The role of artificial intelligence in blood-borne virus opt-out testing in emergency departments.

Journal article


Da'Costa, Adebayo, Teke, Jennifer, Origbo, Joseph E, Madla, Clarissa, Osonuga, Ayokunle and Olawade, David B 2025. The role of artificial intelligence in blood-borne virus opt-out testing in emergency departments. International Journal of Medical Informatics. 204, p. 106086. https://doi.org/10.1016/j.ijmedinf.2025.106086
AuthorsDa'Costa, Adebayo, Teke, Jennifer, Origbo, Joseph E, Madla, Clarissa, Osonuga, Ayokunle and Olawade, David B
AbstractBlood-borne viruses (BBVs) such as HIV, hepatitis B, and hepatitis C continue to pose serious public health concerns, particularly within emergency departments (EDs), where patient volume and turnover are high. While opt-out testing strategies, where individuals are tested unless they specifically decline, have shown effectiveness in increasing diagnosis rates, their adoption in EDs is limited by challenges such as inefficient workflows, data fragmentation, and suboptimal patient engagement. This narrative review aims to explore the application of Artificial Intelligence (AI) in enhancing BBV opt-out testing in EDs, focusing on how AI can address current operational and clinical challenges while supporting ethical and equitable implementation. A structured narrative review approach was used following established guidelines. We searched PubMed, EMBASE, Web of Science, and grey literature from 2010 to 2024 using terms related to AI, blood-borne viruses, opt-out testing, and emergency departments. A total of 32 articles were included in the final synthesis. AI demonstrates theoretical potential with limited BBV-specific empirical evidence in improving BBV testing outcomes through automated patient identification and risk stratification using electronic health records. Evidence from broader healthcare AI applications suggests workflow improvements may be possible through automated test ordering, real-time alerts, and adaptive scheduling systems. Data analysis tools have shown promise in other healthcare contexts for accurate test result interpretation and epidemiological trend identification. AI-driven patient communication tools such as chatbots and mobile apps show potential to enhance patient understanding and reduce opt-out rates. Follow-up and continuity of care could potentially be strengthened via automated notifications and predictive adherence models. AI offers potential opportunities to improve the scalability, efficiency, and equity of BBV opt-out testing in EDs. However, successful integration depends on addressing ethical issues, algorithmic bias, and system interoperability, supported by interdisciplinary collaboration and continuous evaluation. Further research with BBV-specific evidence is urgently needed to validate these theoretical applications. [Abstract copyright: Copyright © 2025 The Author(s). Published by Elsevier B.V. All rights reserved.]
KeywordsBlood-borne viruses; Opt-out testing; Public health; Artificial intelligence; Emergency departments
Year2025
JournalInternational Journal of Medical Informatics
Journal citation204, p. 106086
ISSN1872-8243
Digital Object Identifier (DOI)https://doi.org/10.1016/j.ijmedinf.2025.106086
Official URLhttps://www.sciencedirect.com/science/article/pii/S138650562500303X
Publication dates
Online18 Aug 2025
Publication process dates
Accepted15 Aug 2025
Deposited04 Sep 2025
Publisher's version
License
File Access Level
Open
Output statusPublished
Additional information

Publications router.

Permalink -

https://repository.canterbury.ac.uk/item/9vvvz/the-role-of-artificial-intelligence-in-blood-borne-virus-opt-out-testing-in-emergency-departments

Download files


Publisher's version
1-s2.0-S138650562500303X-main.pdf
License: CC BY-NC 4.0
File access level: Open

  • 1592
    total views
  • 26
    total downloads
  • 4
    views this month
  • 4
    downloads this month

Export as

Related outputs

Robotic surgery in healthcare: current challenges, technological advances, and global implementation prospects.
Olawade, David B., Marinze, Sheila, Weerasinghe, Kusal, Egbon, Eghosasere, Onuoha, Joy Uchechi and Teke, Jennifer 2025. Robotic surgery in healthcare: current challenges, technological advances, and global implementation prospects. Journal of Robotic Surgery. 19 (1), p. 577. https://doi.org/10.1007/s11701-025-02702-w
Enhancing ophthalmic diagnosis and treatment with artificial intelligence
Olawade, D., Weerasinghe, Kusal, Mathugamage, Mathugamage Don Dasun Eranga, Odetayo, A., Aderinto, Nicholas, Teke, J. and Boussios, S. 2025. Enhancing ophthalmic diagnosis and treatment with artificial intelligence. Medicina (Kaunas, Lithuania). 61 ((3)).
Evaluating AI adoption in healthcare: Insights from the information governance professionals in the United Kingdom.
Olawade, David B, Weerasinghe, Kusal, Teke, J., Msiska, Maines, Boussios, S. and Hatzidimitriadou, E. 2025. Evaluating AI adoption in healthcare: Insights from the information governance professionals in the United Kingdom. International Journal of Medical Informatics. 199, p. 105909. https://doi.org/10.1016/j.ijmedinf.2025.105909
Integrating AI into cancer Iimmunotherapy-A narrative review of current applications and future directions
Olawade, D., Clement David-Olawade, A., Adereni, T., Egbon, E., Teke, J. and Boussios, S. 2025. Integrating AI into cancer Iimmunotherapy-A narrative review of current applications and future directions. Diseases. 13 (1), p. 24.
Spinal MRI in patients with suspected metastatic spinal cord compression: a quality improvement audit in a district general hospital in Kent, UK
Rabbani, Rukhshana Dina, Hasan, Mahmudul Rahat, Akter, Sumaya, Chilakuluri, Premsai, Banerjee, Soirindhri, Ghose, Aruni, Sanchez, Elisabet, Ahmadu, Temitayo, Papadopoulos, Vasileios, Teke, Jennifer, Olawade, David, Ovsepian, Saak Victor and Boussios, Stergios 2025. Spinal MRI in patients with suspected metastatic spinal cord compression: a quality improvement audit in a district general hospital in Kent, UK. International Journal of Environmental Research and Public Health. 22 (3), p. 401.
Diagnosis and treatment of gestational non-epithelial ovarian cancer: A systematic review
Ahmadu, Temitayo, Olawade, David B, Teke, Jennifer, Bachour, Michel-Elie, Rabbani, Rukhshana Dina, Akter, Sumaya, Sanchez, Elisabet, Papadopoulos, Vasileios, Ovsepian, Saak V and Boussios, Stergios 2025. Diagnosis and treatment of gestational non-epithelial ovarian cancer: A systematic review. Anticancer Research. 45 (3), pp. 843-853. https://doi.org/10.21873/anticanres.17473
AI-driven triage in emergency departments: A review of benefits, challenges, and future directions
Da'Costa, Adebayo, Teke, Jennifer, Origbo, Joseph E, Osonuga, Ayokunle, Egbon, Eghosasere and Olawade, David B 2025. AI-driven triage in emergency departments: A review of benefits, challenges, and future directions. International Journal of Medical Informatics. 197, p. 105838. https://doi.org/10.1016/j.ijmedinf.2025.105838
The impact of artificial intelligence and machine learning in organ retrieval and transplantation: A comprehensive review
Olawade, David B, Marinze, Sheila, Qureshi, Nabeel, Weerasinghe, Kusal and Teke, Jennifer 2025. The impact of artificial intelligence and machine learning in organ retrieval and transplantation: A comprehensive review. Current Research in Translational Medicine. 73 (2), p. 103493. https://doi.org/10.1016/j.retram.2025.103493
Artificial intelligence in in-vitro fertilization (IVF): A new era of precision and personalization in fertility treatments
Olawade, David B, Teke, Jennifer, Adeleye, Khadijat K, Weerasinghe, Kusal, Maidoki, Momudat and David-Olawade, Aanuoluwapo C 2024. Artificial intelligence in in-vitro fertilization (IVF): A new era of precision and personalization in fertility treatments. Journal of Gynecology, Obstetrics and Human Reproduction. 54 (3), p. 102903. https://doi.org/10.1016/j.jogoh.2024.102903
AI-guided cancer therapy for patients with coexisting migraines
Olawade, D., Teke, J., Adeleye, K., Egbon, E., Weerasinghe, K., Ovespian, S. and Boussios, S. 2024. AI-guided cancer therapy for patients with coexisting migraines. Cancers. 16 (21), p. 3690. https://doi.org/10.3390/cancers16213690
Transforming organ donation and transplantation: Strategies for increasing donor participation and system efficiency.
Olawade, David B, Marinze, Sheila, Qureshi, Nabeel, Weerasinghe, Kusal and Teke, Jennifer 2024. Transforming organ donation and transplantation: Strategies for increasing donor participation and system efficiency. European Journal of Internal Medicine. https://doi.org/10.1016/j.ejim.2024.11.010
Leveraging artificial intelligence in vaccine development: A narrative review.
Olawade, David B., Teke, Jennifer, Fapohunda, Oluwaseun, Weerasinghe, Kusal, Usman, Sunday O., Ige, Abimbola O. and Clement David-Olawade, Aanuoluwapo 2024. Leveraging artificial intelligence in vaccine development: A narrative review. Journal of microbiological methods. 224, p. 106998. https://doi.org/10.1016/j.mimet.2024.106998
Patient empowerment, eating behaviours and illness control: pre-post outcomes from DWELL delivery in UK and France
Morris, R., Hatzidimitriadou, E., Manship, S., Hulbert, S., Webster, J., Teke, J., Belmas, N., Best, A., Averous, V. and Cazier. J. 2020. Patient empowerment, eating behaviours and illness control: pre-post outcomes from DWELL delivery in UK and France. European Journal of Public Health. 30 (Supplement 5), p. v509. https://doi.org/10.1093/eurpub/ckaa165.1389