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Achieving Inclusive Healthcare through Integrating Education and Research with AI and Personalized Curricula
0
Zitationen
33
Autoren
2024
Jahr
Abstract
Background: Precision medicine promises significant health benefits but faces challenges such as complex data management and analytics, interdisciplinary collaboration, and education of researchers, healthcare professionals, and participants. Addressing these needs requires the integration of computational experts, engineers, designers, and healthcare professionals to develop user-friendly systems and shared terminologies. The widespread adoption of large language models (LLMs) such as Generative Pretrained Transformer (GPT) and Claude highlights the importance of making complex data accessible to non-specialists. Methods: We evaluated the Stanford Data Ocean (SDO) precision medicine training program's learning outcomes, AI Tutor performance, and learner satisfaction by assessing self-rated competency on key learning objectives through pre- and post-learning surveys, along with formative and summative assessment completion rates. We also analyzed AI Tutor accuracy and learners' self-reported satisfaction, and post-program academic and career impacts. Additionally, we demonstrated the capabilities of the AI Data Visualization tool. Results: SDO demonstrates the ability to improve learning outcomes for learners from broad educational and socioeconomic backgrounds with the support of the AI Tutor. The AI Data Visualization tool enables learners to interpret multi-omics and wearable data and replicate research findings. Conclusions: SDO strives to mitigate challenges in precision medicine through a scalable, cloud-based platform that supports data management for various data types, advanced research, and personalized learning. SDO provides AI tutors and AI-powered data visualization tools to enhance educational and research outcomes and make data analysis accessible to users from broad educational backgrounds. By extending engagement and cutting-edge research capabilities globally, SDO particularly benefits economically disadvantaged and historically marginalized communities, fostering interdisciplinary biomedical research and bridging the gap between education and practical application in the biomedical field. Plain Language Summary: Precision medicine is the use of various types of health data specific to an individual to improve disease prevention, diagnosis, or treatment. We used artificial intelligence to build a precision medicine learning platform for clinicians and researchers in training. Students in 95 countries accessed the platform and found it helpful. It could be particularly helpful for training students in low- and middle-income countries.
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Autoren
- Amir Bahmani
- Kexin Cha
- Arash Alavi
- Amit Rai Dixit
- Antony Ross
- Ryan J. Park
- Francesca Goncalves
- Shirley Ma
- Paul Saxman
- Ramesh Nair
- Ramin Akhavan-Sarraf
- Xin Zhou
- Meng Wang
- Kévin Contrepois
- Jennifer Li-Pook-Than
- Emma Monte
- David Jose Florez Rodriguez
- Jaslene Lai
- Mohan Babu
- Abtin Tondar
- Sophia Miryam Schüssler‐Fiorenza Rose
- Ilya Akbari
- Xinyue Zhang
- Kritika Yegnashankaran
- Joseph Yracheta
- Kali Dale
- Alison Derbenwick Miller
- Scott Edmiston
- Eva M McGhee
- Camille Nebeker
- Joseph C. Wu
- Anshul Kundaje
- M Snyder