Tools & Strategies News

AI May Improve Patient Experience in Decentralized Clinical Trials

Stanford University researchers posit that artificial intelligence may help improve patient experience in decentralized clinical trials by addressing patient recruitment and retention challenges.

red, orange, yellow, green, blue and pink wooden blocks with different colored stick figures on them, scattered across a wooden table

Source: Getty Images

By Shania Kennedy

- In an article published last month in Nature Medicine, researchers argued that artificial intelligence could improve patient experience in decentralized clinical trials through the use of reinforcement learning, computer vision, and AI models designed for temporal data.

Decentralized clinical trials, also known as ‘direct-to-participant trials’ or ‘virtual clinical trials,’ are clinical trials in which some or all health assessments are performed remotely in participants' homes instead of in clinical settings. This shift toward reduced dependence on traditional research facilities relies on tools such as telemedicine, sensory-based technologies, wearable medical devices, home visits, patient-driven virtual healthcare interfaces, and direct delivery of study drugs and materials to patients’ homes.

The authors noted that the COVID-19 pandemic accelerated the transition to decentralized clinical trials as researchers needed to continue to run trials despite the outbreak. They also pointed out that research suggests that in-home participation in clinical trials can help bolster patient recruitment and retention. One study out of Europe indicates that decentralized trials provide opportunities to recruit more diverse patient pools.