Your browser doesn't support javascript.
loading
Show: 20 | 50 | 100
Results 1 - 4 de 4
Filter
Add more filters










Database
Language
Publication year range
1.
Front Digit Health ; 4: 958663, 2022.
Article in English | MEDLINE | ID: mdl-36405416

ABSTRACT

Predictive models are increasingly being developed and implemented to improve patient care across a variety of clinical scenarios. While a body of literature exists on the development of models using existing data, less focus has been placed on practical operationalization of these models for deployment in real-time production environments. This case-study describes challenges and barriers identified and overcome in such an operationalization for a model aimed at predicting risk of outpatient falls after Emergency Department (ED) visits among older adults. Based on our experience, we provide general principles for translating an EHR-based predictive model from research and reporting environments into real-time operation.

2.
Healthc (Amst) ; 10(1): 100598, 2022 Mar.
Article in English | MEDLINE | ID: mdl-34923354

ABSTRACT

Of the 3 million older adults seeking fall-related emergency care each year, nearly one-third visited the Emergency Department (ED) in the previous 6 months. ED providers have a great opportunity to refer patients for fall prevention services at these initial visits, but lack feasible tools for identifying those at highest-risk. Existing fall screening tools have been poorly adopted due to ED staff/provider burden and lack of workflow integration. To address this, we developed an automated clinical decision support (CDS) system for identifying and referring older adult ED patients at risk of future falls. We engaged an interdisciplinary design team (ED providers, health services researchers, information technology/predictive analytics professionals, and outpatient Falls Clinic staff) to collaboratively develop a system that successfully met user requirements and integrated seamlessly into existing ED workflows. Our rapid-cycle development and evaluation process employed a novel combination of human-centered design, implementation science, and patient experience strategies, facilitating simultaneous design of the CDS tool and intervention implementation strategies. This included defining system requirements, systematically identifying and resolving usability problems, assessing barriers and facilitators to implementation (e.g., data accessibility, lack of time, high patient volumes, appointment availability) from multiple vantage points, and refining protocols for communicating with referred patients at discharge. ED physician, nurse, and patient stakeholders were also engaged through online surveys and user testing. Successful CDS design and implementation required integration of multiple new technologies and processes into existing workflows, necessitating interdisciplinary collaboration from the onset. By using this iterative approach, we were able to design and implement an intervention meeting all project goals. Processes used in this Clinical-IT-Research partnership can be applied to other use cases involving automated risk-stratification, CDS development, and EHR-facilitated care coordination.


Subject(s)
Accidental Falls , Decision Support Systems, Clinical , Accidental Falls/prevention & control , Aged , Emergency Service, Hospital , Humans , Referral and Consultation , Workflow
3.
Med Care ; 57(7): 560-566, 2019 07.
Article in English | MEDLINE | ID: mdl-31157707

ABSTRACT

BACKGROUND: Machine learning is increasingly used for risk stratification in health care. Achieving accurate predictive models do not improve outcomes if they cannot be translated into efficacious intervention. Here we examine the potential utility of automated risk stratification and referral intervention to screen older adults for fall risk after emergency department (ED) visits. OBJECTIVE: This study evaluated several machine learning methodologies for the creation of a risk stratification algorithm using electronic health record data and estimated the effects of a resultant intervention based on algorithm performance in test data. METHODS: Data available at the time of ED discharge were retrospectively collected and separated into training and test datasets. Algorithms were developed to predict the outcome of a return visit for fall within 6 months of an ED index visit. Models included random forests, AdaBoost, and regression-based methods. We evaluated models both by the area under the receiver operating characteristic (ROC) curve, also referred to as area under the curve (AUC), and by projected clinical impact, estimating number needed to treat (NNT) and referrals per week for a fall risk intervention. RESULTS: The random forest model achieved an AUC of 0.78, with slightly lower performance in regression-based models. Algorithms with similar performance, when evaluated by AUC, differed when placed into a clinical context with the defined task of estimated NNT in a real-world scenario. CONCLUSION: The ability to translate the results of our analysis to the potential tradeoff between referral numbers and NNT offers decisionmakers the ability to envision the effects of a proposed intervention before implementation.


Subject(s)
Accidental Falls/statistics & numerical data , Emergency Service, Hospital/statistics & numerical data , Machine Learning , Risk Assessment/methods , Aged , Algorithms , Electronic Health Records , Female , Humans , Male , Retrospective Studies
4.
Proc Natl Acad Sci U S A ; 112(40): 12516-21, 2015 Oct 06.
Article in English | MEDLINE | ID: mdl-26392547

ABSTRACT

Human pluripotent stem cell-based in vitro models that reflect human physiology have the potential to reduce the number of drug failures in clinical trials and offer a cost-effective approach for assessing chemical safety. Here, human embryonic stem (ES) cell-derived neural progenitor cells, endothelial cells, mesenchymal stem cells, and microglia/macrophage precursors were combined on chemically defined polyethylene glycol hydrogels and cultured in serum-free medium to model cellular interactions within the developing brain. The precursors self-assembled into 3D neural constructs with diverse neuronal and glial populations, interconnected vascular networks, and ramified microglia. Replicate constructs were reproducible by RNA sequencing (RNA-Seq) and expressed neurogenesis, vasculature development, and microglia genes. Linear support vector machines were used to construct a predictive model from RNA-Seq data for 240 neural constructs treated with 34 toxic and 26 nontoxic chemicals. The predictive model was evaluated using two standard hold-out testing methods: a nearly unbiased leave-one-out cross-validation for the 60 training compounds and an unbiased blinded trial using a single hold-out set of 10 additional chemicals. The linear support vector produced an estimate for future data of 0.91 in the cross-validation experiment and correctly classified 9 of 10 chemicals in the blinded trial.


Subject(s)
Cell Differentiation , Embryonic Stem Cells/cytology , Neural Stem Cells/cytology , Pluripotent Stem Cells/cytology , Brain/cytology , Brain/growth & development , Brain/metabolism , Cell Communication/drug effects , Cell Communication/genetics , Cells, Cultured , Culture Media, Serum-Free/pharmacology , Embryonic Stem Cells/drug effects , Embryonic Stem Cells/metabolism , Endothelial Cells/cytology , Endothelial Cells/drug effects , Endothelial Cells/metabolism , Gene Expression Regulation, Developmental , Gene Ontology , Humans , Hydrogels/pharmacology , Macrophages/cytology , Macrophages/drug effects , Macrophages/metabolism , Mesenchymal Stem Cells/cytology , Mesenchymal Stem Cells/drug effects , Mesenchymal Stem Cells/metabolism , Microglia/cytology , Microglia/drug effects , Microglia/metabolism , Models, Biological , Neural Stem Cells/drug effects , Neural Stem Cells/metabolism , Neurogenesis/drug effects , Neurogenesis/genetics , Pluripotent Stem Cells/drug effects , Pluripotent Stem Cells/metabolism , Polyethylene Glycols/pharmacology , Support Vector Machine , Tissue Engineering/methods , Xenobiotics/classification , Xenobiotics/pharmacology
SELECTION OF CITATIONS
SEARCH DETAIL
...