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Donations are voluntary and not tax-deductible. Spends are on-chain attested.
Why TrustCat exists
TrustCat turns scars into signal — giving people a free, private AI second look when the system moves too slow.
Open source vault Cryptographic receipts Community-funded
Why TrustCat exists
I’m a dad of four who spent years misdiagnosed with adrenal insufficiency (Addison’s) and Type 1 diabetes — crushed by fatigue and brain fog.
TrustCat is a pay-it-forward project so others get signal faster. It’s not medical advice; it’s a private, auditable second look you can pair with a clinician.
No ads or trackers
Uploads auto-purge ≤ 24h
Receipts you can verify
Under the hood: MONAI
MONAI Core pipelines for 3D MRI/CT (resampling, spacing, intensity normalization).
Model Zoo / Bundles for reproducible checkpoints & configs; each run logs immutable model/container hashes.
MONAI Deploy-style GPU inference containers. No training on your upload by default.
Optional MONAI Label for interactive annotation later — strictly opt-in.
Verifiable outputs : model+weights+container digests included in your proof for third-party re-run.
✅ We use MONAI
✅ GPU receipts
✅ Opt-in attestation
❌ No training on your files
Learn more at monai.io .
Adrenal & Brain-fog — what we’re screening for (not a diagnosis)
Common symptoms (adrenal insufficiency)
Persistent fatigue, weakness, exercise intolerance
Dizziness or low blood pressure (orthostatic)
Unintentional weight loss, poor appetite, nausea
Salt craving, abdominal discomfort
Skin changes (e.g., darkening) in some cases
“Brain-fog” can feel like…
Trouble concentrating, slower processing, word-finding issues
Short-term memory slips; mental fatigue after simple tasks
Sleep disruption or non-restorative sleep
Possible drivers to discuss with a clinician
Endocrine: adrenal insufficiency (primary/secondary), thyroid imbalance
Metabolic/autoimmune: diabetes, B12/iron deficiency, celiac
Medication effects (sedatives, anticholinergics, steroids)
Neurologic: migraine, prior concussion, small-vessel changes
Sleep: apnea, circadian disruption, chronic insomnia
Autonomic: POTS/dysautonomia
Infection/inflammation: post-viral (e.g., long COVID), CNS inflammation
Mood/attention: depression/anxiety/ADHD
Other: dehydration, over-training, low caloric intake
⚠️ Not medical advice. These lists are informational only. If symptoms are severe, worsening, or new, seek professional care.
What imaging we accept
✅ Supported (DICOM or ZIP of DICOM)
Brain MRI: T1, T2, FLAIR, DWI/ADC, SWI (with/without contrast)
Abdomen MRI (adrenal protocol): in-/out-of-phase, T2-weighted, dynamic post-contrast if available
CT abdomen (adrenal protocol): non-contrast, portal venous, delayed phases
❌ Not supported (for now)
Single JPG/PNG screenshots
PACS exports with personal identifiers
Ultrasound, PET, plain X-ray
De-identify first. Remove names, dates of birth, MRNs. Keep series/sequence labels. You may compress the study into a ZIP.
What you receive — sample report
TrustCat Report — Example (not a diagnosis)
Report ID: TC-EXAMPLE-1234
Study: Brain MRI (T1/T2/FLAIR/DWI)
Run date: 2025-08-xx 14:05 UTC
Model: MONAI Bundle <brain_t1_t2_flair_dwi_v1>
Model hash: sha256: <xxxxxxxx>
Container: ghcr.io/trustcat/monai-infer@sha256:<yyyyyyyy>
GPU: RTX 5090 | Driver: <ver>
FINDINGS (AI-assisted, errors possible)
• White-matter hyperintensity pattern: mild, nonspecific distribution (periventricular predominance).
• No acute diffusion restriction identified.
• No intracranial hemorrhage pattern detected on SWI.
Confidence (0–1): WMH 0.62 | DWI 0.85 | SWI 0.88
RECOMMENDATIONS (for discussion with a clinician)
• Correlate with blood pressure, sleep quality, migraine history, and vascular risk (e.g., A1c, lipids).
• Consider formal radiology read and clinical follow-up if symptoms persist or worsen.
ATTESTATIONS
• Inputs: DICOM hashes (Merkle root): bafy…(CID)
• Outputs: report.json, overlays.nii.gz, thumbnails.zip (CID: bafy…)
• Reproducibility: model+container digests above; rerun is possible by a third party.
✅ MONAI pipelines
✅ Reproducible digests
❌ No training on your upload
Enterprise-grade stack
Compute & orchestration
NVIDIA RTX 5090 / 5000 fleet with datacenter power/load monitoring.
Kubernetes for isolation, autoscale, and zero-downtime rollouts.
Containerized inference (immutable digests) with pinned model bundles.
Job queue + receipts : every run emits model & container hashes.
NVIDIA GPUs
Kubernetes
Container-native
Audit & attestations
EAS (Base) attestation option on each job (schema + digest + timestamps).
IPFS CIDs for reproducible artifacts (reports/overlays), default purge ≤ 24h.
Optional Chainlink proof/verification hooks for external consumers.
Metrics : GPU/queue health exposed for transparency (no PHI).
EAS attest
IPFS receipts
Chainlink (opt-in)
Security & privacy posture
We do
De-identify only : uploads must be scrubbed before submit.
TLS everywhere + scoped, expiring presigned URLs.
Workload isolation per job/tenant; read-only model volumes.
Short retention : default purge ≤ 24h; artifacts optional & user-controlled.
Immutable provenance : model/container digests & GPU info in the receipt.
Least-privilege
Short-lived data
Provenance
We don’t
We don’t train on your uploads by default.
We don’t sell data, run ads, or embed trackers.
We don’t keep long-term copies without explicit consent.
We don’t upsell gray-hat “recovery” or spam follow-ups.
No trackers
No upsells
No data resale
Why TrustCat vs hyperscalers
Transparency
GPU receipts & reproducible digests
ENS-anchored identity (trustcat.eth)
Community-funded, open roadmap
Control
Edge-first, no silent model swaps
Opt-in attestations (EAS/Chainlink)
Short retention; user chooses artifacts
Cost & lock-in
Flat, fair pricing; no surprise egress
No forced accounts across 6 services
No data-network effects used against you
Edge, not black box
Verifiable runs
Fair pricing
Enterprise-grade stack
Compute & orchestration
NVIDIA RTX 5090 / 5000 fleet with datacenter power/load monitoring.
Kubernetes for isolation, autoscale, and zero-downtime rollouts.
Containerized inference (immutable digests) with pinned model bundles.
Job queue + receipts : every run emits model & container hashes.
NVIDIA GPUs
Kubernetes
Container-native
Audit & attestations
EAS (Base) attestation option on each job (schema + digest + timestamps).
IPFS CIDs for reproducible artifacts (reports/overlays), default purge ≤ 24h.
Optional Chainlink proof/verification hooks for external consumers.
Metrics : GPU/queue health exposed for transparency (no PHI).
EAS attest
IPFS receipts
Chainlink (opt-in)
Security & privacy posture
We do
De-identify only : uploads must be scrubbed before submit.
TLS everywhere + scoped, expiring presigned URLs.
Workload isolation per job/tenant; read-only model volumes.
Short retention : default purge ≤ 24h; artifacts optional & user-controlled.
Immutable provenance : model/container digests & GPU info in the receipt.
Least-privilege
Short-lived data
Provenance
We don’t
We don’t train on your uploads by default.
We don’t sell data, run ads, or embed trackers.
We don’t keep long-term copies without explicit consent.
We don’t upsell gray-hat “recovery” or spam follow-ups.
No trackers
No upsells
No data resale
Why TrustCat vs hyperscalers
Transparency
GPU receipts & reproducible digests
ENS-anchored identity (trustcat.eth)
Community-funded, open roadmap
Control
Edge-first, no silent model swaps
Opt-in attestations (EAS/Chainlink)
Short retention; user chooses artifacts
Cost & lock-in
Flat, fair pricing; no surprise egress
No forced accounts across 6 services
No data-network effects used against you
Edge, not black box
Verifiable runs
Fair pricing