Extract DrAgnes dermatology intelligence platform from ui/ruvocal/ into a self-contained SvelteKit application under examples/dragnes/. Includes all library modules, components, API routes, tests, deployment config, PWA assets, and research documentation. Updated paths for standalone routing (no /dragnes prefix), fixed static asset references, and adjusted test imports. Co-Authored-By: claude-flow <ruv@ruv.net>
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DrAgnes Competitive Analysis
Status: Research & Planning Date: 2026-03-21
Market Overview
The AI dermatology market is projected to reach $2.8 billion by 2030 (CAGR ~22%). Key drivers include rising skin cancer incidence, dermatologist shortage (US faces a projected shortfall of 10,000+ dermatologists by 2035), and smartphone proliferation enabling mobile health.
The market is currently fragmented across consumer apps (SkinVision, Google), clinical platforms (MetaOptima, Canfield), and FDA-cleared devices (3Derm). No single platform combines collective learning, offline capability, dermoscopy-native design, and cryptographic provenance.
Competitor Profiles
1. SkinVision
- Type: Consumer mobile app (iOS/Android)
- Approach: Smartphone camera photo (no dermoscopy)
- AI Model: Proprietary CNN (not disclosed)
- Regulatory: CE marked (EU Class IIa medical device), not FDA cleared
- Pricing: Subscription (approximately $10/month or $50/year)
- Market: Consumer direct, some B2B insurance partnerships
- Data: 6M+ photos analyzed (claimed)
Strengths:
- Large consumer user base
- Simple UX (point and shoot)
- Insurance partnerships (Netherlands, Australia)
- CE marking provides regulatory credibility
Weaknesses:
- No dermoscopy support (clinical photo only, significantly lower accuracy)
- Static model (does not learn from use)
- Consumer-grade (not positioned for clinical workflow)
- No EHR integration
- Privacy model unclear (images uploaded to cloud)
- No collective learning across users
- Sensitivity for melanoma: approximately 80-85% (vs. >95% target for DrAgnes with dermoscopy)
2. MoleMap
- Type: Clinical skin mapping service (clinics + teledermatology)
- Approach: Whole-body photography + dermatoscopy at dedicated clinics
- AI Model: AI-assisted triage (details not public)
- Regulatory: Clinical service (not a standalone device)
- Pricing: $300-600 per full-body mapping session
- Market: Australia, New Zealand, UK, Ireland
- Coverage: 40+ clinics across ANZ
Strengths:
- Established clinical brand (20+ years)
- Whole-body photography with longitudinal tracking
- Dermatologist review of every case
- Strong in high-incidence regions (Australia, New Zealand)
Weaknesses:
- Requires physical clinic visit (not mobile)
- Expensive per session
- Limited geographic coverage
- AI is assistive only, not well-documented
- No offline capability
- Proprietary closed ecosystem
- No collective learning across clinics
3. MetaOptima / DermEngine
- Type: Clinical AI platform for dermatologists
- Approach: Cloud-based dermoscopic image analysis + teledermatology
- AI Model: Deep learning classifiers (multiple architectures)
- Regulatory: Health Canada Class II, CE marked, not FDA cleared (as of 2026)
- Pricing: SaaS subscription (approximately $200-500/month per practice)
- Market: Canada, EU, expanding to US
- Features: Total body photography, lesion tracking, AI classification, teledermatology
Strengths:
- Comprehensive clinical platform
- Total body photography with AI-powered lesion tracking
- Teledermatology workflow
- EHR integration (select systems)
- Strong in Canada
Weaknesses:
- Cloud-dependent (no offline capability)
- No FDA clearance for US market
- Static models (periodic retraining, not continuous learning)
- No collective learning across practices
- No cryptographic provenance
- No WASM browser inference
- Privacy relies on standard cloud security (no differential privacy)
4. Canfield Scientific
- Type: Medical imaging systems (hardware + software)
- Approach: Professional-grade imaging equipment + IntelliStudio software
- Products: VEOS (dermoscopy), VECTRA (3D body mapping), IntelliStudio (AI analysis)
- Regulatory: FDA cleared (imaging systems, not AI classification)
- Pricing: Hardware $10,000-50,000+ per system; software subscription additional
- Market: Academic medical centers, high-end dermatology practices
Strengths:
- Gold-standard imaging quality
- 3D body mapping (VECTRA WB360)
- Established in research/academic settings
- Strong clinical validation literature
- FDA-cleared imaging hardware
Weaknesses:
- Extremely expensive (inaccessible to primary care)
- Hardware-dependent (no mobile/portable option)
- AI capabilities lagging behind pure-AI companies
- No collective learning
- No offline AI inference
- Proprietary ecosystem (vendor lock-in)
5. Google Health Dermatology AI
- Type: Research project / potential product
- Approach: Smartphone clinical photos (Google Lens integration)
- AI Model: Deep learning on large proprietary datasets (Nature Medicine 2020 publication)
- Regulatory: Not FDA cleared. Labeled as "information only" in Google Search
- Pricing: Free (integrated into Google Search/Lens)
- Market: Global consumer (billions of Google users)
Strengths:
- Massive distribution (Google Search/Lens)
- Enormous training datasets (Google scale)
- Strong research team (published in Nature Medicine)
- Free to end users
- Multilingual support
Weaknesses:
- Not a medical device (no regulatory clearance, no clinical use)
- Clinical photo only (no dermoscopy)
- Consumer-grade accuracy (sensitivity ~80% for melanoma in initial studies)
- No clinician workflow integration
- Privacy concerns (Google data practices)
- No offline capability
- No collective learning (Google learns, but users do not benefit from each other)
- No provenance or auditability
- Cannot be used for clinical decision-making
6. 3Derm (Fotodigm Inc.)
- Type: FDA-cleared AI for skin cancer detection
- Approach: Smartphone-based image capture with AI classification
- AI Model: CNN-based classification
- Regulatory: FDA 510(k) cleared (DEN200069, September 2021) -- one of the first
- Pricing: Not public (enterprise sales)
- Market: US clinical settings
- Clearance: "Aid in detecting skin cancer and other skin conditions in patients"
Strengths:
- FDA cleared (critical competitive advantage)
- Established regulatory pathway (predicate device for future submissions)
- Clinical positioning (for healthcare professionals)
- First-mover in FDA-cleared AI dermatology
Weaknesses:
- Limited to clinical photography (no dermoscopy integration documented)
- Small market presence
- No collective learning
- No offline capability
- Limited public information on accuracy metrics
- No provenance/witness chain
7. Mela Sciences / MelaFind (STRATA Skin Sciences)
- Type: FDA-cleared multispectral analysis device
- Approach: Dedicated hardware device with multispectral imaging (10 wavelengths)
- Regulatory: FDA PMA approved (2011) -- Class III
- Status: Commercially underperformed; STRATA pivoted to psoriasis/vitiligo treatment
- Pricing: $7,500 device + $150/use disposable
Strengths:
- First FDA PMA-approved AI skin lesion analyzer
- Multispectral imaging (beyond visible light)
- High sensitivity (>95%) in clinical trials
Weaknesses:
- Commercial failure (too expensive, complex workflow)
- Dedicated hardware (not mobile)
- Discontinued/de-emphasized by STRATA
- No learning capability
- Per-use consumable cost ($150) unsustainable
Lesson for DrAgnes: MelaFind proves that accuracy alone is insufficient. Workflow integration, cost, and usability are equally critical. DrAgnes must be easy, affordable, and mobile.
Competitive Matrix
| Feature | DrAgnes | SkinVision | MoleMap | MetaOptima | Canfield | Google Health | 3Derm |
|---|---|---|---|---|---|---|---|
| Dermoscopy support | Native | No | Clinic only | Yes | Yes | No | No |
| Mobile/phone-based | Yes | Yes | No | Partial | No | Yes | Yes |
| Offline capable | Yes (WASM) | No | No | No | No | No | No |
| Continuous learning | Yes (Brain) | No | No | No | No | No | No |
| Cross-practice learning | Yes (Brain) | No | No | No | No | No | No |
| FDA cleared | Target 2028 | No | N/A | No | Imaging only | No | Yes |
| HIPAA compliant | Yes | N/A | N/A | Unclear | Yes | No | Yes |
| Cryptographic provenance | Yes (SHAKE-256) | No | No | No | No | No | No |
| Differential privacy | Yes (epsilon=1.0) | No | No | No | No | No | No |
| EHR integration | Planned Phase 2 | No | No | Select | Select | No | Unknown |
| Practice-adaptive | Yes (LoRA) | No | No | No | No | No | No |
| Open architecture | Yes | No | No | No | No | No | No |
| Whole-body mapping | Planned Phase 2 | No | Yes | Yes | Yes (VECTRA) | No | No |
| 7-point checklist auto | Yes | No | No | Yes | No | No | No |
| Cost to practice | Low (SaaS) | N/A (consumer) | High (per visit) | Medium (SaaS) | Very High | Free | Enterprise |
| Melanoma sensitivity | >95% target | ~80-85% | Expert-dependent | ~87-92% | N/A | ~80% | Not public |
DrAgnes Unique Value Proposition
What DrAgnes Does That Nobody Else Does
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Learns From Your Practice: SONA MicroLoRA adapts the base model to your patient population. A practice in equatorial Nigeria seeing high rates of acral melanoma gets a model tuned for that distribution. A Scandinavian practice seeing mostly fair-skinned patients with superficial spreading melanoma gets a different adaptation. No competitor offers this.
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Learns From Everyone (Privately): The pi.ruv.io brain aggregates de-identified knowledge from all participating practices. This is not federated learning (which averages models) -- this is knowledge graph enrichment where each diagnosis strengthens connections in a semantic graph. The knowledge is richer than any single model.
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Runs Offline: The WASM-compiled CNN runs entirely in the browser. No internet, no cloud, no latency. Classify a lesion on a hiking trail, in a rural clinic with no connectivity, or in a disaster zone. No competitor can do this.
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Cryptographic Provenance: Every classification carries a SHAKE-256 witness chain proving which model version, brain state, and input produced it. For FDA audits, malpractice defense, and clinical governance, this is invaluable. No competitor offers this.
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DermLite-Native: Built specifically for dermoscopic imaging. The preprocessing pipeline, ABCDE automation, and pattern analysis are designed for DermLite's optical characteristics. Consumer apps working from phone photos cannot match dermoscopic accuracy.
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Open Architecture: Built on open-source RuVector crates. Practices own their data. The model architecture is transparent. Research institutions can validate, extend, and contribute. Vendor lock-in is eliminated.
Positioning Statement
For dermatologists and primary care physicians who need accurate, trustworthy skin lesion classification at the point of care, DrAgnes is an AI-powered dermatology intelligence platform that continuously learns from every participating practice while keeping patient data private. Unlike SkinVision (consumer app, no dermoscopy), MetaOptima (cloud-dependent, static model), and Canfield (expensive hardware), DrAgnes combines DermLite-native dermoscopic analysis with collective brain intelligence, offline WASM inference, and cryptographic provenance to deliver a system that gets smarter with every use and can be trusted in clinical settings.
Market Entry Strategy
Phase 1: Academic Pilot (2026-2027)
- Partner with 3-5 academic dermatology departments
- Publish validation studies comparing DrAgnes to existing tools
- Establish clinical evidence for FDA submission
- Target: JAMA Dermatology, British Journal of Dermatology publications
Phase 2: FDA Clearance + Early Adopters (2027-2028)
- 510(k) submission with 3Derm as predicate
- Launch with 50 early-adopter dermatology practices
- SaaS pricing: $99-199/month/practice (low barrier)
- DermLite partnership for bundled sales
Phase 3: Primary Care Expansion (2028-2030)
- Teledermatology workflow for PCP-to-dermatologist referral
- Integration with major EHR systems
- Target: primary care practices in dermatologist-shortage areas
- Insurance reimbursement partnerships
Phase 4: Global Expansion (2030+)
- CE marking for EU market
- Regional brain instances for data sovereignty
- Multilingual support
- Partnerships with global health organizations for underserved populations