logical models and FHIR profiles for the Family Planning Annual Report 2.0 dataset have been created and validated. DISCUSSION: Using clinical element models and FHIR to meet the needs of a real-world use case has been accomplished but has also demonstrated the need for additional tooling, terminology services, and application sandbox development. CONCLUSION: FHIR profiles may reduce the administrative burden for the reporting of federally mandated program data.


Subject(s)
Health Information Interoperability , Public Health , Humans , Intersectoral Collaboration , Public Health/standards , Reference Standards , Reproductive Health/standards , Time Factors
7.
Obstet Gynecol ; 129(5): 934-938, 2017 05.
Article in English | MEDLINE | ID: mdl-28383384

ABSTRACT

Advancing the quality and safety of maternity care should be data-driven. Defining a standard set of clinical data elements, across electronic health record platforms and facilities, could accelerate performance measurement, benchmarking, and identification of better practices. In 2014, the American College of Obstetricians and Gynecologists and the American Society of Anesthesiologists launched the Maternal Quality Improvement Program, a data-driven national clinical registry for maternity care. Having an agreed-on set of discrete data elements related to labor and delivery will set the stage for analysis of this care. Through the use of clinical performance measures and data quality metrics, the Maternal Quality Improvement Program will provide an opportunity for health care providers to better understand the overall quality and safety of the maternity care provided within their institution.


Subject(s)
Maternal Health Services/standards , Midwifery/organization & administration , Obstetrics and Gynecology Department, Hospital/organization & administration , Prenatal Care/standards , Registries , Female , Humans , Pregnancy , Pregnancy Outcome , Quality Improvement , United States
8.
J Obstet Gynecol Neonatal Nurs ; 46(2): 284-291, 2017.
Article in English | MEDLINE | ID: mdl-27986612

ABSTRACT

The amount of data generated by health information technology systems is staggering, and using those data to make meaningful care decisions that improve patient outcomes is difficult. The purpose of this article is to describe the Maternal Health Information Initiative, a multidisciplinary group of maternity care stakeholders charged with standardizing maternity care data. Complementary strategies that practicing clinicians can use to support this initiative and improve the usability of maternity care data are provided.


Subject(s)
Health Information Interoperability/standards , Maternal Health Services , Maternal Health/standards , Medical Informatics/methods , Female , Health Information Systems/organization & administration , Health Information Systems/standards , Humans , Maternal Health Services/organization & administration , Maternal Health Services/standards , Pregnancy , Quality Improvement
9.
Am J Obstet Gynecol ; 215(3): 346.e1-7, 2016 Sep.
Article in English | MEDLINE | ID: mdl-27131587

ABSTRACT

BACKGROUND: Stage I twin-twin transfusion syndrome presents a management dilemma. Intervention may lead to procedure-related complications while expectant management risks deterioration. Insufficient data exist to inform decision-making. OBJECTIVE: The aim of this retrospective observational study was to describe the natural history of stage I twin-twin transfusion syndrome, to assess for predictors of disease behavior, and to compare pregnancy outcomes after intervention at stage I vs expectant management. STUDY DESIGN: Ten North American Fetal Therapy Network centers submitted well-documented cases of stage I twin-twin transfusion syndrome for analysis. Cases were retrospectively divided into 3 management strategies: those managed expectantly, those who underwent amnioreduction at stage I, and those who underwent laser therapy at stage I. Outcomes were categorized as no survivors, 1 survivor, 2 survivors, or at least 1 survivor to live birth, and good (twin live birth ≥30.0 weeks), mixed (single fetal demise or delivery between 26.0-29.9 weeks), and poor (double fetal demise or delivery <26.0 weeks) pregnancy outcomes. Outcomes were analyzed by initial management strategy. RESULTS: A total of 124 cases of stage I twin-twin transfusion syndrome were studied. In all, 49 (40%) cases were managed expectantly while 30 (24%) underwent amnioreduction and 45 (36%) underwent laser therapy at stage I. The overall fetal mortality rate was 20.2% (50 of 248 fetuses). Of those managed expectantly, 11 patients regressed (22%), 4 remained stage I (8%), 29 advanced in stage (60%), and 5 experienced spontaneous previable preterm birth (10%) during observation. The mean number of days from diagnosis of stage I to a change in status (progression, regression, loss, or delivery) was 11.1 (SD 14.3) days. Intervention by amniocentesis or laser therapy was associated with a lower risk of fetal loss (P = .01) than expectant management. The unadjusted odds of poor outcome were 0.33 (95% confidence interval, 0.09-01.20), for amnioreduction and 0.26 (95% confidence interval, 0.09-0.77) for laser therapy vs expectant management. Adjusting for nulliparity, recipient maximum vertical pocket, gestational age at diagnosis, and placenta location had negligible effect. Both amnioreduction and laser therapy at stage I decreased the likelihood of no survivors (odds ratio, 0.11; 95% confidence interval, 0.02-0.68 and odds ratio, 0.07; 95% confidence interval, 0.01-0.37, respectively). Only laser therapy, however, was protective against poor outcome in our data (odds ratio, 0.29; 95% confidence interval, 0.07-1.30 for amnioreduction vs odds ratio, 0.12, 95% confidence interval, 0.03-0.44 for laser), although the estimate for amnioreduction suggests a protective effect. CONCLUSION: Stage I twin-twin transfusion syndrome was associated with substantial fetal mortality. Spontaneous resolution was observed, although the majority of expectantly managed cases progressed. Progression was associated with a worse prognosis. Both amnioreduction and laser therapy decreased the chance of no survivors, and laser was particularly protective against poor outcome independent of multiple factors. Further studies are justified to corroborate these findings and to further define risk stratification and surveillance strategies for stage I disease.


Subject(s)
Delivery, Obstetric/statistics & numerical data , Fetofetal Transfusion/mortality , Fetofetal Transfusion/therapy , Laser Therapy/statistics & numerical data , Pregnancy Reduction, Multifetal/statistics & numerical data , Abortion, Induced/statistics & numerical data , Adult , Clinical Decision-Making , Female , Fetal Death , Fetofetal Transfusion/classification , Fetoscopy , Gestational Age , Humans , Live Birth/epidemiology , North America/epidemiology , Pregnancy , Premature Birth/epidemiology , Retrospective Studies
10.
Obstet Gynecol ; 121(4): 734-740, 2013 Apr.
Article in English | MEDLINE | ID: mdl-23635672

ABSTRACT

OBJECTIVE: To estimate whether text messages sent to ambulatory pregnant women could improve influenza vaccine uptake. METHODS: Obstetric patients at less than 28 weeks of gestation were enrolled in a randomized controlled trial from an academic center's outpatient clinic during two consecutive influenza seasons (2010-2011 and 2011-2012). Potential participants were excluded if they had already received that season's influenza vaccine. Participants were randomized to receive 12 weekly text messages encouraging general pregnancy health (General) or general pregnancy health plus influenza vaccination (Flu). Study participants completed preintervention and postintervention surveys about preventive health beliefs. Influenza vaccine receipt was assessed using prenatal record review. The study was powered to detect a 55% increase in the vaccination rate in the intervention group. RESULTS: Two hundred sixteen women were enrolled, 204 of whom were available for intention-to-treat analysis (n=100 General, n=104 Flu). Participants were primarily African American (66%) with low educational attainment (90% equivalent to or less than high school education) and predominantly with either public or no insurance (88%). The overall influenza vaccination rate among participants was 32% with no difference between participants in the General (31% [n=31]) compared with Flu (33% [n=34]) groups (difference 1.7%, 95% confidence interval -11.1 to 14.5%). CONCLUSION: Text messaging prompts were not effective at increasing influenza vaccination rates among a low-income, urban, ambulatory obstetric population. Ongoing efforts are needed to improve vaccine uptake among pregnant women unsure about or unwilling to receive influenza vaccination. CLINICAL TRIAL REGISTRATION: ClinicalTrials.gov, www.clinicaltrials.gov, NCT01248520. LEVEL OF EVIDENCE: : I.


Subject(s)
Influenza Vaccines , Influenza, Human/prevention & control , Pregnancy Complications, Infectious/prevention & control , Text Messaging , Vaccination/statistics & numerical data , Adolescent , Adult , Female , Humans , Middle Aged , Pregnancy , Single-Blind Method , Young Adult
11.
Am J Obstet Gynecol ; 204(6): 461-5, 2011 Jun.
Article in English | MEDLINE | ID: mdl-21144494

ABSTRACT

Decision support (DS) may help to improve patient safety by helping clinicians improve the evaluation, assessment, and treatment of patients. By providing best practice guidelines at critical decision points, errors can be prevented. Location of these decision points varies in different care environments, therefore DS must be customizable. Being able to customize the design, functionality, and clinical context of how a DS rule behaves may help each unique clinical environment improve performance. The ability to review aggregate data on the behavior of both the DS system and the providers will be necessary to further adapt the DS rule to the setting. A robust tool set and ongoing institutional engagement are critical elements for a successful DS implementation.


Subject(s)
Decision Support Systems, Clinical , Safety , Electronic Health Records , Humans , Medical Informatics
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