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Prognos

Prognos forecasts biological trajectories, models outbreaks, and tracks AMR surveillance through structured ingestion of fragmented public-health data, WHO GLASS, ECDC EARS-Net, and national CDCs, into a single harmonised analytical surface.

ResearchersClinical researchPublic healthPharma enterprise
LumenPraxisVeraxaNexoraNovoraOrisOmnixSentinelPrognosstep 9Labtrack

Inputs

  • Surveillance data from WHO GLASS, ECDC EARS-Net, national CDCs
  • Historical resistance or incidence series
  • Forecast horizon and modelling parameters

Outputs

  • Trajectory forecasts with confidence-interval bands
  • Harmonised surveillance surface with source attribution
  • Outbreak and AMR surveillance views with data-freshness indicators

How the AI suggests, and where you decide

Prognos surfaces forecasts with explicit uncertainty and the harmonisation logic behind every ingested source. For policy briefs it surfaces evidence-ranked options; the policy maker decides.

Illustrative

Prognos in practice

Fragmented sources

  • WHO GLASS90+ countries
  • ECDC EARS-Net30 EU/EEA
  • US CDCnational
  • UKHSAnational
  • Pakistan NIHnational
  • ICMR Indianational

Harmonisation layer

Transparent, annotated reconciliation, not an opaque merge.

  • Antibiotic-name normalisation
  • Specimen-category mapping
  • Breakpoint-standard tracking
  • WHO AWaRe classification

Unified surface

One analytical surface

Source attribution and a data-freshness indicator preserved on every record.

resistance %specimenAWaRebreakpointlast ingested
Surveillance data liberation: WHO GLASS, ECDC EARS-Net, US CDC, UKHSA, Pakistan NIH, and ICMR India flow into a harmonisation layer that normalises antibiotic names, maps specimen categories, tracks breakpoint standards, and applies the WHO AWaRe classification, producing a single analytical surface with source attribution and data-freshness indicators.

Citation grounding

Every surveillance ingestion carries source attribution, harmonisation transparency (antibiotic-name normalisation, specimen-category mapping, breakpoint-standard tracking), and a data-freshness indicator.

For the technical reader

Technical details

Each capability is one link in the closed loop. See the whole chain end to end.