TrialPilot: clinical trials from your phone, built by a patient
TrialPilot is a mobile platform that enables patients to participate in clinical trials remotely via their phone. It uses LLMs to streamline trial matching and communication, addressing the accessibility gap in clinical research for conditions like Long COVID. Built by a patient and two engineers, it aims to bring trials to patients rather than requiring travel.
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