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AI-Powered Computational Vision

Advancing AI-driven computational models for pathology—analyzing cellular, tissue, and molecular patterns to enable next-generation diagnostics, predictive insights, and precision therapies.

Multi-Omic Integration

AI-Powered Precision Medicine

Building advanced AI-driven models to analyze medical and pathology data—integrating cellular, spatial, and molecular information to deliver predictive insights for next-generation diagnostics and therapies.

AI-Powered Modeling

AI-Driven Tissue Analysis

Developing scalable computer vision models that decode tissue architecture, detect abnormal cellular patterns, and generate actionable insights for disease diagnosis, treatment planning, and research.

Precision Insights

Next-Gen Computational Vision

Leveraging AI-powered computer vision and advanced computational models to decode complex tissue structures, analyze cellular and spatial patterns, and generate predictive insights for next-generation medicine and precision therapies.

AI-powered computational pathology visualization

Helios: AI-Powered Computational Pathology

Multi-Omic Integration

Predictive Genetic Mapping Predictive Genetic Mapping

Using advanced AI, the system aims to infer genetic and molecular features from tissue morphology, supporting prediction of mutations, molecular subtypes, and biomarkers directly from images.

Predictive AI Models

Cellular Neighborhood Analysis Cellular Neighborhood Analysis

Spatial modeling of cellular interactions identifies functional microenvironments and cellular niches, offering insights into tissue organization and potential pathological mechanisms

Biomarker Discovery

Therapeutic Target Intelligence Therapeutic Target Intelligence

By combining spatial patterns and predicted molecular features, the approach highlights potential vulnerabilities and guides hypothesis generation for therapeutic strategies.

Secure & Compliant

Hypergraph-Driven Patient Insights Hypergraph-Driven Patient Insights

Integrating spatial and molecular tissue features with multi-patient data enables the identification of relationships between tissue architecture and outcomes, supporting population-level analysis.

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