Cohort and segment chronic disease patient populations using clinical registries, claims data, and risk models. Use when building disease-specific cohorts, stratifying patients by severity, analyzing chronic condition prevalence, or preparing population segments for care management programs.
This skill segments patient populations into clinically meaningful chronic disease cohorts using diagnosis codes, lab values, pharmacy claims, and utilization patterns. It applies CMS Chronic Conditions Warehouse (CCW) algorithms, HCC groupings, and clinical severity staging to produce actionable patient segments for care management, quality reporting, and risk stratification.
| Input | Description | Format |
|---|---|---|
| Claims/encounter data |
| Diagnosis codes (ICD-10-CM), procedure codes, revenue codes |
| Structured tables |
| Enrollment/eligibility | Coverage periods, LOB, plan type | Member-month records |
| Pharmacy claims | NDC codes, days supply, therapeutic class | Prescription records |
| Lab results (optional) | HbA1c, eGFR, BNP, lipid panels | Discrete lab values |
| Demographics | Age, sex, zip code, race/ethnicity (if available) | Patient master |
Apply CMS CCW reference algorithms or custom clinical logic. Each condition requires:
For HCC-based grouping, map ICD-10 codes through the CMS-HCC v28 model crosswalk to assign HCC categories and hierarchical condition interactions.
Within each condition cohort, assign clinical severity tiers:
Cross-tabulate conditions to detect clinically significant comorbidity clusters:
Calculate Elixhauser or Charlson comorbidity indices as supplementary complexity scores.
Overlay utilization data on clinical cohorts:
Produce a cohort specification document including:
Cohort Report:
├── Cohort Summary Table (condition, N, prevalence, avg RAF, avg cost PMPM)
├── Severity Distribution (tier counts and percentages per condition)
├── Comorbidity Matrix (co-occurrence rates for top 10 conditions)
├── Rising Risk Segment (patients meeting escalation criteria)
├── Provider Attribution Summary (panel sizes, condition density)
├── Geographic Heat Map Data (prevalence by zip/HSA)
└── Cohort Definition Appendix (full algorithm specification)
Compare observed prevalence against:
| Dimension | Low | Medium | High |
|---|---|---|---|
| Clinical severity | Controlled metrics | Moderate decompensation | Uncontrolled / complications |
| Utilization intensity | PCP-only engagement | Specialist referrals | ED/IP heavy |
| Cost trajectory | Stable or declining | Moderate growth | Rapid escalation |
| Comorbidity burden | 0-1 chronic conditions | 2-3 conditions | 4+ conditions |
Example 1 — Diabetes Cohort for MA Plan Build a Type 2 diabetes cohort for a 45,000-member Medicare Advantage plan. Apply CCW diabetes algorithm (ICD-10 E11.x, look-back 24 months, ≥ 2 outpatient claims). Layer HbA1c severity staging. Identify 5,400 diabetics (12% prevalence). Segment into controlled (58%), moderate (28%), uncontrolled (14%). Flag 756 members with diabetic CKD overlap for nephrology co-management.
Example 2 — Multi-Condition Rising Risk Across a 200,000-member commercial population, identify members with ≥ 2 chronic conditions whose cost trajectory has increased > 20% over the prior 6 months while severity indicators worsen. Produce a list of 3,200 rising-risk members for care management outreach prioritization.
This skill processes Protected Health Information (PHI). All outputs must comply with HIPAA Privacy and Security Rules. Apply minimum necessary standards, de-identify data where feasible using Safe Harbor or Expert Determination methods (45 CFR §164.514), and ensure all patient-level outputs are transmitted and stored in accordance with organizational BAA and data governance policies. Never include direct identifiers (name, SSN, MRN) in analytical outputs without explicit authorization.