The Clinician’s Co-Pilot for Early Cancer Detection
An agile platform providing timely and reliable insights across multiple cancer types
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An agile platform providing timely and reliable insights across multiple cancer types
Learn MoreMathematical models based on characteristics defined by clinical experts are used to educate our AI to best clinically describe the physical reality and emulate clinical reasoning and intuition. When the sensitivity-specificity trade-off glass ceiling is reached, the model’s errors and edge cases become valuable insights for refining these models with expert input, until reaching the boundaries between classes. By re-educating the AI with these new insights—without altering its existing knowledge—it is iteratively improved, ultimately breaking the traditional sensitivity-specificity trade-off paradigm.
Expert-based mathematical models
Educated AI algorithms
Error detection and edge cases identification
G4Lungs, the first product derived from our platform, is a clinical decision support tool that enables automated lung cancer screening.
Validated on +2,000 real cases from LIDC & Israeli hospitals databases
and in the Assuta clinical study
that presents findings just as the expert analysis
for high accuracy with near-zero false positives
Fast transition from retrospective to prospective use
edge cases are modeled just as prevalent ones
to improve accuracy
to new indications by utilizing cross-indication models
Lungs cancer
Prostate cancer
Colon cancer
Breast cancer
Ovarian cancer
Brain cancer