Clinical Decision Intelligence

AI That Thinks
Before Disease
Strikes

NeuralCare AI deploys deep learning across patient data streams to surface early disease signals — up to 48 months before conventional diagnosis.

0%
Detection accuracy
0B+
Inferences / month
0+
Hospital systems
0ms
Avg inference latency
Live Clinical Intelligence Dashboard
Inferences/hr
4.2M
↑ 12.4% vs baseline
Risk Alerts Today
1,847
⚠ 23 critical-priority
Real-Time Activity Feed
Early-stage diabetic retinopathy detected — Patient #84291 2s ago
Sepsis risk score elevated 0.91 — ICU Alert dispatched 18s ago
Model retrain complete — AUC 0.974 on validation cohort 1m ago
Federated sync — 47 nodes, 2.1M records reconciled 4m ago
Cardiac Risk Model — AUC 0.968
Oncology Screening — Sensitivity 94.2%
GPU Cluster Utilization 87.4%
Trusted by leading health systems worldwide
0B+
Clinical inferences processed monthly across GPU-accelerated infrastructure
0%
Average early detection accuracy across 12 disease categories in validation trials
0+
Hospital systems and integrated delivery networks on the platform globally
0mo
Earliest disease signal detection lead time before conventional diagnosis
The Problem

Clinical teams are drowning in data, yet patients are still diagnosed too late

Healthcare generates more data than any other industry — yet 70% of it goes unanalyzed. The cost is measured in lives.

📉
Late-Stage Diagnosis Epidemic

Over 60% of cancers and chronic disease cases are diagnosed at Stage III or IV — when treatment costs 8× more and outcomes are dramatically worse.

↑ $1.4T annual late-diagnosis burden in the US alone
🔍
Signal Buried in Noise

A single patient generates 80MB of data per year. Clinicians review less than 1% of it. Critical early signals — in labs, imaging, and vitals — go undetected.

99% of patient data is never analyzed
Workflow Fragmentation

Physicians toggle between 11+ systems per shift. Cognitive overload drives 40% diagnostic error rates for complex presentations — even in top-tier centers.

40% diagnostic error in complex cases
Platform Capabilities

Every feature built for clinical precision

/ Early Detection Engine

Deep learning that sees disease before symptoms appear

Our transformer architecture ingests longitudinal EHR data, imaging biomarkers, genomics, and real-time vitals to compute dynamic disease risk trajectories — updated on every new data point.

  • Multi-modal fusion: EHR + imaging + genomics + wearables
  • 48-month prediction horizon for 14 disease categories
  • Sub-50ms GPU-accelerated inference via TensorRT optimization
  • Explainable AI outputs mapped to ICD-11 clinical pathways
Risk Stratification Engine● LIVE
Cardiac — 5yr RiskHIGH 0.82
Oncology — ScreeningMOD 0.61
Diabetes ProgressionLOW 0.23
Sepsis 24hr RiskHIGH 0.77
Last scored: 0.2s agoTensorRT · 47ms
/ Federated Learning Network

Train on every hospital's data without moving a single record

NeuralCare's federated architecture keeps patient data within your perimeter. Only encrypted gradient updates traverse the network — enabling model training at population scale while maintaining full HIPAA, GDPR, and NHS IG compliance.

  • Zero raw data egress — gradients only, AES-256 encrypted
  • Differential privacy with ε-DP guarantees on all shared updates
  • FHIR R4 native integration with 200+ EHR systems
  • Continuous model improvement from 340+ federated nodes
Federated Network Status● SYNCING
Active Nodes341 / 341
Gradient Rounds Today14,820
Records in Scope (no egress)2.1B
Privacy Budget (ε)0.08 remaining
Network Consensus AUC0.974
✓ HIPAA · GDPR · NHS IG · ISO 27001 Compliant
/ Clinical Workflow Integration

Intelligence delivered inside the tools clinicians already use

NeuralCare embeds directly into Epic, Cerner, and Oracle Health workflows. Risk scores, recommended actions, and evidence citations surface as contextual sidebars — no new logins, no context switching.

  • Native Epic Smart App, Cerner PowerChart widget, and HL7 FHIR API
  • One-click explainability: "Why is this patient flagged?"
  • CSRD and GRI-aligned population health reporting dashboards
  • Real-time regulatory compliance monitoring across all jurisdictions
EHR Integration Layer● ACTIVE
Epic SmartApp Sessions Today48,291
Cerner PowerChart Calls22,140
FHIR R4 API Calls / min18,440
Avg Embed Render Time43ms
Clinician Adoption Rate91%
How It Works

From raw data to clinical action in milliseconds

01
Data Ingestion

Continuous FHIR-native streams from EHR, imaging, lab, genomics, and wearable sources — structured and unstructured.

200+ connectors
02
Deep Learning Inference

Transformer models run GPU-accelerated inference via ONNX Runtime and TensorRT — sub-50ms for real-time clinical alerts.

47ms avg latency
03
Risk Stratification

Dynamic risk scores with explainable attribution — every flag linked to contributing biomarkers and evidence-based clinical guidelines.

94% accuracy
04
Clinical Action

Alerts and recommended care pathways delivered inside Epic, Cerner, and via HL7 — driving measurable patient outcomes.

91% adoption
Technology

Built on the most advanced clinical AI stack in existence

🧠
Transformer Architecture

Clinical-domain BERT and GPT variants pre-trained on 500M de-identified patient records, fine-tuned per disease category with LoRA adapters for efficient deployment.

GPU-Accelerated Inference

TensorRT-optimized model serving on A100/H100 clusters delivers sub-50ms inference at scale — 4.2M+ inferences per hour per deployment cluster.

🔒
Federated Learning

Decentralized model training with differential privacy across 340+ hospital nodes — no patient data ever leaves the facility perimeter.

📊
Regulatory Intelligence

Automated CSRD, GRI, and FDA 21 CFR Part 11 compliance reporting. Built-in audit trails, model cards, and explainability documentation for regulatory submissions.

Technology Stack
Inference Runtime
TensorRT ONNX Runtime Triton
Model Training
PyTorch 2.3 HuggingFace DeepSpeed FSDP
Healthcare Data
FHIR R4 HL7 v2/v3 DICOM CDA
Privacy & Security
Differential Privacy Secure Agg FHE
Infrastructure
Kubernetes Kafka Spark Airflow
Compliance
HIPAA GDPR SOC 2 T2 ISO 27001
Customer Stories

Clinicians who saw the difference

NeuralCare flagged a patient for early-stage cardiac dysfunction 14 months before our standard screening protocol would have caught it. That kind of lead time changes everything in treatment outcomes.

SM
Dr. Sarah Mitchell, MD
Chief Medical Informatics Officer · Cleveland Clinic

The federated learning model meant we could participate in network training without ever exposing patient data. It was the only AI vendor that our information governance team approved on first review.

JR
James Rutherford
VP of Digital Health · NHS England

Sub-50ms inference in our Epic workflow means clinicians never wait for insights. It's as fast as looking at a lab value — but it synthesizes 3 years of patient history in that same moment.

AP
Dr. Ananya Patel
Director of AI Research · Johns Hopkins Medicine
Pricing

Start detecting. Scale without limits.

Transparent pricing for every stage of your AI health journey. View full pricing →

Starter
Free / 90 days

Full platform access for pilot programs and proof-of-concept deployments.

  • Up to 10,000 inferences/month
  • 3 disease detection models
  • FHIR R4 integration
  • Standard support
  • Federated learning
  • Custom model training
Start Free Trial
Research
Custom pricing

Academic institutions, health system research divisions, and pharma R&D teams.

  • De-identified research datasets
  • Model API access for research
  • Co-publication opportunities
  • IRB-compliant data access
  • Custom federated learning studies
  • Academic pricing available
Contact Research Team
Get Started

The next patient flagged could be the one you save

Join 340+ health systems using NeuralCare AI to detect disease earlier, improve outcomes, and reduce the cost of care.

✓ HIPAA Compliant ✓ SOC 2 Type II ✓ ISO 27001 ✓ GDPR ✓ FDA 21 CFR Part 11 ✓ NHS IG Toolkit