Skip to main content
Top
Published in: Journal of Bioethical Inquiry 3/2022

Open Access 20-07-2022 | Triage | Symposium: Emerging Technologies

Bias in algorithms of AI systems developed for COVID-19: A scoping review

Authors: Janet Delgado, Alicia de Manuel, Iris Parra, Cristian Moyano, Jon Rueda, Ariel Guersenzvaig, Txetxu Ausin, Maite Cruz, David Casacuberta, Angel Puyol

Published in: Journal of Bioethical Inquiry | Issue 3/2022

Login to get access

Abstract

To analyze which ethically relevant biases have been identified by academic literature in artificial intelligence (AI) algorithms developed either for patient risk prediction and triage, or for contact tracing to deal with the COVID-19 pandemic. Additionally, to specifically investigate whether the role of social determinants of health (SDOH) have been considered in these AI developments or not. We conducted a scoping review of the literature, which covered publications from March 2020 to April 2021. ​Studies mentioning biases on AI algorithms developed for contact tracing and medical triage or risk prediction regarding COVID-19 were included. From 1054 identified articles, 20 studies were finally included. We propose a typology of biases identified in the literature based on bias, limitations and other ethical issues in both areas of analysis. Results on health disparities and SDOH were classified into five categories: racial disparities, biased data, socio-economic disparities, unequal accessibility and workforce, and information communication. SDOH needs to be considered in the clinical context, where they still seem underestimated. Epidemiological conditions depend on geographic location, so the use of local data in studies to develop international solutions may increase some biases. Gender bias was not specifically addressed in the articles included. The main biases are related to data collection and management. Ethical problems related to privacy, consent, and lack of regulation have been identified in contact tracing while some bias-related health inequalities have been highlighted. There is a need for further research focusing on SDOH and these specific AI apps.
Literature
go back to reference Amann J., A. Blasimme, E. Vayena, et al. 2020. Explainability for artificial intelligence in healthcare: A multidisciplinary perspective. BMC Medical Informatics and Decision Making 20(1): 310.PubMedPubMedCentralCrossRef Amann J., A. Blasimme, E. Vayena, et al. 2020. Explainability for artificial intelligence in healthcare: A multidisciplinary perspective. BMC Medical Informatics and Decision Making 20(1): 310.PubMedPubMedCentralCrossRef
go back to reference Anglemyer A., T.H.M. Moore, L. Parker, et al. 2020. Digital contact tracing technologies in epidemics: A rapid review. Cochrane Database of Systematic Reviews 8(8): CD013699.PubMed Anglemyer A., T.H.M. Moore, L. Parker, et al. 2020. Digital contact tracing technologies in epidemics: A rapid review. Cochrane Database of Systematic Reviews 8(8): CD013699.PubMed
go back to reference Arksey, H., and L. O’Malley. 2005. Scoping studies: Towards a methodological framework. International Journal of Social Research Methodology: Theory and Practice 8(1): 19–32.CrossRef Arksey, H., and L. O’Malley. 2005. Scoping studies: Towards a methodological framework. International Journal of Social Research Methodology: Theory and Practice 8(1): 19–32.CrossRef
go back to reference Ausín, T., and M.B. Andreu Martínez. 2020. Ética y protección de datos de salud en contexto de pandemia: Una referencia especial al caso de las aplicaciones de rastreo de contactos. Enrahonar An International Journal of Theoretical and Practical Reason 65: 47–56.CrossRef Ausín, T., and M.B. Andreu Martínez. 2020. Ética y protección de datos de salud en contexto de pandemia: Una referencia especial al caso de las aplicaciones de rastreo de contactos. Enrahonar An International Journal of Theoretical and Practical Reason 65: 47–56.CrossRef
go back to reference Baeza-Yates, R. 2018. Bias on the Web. Communications of the ACM 61(6): 54–61.CrossRef Baeza-Yates, R. 2018. Bias on the Web. Communications of the ACM 61(6): 54–61.CrossRef
go back to reference Bengio, Y., R. Janda, Y. Yu, et al. 2020. The need for privacy with public digital contact tracing during the COVID-19 pandemic. The Lancet Digital Health 2(7): 342–344.CrossRef Bengio, Y., R. Janda, Y. Yu, et al. 2020. The need for privacy with public digital contact tracing during the COVID-19 pandemic. The Lancet Digital Health 2(7): 342–344.CrossRef
go back to reference Buolamwini, J., and T. Gebru. 2018. Gender shades: Intersectional accuracy disparities in commercial gender classification. Proceedings of Machine Learning Research 81:1–15. Buolamwini, J., and T. Gebru. 2018. Gender shades: Intersectional accuracy disparities in commercial gender classification. Proceedings of Machine Learning Research 81:1–15.
go back to reference Colizza, V., E. Grill, and R. Mikolajczyk, et al. 2021. Time to evaluate COVID-19 contact-tracing apps. Nature Medicine 27(3): 361–362. Colizza, V., E. Grill, and R. Mikolajczyk, et al. 2021. Time to evaluate COVID-19 contact-tracing apps. Nature Medicine 27(3): 361–362.
go back to reference Figueroa, C.A., T. Luo, A. Aguilera, and C.R. Lyles. 2021. The need for feminist intersectionality in digital health. The Lancet Digital Health 3(8): e526–e533.PubMedCrossRef Figueroa, C.A., T. Luo, A. Aguilera, and C.R. Lyles. 2021. The need for feminist intersectionality in digital health. The Lancet Digital Health 3(8): e526–e533.PubMedCrossRef
go back to reference Foulds, J.R., R. Islam, K.N. Keya, and S. Pan. 2020. Bayesian modeling of intersectional fairness: The variance of bias. Proceedings of the 2020 SIAM International Conference on Data Mining: 424–432. Foulds, J.R., R. Islam, K.N. Keya, and S. Pan. 2020. Bayesian modeling of intersectional fairness: The variance of bias. Proceedings of the 2020 SIAM International Conference on Data Mining: 424–432.
go back to reference Grantz, K.H., H.R. Meredith, D.A.T. Cummings et al. 2020. The use of mobile phone data to inform analysis of COVID-19 pandemic epidemiology. Nature Communications 11(1): 1–8.CrossRef Grantz, K.H., H.R. Meredith, D.A.T. Cummings et al. 2020. The use of mobile phone data to inform analysis of COVID-19 pandemic epidemiology. Nature Communications 11(1): 1–8.CrossRef
go back to reference Gulliver, R., M. Fahmi, and D. Abramson. 2020. Technical considerations when implementing digital infrastructure for social policy. Australian Journal of Social Issues 56(2): 269–287.CrossRef Gulliver, R., M. Fahmi, and D. Abramson. 2020. Technical considerations when implementing digital infrastructure for social policy. Australian Journal of Social Issues 56(2): 269–287.CrossRef
go back to reference Guo, Y., Y. Zhang, T. Lyu, et al. 2021. The application of artificial intelligence and data integration in COVID-19 studies: A scoping review. Journal of the American Medical Informatics Association 28(9): 2050–2067.PubMedPubMedCentralCrossRef Guo, Y., Y. Zhang, T. Lyu, et al. 2021. The application of artificial intelligence and data integration in COVID-19 studies: A scoping review. Journal of the American Medical Informatics Association 28(9): 2050–2067.PubMedPubMedCentralCrossRef
go back to reference Hellewell, J., S. Abbott, A. Gimma, N.I. Bosse, C.I Jarvis,T.W. Russell, ... and R.M. Eggo. 2020. Feasibility of controlling COVID-19 outbreaks by isolation of cases and contacts. The Lancet Global Health 8(4), e488–e496. Hellewell, J., S. Abbott, A. Gimma, N.I. Bosse, C.I Jarvis,T.W. Russell, ... and R.M. Eggo. 2020. Feasibility of controlling COVID-19 outbreaks by isolation of cases and contacts. The Lancet Global Health 8(4), e488–e496.
go back to reference Hendl, T., and T. Roxanne, 2022. Digital surveillance in a pandemic response: What bioethics ought to learn from Indigenous perspectives. Bioethics 36(3): 305–312.PubMedCrossRef Hendl, T., and T. Roxanne, 2022. Digital surveillance in a pandemic response: What bioethics ought to learn from Indigenous perspectives. Bioethics 36(3): 305–312.PubMedCrossRef
go back to reference Hisada, S., T. Murayama, K. Tsubouchi, et al. 2020. Surveillance of early stage COVID-19 clusters using search query logs and mobile device-based location information. Scientific Reports 10(1): 18680.PubMedPubMedCentralCrossRef Hisada, S., T. Murayama, K. Tsubouchi, et al. 2020. Surveillance of early stage COVID-19 clusters using search query logs and mobile device-based location information. Scientific Reports 10(1): 18680.PubMedPubMedCentralCrossRef
go back to reference Jamshidi, M., A. Lalbakhsh, J. Talla et al. 2020. Artificial intelligence and COVID-19: Deep learning approaches for diagnosis and treatment. IEEE Access 8: 109581–109595.PubMedCrossRef Jamshidi, M., A. Lalbakhsh, J. Talla et al. 2020. Artificial intelligence and COVID-19: Deep learning approaches for diagnosis and treatment. IEEE Access 8: 109581–109595.PubMedCrossRef
go back to reference Kapilashrami A., and O. Hankivsky. 2018. Intersectionality and why it matters to global health. Lancet 391(10140): 2589–2591.PubMedCrossRef Kapilashrami A., and O. Hankivsky. 2018. Intersectionality and why it matters to global health. Lancet 391(10140): 2589–2591.PubMedCrossRef
go back to reference Klingwort, J., and R. Schnell, 2020. Critical limitations of digital epidemiology: Why COVID-19 apps are useless. Survey Research Methods 14(2): 95–101. Klingwort, J., and R. Schnell, 2020. Critical limitations of digital epidemiology: Why COVID-19 apps are useless. Survey Research Methods 14(2): 95–101.
go back to reference Mali, S.N., and A.P. Pratap. 2020. Targeting infectious coronavirus disease 2019 (COVID-19) with artificial intelligence (AI) applications: Evidence based opinion. Infectious Disorders–Drug Targets 21(4): 475–477.CrossRef Mali, S.N., and A.P. Pratap. 2020. Targeting infectious coronavirus disease 2019 (COVID-19) with artificial intelligence (AI) applications: Evidence based opinion. Infectious Disorders–Drug Targets 21(4): 475–477.CrossRef
go back to reference Malik, Y.S., S. Sircar, S. Bhat, et al. 2021. How artificial intelligence may help the Covid-19 pandemic: Pitfalls and lessons for the future. Reviews in Medical Virology 31(5):1–11.PubMedCrossRef Malik, Y.S., S. Sircar, S. Bhat, et al. 2021. How artificial intelligence may help the Covid-19 pandemic: Pitfalls and lessons for the future. Reviews in Medical Virology 31(5):1–11.PubMedCrossRef
go back to reference Marabelli, M., E. Vaast, and J.L. Li. 2021. Preventing the digital scars of COVID-19. European Journal of Information Systems 30(2): 176–192.CrossRef Marabelli, M., E. Vaast, and J.L. Li. 2021. Preventing the digital scars of COVID-19. European Journal of Information Systems 30(2): 176–192.CrossRef
go back to reference Mbunge, E. 2020. Integrating emerging technologies into COVID-19 contact tracing: Opportunities, challenges and pitfalls. Diabetes Metabolic Syndrome: Clinical Research and Reviews 14(6): 1631–1636.CrossRef Mbunge, E. 2020. Integrating emerging technologies into COVID-19 contact tracing: Opportunities, challenges and pitfalls. Diabetes Metabolic Syndrome: Clinical Research and Reviews 14(6): 1631–1636.CrossRef
go back to reference Mbunge, E., B. Akinnuwesi, S.G. Fashoto, A.S. Metfula, and P. Mashhwama. 2020. A critical review of emerging technologies for tackling COVID-19 pandemic. Human Behavior and Emerging Technologies 3(1): 25–39.PubMedPubMedCentralCrossRef Mbunge, E., B. Akinnuwesi, S.G. Fashoto, A.S. Metfula, and P. Mashhwama. 2020. A critical review of emerging technologies for tackling COVID-19 pandemic. Human Behavior and Emerging Technologies 3(1): 25–39.PubMedPubMedCentralCrossRef
go back to reference Moseley, D. 2021. Bias. In The international encyclopedia of ethics, edited by H. LaFollette, 1–6. John Wiley & Sons. Moseley, D. 2021. Bias. In The international encyclopedia of ethics, edited by H. LaFollette, 1–6. John Wiley & Sons.
go back to reference Munn, Z., M.D.J. Peters, C. Stern, C. Tufanaru, A. McArthur, and E. Aromataris. 2018. Systematic review or scoping review? Guidance for authors when choosing between a systematic or scoping review approach. BMC Medical Research Methodology 18(1): 1–7.CrossRef Munn, Z., M.D.J. Peters, C. Stern, C. Tufanaru, A. McArthur, and E. Aromataris. 2018. Systematic review or scoping review? Guidance for authors when choosing between a systematic or scoping review approach. BMC Medical Research Methodology 18(1): 1–7.CrossRef
go back to reference Nagendran, M., Y. Chen, C.A. Lovejoy et al. 2020. Artificial intelligence versus clinicians: Systematic review of design, reporting standards, and claims of deep learning studies. BMJ 368: m689.PubMedPubMedCentralCrossRef Nagendran, M., Y. Chen, C.A. Lovejoy et al. 2020. Artificial intelligence versus clinicians: Systematic review of design, reporting standards, and claims of deep learning studies. BMJ 368: m689.PubMedPubMedCentralCrossRef
go back to reference Park, S., G.J. Choi, and H. Ko. 2020. Information technology-based tracing strategy in response to COVID-19 in South Korea—privacy controversies. JAMA 323(21): 2129–2130.PubMedCrossRef Park, S., G.J. Choi, and H. Ko. 2020. Information technology-based tracing strategy in response to COVID-19 in South Korea—privacy controversies. JAMA 323(21): 2129–2130.PubMedCrossRef
go back to reference Pham, M.T., A. Rajić, J.D. Greig, J.M. Sargeant, A. Papadopoulos, and S.A. McEwan. 2014. A scoping review of scoping reviews: Advancing the approach and enhancing the consistency. Research Synthesis Methods 5(4): 371–385.PubMedPubMedCentralCrossRef Pham, M.T., A. Rajić, J.D. Greig, J.M. Sargeant, A. Papadopoulos, and S.A. McEwan. 2014. A scoping review of scoping reviews: Advancing the approach and enhancing the consistency. Research Synthesis Methods 5(4): 371–385.PubMedPubMedCentralCrossRef
go back to reference Ravizza, A., F. Sternini, F. Molinari, E. Santoro, and F. Cabitza. 2021. A proposal for COVID-19 applications enabling extensive epidemiological studies. Procedia Computer Science 181: 589–596.PubMedPubMedCentralCrossRef Ravizza, A., F. Sternini, F. Molinari, E. Santoro, and F. Cabitza. 2021. A proposal for COVID-19 applications enabling extensive epidemiological studies. Procedia Computer Science 181: 589–596.PubMedPubMedCentralCrossRef
go back to reference Roche, S. 2020. Smile, you’re being traced! Some thoughts about the ethical issues of digital contact tracing applications. Journal of Location Based Services 14(2): 71–91.CrossRef Roche, S. 2020. Smile, you’re being traced! Some thoughts about the ethical issues of digital contact tracing applications. Journal of Location Based Services 14(2): 71–91.CrossRef
go back to reference Röösli, E., B. Rice, and T. Hernandez-Boussard. 2021. Bias at warp speed: How AI may contribute to the disparities gap in the time of COVID-19. Journal of the American Medical Informatics Association 28(1): 190–192.PubMedCrossRef Röösli, E., B. Rice, and T. Hernandez-Boussard. 2021. Bias at warp speed: How AI may contribute to the disparities gap in the time of COVID-19. Journal of the American Medical Informatics Association 28(1): 190–192.PubMedCrossRef
go back to reference Roy, A., V. Iosifidis, and E. Ntoutsi. 2021. Multi-Fair Pareto Boosting. arXiv preprint. arXiv:2104.13312. Roy, A., V. Iosifidis, and E. Ntoutsi. 2021. Multi-Fair Pareto Boosting. arXiv preprint. arXiv:2104.13312.
go back to reference Sáez, C., N. Romero, J.A. Conejero, and J.M. García-Gómez. 2021. Potential limitations in COVID-19 machine learning due to data source variability: A case study in the nCov2019 dataset. Journal of the American Medical Informatics Association 28(2): 360–364.PubMedCrossRef Sáez, C., N. Romero, J.A. Conejero, and J.M. García-Gómez. 2021. Potential limitations in COVID-19 machine learning due to data source variability: A case study in the nCov2019 dataset. Journal of the American Medical Informatics Association 28(2): 360–364.PubMedCrossRef
go back to reference Scott, I.A., and E.W. Coiera. 2020. Can AI help in the fight against COVID-19? Medical Journal of Australia 213(10): 439–441.PubMedCrossRef Scott, I.A., and E.W. Coiera. 2020. Can AI help in the fight against COVID-19? Medical Journal of Australia 213(10): 439–441.PubMedCrossRef
go back to reference Shachar, C., S. Gerke, and E.Y. Adashi. 2020. AI surveillance during pandemics: Ethical implementation imperatives. Hastings Center Report 50(3): 18–21.PubMedCrossRef Shachar, C., S. Gerke, and E.Y. Adashi. 2020. AI surveillance during pandemics: Ethical implementation imperatives. Hastings Center Report 50(3): 18–21.PubMedCrossRef
go back to reference Sun, R., W. Wangm, M. Xue, G. Tyson, S. Camtepe, and D.C. Ranasinghe. 2021. An empirical assessment of global COVID-19 contact tracing applications. 43rd International Conference on Software Engineering (ICSE): 1085–1097. Sun, R., W. Wangm, M. Xue, G. Tyson, S. Camtepe, and D.C. Ranasinghe. 2021. An empirical assessment of global COVID-19 contact tracing applications. 43rd International Conference on Software Engineering (ICSE): 1085–1097.
go back to reference Tricco, A.C., E. Lillie, W. Zarin et al. 2016. A scoping review on the conduct and reporting of scoping reviews. BMC Medical Research Methodology 16(1): 1–10.CrossRef Tricco, A.C., E. Lillie, W. Zarin et al. 2016. A scoping review on the conduct and reporting of scoping reviews. BMC Medical Research Methodology 16(1): 1–10.CrossRef
go back to reference Tsamados A., N. Aggarwal, J. Cowls et al. 2022. The ethics of algorithms: Key problems and solutions. AI & Society 37: 215–230.CrossRef Tsamados A., N. Aggarwal, J. Cowls et al. 2022. The ethics of algorithms: Key problems and solutions. AI & Society 37: 215–230.CrossRef
go back to reference Wynants, L., B. Van Calster, G.S. Collins. et al. 2020. Prediction models for diagnosis and prognosis of covid-19: Systematic review and critical appraisal. BMJ 369: m1328.PubMedPubMedCentralCrossRef Wynants, L., B. Van Calster, G.S. Collins. et al. 2020. Prediction models for diagnosis and prognosis of covid-19: Systematic review and critical appraisal. BMJ 369: m1328.PubMedPubMedCentralCrossRef
go back to reference Zou, J., and L. Schiebinger. 2021. Ensuring that biomedical AI benefits diverse populations. The Lancet 67: 103358. Zou, J., and L. Schiebinger. 2021. Ensuring that biomedical AI benefits diverse populations. The Lancet 67: 103358.
Metadata
Title
Bias in algorithms of AI systems developed for COVID-19: A scoping review
Authors
Janet Delgado
Alicia de Manuel
Iris Parra
Cristian Moyano
Jon Rueda
Ariel Guersenzvaig
Txetxu Ausin
Maite Cruz
David Casacuberta
Angel Puyol
Publication date
20-07-2022
Publisher
Springer Nature Singapore
Published in
Journal of Bioethical Inquiry / Issue 3/2022
Print ISSN: 1176-7529
Electronic ISSN: 1872-4353
DOI
https://doi.org/10.1007/s11673-022-10200-z

Other articles of this Issue 3/2022

Journal of Bioethical Inquiry 3/2022 Go to the issue