BEKhealth AI outperforms Google, Amazon, and other leading medical AI
BEKhealth’s patient-matching large language models (LLMs) demonstrate higher accuracy in matching patients to clinical research than other leading medical models. AI’s ability to quickly sift through vast amounts of data to identify trends and extract valuable information can help to more efficiently find potential candidates who match study criteria. In this paper, we provide research around:
- Key benefits of highly accurate AI in patient recruitment
- Validating existing technology for building accurate AI models
- The four key areas for evaluation of NLP infrastructures
- Limitations and room for improvement
- Developing an AI solution that works for trial recruitment
Please complete the form below to download the white paper:
Read More
Tackling Patient Recruitment Challenges from Two Perspectives with AI: TrialGPT and BEKplatform
Artificial intelligence (AI) is revolutionizing the landscape of clinical trials, particularly in the realms of patient recruitment and matching. Innovations like the National Institutes of Health's (NIH) TrialGPT and BEKhealth's AI-powered BEKplatform are at the...
AI and the Art of Patient Engagement: Building Stronger Connections in Clinical Trials
In the dynamic world of clinical trials, keeping patients engaged is no longer just about meeting protocol requirements—it’s about creating meaningful connections. As trials evolve to prioritize patient-centric research, engagement strategies must follow suit. Enter...
AI and Behavioral Profiling: Improving Patient-Matching
Recruiting the right patients for clinical trials has long been one of the most significant hurdles in the clinical research process. Despite the abundance of potential participants, many trials fail to meet their enrollment targets on time, leading to costly delays...
Preventing Patient Dropouts with AI-Based Outreach: How AI Enhances Patient Retention in Clinical Trials
Patient retention is a major challenge in clinical trials. High dropout rates not only increase costs but can also delay results, complicate data analysis, and even jeopardize the success of a study. To address this, artificial intelligence (AI) is emerging as a...