Pipeline auto-fixer: removed [[ ]] brackets from links that don't resolve to existing claims in the knowledge base.
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Self-Audit Report: Vida
Date: 2026-03-16 Domain: health Claims audited: 44 Overall status: WARNING
Structural Findings
Schema Compliance: PASS
- 44/44 files have all required frontmatter (type, domain, description, confidence, source, created)
- 44/44 descriptions add meaningful context beyond the title
- 3 files use non-standard extended fields (last_evaluated, depends_on, challenged_by, secondary_domains, tradition) — these are useful extensions but should be documented in schemas/claim.md if adopted collectively
Orphan Ratio: CRITICAL — 74% (threshold: 15%)
- 35 of 47 health claims have zero incoming wiki links from other claims or agent files
- All 12 "connected" claims receive links only from inbox/archive source files, not from the knowledge graph
- This means the health domain is structurally isolated. Claims link out to each other internally, but no other domain or agent file links INTO health claims.
Classification of orphans:
- 15 AI/technology claims — should connect to ai-alignment domain
- 8 business/market claims — should connect to internet-finance, teleological-economics
- 8 policy/structural claims — should connect to mechanisms, living-capital
- 4 foundational claims — should connect to critical-systems, cultural-dynamics
Root cause: Extraction-heavy, integration-light. Claims were batch-extracted (22 on Feb 17 alone) without a corresponding integration pass to embed them in the cross-domain graph.
Link Health: PASS
- No broken wiki links detected in claim bodies
- All
wiki linksresolve to existing files
Staleness: PASS (with caveat)
- All claims created within the last 30 days (domain is new)
- However, 22/44 claims cite evidence from a single source batch (Bessemer State of Health AI 2026). Source diversity is healthy at the domain level but thin at the claim level.
Duplicate Detection: PASS
- No semantic duplicates found
- Two near-pairs worth monitoring:
- "AI diagnostic triage achieves 97% sensitivity..." and "medical LLM benchmark performance does not translate to clinical impact..." — not duplicates but their tension should be explicit
- "PACE demonstrates integrated care averts institutionalization..." and "PACE restructures costs from acute to chronic..." — complementary, not duplicates
Epistemic Findings
Unacknowledged Contradictions: 3 (HIGH PRIORITY)
1. Prevention Economics Paradox
- Claim: "the healthcare attractor state...profits from health rather than sickness" (likely)
- Claim: "PACE restructures costs from acute to chronic spending WITHOUT REDUCING TOTAL EXPENDITURE" (likely)
- PACE is the closest real-world approximation of the attractor state (100% capitation, fully integrated, community-based). It shows quality/outcome improvement but cost-neutral economics. The attractor state thesis assumes prevention is profitable. PACE says it isn't — the value is clinical and social, not financial.
- The attractor claim's body addresses this briefly but the tension is buried, not explicit in either claim's frontmatter.
2. Jevons Paradox vs AI-Enabled Prevention
- Claim: "healthcare AI creates a Jevons paradox because adding capacity to sick care induces more demand" (likely)
- Claim: "the healthcare attractor state" relies on "AI-augmented care delivery" for prevention
- The Jevons claim asserts ALL healthcare AI optimizes sick care. The attractor state assumes AI can optimize prevention. Neither acknowledges the other.
3. Cost Curve vs Attractor State Timeline
- Claim: "the healthcare cost curve bends UP through 2035" (likely)
- Claim: "GLP-1s...net cost impact inflationary through 2035" (likely)
- Claim: attractor state assumes prevention profitability
- If costs are structurally inflationary through 2035, the prevention-first attractor can't achieve financial sustainability during the transition period. This timeline constraint isn't acknowledged.
Confidence Miscalibrations: 3
Overconfident (should downgrade):
- "Big Food companies engineer addictive products by hacking evolutionary reward pathways" — rated
proven, should belikely. The business practices are evidenced but "intentional hacking" of reward pathways is interpretation, not empirically proven via RCT. - "AI scribes reached 92% provider adoption" — rated
proven, should belikely. The 92% figure is "deploying, implementing, or piloting" (Bessemer), not proven adoption. The causal "because" clause is inferred. - "CMS 2027 chart review exclusion targets vertical integration profit arbitrage" — rated
proven, should belikely. CMS intent is inferred from policy mechanics, not explicitly documented.
Underconfident (could upgrade):
- "consumer willingness to pay out of pocket for AI-enhanced care" — rated
likely, could beproven. RadNet study (N=747,604) showing 36% choosing $40 AI premium is large-scale empirical market behavior data.
Belief Grounding: WARNING
- Belief 1 ("healthspan is the binding constraint") — well-grounded in 7+ claims
- Belief 2 ("80-90% of health outcomes are non-clinical") — grounded in
medical care explains 10-20%(proven) but THIN on what actually works to change behavior. Only 1 claim touches SDOH interventions, 1 on social isolation. No claims on community health workers, social prescribing mechanisms, or behavioral economics of health. - Belief 3 ("structural misalignment") — well-grounded in CMS, payvidor, VBC claims
- Belief 4 ("atoms-to-bits") — grounded in wearables + Function Health claims
- Belief 5 ("clinical AI + safety risks") — grounded in human-in-the-loop degradation, benchmark vs clinical impact. But thin on real-world deployment safety data.
Scope Issues: 3
- "AI-first screening viable for ALL imaging and pathology" — evidence covers 14 CT conditions and radiology, not all imaging/pathology modalities. Universal is unwarranted.
- "the physician role SHIFTS from information processor to relationship manager" — stated as completed fact; evidence shows directional trend, not completed transformation.
- "the healthcare attractor state...PROFITS from health" — financial profitability language is stronger than PACE evidence supports. "Incentivizes health" would be more accurate.
Knowledge Gaps (ranked by impact on beliefs)
-
Behavioral health infrastructure mechanisms — Belief 2 depends on non-clinical interventions working at scale. Almost no claims about WHAT works: community health worker programs, social prescribing, digital therapeutics for behavior change. This is the single biggest gap.
-
International/comparative health systems — Zero non-US claims. Singapore 3M, Costa Rica EBAIS, Japan LTCI, NHS England are all in the archive but unprocessed. Limits the generalizability of every structural claim.
-
GLP-1 second-order economics — One claim on market size. Nothing on: adherence at scale, insurance coverage dynamics, impact on bariatric surgery demand, manufacturing bottlenecks, Novo/Lilly duopoly dynamics.
-
Clinical AI real-world safety data — Belief 5 claims safety risks but evidence is thin. Need: deployment accuracy vs benchmark, alert fatigue rates, liability incidents, autonomous diagnosis failure modes.
-
Space health — Zero claims. Cross-domain bridge to Astra is completely unbuilt. Radiation biology, bone density, psychological isolation — all relevant to both space medicine and terrestrial health.
-
Health narratives and meaning — Cross-domain bridge to Clay is unbuilt. Placebo mechanisms, narrative identity in chronic illness, meaning-making as health intervention.
Cross-Domain Health
- Internal linkage: Dense — most health claims link to 2-5 other health claims
- Cross-domain linkage ratio: ~5% (CRITICAL — threshold is 15%)
- Missing connections:
- health ↔ ai-alignment: 15 AI-related health claims, zero links to Theseus's domain
- health ↔ internet-finance: VBC/CMS/GLP-1 economics claims, zero links to Rio's domain
- health ↔ critical-systems: "healthcare is a complex adaptive system" claim, zero links to foundations/critical-systems/
- health ↔ cultural-dynamics: deaths of despair, modernization claims, zero links to foundations/cultural-dynamics/
- health ↔ space-development: zero claims, zero links
Recommended Actions (prioritized)
Critical
- Resolve prevention economics contradiction — Add
challenged_byto attractor state claim pointing to PACE cost evidence. Consider new claim: "prevention-first care models improve quality without reducing total costs during transition, making the financial case dependent on regulatory and payment reform rather than inherent efficiency" - Address Jevons-prevention tension — Either scope the Jevons claim ("AI applied to SICK CARE creates Jevons paradox") or explain the mechanism by which prevention-oriented AI avoids the paradox
- Integration pass — Batch PR adding incoming wiki links from core/, foundations/, and other domains/ to the 35 orphan claims. This is the highest-impact structural fix.
High
- Downgrade 3 confidence levels — Big Food (proven→likely), AI scribes (proven→likely), CMS chart review (proven→likely)
- Scope 3 universals — AI diagnostic triage ("CT and radiology" not "all"), physician role ("shifting toward" not "shifts"), attractor state ("incentivizes" not "profits from")
- Upgrade 1 confidence level — Consumer willingness to pay (likely→proven)
Medium
- Fill Belief 2 gap — Extract behavioral health infrastructure claims from existing archive sources
- Build cross-domain links — Start with health↔ai-alignment (15 natural connection points) and health↔critical-systems (complex adaptive system claim)
This report was generated using the self-audit skill (skills/self-audit.md). First audit of the health domain.