178 lines
16 KiB
Markdown
178 lines
16 KiB
Markdown
---
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status: seed
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type: musing
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stage: developing
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created: 2026-03-19
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last_updated: 2026-03-19
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tags: [ai-accelerated-health, belief-disconfirmation, verification-bandwidth, clinical-ai, glp1, keystone-belief, cross-domain-synthesis]
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---
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# Research Session: Does AI-Accelerated Biology Resolve the Healthspan Constraint?
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## Research Question
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**If AI is compressing biological discovery timelines 10-20x (Amodei: 50-100 years of biological progress in 5-10 years), does this transform healthspan from a civilization's binding constraint into a temporary bottleneck being rapidly resolved — and what actually becomes the binding constraint?**
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## Why This Question
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**Keystone belief disconfirmation target** — the highest-priority search type.
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Belief 1 is the existential premise: "Healthspan is civilization's binding constraint, and we are systematically failing at it in ways that compound." If AI is about to solve the health problem in 5-10 years, this premise becomes: (a) less urgent, (b) time-bounded rather than structural, and (c) potentially less distinctive as Vida's domain thesis.
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The sources triggering this question:
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- Amodei "Machines of Loving Grace" (Theseus-processed, health cross-domain flag): "50-100 years of biological progress in 5-10 years. Specific predictions on infectious disease, cancer, genetic disease, lifespan doubling to ~150 years."
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- Noah Smith (Theseus-processed): "Ginkgo Bioworks + GPT-5: 150 years of protein engineering compressed to weeks"
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- Existing KB claim: "AI compresses drug discovery timelines by 30-40% but has not yet improved the 90% clinical failure rate"
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- Catalini et al.: verification bandwidth — the ability to validate and audit AI outputs — is the NEW binding constraint, not intelligence itself
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**What would change my mind:**
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- If AI acceleration addresses BOTH the biological AND behavioral/social components of health → Belief 1 is time-bounded and less critical
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- If clinical deskilling from AI reliance produces worse outcomes than the AI helps → the transition itself becomes the health hazard
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- If verification/trust infrastructure fails to scale alongside AI capability → new category of health harms emerge from AI at scale
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## Belief Targeted for Disconfirmation
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**Belief 1**: Healthspan is civilization's binding constraint.
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**Specific disconfirmation target**: If AI-accelerated biology (drug discovery, protein engineering, cancer treatment) can compress 50-100 years of progress into 5-10 years, then:
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1. The biological research bottleneck (part of the "clinical 10-20%") resolves rapidly
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2. What remains binding? The behavioral/social/environmental determinants (80-90%)? Or something new?
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**The disconfirmation search**: Read the Amodei health predictions carefully, cross-reference with the Catalini verification bandwidth argument, and ask whether AI acceleration addresses what actually constrains health — or accelerates only the minority of the problem.
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## What I Found
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### The Core Discovery: AI Accelerates the 10-20%, Not the 80-90%
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Reading the Amodei thesis through Vida's health lens reveals a crucial asymmetry that Theseus didn't extract:
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**What AI-accelerated biology actually addresses:**
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- Drug discovery timelines: -30-40% (confirmed, existing KB claim)
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- Protein engineering: 150 years → weeks (Noah Smith / Ginkgo + GPT-5 example)
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- Predictive modeling for novel therapies (mRNA, gene editing)
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- Real-world data analysis revealing unexpected therapeutic effects (Aon: GLP-1 → 50% ovarian cancer reduction in 192K-patient claims dataset)
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- Amodei's "compressed century" predictions: infectious disease elimination, cancer halving, genetic disease treatments
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**What AI-accelerated biology does NOT address:**
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- The 80-90% non-clinical determinants: behavior, environment, social connection, meaning
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- Loneliness mortality risk (15 cigarettes/day equivalent) — not a biology problem
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- Deaths of despair (concentrated in regions damaged by economic restructuring) — not a biology problem
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- Food environment and ultra-processed food addiction — partly biology but primarily environment/regulation
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- Mental health supply gap — not a biology problem; primarily workforce and narrative infrastructure
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**Amodei's own "complementary factors" framework explains why:**
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Amodei argues that marginal returns to AI intelligence are bounded by five factors: physical world speed, data needs, intrinsic complexity, human constraints, physical laws. This 10-20x (not 100-1000x) acceleration applies to biological science. But:
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- BEHAVIOR CHANGE is subject to human constraints (Amodei's Factor 4) — AI cannot force behavior change
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- SOCIAL STRUCTURES dissolve from economic forces (modernization, market relationships) — not addressable by biological discovery
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- MEANING and PURPOSE — the narrative infrastructure of wellbeing — are among the most intrinsically complex human systems
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**The disconfirmation result:** Belief 1 SURVIVES. AI accelerates the 10-20% clinical/biological side of the health equation, making that component less binding. But this doesn't address the 80-90% non-clinical determinants. The binding constraint's COMPOSITION changes — biological research bottleneck weakens; behavioral/social/infrastructure bottleneck remains and may become RELATIVELY more binding as the biological constraint resolves.
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### A New Complicating Factor: The Verification Gap Creates New Health Harms
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The Catalini "Simple Economics of AGI" framework applies directly to health AI and creates a genuinely new concern for Belief 1:
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**Verification bandwidth as the health AI bottleneck:**
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- AI can generate clinical insights faster than physicians can verify them
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- OpenEvidence: 20M clinical consultations/month (March 2026), USMLE 100% score, $12B valuation — but ZERO peer-reviewed outcomes data at this scale
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- 44% of physicians remain concerned about accuracy/misinformation despite heavy use
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- Hosanagar deskilling evidence: physicians get WORSE at polyp detection when AI is removed (28% → 22% adenoma detection) — same pattern as aviation pre-FAA mandate
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**The clinical AI paradox:** As AI capability advances (OpenEvidence: USMLE 100%), physician verification capacity DETERIORATES (deskilling). Catalini identifies this as the "Measurability Gap" between what systems can execute and what humans can practically oversee. Applied to health:
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- At 20M consultations/month, OpenEvidence influences clinical decisions at scale
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- If those decisions are wrong in systematic ways, the harms are population-scale
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- The physicians "overseeing" these decisions are simultaneously becoming less capable of detecting errors
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This creates a **new category of civilizational health risk that doesn't appear in the original Belief 1 framing**: AI-induced clinical capability degradation. The health constraint is no longer just "poor diet/loneliness/despair" but potentially "healthcare system that produces worse outcomes when AI is unavailable because deskilling has degraded the human baseline."
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### The GLP-1 Price Trajectory Changes the Biological Discovery Economics
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One genuinely new finding from reviewing the queue:
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**GLP-1 patent cliff (status: unprocessed):**
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- Canada's semaglutide patents expired January 2026 — generic filings already happening
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- Brazil, India: patent expirations March 2026
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- China: 17+ generic candidates in Phase 3; monthly therapy projected $40-50
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- Oral Wegovy launched January 2026 at $149-299/month (vs. $1,300+ injectable)
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**Implication for existing KB claim:** The existing claim "GLP-1s are inflationary through 2035" assumes current pricing trajectory. But if international generic competition drives prices toward $50-100/month by 2030 (even before US patent expiry in 2031-2033), the inflection point moves earlier. This is the clearest example of AI-era pharmaceutical economics: massive investment, rapid price compression, eventual widespread access.
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BUT: the behavioral adherence finding from the March 16 session remains critical. Even at $50/month, GLP-1 alone is NO BETTER than placebo for preventing weight regain after discontinuation. The drug without behavioral support is a pharmacological treadmill. Price compression doesn't solve the adherence/behavioral problem.
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**This REINFORCES the 80-90% non-clinical framing.** Even as biological interventions (GLP-1s) become dramatically cheaper and more accessible, the behavioral infrastructure to make them work remains essential.
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### Synthesis: What This Means for Belief 1
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**The disconfirmation attempt fails, but it produces a valuable refinement:**
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Belief 1 as currently stated: "Healthspan is civilization's binding constraint, and we are systematically failing at it in ways that compound."
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**What AI-acceleration changes:**
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- The biological/pharmacological component of health is being rapidly improved — cancer will be halved, genetic diseases treated, protein engineering compressed
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- This is REAL progress that will reduce the "preventable suffering" that Belief 1 references
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- The compounding failure dynamics (rising chronic disease consuming capital, declining life expectancy) will be partially addressed by these advances
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**What AI-acceleration does NOT change:**
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- Deaths of despair, social isolation, mental health crisis — the "meaning" layer of health — remain outside the biological discovery pipeline
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- Behavioral/social determinants (80-90%) are not biology problems and won't be solved by drug discovery acceleration
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- The incentive misalignment (Belief 3) remains: even perfect biological interventions can't succeed at population scale under fee-for-service
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- The verification gap creates NEW health risks: AI-at-scale without oversight could produce systematic harm
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**The refined Belief 1:**
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"Healthspan is civilization's binding constraint, and the constraint is increasingly concentrated in the non-clinical 80-90% that AI-accelerated biology cannot address — even as biological progress accelerates. The constraint's composition shifts: pharmaceutical/clinical bottlenecks weaken through AI, while behavioral/social/verification infrastructure bottlenecks become relatively more binding."
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**This STRENGTHENS rather than weakens Vida's domain thesis.** If biological science accelerates, the RELATIVE importance of the behavioral/social/narrative determinants grows. Vida's unique contribution — the 80-90% framework, the SDOH analysis, the VBC alignment thesis, the health-as-narrative infrastructure argument — becomes MORE distinctive as the biological side of health gets "solved."
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## Claim Candidates Identified This Session
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CLAIM CANDIDATE 1: "AI-accelerated biological discovery addresses the clinical 10-20% of health determinants but leaves the behavioral/social 80-90% unchanged, making non-clinical health infrastructure relatively more important as pharmaceutical bottlenecks weaken"
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- Domain: health, confidence: likely
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- Sources: Amodei complementary factors framework, County Health Rankings (behavior 30% + social/economic 40%), clinical AI evidence from previous sessions
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- KB connections: Strengthens Belief 2 (80-90% non-clinical), reinforces Vida's domain thesis
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CLAIM CANDIDATE 2: "International GLP-1 generic competition beginning in 2026 (Canada January, India/Brazil March) will compress prices toward $40-100/month by 2030, invalidating the 'inflationary through 2035' framing at least for risk-bearing payment models"
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- Domain: health, confidence: experimental
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- Source: GeneOnline 2026-02-01, existing KB GLP-1 claim
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- KB connections: Challenges existing claim [[GLP-1 receptor agonists are the largest therapeutic category launch in pharmaceutical history but their chronic use model makes the net cost impact inflationary through 2035]]
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CLAIM CANDIDATE 3: "The verification bandwidth problem (Catalini) manifests in clinical AI as a scale asymmetry: OpenEvidence processes 20M physician consultations/month with zero peer-reviewed outcomes evidence, while physician verification capacity simultaneously deteriorates through AI-induced deskilling"
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- Domain: health (primary), ai-alignment (cross-domain)
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- Sources: Catalini 2026, OpenEvidence metrics, Hosanagar/Lancet deskilling evidence
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- KB connections: New connection between Catalini's verification framework and the clinical AI safety risks in Belief 5
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CLAIM CANDIDATE 4: "GLP-1 medications without structured exercise programs produce weight regain equivalent to placebo after discontinuation, making exercise the active ingredient for durable metabolic improvement rather than the pharmaceutical compound itself"
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- Domain: health, confidence: likely (RCT-supported)
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- Source: PMC synthesis 2026-03-01 (already archived, enrichment status)
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- KB connections: New interpretation of the adherence data from March 16 session
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## Follow-up Directions
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### Active Threads (continue next session)
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- **VBID termination aftermath (Q1-Q2 2026 tracking):** What are MA plans actually doing post-VBID? Are any states with active 1115 waivers losing food-as-medicine coverage? The MAHA rhetoric + contracting payment infrastructure is a live contradiction to track. Look for: CMS signals on SSBCI eligibility criteria changes, state-level Medicaid waiver amendments.
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- **DOGE/Medicaid cuts impact on CHW programs:** Four new CHW SPAs were approved in 2024-2025 (Colorado, Georgia, Oklahoma, Washington). Are these being implemented or paused under federal funding uncertainty? The CHW payment rate variation ($18-$50/per 30 min) creates race-to-bottom dynamics — track whether federal matching rates change.
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- **OpenEvidence outcomes data gap:** At 20M consultations/month with verified physicians, OpenEvidence is the first real-world test of whether clinical AI benchmark performance translates to outcomes. Watch for: any peer-reviewed analysis of OpenEvidence-influenced clinical outcomes, any adverse event reporting patterns, any health system quality metric changes.
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- **GLP-1 price trajectory (international generic tracking):** Canada generics filed January 2026; Brazil/India March 2026. What are actual prices? Has the $40-50 China projection materialized in any market? When does international price pressure create compounding pharmacy/importation arbitrage in the US?
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### Dead Ends (don't re-run these)
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- **Tweet feeds:** Session 7 confirms dead. Not worth checking.
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- **Amodei/Noah Smith as health sources:** These are Theseus-processed and primarily AI-focused. The health-specific content has been captured in this musing. Don't re-read for health angles — it's in the synthesis above.
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- **Disconfirmation of Belief 1 via AI-acceleration thesis:** Belief 1 survives the AI-acceleration challenge. The 80-90% non-clinical determinants are not a biological problem. Don't re-run this search — the result is clear.
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### Branching Points (one finding opened multiple directions)
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- **Verification bandwidth → clinical AI governance:**
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- Direction A: Track AIUC certification development specifically for clinical AI contexts (the existing AIUC-1 standard covers AI broadly, not healthcare specifically). Is there a medical AI certification emerging?
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- Direction B: Monitor OpenEvidence for any outcomes data publication — this would be the first empirical test of whether clinical AI benchmark performance predicts clinical benefit at scale.
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- **Recommendation: B first.** This is closer to resolution and directly tests existing KB claims.
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- **GLP-1 price compression → cost-effectiveness inflection:**
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- Direction A: Model the new cost-effectiveness break-even under various price trajectories ($50, $100, $150/month)
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- Direction B: Wait for actual international pricing data from Canada generic competition (6-month horizon)
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- **Recommendation: B.** Canada generic filings were January 2026 — prices should be visible by Q3 2026. Check next session.
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