
aiomics
Extend AI
Extracta.ai
S10.AI
Vim Python IDE
aiomics is the verified intelligence layer that sits on top of hospital IT.
Many hospitals across Europe lose time and money at the same place: the start of a case. A physician assembles each admission from around ten referral documents across five to ten systems, most of them incomplete or contradictory โ and the documentation that determines reimbursement, and whether a case survives a payer audit, gets written from those fragments.
Generative AI alone makes this worse. Feed it a badly extracted record and it returns one that is fluent, formatted, and wrong.
aiomics ingests whatever a hospital receives โ faxes, PDFs, referrals, questionnaires, dictation โ and verifies it against the source through Integros, a multi-agent protocol in which independent models draft, a critic audits every statement against the original document, and an arbiter resolves the rest. What comes out is a structured, fully sourced patient record the hospital can trust.
That record then drives the two most expensive administrative workflows in the building: referral and admission management, and payer case dialogue.
aiomics is ISO 27001 certified, runs entirely within the EU, and is deliberately positioned as an administrative data layer โ outside the EU medical-device regulation. Its accuracy is being evaluated independently at a university hospital.
Proposed by AI. Verified by you.
aiomics
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aiomics's answer
Python and FastAPI on the backend; React, TypeScript and Tailwind on the frontend. A multi-agent LLM verification layer orchestrated with LangGraph and observed via Langfuse, built on LlamaIndex. Graph and vector storage via FalkorDB. Clinical standards: ICD-10-GM, OPS, LOINC, HL7 v2 and FHIR R4. Hosted entirely in the EU on AWS Frankfurt; sovereign European and on-premise alternatives are available upon request. The marketing site runs on Next.js with a Sanity CMS.
aiomics's answer
Anonymization rule applies here โ no named clinic groups in public materials. Use generics:
aiomics's answer
aiomics verifies clinical data instead of just generating it. Most AI tools extract or draft text in a single pass โ feed them an incomplete record and they return one that is fluent, formatted, and wrong. aiomics runs every extraction through an adversarial protocol in which independent models draft, a critic audits each statement against the original document, and an arbiter resolves the rest. What comes out is a structured patient record where every data point traces back to its source. Proposed by AI, verified by the physician.
aiomics's answer
German and DACH-region hospitals and rehabilitation clinics, typically within larger hospital groups. The buyers are CFOs (revenue integrity, audit defense), CIOs (KIS-agnostic integration, security), and senior physicians (time returned to clinical work). Expanding into acute-care hospitals, oncology centres, vocational rehabilitation, and individual physician practices, with first engagements in Switzerland and Sweden.
aiomics's answer
No competitor verifies new data against the existing patient record. Scribes generate but don't check; extraction tools pull data but don't reconcile contradictions across sources. aiomics sits on top of the systems a hospital already runs โ it stays agnostic to the KIS and ingests whatever arrives, in any format. It is ISO 27001 certified, runs entirely in the EU, and is deliberately positioned as an administrative data layer outside the medical-device regulation. Its accuracy is being evaluated independently at a university hospital. The defensibility is integration depth: every connected site accumulates field mappings and edge-case resolutions that take a year to build and cannot be carried elsewhere.
aiomics's answer
A physician at a hospital opens her morning with around ten referral documents for a single admission โ most incomplete or contradicting one another, scattered across five to ten systems. By the time she has assembled a coherent picture, the documentation that decides reimbursement and survives a payer audit is already being written, against the clock, from fragments. Hospitals treat this as a billing problem and try to fix it at the end, but the cost and audit exposure are decided at the start, in the documents. aiomics was built to fix it there: an intelligence layer that ingests everything arriving at the hospital, verifies it against the source, and hands back a record the hospital can trust. Founded in Berlin by a physician and a physicist.
Extend AI - The document processing platform built for the next generation.
Extracta.ai - At Extracta.ai, we've developed a cutting-edge tool that simplifies the process of extracting structured data from both physical and digital documents. This includes everything from CVs, invoices, and contracts to emails and web content.
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