AI-Powered Foot Health Screening

Detect aging foot conditions with AI, in seconds.

AFCDAI - Aging Feet Condition Detection with Artificial Intelligence.

AFCDAI identifies common foot conditions - fungal toenail infections, corns, calluses, and long toenails - from simple photos. A privacy-first clinical decision support tool, trained on six years of real nursing data and validated by regulated foot care professionals.

Privacy-by-Design Clinically Validated SR&ED Approved AWS Powered
AFCDAI app on three phones - guided image capture, AFCDAI home screen, and condition results
Fungal toenail98.81% accuracy
Corns96.97% accuracy
Calluses84.62% accuracy
Long toenails79.87% accuracy
How it works

Three taps from photo to foot-health insight

No appointment, no paperwork. AFCDAI turns simple foot photos into clear, clinically informed guidance - and connects users to a foot care nurse when it matters.

1

Capture

Guided prompts help capture the soles, close-up toenails, heels, and sides of both feet - no special equipment required.

2

Analyze

Images are anonymized, background-removed, and run through condition-specific AI classifiers in seconds on secure AWS infrastructure.

3

Results & care

Get instant, easy-to-read condition insights - and the option to book a regulated foot care nurse to take the next step.

Validated performance

Conditions AFCDAI detects

Subtle, overlapping foot conditions are hard to tell apart - even for trained clinicians. AFCDAI was built and validated to distinguish them, with accuracy measured during clinical validation.

Fungal Toenail Infection

98.81%

Discoloured, thickened, or brittle nails caused by fungal infection - identified with high accuracy.

Corns

96.97%

Small, hardened areas of skin from pressure or friction, often on or between the toes.

Calluses

84.62%

Thickened skin from repeated pressure, commonly across the soles and heels.

Long Toenails

79.87%

Overgrown nails that increase risk of injury and discomfort - flagged for timely care.

Continuously improving with more clinical data
Under the hood

The technology behind AFCDAI

Built through rigorous experimental development - the kind of R&D recognized under Canada's SR&ED program - to make medical-grade image classification reliable on real, imperfect data.

Deep learning

DenseNet121 Architecture

A proven medical-imaging backbone, adapted via transfer learning from ImageNet with custom classification heads.

Precision

Per-Condition Classifiers

Separate binary classifiers for each condition reduce inter-class interference and sharpen accuracy.

Preprocessing

REMBG Background Removal

Isolating clinically relevant regions removed noise and significantly improved feature discrimination.

Pipeline

MONAI Standardization

A structured medical-imaging pipeline - resizing, normalization, and tensor conversion - for consistent inputs.

Robustness

Data Augmentation

Rotations, flips, scaling, and intensity adjustments addressed class imbalance and improved generalization.

Infrastructure

Secure AWS Cloud

Hosted on Canadian-aligned AWS infrastructure for scalability, high availability, and strong data protection.

Privacy-by-design

No names. No faces. No personal records.

AFCDAI was deliberately built to minimize data exposure - it functions strictly as a clinical decision support tool, never as a personal health record.

No identifiable data

No names, emails, phone numbers, medical history, or payment details are ever collected or stored.

No biometrics or faces

No facial images or biometric identifiers are captured at any stage of the process.

Foot images only

Only anonymized images of feet are processed - solely to identify visible foot conditions.

Not linked to identity

Images are anonymized before processing and never linked to an individual, so no health record is created.

Canadian-aligned cloud

Hosted on AWS using Canadian-aligned infrastructure and security best practices.

Reduced cyber risk

Minimizing data exposure reinforces clinician and patient trust and lowers cybersecurity risk.

Validation & recognition

Built on real clinical practice, recognized externally

Validated by licensed clinicians

Trained and validated through direct human clinical review by a licensed nurse, with labeling by regulated foot care professionals.

Six years of real-world data

Reflects real clinical practice - not purely academic datasets - using nursing data collected over a six-year period.

Rigorous experimental development

Iterative tuning, confusion-matrix analysis, and validation metrics - with insights into the limits of synthetic medical data.

SR&ED ApprovedRecognized under Canada's Scientific Research & Experimental Development program.
AWS Startups ProgramAwarded AWS credits supporting secure, scalable, responsible AI deployment.
Get started with AFCDAI

Smarter foot health,
in your pocket.

Try AFCDAI for yourself, or talk to us about deploying privacy-first foot screening across your clinic, community program, or health organization.

AFCDAI is a clinical decision support tool. Results are not 100% accurate and are not a medical diagnosis - please consult a qualified healthcare professional before acting on any result.