- LegendEHR Predictive Decision Support Intervention
- Transparency Disclosure Table
- Use Case: Psoriasis Flare Prediction
- Purpose / Intended Use
- Target Population
- Input Data Sources
- Model Type / Methodology
- Validation / Performance Metrics
- Fairness / Bias Assessment
- Limitations
- Update / Maintenance Frequency
- Human Oversight
- Transparency of Logic
- Risk Management
- Governance / Accountability
- Contact for Feedback / Issues
- Transparency Disclosure Table
LegendEHR Predictive Decision Support Intervention #
Transparency Disclosure Table #
Use Case: Psoriasis Flare Prediction #
(Prepared for ONC §170.315(b)(11) Certification)
Predictive DSI Transparency Attributes
Purpose / Intended Use #
Predicts likelihood of a psoriasis flare within 30 days to support proactive treatment planning. Not a diagnostic tool; intended as a clinical aid.
Target Population #
Adult patients (18+) with a confirmed psoriasis diagnosis.
Input Data Sources #
EHR data: demographics, diagnosis codes, medication adherence, lab values (e.g., CRP), lifestyle factors (smoking, BMI), prior flare history.
Training Data
Historical de‑identified patient records from dermatology clinics (2023–2025), ~500 patient encounters
Model Type / Methodology #
Gradient boosting machine learning model trained on structured EHR data.
Validation / Performance Metrics #
AUROC: 0.82; Sensitivity: 78%; Specificity: 75%. Validated on independent dataset of 10,000 patients.
Fairness / Bias Assessment #
Tested across subgroups (age, gender, Fitzpatrick skin types I–VI). Performance consistent across groups; slight sensitivity drop in skin type V–VI addressed by rebalancing training data.
Limitations #
Predictions may be less accurate for patients with rare comorbidities or incomplete medication adherence data. Not validated in pediatric populations.
Update / Maintenance Frequency #
Model retrained annually with most recent 2 years of data; knowledge base reviewed quarterly.
Human Oversight #
Final treatment decisions remain with the dermatologist. Alerts can be overridden or dismissed.
Transparency of Logic #
Risk score generated from weighted factors (recent flare history, biologic adherence, inflammatory markers). Clinician can view top contributing factors per prediction.
Risk Management #
Alerts flagged as “advisory” only; no automatic treatment changes. Providers must confirm before acting.
Governance / Accountability #
Maintained by LegendEHR Clinical AI Team; oversight by Medical Advisory Board.
Contact for Feedback / Issues #
Support portal: support@legendehr.com — clinicians can report anomalies, request clarifications, or suggest improvements.