Insurance Price Radar
Discovery Lens
C Combination Innovation
Two separate worlds finally connect — and the intersection is a product
One-Liner
An AI tool that takes your health profile (medications, doctors, conditions, expected procedures) and computes the total expected cost (premium + deductible + copays + coinsurance) for every available plan, recommending the mathematically optimal choice.
Kill Reason
The core insight — computing expected annual cost across all plan dimensions — already exists in government insurance marketplace tools and commercial aggregators like eHealthInsurance and the ACA marketplace. Without unique data access or a distribution moat, this becomes a feature of existing comparison platforms rather than a standalone business.
What do you think?
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