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Qantev: Fraud, Waste, & Abuse
by QantEv
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Smart platform for automated Fraud, Waste, & Abuse detection
Our AI-driven solutions deliver business-critical insights to insurers' operation teams to help them deliver on their tasks faster and generate high level of savings.
Our Fraud, Waste, & Abuse solution provides a modern tooling dedicated to automatically detecting over 75 types of Fraud, Waste, & Abuse, so that no anomaly slips through the cracks and that your due diligence is at the highest possible level. With the Qantev Fraud, Waste, & Abuse solution you can expect to automatically detect new patterns of fraud, reduce instances of false positives, accurately monitor provider performance, and improve the efficiency of your Fraud, Waste, & Abuse detection. Our external data partners allow us to enrich your claims & detect any possible instances of Fraud, Waste, or Abuse, so that you can save money and time while increasing productivity.
Right now, insurers are using our Claims Management solution to:
- Remove human error from Fraud, Waste, & Abuse detection
- Improve hit rate and increase detected cases of Fraud, Waste, & Abuse cases at the provider, individual, and network level
- Save millions in losses from cases of Fraud, Waste, & Abuse
- Estimate treatment pricing more accurately and with more confidence
- Increase efficiency and capacity of SIU teams
Our solutions come equipped with Qantev Data Foundation, a premium service to clean, enrich, and refine your claims data using specialized AI techniques & algorithms dedicated to healthcare data.
At a glance
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https://store-images.s-microsoft.com/image/apps.44004.d3fda47e-83ea-4d52-bcff-ab9e835144fd.3d37bef6-969c-4c50-af1e-386b43e0768c.2ff48bc7-9ee4-45d1-8f25-bc56c409d1c3