| Literature DB >> 33624765 |
Sarah Collins Rossetti1,2, Chris Knaplund1, Dave Albers1,3, Patricia C Dykes4,5, Min Jeoung Kang4,5, Tom Z Korach4,5, Li Zhou4,5, Kumiko Schnock4,5, Jose Garcia4, Jessica Schwartz2, Li-Heng Fu1, Jeffrey G Klann5, Graham Lowenthal4, Kenrick Cato2.
Abstract
OBJECTIVE: There are signals of clinicians' expert and knowledge-driven behaviors within clinical information systems (CIS) that can be exploited to support clinical prediction. Describe development of the Healthcare Process Modeling Framework to Phenotype Clinician Behaviors for Exploiting the Signal Gain of Clinical Expertise (HPM-ExpertSignals).Entities:
Keywords: clinical informatics; conceptual framework; electronic health records; predictive modeling
Year: 2021 PMID: 33624765 PMCID: PMC8200261 DOI: 10.1093/jamia/ocab006
Source DB: PubMed Journal: J Am Med Inform Assoc ISSN: 1067-5027 Impact factor: 4.497
Figure 1.Approach to iterative conceptual framework development leveraging thematic analyses of processes and findings from data driven modeling and simulation testing for triangulation of themes. Thematic analysis of the iterative processes and contextual information that informed development of the Communicating Narrative Concerns Entered by Registered Nurses (CONCERN) model were triangulated with thematic analysis of clinical subject matter expert perceptions of the CONCERN model during simulation testing. These triangulated findings were used to define a conceptual framework for phenotyping clinician behaviors to detect and leverage signals of clinician expertise for prediction of patient trajectories.
CONCERN model features
| Features | |||
|---|---|---|---|
| Measurements and Temporal | Clustered | Note Content | Clustered |
| Heart rate measurement | Yes | Abdominal pain | No |
| Respiratory rate measurement | Yes | Abnormal heart rhythm | No |
| Blood pressure measurement | Yes | Abnormal mental state | No |
| Temperature measurement | Yes | Abnormal rate, rhythm, depth and effort of respirations | No |
| SpO2 measurement | Yes | Abnormal temperature | No |
| All 5 vital measurements taken at same time | Yes | Back pain | No |
| Only 1 vital measurement taken | Yes | Chest pain | No |
| Heart rate comment | Yes | Communication problem | No |
| Respiratory rate comment | Yes | Diagnosis related with infection | No |
| Blood pressure comment | Yes | Deficit of circulation | No |
| Temperature comment | Yes | Fall risk | No |
| SpO2 comment | Yes | Fluid volume alteration | No |
| PRN medication administered | Yes | General concern | No |
| Scheduled medication withheld | Yes | Headache | No |
| Nursing note written | Yes | Improper renal function | No |
| Month | No | Medication related with infection | No |
| Day of week | No | Monitoring | No |
| Hour | No | Mood disorder | No |
| Patient Hour | No | Musculoskeletal pain | No |
| Pain level | No | ||
| Violence gesture | No | ||
CONCERN: Communicating Narrative Concerns Entered by Registered Nurses; PRN: as needed; SpO2: oxygen saturation.
Whether the feature is clustered into times it is commonly measured or uncommonly measured.
Feature is aggregated over the past 12 hours.
Figure 2.Time-varying survival regression. Forest plot of the covariates used in Cox time-varying proportional hazards model and associated statistics. HR: hazard ratio; MEWS: Modified Early Warning Score; NEWS: National Early Warning Score.
Figure 3.Comparison of log likelihood ratios at various hours before event. The likelihood ratio, defined as L(x,h) = P(x | patient has an event h hours in the future) / P(x | patient does not have an event h hours in the future). For example, L(‘CONCERN score = yellow’, 6) quantifies how well the Communicating Narrative Concerns Entered by Registered Nurses (CONCERN) algorithm separate the probability measures induced by whether the patient has an event 6 hours in the future after observing a “yellow” score. Larger values represent more weight given to the numerator vs the denominator, while smaller values represent more weight given to the denominator. MEWS: Modified Early Warning Score; NEWS: National Early Warning Score.
Themes derived through CONCERN model simulation testing
| Theme | Subtheme |
|---|---|
| Clinical decision making | (+) Use of model drives improved critical thinking |
| (+) Use of model drives improved patient prioritization | |
| (+) Use of model drives improved team-based care and communication | |
| (+) Features from the model synthesize the chart to decrease information overload | |
| Paradigm shift | (+) Model is an innovative method for recognizing increased patient risk above baseline |
| (-) Model does not use clinical data values | |
| Believability | (+) Model’s concerning surveillance patterns reflect clinical practice |
| (+) Model’s use of nursing documentation validates the value of nurses’ documentation efforts | |
| CIS interactions | (-) Missing and back-charted EHR data may limit predictions |
| (-) Model’s focus on CIS interactions may perpetuate an over-reliance on clinical systems and decreased patient interactions |
CIS: clinical information systems; CONCERN: Communicating Narrative Concerns Entered by Registered Nurses; EHR: electronic health record.
(+) indicates a positively perceived theme by simulation testing participants and (-) indicates a negatively perceived theme by simulation testing participants.
Figure 4.Healthcare Process Modeling Framework to Phenotype Clinician Behaviors for Exploiting the Signal Gain of Clinical Expertise (HPM-ExpertSignals). The framework is focused on information that can be mined from clinical data structures, is generated by clinician processes, and is driven by knowledge-based behaviors in order to identify features from user interaction with clinical systems, which are patterns of clinical behaviors and can be interpreted and used in predictions.
Main challenges in measuring clinician expertise and analyzing CIS interactions
| Challenges in measuring clinician expertise |
| 1. Expert judgments may derive from unconscious or unrecorded observations. |
| 2. Experts are often unable to articulate guiding cues. |
| 3. Differentiating expert-driven actions from inexperienced actions is not always possible. |
| 4. Expertise changes overtime and is context dependent. |
| Challenges in analyzing CIS interactions |
| 1. Health professionals’ care processes include shared |
| 2. Factors that modify system interactions (eg, configurations, standards of care, policies) vary within and across institutions. |
| 3. Individuals do not always behave rationally—noise and diversity exist among the consistency of clinical processes. |
| 4. All possible actions and best practices are not known or captured. |
CIS: clinical information systems.