» Articles » PMID: 39086557

Generative Artificial Intelligence: Enhancing Patient Education in Cardiovascular Imaging

Overview
Journal BJR Open
Specialty Radiology
Date 2024 Aug 1
PMID 39086557
Authors
Affiliations
Soon will be listed here.
Abstract

Cardiovascular disease (CVD) is a major cause of mortality worldwide, especially in resource-limited countries with limited access to healthcare resources. Early detection and accurate imaging are vital for managing CVD, emphasizing the significance of patient education. Generative artificial intelligence (AI), including algorithms to synthesize text, speech, images, and combinations thereof given a specific scenario or prompt, offers promising solutions for enhancing patient education. By combining vision and language models, generative AI enables personalized multimedia content generation through natural language interactions, benefiting patient education in cardiovascular imaging. Simulations, chat-based interactions, and voice-based interfaces can enhance accessibility, especially in resource-limited settings. Despite its potential benefits, implementing generative AI in resource-limited countries faces challenges like data quality, infrastructure limitations, and ethical considerations. Addressing these issues is crucial for successful adoption. Ethical challenges related to data privacy and accuracy must also be overcome to ensure better patient understanding, treatment adherence, and improved healthcare outcomes. Continued research, innovation, and collaboration in generative AI have the potential to revolutionize patient education. This can empower patients to make informed decisions about their cardiovascular health, ultimately improving healthcare outcomes in resource-limited settings.

Citing Articles

Application of Generative Artificial Intelligence in Dyslipidemia Care.

Ahn J, Kim B J Lipid Atheroscler. 2025; 14(1):77-93.

PMID: 39911966 PMC: 11791424. DOI: 10.12997/jla.2025.14.1.77.


The Role of Artificial Intelligence and Machine Learning in Cardiovascular Imaging and Diagnosis: Current Insights and Future Directions.

Cerdas M, Pandeti S, Reddy L, Grewal I, Rawoot A, Anis S Cureus. 2024; 16(10):e72311.

PMID: 39583537 PMC: 11585328. DOI: 10.7759/cureus.72311.

References
1.
Tang A, Tam R, Cadrin-Chenevert A, Guest W, Chong J, Barfett J . Canadian Association of Radiologists White Paper on Artificial Intelligence in Radiology. Can Assoc Radiol J. 2018; 69(2):120-135. DOI: 10.1016/j.carj.2018.02.002. View

2.
Wahl B, Cossy-Gantner A, Germann S, Schwalbe N . Artificial intelligence (AI) and global health: how can AI contribute to health in resource-poor settings?. BMJ Glob Health. 2018; 3(4):e000798. PMC: 6135465. DOI: 10.1136/bmjgh-2018-000798. View

3.
Rahsepar A, Tavakoli N, Kim G, Hassani C, Abtin F, Bedayat A . How AI Responds to Common Lung Cancer Questions: ChatGPT vs Google Bard. Radiology. 2023; 307(5):e230922. DOI: 10.1148/radiol.230922. View

4.
Kuckelman I, Wetley K, Yi P, Ross A . Translating musculoskeletal radiology reports into patient-friendly summaries using ChatGPT-4. Skeletal Radiol. 2024; 53(8):1621-1624. DOI: 10.1007/s00256-024-04599-2. View

5.
Benjamins J, Hendriks T, Knuuti J, Juarez-Orozco L, van der Harst P . A primer in artificial intelligence in cardiovascular medicine. Neth Heart J. 2019; 27(9):392-402. PMC: 6712147. DOI: 10.1007/s12471-019-1286-6. View