Acknowledgement
We would like to thank the executive committee of the Asian-Oceanian Society of Radiology for approving this position statement.
References
- U.S. Food and Drug Administration. Artificial intelligence and machine learning (AI/ML)-enabled medical devices [accessed on March 31, 2024]. Available at: https://www.fda.gov/medical-devices/software-medical-device-samd/artificial-intelligence-and-machine-learning-aiml-enabled-medical-devices
- Mun SK, Wong KH, Lo SB, Li Y, Bayarsaikhan S. Artificial intelligence for the future radiology diagnostic service. Front Mol Biosci 2021;7:614258
- Wu K, Wu E, Theodorou B, Liang W, Mack C, Glass L, et al. Characterizing the clinical adoption of medical AI devices through U.S. insurance claims. NEJM AI 2023;1:AIoa2300030
- Sung JJY, Savulescu J, Ngiam KY, An B, Ang TL, Yeoh KG, et al. Artificial intelligence for gastroenterology: Singapore artificial intelligence for gastroenterology working group position statement. J Gastroenterol Hepatol 2023;38:1669-1676
- Kim DW, Jang HY, Ko Y, Son JH, Kim PH, Kim SO, et al. Inconsistency in the use of the term "validation" in studies reporting the performance of deep learning algorithms in providing diagnosis from medical imaging. PLoS One 2020;15:e0238908
- Habehh H, Gohel S. Machine learning in healthcare. Curr Genomics 2021;22:291-300
- Davenport T, Kalakota R. The potential for artificial intelligence in healthcare. Future Healthc J 2019;6:94-98
- Ching T, Himmelstein DS, Beaulieu-Jones BK, Kalinin AA, Do BT, Way GP, et al. Opportunities and obstacles for deep learning in biology and medicine. J R Soc Interface 2018;15:20170387
- Sahiner B, Pezeshk A, Hadjiiski LM, Wang X, Drukker K, Cha KH, et al. Deep learning in medical imaging and radiation therapy. Med Phys 2019;46:e1-e36
- Tripathi S, Gabriel K, Dheer S, Parajuli A, Augustin AI, Elahi A, et al. Understanding biases and disparities in radiology AI datasets: a review. J Am Coll Radiol 2023;20:836-841
- Yang G, Ye Q, Xia J. Unbox the black-box for the medical explainable AI via multi-modal and multi-centre data fusion: a mini-review, two showcases and beyond. Inf Fusion 2022;77:29-52
- van der Velden BHM, Kuijf HJ, Gilhuijs KGA, Viergever MA. Explainable artificial intelligence (XAI) in deep learning-based medical image analysis. Med Image Anal 2022;79:102470
- GDPR.EU. What is GDPR, the EU's new data protection law? [accessed on June 11, 2024]. Available at: https://gdpr.eu/what-is-gdpr/?cn-reloaded=1
- Makkar A, Santosh KC. SecureFed: federated learning empowered medical imaging technique to analyze lung abnormalities in chest X-rays. Int J Mach Learn Cybern 2023;14:2659-2670
- Konecny J, McMahan B, Ramage D. Federated optimization: distributed optimization beyond the datacenter. arXiv [Preprint]. 2015 [accessed on November 5, 2023]. Available at: https://doi.org/10.48550/arXiv.1511.03575
- Liu P, Xu X, Wang W. Threats, attacks and defenses to federated learning: issues, taxonomy and perspectives. Cybersecurity 2022;5:4
- Dwork C, Roth A. The algorithmic foundations of differential privacy. Found Trends Theor Comput Sci 2014;9:211-407
- Carter RE, Anand V, Harmon Jr DM, Pellikka PA. Model drift: when it can be a sign of success and when it can be an occult problem. Intell Based Med 2022;6:100058
- Futoma J, Simons M, Panch T, Doshi-Velez F, Celi LA. The myth of generalisability in clinical research and machine learning in health care. Lancet Digit Health 2020;2:e489-e492
- Ministry of Health. Artificial intelligence in healthcare guidelines (AIHGIe) [accessed on October 26, 2023]. Available at: https://www.moh.gov.sg/docs/librariesprovider5/eguides/1-0-artificial-in-healthcare-guidelines-(aihgle)_publishedoct21.pdf
- European Commission. White paper on artificial intelligence: a European approach to excellence and trust [accessed on October 26, 2023]. Available at: https://commission.europa.eu/document/d2ec4039-c5be-423a-81ef-b9e44e79825b_en
- Juluru K, Shih HH, Keshava Murthy KN, Elnajjar P, El-Rowmeim A, Roth C, et al. Integrating Al algorithms into the clinical workflow. Radiol Artif Intell 2021;3:e210013
- Blezek DJ, Olson-Williams L, Missert A, Korfiatis P. AI integration in the clinical workflow. J Digit Imaging 2021;34:1435-1446
- World Health Organization. Ethics and governance of artificial intelligence for health [accessed on November 5, 2023]. Available at: https://www.who.int/publications/i/item/9789240029200
- Geis JR, Brady A, Wu CC, Spencer J, Ranschaert E, Jaremko JL, et al. Ethics of artificial intelligence in radiology: summary of the joint European and North American multisociety statement. Insights Imaging 2019;10:101
- Dawson D, Schleiger E, Horton J, McLaughlin J, Robinson C, Quezada G, et al. Artificial intelligence: Australia's ethics framework [accessed on October 26, 2023]. Available at: https://www.csiro.au/-/media/D61/Reports/Artificial-Intelligence-ethics-framework.pdf
- CIFAR. CIFAR and the French National Centre for Scientific Research (CNRS) establish CAD $1M research agreement [accessed on November 5, 2023]. Available at: https://cifar.ca/cifarnews/2021/05/12/cifar-and-the-french-national-centre-for-scientific-research-cnrs-establish-cad-1m-research-agreement
- European Commission. France AI strategy report [accessed on November 5, 2023]. Available at: https://ai-watch.ec.europa.eu/countries/france/france-ai-strategy-report_en
- GOV.UK. Centre for data ethics and innovation [accessed on November 5, 2023]. Available at: https://www.gov.uk/government/organisations/centre-for-data-ethics-and-innovation
- European Commission. Ethics guidelines for trustworthy AI [accessed on October 26, 2023]. Available at: https://digital-strategy.ec.europa.eu/en/library/ethics-guidelines-trustworthy-ai
- Saw SN, Ng KH. Current challenges of implementing artificial intelligence in medical imaging. Phys Med 2022;100:12-17
- U.S. Food and Drug Administration. Artificial intelligence & medical products: how CBER, CDER, CDRH, and OCP are working together [accessed on April 1, 2024]. Available at: https://www.fda.gov/media/177030/download
- European Coordination Committee of the Radiological, Electromedical and Healthcare IT Industry (COCIR). Artificial intelligence in EU medical device legislation [accessed on October 26, 2023]. Available at: https://www.cocir.org/fileadmin/Position_Papers_2020/COCIR_Analysis_on_AI_in_medical_Device_Legislation_-_Sept._2020_-_Final_2.pdf
- Maliha G, Gerke S, Cohen IG, Parikh RB. Artificial intelligence and liability in medicine: balancing safety and innovation. Milbank Q 2021;99:629-647
- Justia US Law. Ross v. Jacobs [accessed on June 11, 2024]. Available at: https://law.justia.com/cases/oklahoma/court-of-appeals-civil/1984/9765.html
- Price WN 2nd, Gerke S, Cohen IG. Potential liability for physicians using artificial intelligence. JAMA 2019;322:1765-1766
- U.S. Food and Drug Administration. Predetermined change control plans for machine learning-enabled medical devices: guiding principles [accessed on April 1, 2024]. Available at: https://www.fda.gov/medical-devices/software-medical-device-samd/predetermined-change-control-plans-machine-learning-enabled-medical-devices-guiding-principles
- Nguyen NH, Nguyen HQ, Nguyen NT, Nguyen TV, Pham HH, Nguyen TN. Deployment and validation of an AI system for detecting abnormal chest radiographs in clinical settings. Front Digit Health 2022;4:890759
- Qure.ai. Scaling up TB screening with AI: deploying automated X-ray screening in remote regions [accessed on October 26, 2023]. Available at: https://www.qure.ai/blog/scaling-up-tb-screening-with-ai-deploying-automated-x-ray-screening-in-remote-regions
- Leibig C, Brehmer M, Bunk S, Byng D, Pinker K, Umutlu L. Combining the strengths of radiologists and AI for breast cancer screening: a retrospective analysis. Lancet Digit Health 2022;4:e507-e519
- Hallinan JTPD, Zhu L, Yang K, Makmur A, Algazwi DAR, Thian YL, et al. Deep learning model for automated detection and classification of central canal, lateral recess, and neural foraminal stenosis at lumbar spine MRI. Radiology 2021;300:130-138
- Lincoln CM, Chatterjee R, Willis MH. Augmented radiology: looking over the horizon. Radiol Artif Intell 2019;1:e180039
- American College of Radiology. ACR AI-Lab main page [accessed on October 26, 2023]. Available at: https://ailab.acr.org/Account/Home.
- Ardestani A, Li MD, Chea P, Wortman JR, Medina A, Kalpathy-Cramer J, et al. External COVID-19 deep learning model validation on ACR AI-LAB: it's a brave new world. J Am Coll Radiol 2022;19:891-900