This critical review looks at the assessment of the application of artificial intelligence in handling legal documents with specific reference to medical negligence cases with a view of identifying its transformative potentialities, issues and ethical concerns. The review consolidates findings that show the impact of AI in improving the efficiency, accuracy and justice delivery in the legal profession. The studies show increased efficiency in speed of document review and enhancement of the accuracy of the reviewed documents, with time efficiency estimates of 60% reduction of time. However, the review also outlines some of the problems that continue to characterize AI, such as data quality problems, biased algorithms and the problem of the opaque decision-making system. This paper assesses ethical issues related to patient autonomy, justice and non-malignant suffering, with particular focus on patient privacy and fair process, and on potential unfairness to patients. This paper’s review of AI innovations finds that regulations lag behind AI developments, leading to unsettled issues regarding legal responsibility for AI and user control over AI-generated results and findings in legal proceedings. Some of the future avenues that are presented in the study are the future of XAI for legal purposes, utilizing federated learning for resolving privacy issues, and the need to foster adaptive regulation. Finally, the review advocates for Legal Subject Matter Experts to collaborate with legal informatics experts, ethicists, and policy makers to develop the best solutions to implement AI in medical negligence claims. It reasons that there is great potential for AI to have a deep impact on the practice of law but when done, it must do so in a way that respects justice and on the Rights of Individuals.
References
[1]
How, M. and Cheah, S. (2024) Forging the Future: Strategic Approaches to Quantum AI Integration for Industry Transformation. AI, 5, 290-323. https://doi.org/10.3390/ai5010015
[2]
Mahaffey, C.D. (2024) Enhancing Legal Research: The Role of AI in the Legal Industry. https://medium.com/@AIreporter/enhancing-legal-research-the-role-of-ai-in-the-legal-industry-e39fe5ccd1e8
[3]
Zeleznikow, J. (2023) The Benefits and Dangers of Using Machine Learning to Support Making Legal Predictions. WIREsDataMiningandKnowledgeDiscovery, 13, e1505. https://doi.org/10.1002/widm.1505
[4]
Hosny, A., Parmar, C., Quackenbush, J., Schwartz, L.H. and Aerts, H.J.W.L. (2018) Artificial intelligence in radiology. NatureReviewsCancer, 18, 500-510. https://doi.org/10.1038/s41568-018-0016-5
[5]
Mohd Mokhtar, M.F. (2020) The Law and Challenges to Access Medical Record for Medical Negligence Claims in Malaysia. JurnalUndang-undangdanMasyarakat, 26, 43-50. https://doi.org/10.17576/juum-2020-26-05
[6]
Davenport, T. and Kalakota, R. (2019) The Potential for Artificial Intelligence in Healthcare. FutureHealthcareJournal, 6, 94-98. https://doi.org/10.7861/futurehosp.6-2-94
[7]
Terranova, C., Cestonaro, C., Fava, L. and Cinquetti, A. (2024) AI and Professional Liability Assessment in Healthcare. A Revolution in Legal Medicine? FrontiersinMedicine, 10, Article 1337335. https://doi.org/10.3389/fmed.2023.1337335
[8]
Ferrara, E. (2023) Fairness and Bias in Artificial Intelligence: A Brief Survey of Sources, Impacts, and Mitigation Strategies. Sci, 6, Article 3. https://doi.org/10.3390/sci6010003
[9]
Zakir, M.H., Bashir, S., Ali, R.N. and Khan, S.H. (2024) Artificial Intelligence and Machine Learning in Legal Research: A Comprehensive Analysis. QlanticJournalofSocialSciences, 5, 307-317. https://doi.org/10.55737/qjss.203679344
[10]
Cai, L., Li, J., Lv, H., Liu, W., Niu, H. and Wang, Z. (2023) Integrating Domain Knowledge for Biomedical Text Analysis into Deep Learning: A Survey. JournalofBiomedicalInformatics, 143, Article ID: 104418. https://doi.org/10.1016/j.jbi.2023.104418
[11]
Vinay, S.B. (2024) Natural Language Processing for Legal Documentation in Indian Languages. International Journal of Natural Language Processing (IJNLP), 2, 1-11.
[12]
Pietropaoli, I., Anastasiadou, I., Gauci, J.P. and MacAlpine, H. (2023) Use of Artificial Intelligence in Legal Practice. British Institute of International and Comparative Law.
[13]
Deloitte (2016) Deloitte Forms Alliance with Kira Systems to Drive the Adoption of Artificial Intelligence in the Workplace. https://www.prnewswire.com/news-releases/deloitte-forms-alliance-with-kira-systems-to-drive-the-adoption-of-artificial-intelligence-in-the-workplace-300232454.html
[14]
Loh, E. (2018) Medicine and the Rise of the Robots: A Qualitative Review of Recent Advances of Artificial Intelligence in Health. BMJLeader, 2, 59-63. https://doi.org/10.1136/leader-2018-000071
[15]
Yu, R. and Alì, G.S. (2019) What’s Inside the Black Box? AI Challenges for Lawyers and Researchers. LegalInformationManagement, 19, 2-13. https://doi.org/10.1017/s1472669619000021
[16]
Arora, J., Patankar, T., Shah, A. and Joshi, S. (2020) Artificial Intelligence as Legal Research Assistant. Fire.
[17]
Gray, M., Savelka, J., Oliver, W. and Ashley, K. (2023) Automatic Identification and Empirical Analysis of Legally Relevant Factors. Proceedings of the Nineteenth International Conference on Artificial Intelligence and Law, Braga, 19-23 June 2023, 101-110. https://doi.org/10.1145/3594536.3595157
[18]
Al-Kofahi, K., Tyrrell, A., Vachher, A. and Jackson, P. (2001) A Machine Learning Approach to Prior Case Retrieval. Proceedings of the 8th International Conference on Artificial Intelligence and Law, New York, 1‐25 May 2001, 88-93. https://doi.org/10.1145/383535.383545
[19]
Lee, M., Guthrie, S. and Girvan, S. (2021) The Potential Impact of Artificial Intelligence on Medical Malpractice Claims from Diagnostic Errors in Radiology in New York. Society of Actuaries Research Institute.
[20]
Mennella, C., Maniscalco, U., De Pietro, G. and Esposito, M. (2024) Ethical and Regulatory Challenges of AI Technologies in Healthcare: A Narrative Review. Heliyon, 10, e26297. https://doi.org/10.1016/j.heliyon.2024.e26297
[21]
Papadouli, V. (2023) Artificial Intelligence’s Black Box: Posing New Ethical and Legal Challenges on Modern Societies. In: Kornilakis, A., Nouskalis, G., Pergantis, V. and Tzimas, T., Eds., Artificial Intelligence and Normative Challenges, Springer, 39-62. https://doi.org/10.1007/978-3-031-41081-9_4
[22]
Ali, S., Abuhmed, T., El-Sappagh, S., Muhammad, K., Alonso-Moral, J.M., Confalonieri, R., etal. (2023) Explainable Artificial Intelligence (XAI): What We Know and What Is Left to Attain Trustworthy Artificial Intelligence. InformationFusion, 99, Article ID: 101805. https://doi.org/10.1016/j.inffus.2023.101805
[23]
Wang, M., Wei, Z., Jia, M., Chen, L. and Ji, H. (2022) Deep Learning Model for Multi-Classification of Infectious Diseases from Unstructured Electronic Medical Records. BMCMedicalInformaticsandDecisionMaking, 22, Article No. 41. https://doi.org/10.1186/s12911-022-01776-y
[24]
Miotto, R., Li, L., Kidd, B.A. and Dudley, J.T. (2016) Deep Patient: An Unsupervised Representation to Predict the Future of Patients from the Electronic Health Records. ScientificReports, 6, Article No. 26094. https://doi.org/10.1038/srep26094
[25]
Rajkomar, A., Oren, E., Chen, K., Dai, A.M., Hajaj, N., Hardt, M., etal. (2018) Scalable and Accurate Deep Learning with Electronic Health Records. NPJDigitalMedicine, 1, Article No. 18. https://doi.org/10.1038/s41746-018-0029-1
[26]
Baviskar, D., Ahirrao, S., Potdar, V. and Kotecha, K. (2021) Efficient Automated Processing of the Unstructured Documents Using Artificial Intelligence: A Systematic Literature Review and Future Directions. IEEEAccess, 9, 72894-72936. https://doi.org/10.1109/access.2021.3072900
[27]
Agatstein, K. (2023) Chart Review Is Dead; Long Live Chart Review: How Artificial Intelligence Will Make Human Review of Medical Records Obsolete, One Day. PopulationHealthManagement, 26, 438-440. https://doi.org/10.1089/pop.2023.0227
[28]
Tulandi, T. (2023) Disclosure of Artificial Intelligence/ChatGPT-Generated Manuscripts. Journal of Obstetrics and GynaecologyCanada, 45, 543-544. https://doi.org/10.1016/j.jogc.2023.03.013
[29]
Czarnecki, M. (2024) AI in the Legal Industry: How Attorneys and Law Firms Are Using the Latest Technology to Their Advantage. https://www.v500.com/dus-for-legal-sector/
[30]
Ironclad Inc (2024) New Study Finds Majority of Lawyers Trust AI, Points to Improved Quality of Work and Increased Job Satisfaction. https://www.prnewswire.com/news-releases/new-study-finds-majority-of-lawyers-trust-ai-points-to-improved-quality-of-work-and-increased-job-satisfaction-302169703.html
[31]
Jackowski, M. and Araszkiewicz, M. (2023) First Global Report on the State of Artificial Intelligence in Legal Practice. Liquid Legal Institute, Almenrausch. https://doi.org/10.38023/5501c854-14eb-4529-b6b9-44343e477f44
[32]
Murray, M.D. (2023) Artificial Intelligence and the Practice of Law Part 1: Lawyers Must Be Professional and Responsible Supervisors of Ai. Social Science Research Network. https://doi.org/10.2139/ssrn.4478588
[33]
Zhang, W., Shi, J., Wang, X. and Wynn, H. (2023) AI-Powered Decision-Making in Facilitating Insurance Claim Dispute Resolution. AnnalsofOperationsResearch. https://doi.org/10.1007/s10479-023-05631-9
[34]
Farber, H.S. and White, M.J. (1991) Medical Malpractice: An Empirical Examination of the Litigation Process. TheRANDJournalofEconomics, 22, 199-217. https://doi.org/10.2307/2601017
[35]
Beck, J.T., Rammage, M., Jackson, G.P., Preininger, A.M., Dankwa-Mullan, I., Roebuck, M.C., etal. (2020) Artificial Intelligence Tool for Optimizing Eligibility Screening for Clinical Trials in a Large Community Cancer Center. JCOClinicalCancerInformatics, 4, 50-59. https://doi.org/10.1200/cci.19.00079
[36]
Tu, S.S., Cyphert, A. and Perl, S.J. (2024) Artificial Intelligence: Legal Reasoning, Le-gal Research and Legal Writing. MinnesotaJournalofLaw, Science&Technology, 25, 105-125.
[37]
Esfandi, G. (2023) The Potential and Drawbacks of Using Artificial Intelligence in the Legal Field. https://plaintiffmagazine.com/recent-issues/item/the-potential-and-drawbacks-of-using-artificial-intelligence-in-the-legal-field
[38]
Aquino, Y.S.J. (2023) Making Decisions: Bias in Artificial Intelligence and Data-Driven Diagnostic Tools. AustralianJournalofGeneralPractice, 52, 439-442. https://doi.org/10.31128/ajgp-12-22-6630
[39]
Grote, T. and Keeling, G. (2022) On Algorithmic Fairness in Medical Practice. CambridgeQuarterlyofHealthcareEthics, 31, 83-94. https://doi.org/10.1017/s0963180121000839
[40]
Hoffman, S. and Podgurski, A. (2020) Artificial Intelligence and Discrimination in Health Care. Social Science Research Network.
[41]
Xu, J., Xiao, Y., Wang, W.H., Ning, Y., Shenkman, E., Bian, J. and Wang, F. (2022) Algorithmic Fairness in Computational Medicine. medRxiv. https://doi.org/10.1101/2022.01.16.21267299
[42]
Arora, A., Alderman, J.E., Palmer, J., Ganapathi, S., Laws, E., McCradden, M.D., etal. (2023) The Value of Standards for Health Datasets in Artificial Intelligence-Based Applications. NatureMedicine, 29, 2929-2938. https://doi.org/10.1038/s41591-023-02608-w
[43]
Lee, N.T., Resnick, P. and Barton, G. (2019) Algorithmic Bias Detection and Mitigation: Best Practices and Policies to Reduce Consumer Harms. https://www.brookings.edu/articles/algorithmic-bias-detection-and-mitigation-best-practices-and-policies-to-reduce-consumer-harms/
[44]
Dahlawi, S., Menezes, R.G., Khan, M.A., Waris, A., Saifullah, and Naseer, M.M. (2021) Medical Negligence in Healthcare Organizations and Its Impact on Patient Safety and Public Health: A Bibliometric Study. F1000Research, 10, Article 174. https://doi.org/10.12688/f1000research.37448.1
[45]
Hambali, S.N. and Khodapanahandeh, S. (2014) A Review of Medical Malpractice Issues in Malaysia under Tort Litigation System. GlobalJournalofHealthScience, 6, 76-83. https://doi.org/10.5539/gjhs.v6n4p76
[46]
Cestonaro, C., Delicati, A., Marcante, B., Caenazzo, L. and Tozzo, P. (2023) Defining Medical Liability When Artificial Intelligence Is Applied on Diagnostic Algorithms: A Systematic Review. FrontiersinMedicine, 10, Article 1305756. https://doi.org/10.3389/fmed.2023.1305756
[47]
Adam, H., Balagopalan, A., Alsentzer, E., Christia, F. and Ghassemi, M. (2022) Mitigating the Impact of Biased Artificial Intelligence in Emergency Decision-making. CommunicationsMedicine, 2, Article No. 149. https://doi.org/10.1038/s43856-022-00214-4
[48]
Deeks, A.S. (2019) The Judicial Demand for Explainable Artificial Intelligence. ColumbiaLawReview, 119, 1829-1850.
[49]
Chaudhary, G. (2024) Explainable Artificial Intelligence (XAI): Reflections on Judicial System. KutafinLawReview, 10, 872-889. https://doi.org/10.17803/2713-0533.2023.4.26.872-889
[50]
Joshi, M.G. (2024) A Systematic Review on Explainable AI in Legal Domain. InternationalJournalforResearchinAppliedScienceandEngineeringTechnology, 12, 1019-1025. https://doi.org/10.22214/ijraset.2024.61736
[51]
Hossain, M.I., Zamzmi, G., Mouton, P.R., Salekin, M.S., Sun, Y. and Goldgof, D. (2023) Explainable AI for Medical Data: Current Methods, Limitations, and Future Directions. ACMComputingSurveys, 1-41. https://doi.org/10.1145/3637487
[52]
Sewada, R., Jangid, A., Kumar, P. and Mishra, N. (2023) Explainable Artificial Intelligence (XAI). InternationalJournalofFoodandNutritionalScience, 12, 2660-2666. https://doi.org/10.48047/ijfans/v12/i1/271
[53]
González-Alday, R., García-Cuesta, E., Kulikowski, C.A. and Maojo, V. (2023) A Scoping Review on the Progress, Applicability, and Future of Explainable Artificial Intelligence in Medicine. AppliedSciences, 13, Article 10778. https://doi.org/10.3390/app131910778
[54]
Prentzas, N., Kakas, A.C. and Pattichis, C.S. (2023) Explainable AI Applications in the Medical Domain: A Systematic Review. arXiv: 2308.05411. https://doi.org/10.48550/arXiv.2308.05411
[55]
Mahadik, S.S. (2024) A Study on Perception of Lawyers about the Impact of Artificial Intelligence on the Legal Profession. InternationalJournalforMultidisciplinaryResearch, 6, 9 p. https://doi.org/10.36948/ijfmr.2024.v06i03.18051
[56]
Armour, J., Parnham, R. and Sako, M. (2020) Augmented Lawyering. SSRNElectronicJournal, 3-75. https://doi.org/10.2139/ssrn.3688896
[57]
Bhima, B., Rahmania Az Zahra, A. and Nurtino, T. (2023) Enhancing Organizational Efficiency through the Integration of Artificial Intelligence in Management Information Systems. APTISITransactionsonManagement (ATM), 7, 282-289. https://doi.org/10.33050/atm.v7i3.2146
[58]
Madaoui, N. (2024) The Impact of Artificial Intelligence on Legal Systems: Challenges and Opportunities. Problemsoflegality, 1, 285-303. https://doi.org/10.21564/2414-990x.164.289266
[59]
Oldemeyer, L., Jede, A. and Teuteberg, F. (2024) Investigation of Artificial Intelligence in SMEs: A Systematic Review of the State of the Art and the Main Implementation Challenges. ManagementReviewQuarterly. https://doi.org/10.1007/s11301-024-00405-4
[60]
Jeyaraman, M., Balaji, S., Jeyaraman, N. and Yadav, S. (2023) Unraveling the Ethical Enigma: Artificial Intelligence in Healthcare. Cureus, 15, e43262. https://doi.org/10.7759/cureus.43262
[61]
Yang, J., Blount, Y. and Amrollahi, A. (2024) Artificial Intelligence Adoption in a Professional Service Industry: A Multiple Case Study. TechnologicalForecastingandSocialChange, 201, Article ID: 123251. https://doi.org/10.1016/j.techfore.2024.123251
[62]
Shahid, A., Qureshi, G.M. andChaudhary, F. (2023) Transforming Legal Practice: The Role of AI in Modern Law. JournalofStrategicPolicyandGlobalAffairs, 4, 36-42. https://doi.org/10.58669/jspga.v04.i01.04
[63]
Lidstone, H.K. (2023) Ethical Pitfalls When Lawyers Are Using Artificial Intelligence. Social Science Research Network. https://doi.org/10.2139/ssrn.4457790
[64]
Frolova, E.E. and Ermakova, E.P. (2021) Utilizing Artificial Intelligence in Legal Practice. In: Inshakova, A.O. and Frolova, E.E., Eds., SmartInnovation, SystemsandTechnologies, Springer, 17-27. https://doi.org/10.1007/978-981-16-4621-8_2
[65]
Aydemir, E. and Cebeci, H.I. (2023) Artificial Intelligence and Law: A Bibliometric Insight into Academic Publications and Research Trends. 2023 IEEE 12thInternationalConferenceonIntelligentDataAcquisitionandAdvancedComputingSystems:TechnologyandApplications (IDAACS), Dortmund, 7-9 September 2023, 1120-1124. https://doi.org/10.1109/idaacs58523.2023.10348728
[66]
Da Silva, M., Horsley, T., Singh, D., Da Silva, E., Ly, V., Thomas, B., etal. (2022) Legal Concerns in Health-Related Artificial Intelligence: A Scoping Review Protocol. SystematicReviews, 11, Article No. 123. https://doi.org/10.1186/s13643-022-01939-y
[67]
Baric-Parker, J. and Anderson, E.E. (2020) Patient Data-Sharing for AI: Ethical Challenges, Catholic Solutions. TheLinacreQuarterly, 87, 471-481. https://doi.org/10.1177/0024363920922690
[68]
Murdoch, B. (2021) Privacy and Artificial Intelligence: Challenges for Protecting Health Information in a New Era. BMCMedicalEthics, 22, Article No. 122. https://doi.org/10.1186/s12910-021-00687-3
[69]
Chin, K. and Sen, K. (2024) What Is the Cost of a Data Breach in 2024? https://www.upguard.com/blog/cost-of-a-data-breach-2024
[70]
Damar, M., Özen, A. and Yılmaz, A. (2024) Cybersecurity in the Health Sector in the Reality of Artificial Intelligence, and Information Security Conceptually. JournalofAI, 8, 61-82. https://doi.org/10.61969/jai.1466340
[71]
Biasin, E., Kamenjasevic, E. and Ludvigsen, K.R. (2023) Cybersecurity of AI Medical Devices: Risks, Legislation, and Challenges. arXiv: 2303.03140. https://doi.org/10.48550/arXiv.2303.03140
[72]
Sangwan, R.S., Badr, Y. and Srinivasan, S.M. (2023) Cybersecurity for AI Systems: A Survey. JournalofCybersecurityandPrivacy, 3, 166-190. https://doi.org/10.3390/jcp3020010
[73]
Fazil, A.W., Hakimi, M. and Shahidzay, A.K. (2024) A Comprehensive Review of BIAS in AI Algorithms. NusantaraHasanaJournal, 3, 1-11. https://doi.org/10.59003/nhj.v3i8.1052
[74]
Hoffman, S. (2020) The Emerging Hazard of AI-Related Health Care Discrimination. HastingsCenterReport, 51, 8-9. https://doi.org/10.1002/hast.1203
[75]
Yamada, Y. (2023) Judicial Decision-Making and Explainable AI (XAI)—Insights from the Japanese Judicial System. StudiaIuridicaLublinensia, 32, 157-173. https://doi.org/10.17951/sil.2023.32.4.157-173
[76]
Rodrigues, R. (2020) Legal and Human Rights Issues of AI: Gaps, Challenges and Vulnerabilities. JournalofResponsibleTechnology, 4, Article ID: 100005. https://doi.org/10.1016/j.jrt.2020.100005
[77]
Gacutan, J. and Selvadurai, N. (2020) A Statutory Right to Explanation for Decisions Generated Using Artificial Intelligence. InternationalJournalofLawandInformationTechnology, 28, 193-216. https://doi.org/10.1093/ijlit/eaaa016
[78]
Doshi-Velez, F., Kortz, M., Budish, R., Bavitz, C., Gershman, S.J., O’Brien, D., etal. (2017) Accountability of AI under the Law: The Role of Explanation. SSRNElectronicJournal, 2-21. https://doi.org/10.2139/ssrn.3064761
[79]
Edwards, L. and Veale, M. (2018) Enslaving the Algorithm: From a “Right to an Explanation” to a “Right to Better DECISIONS”? IEEESecurity&Privacy, 16, 46-54. https://doi.org/10.1109/msp.2018.2701152
[80]
Rozen, H.W., Elkin-Koren, N. and Gilad-Bachrach, R. (2023) The Case Against Explainability. arXiv: 2305.12167. https://doi.org/10.48550/arXiv.2305.12167
[81]
Simshaw, D. (2018) Ethical Issues in Robo-Lawyering: The Need for Guidance on Developing and Using Artificial Intelligence in the Practice of Law HastingsLawJournal, 70, 173-214.
[82]
van Wyngaarden, L. (2020) Lawyers’ Ethical Responsibility to Leverage AI in the Practice of Law. In: Bhatti, S.A., Chishti, S., Datoo, A. and Indjic, D., Eds., The LegalTech Book: The Legal Technology Handbook for Investors, Entrepreneurs and FinTech Visionaries, Wiley. https://doi.org/10.1002/9781119708063.ch11
[83]
Walters, E.J. (2019) The Model Rules of Autonomous Conduct: Ethical Responsibilities of Lawyers and Artificial Intelligence. ArtificialIntelligence, 35.
[84]
Christian, G. (2020) Predictive Coding: Adopting and Adapting Artificial Intelligence (AI) in Civil Litigation. Social Science Research Network, 97, 487-525. https://doi.org/10.2139/ssrn.3530039
[85]
Dutta, B.M. (2018) The Ethics of Artificial Intelligence in Legal Decision Making: An Empirical Study. PsychologyandEducationJournal, 55, 292-302.
[86]
Eliot, L. (2020) Legal Judgment Prediction (LJP) Amid the Advent of Autonomous AI Legal Reasoning. arXiv: 2009.14620.
[87]
Ng, Y., Windholz, E. and Moutsias, J. (2023) Legal Considerations in Machine-Assisted Decision-Making: Planning and Building as a Case Study. BondLawReview, 35. https://doi.org/10.53300/001c.87776
[88]
Armour, J., Parnham, R. and Sako, M. (2020) Unlocking the Potential of AI for English Law. InternationalJournaloftheLegalProfession, 28, 65-83. https://doi.org/10.1080/09695958.2020.1857765
[89]
Kondrateva, G., Rhattat, R. and Khvatova, T. (2023) Proposing a Framework for Investigating Acceptance of AI-Based Tools by Lawyers. 2023 IEEE International Symposium on Technology and Society (ISTAS), Swansea, 13-15 September 2023, 1-7. https://doi.org/10.1109/istas57930.2023.10306097
[90]
Sandman, J.J. (2019) The Role of the Legal Services Corporation in Improving Access to Justice. Daedalus, 148, 113-119. https://doi.org/10.1162/daed_a_00543
[91]
Hakim, H.A., Praja, C.B.E., Setyaningrum, W. and Setiawati, D. (2024) Smart Legal: Proposing Artificial Intelligence Application to Provide Free Legal Aid in Indonesia. E3SWebofConferences, 500, Article ID: 05004. https://doi.org/10.1051/e3sconf/202450005004
[92]
Alnasser, B. (2023) A Review of Literature on the Economic Implications of Implementing Artificial Intelligence in Healthcare. E-HealthTelecommunicationSystemsandNetworks, 12, 35-48. https://doi.org/10.4236/etsn.2023.123003
[93]
Jassar, S., Adams, S.J., Zarzeczny, A. and Burbridge, B.E. (2022) The Future of Artificial Intelligence in Medicine: Medical-Legal Considerations for Health Leaders. HealthcareManagementForum, 35, 185-189. https://doi.org/10.1177/08404704221082069
[94]
Jorstad, K.T. (2020) Intersection of Artificial Intelligence and Medicine: Tort Liability in the Technological Age. JournalofMedicalArtificialIntelligence, 3, 17. https://doi.org/10.21037/jmai-20-57
[95]
Kerr, I.R., Corriveau, N. and Millar, J. (2019) Robots and Artificial Intelligence in Health Care. Canadian Health Law and Policy.
[96]
Aggarwal, R., Farag, S., Martin, G., Ashrafian, H. and Darzi, A. (2021) Patient Perceptions on Data Sharing and Applying Artificial Intelligence to Health Care Data: Cross-Sectional Survey. JournalofMedicalInternetResearch, 23, e26162. https://doi.org/10.2196/26162
[97]
Cohen, I.G. (2020) Informed Consent and Medical Artificial Intelligence: What to Tell the Patient? Georgetown Law Journal, 108, 1425-1469. https://doi.org/10.2139/ssrn.3529576
[98]
McCradden, M.D., Baba, A., Saha, A., Ahmad, S., Boparai, K., Fadaiefard, P., etal. (2020) Ethical Concerns around Use of Artificial Intelligence in Health Care Research from the Perspective of Patients with Meningioma, Caregivers and Health Care Providers: A Qualitative Study. CMAJOpen, 8, E90-E95. https://doi.org/10.9778/cmajo.20190151
[99]
Park, H.J. (2024) Patient Perspectives on Informed Consent for Medical AI: A Web-Based Experiment. DigitalHealth, 10, 16 p. https://doi.org/10.1177/20552076241247938
[100]
Čartolovni, A., Tomičić, A. and Lazić Mosler, E. (2022) Ethical, Legal, and Social Considerations of Ai-Based Medical Decision-Support Tools: A Scoping Review. InternationalJournalofMedicalInformatics, 161, Article ID: 104738. https://doi.org/10.1016/j.ijmedinf.2022.104738
[101]
Mensah, G.B. (2024) AI and Medical Negligence. AfricaJournal for RegulatoryAffairs (AJFRA), 46-61.
[102]
Cohen, I.G., Babic, B., Gerke, S., Xia, Q., Evgeniou, T. and Wertenbroch, K. (2023) How AI Can Learn from the Law: Putting Humans in the Loop Only on Appeal. NPJDigitalMedicine, 6, Article No. 160. https://doi.org/10.1038/s41746-023-00906-8
[103]
Haden, C. (2024) The Consequences of the Proposed AI Act and AI Liability Directive on Medical Negligence: Will Physicians Fall Victim to ‘Red Tape’ Rules? Social Science Research Network. https://doi.org/10.2139/ssrn.4709032
[104]
Selbst, A.D. (2019) Negligence and AI’s Human Users. Boston University LawReview, 1317-1376.
[105]
Eftekhari, M.H., Parsapoor, A., Ahmadi, A., Yavari, N., Larijani, B. and Gooshki, E.S. (2023) Exploring Defensive Medicine: Examples, Underlying and Contextual Factors, and Potential Strategies—A Qualitative Study. BMCMedicalEthics, 24, Article No. 82. https://doi.org/10.1186/s12910-023-00949-2
[106]
Naik, N., Hameed, B.M.Z., Shetty, D.K., Swain, D., Shah, M., Paul, R., etal. (2022) Legal and Ethical Consideration in Artificial Intelligence in Healthcare: Who Takes Responsibility? FrontiersinSurgery, 9, Article 862322. https://doi.org/10.3389/fsurg.2022.862322
[107]
Ünal, Ö. and Akbolat, M. (2021) Defensive Medicine Practices: Scale Development and Validation. MedicalDecisionMaking, 42, 255-261. https://doi.org/10.1177/0272989x211043077
[108]
Kocaballi, A.B., Ijaz, K., Laranjo, L., Quiroz, J.C., Rezazadegan, D., Tong, H.L., etal. (2020) Envisioning an Artificial Intelligence Documentation Assistant for Future Primary Care Consultations: A Co-Design Study with General Practitioners. JournaloftheAmericanMedicalInformaticsAssociation, 27, 1695-1704. https://doi.org/10.1093/jamia/ocaa131
[109]
Hua, W., Zhang, Y., Chen, Z., Li, J. and Weber, M. (2023) Mixed-Domain Language Modeling for Processing Long Legal Documents. ProceedingsoftheNaturalLegalLanguageProcessingWorkshop 2023, December 2023, Singapore, 51-61. https://doi.org/10.18653/v1/2023.nllp-1.7
[110]
Radhika, A., Bhasin, N.K., R, S., Raju, Y.R., Satyanarayana, K.N.V. and Raj, I.I. (2024) Optimization of Natural Language Processing Models for Multilingual Legal Document Analysis. 2024 ThirdInternationalConferenceonIntelligentTechniquesinControl, OptimizationandSignalProcessing (INCOS), Krishnankoil, 14-16 March 2024, 1-6. https://doi.org/10.1109/incos59338.2024.10527598
[111]
Ayanouz, S., Anouar Abdelhakim, B. and Ben Ahmed, M. (2024) Using Natural Language Processing to Evaluate the Impact of Specialized Transformers Models on Medical Domain Tasks. IAESInternationalJournalofArtificialIntelligence (IJ-AI), 13, 1732-1740. https://doi.org/10.11591/ijai.v13.i2.pp1732-1740
[112]
Schubert, M.C., Lasotta, M., Sahm, F., Wick, W. and Venkataramani, V. (2023) Evaluating the Multimodal Capabilities of Generative AI in Complex Clinical Diagnostics. medRxiv. https://doi.org/10.1101/2023.11.01.23297938
[113]
Hirosawa, T., Harada, Y., Tokumasu, K., Ito, T., Suzuki, T. and Shimizu, T. (2024) Evaluating Chatgpt-4’s Diagnostic Accuracy: Impact of Visual Data Integration. JMIRMedicalInformatics, 12, e55627. https://doi.org/10.2196/55627
[114]
Lipkova, J., Chen, R.J., Chen, B., Lu, M.Y., Barbieri, M., Shao, D., etal. (2022) Artificial intelligence for multimodal data integration in oncology. CancerCell, 40, 1095-1110. https://doi.org/10.1016/j.ccell.2022.09.012
Li, R., Yang, Y. and Lin, H. (2021) The Critical Need to Establish Standards for Data Quality in Intelligent Medicine. IntelligentMedicine, 1, 49-50. https://doi.org/10.1016/j.imed.2021.04.004
[117]
Evangelista, E. and Bensoussan, Y. (2024) Standardization, Collaboration, and Education in the Implementation of Artificial Intelligence in Otolaryngology. OtolaryngologicClinicsofNorthAmerica, 57, 897-908. https://doi.org/10.1016/j.otc.2024.04.005
[118]
Zulueta-Coarasa, T., Jug, F., Hartley, M., Mathur, A., Moore, J., Muñoz-Barrutia, A., Anita, L., Babalola, K., Bankhead, P., Gilloteaux, P., Gogoberidze, N., Jones, M., Kleywegt, G.J., Korir, P. and Kreshuk, A. (2023) MIFA: Metadata, Incentives, Formats, and Accessibility Guidelines to Improve the Reuse of AI Datasets for Bioimage Analysis. arXiv: 2311.10443.
[119]
Williams, E., Kienast, M., Medawar, E., Reinelt, J., Merola, A., Klopfenstein, S.A.I., etal. (2023) A Standardized Clinical Data Harmonization Pipeline for Scalable AI Application Deployment (FHIR-DHP): Validation and Usability Study. JMIRMedicalInformatics, 11, e43847. https://doi.org/10.2196/43847
[120]
Ali, S., Tasnim, L., Afrin, S., Biswas, K., Ahmed, M., Hashan, R., Islam, K. and Raman, S. (2024) Federated Learning in Healthcare: Model Misconducts, Security, Challenges, Applications, and Future Research Directions-A Systematic Review. arXiv: 2405.13832v1.
[121]
Sadilek, A., Liu, L., Nguyen, D., Kamruzzaman, M., Serghiou, S., Rader, B., etal. (2021) Privacy-First Health Research with Federated Learning. NPJDigitalMedicine, 4, Article No. 132. https://doi.org/10.1038/s41746-021-00489-2
[122]
Richmond, K.M., Muddamsetty, S.M., Gammeltoft-Hansen, T., Olsen, H.P. and Moeslund, T.B. (2023) Explainable AI and Law: An Evidential Survey. DigitalSociety, 3, Article No. 1. https://doi.org/10.1007/s44206-023-00081-z
[123]
Górski, Ł., Ramakrishna, S. and Nowosielski, J.M. (2021) Towards Grad-Cam Based Explainability in a Legal Text Processing Pipeline. Extended Version. In: Rodríguez-Doncel, V., Palmirani, M., Araszkiewicz, M., Casanovas, P., Pagallo, U. and Sartor, G., Eds., AI Approaches to the Complexity of Legal Systems XI-XII, Springer, 154-168. https://doi.org/10.1007/978-3-030-89811-3_11
[124]
Min, A. (2023) Artifical Intelligence and Bias: Challenges, Implications, and Remedies. JournalofSocialResearch, 2, 3808-3817. https://doi.org/10.55324/josr.v2i11.1477
[125]
Pendharkar, K. (2023) Algorithmic Bias and Discrimination: Legal and Policy Considerations. Social Science Research Network. https://doi.org/10.2139/ssrn.4640433
[126]
Srivastava, S. and Sinha, K. (2023) From Bias to Fairness: A Review of Ethical Considerations and Mitigation Strategies in Artificial Intelligence. InternationalJournalforResearchinAppliedScienceandEngineeringTechnology, 11, 2247-2251. https://doi.org/10.22214/ijraset.2023.49990
[127]
Ejjami, R. (2024) AI-Driven Justice: Evaluating the Impact of Artificial Intelligence on Legal Systems. InternationalJournalforMultidisciplinaryResearch, 6, 29 p. https://doi.org/10.36948/ijfmr.2024.v06i03.23969
[128]
Zafar, A. (2024) Balancing the Scale: Navigating Ethical and Practical Challenges of Artificial Intelligence (AI) Integration in Legal Practices. DiscoverArtificialIntelligence, 4, Article No. 27. https://doi.org/10.1007/s44163-024-00121-8
[129]
Negi, C. (2024) In the Era of Artificial Intelligence (AI): Analyzing the Transformative Role of Technology in the Legal Arena. SSRN. https://doi.org/10.2139/ssrn.4677039
[130]
Lucaj, L., van der Smagt, P. and Benbouzid, D. (2023) AI Regulation Is (Not) All You Need. 2023 ACMConferenceonFairness, Accountability, andTransparency, Chicago, 12-15 June 2023, 1267-1279. https://doi.org/10.1145/3593013.3594079
[131]
Akpuokwe, C.U., Adeniyi, A.O., Bakare, S.S. and Eneh, N.E. (2024) Legal Challenges of Artificial Intelligence and Robotics: A Comprehensive Review. ComputerScience&ITResearchJournal, 5, 544-561. https://doi.org/10.51594/csitrj.v5i3.860
[132]
Cannarsa, M. (2021) Ethics Guidelines for Trustworthy AI. In: DiMatteo, L.A., Janssen, A., Ortolani, P., de Elizalde, F., Cannarsa, M. and Durovic, M., Eds., TheCambridgeHandbookofLawyeringintheDigitalAge, Cambridge University Press, 283-297. https://doi.org/10.1017/9781108936040.022
[133]
Ali Quteishat, E.M. (2024) Exploring the Role of AI in Modern Legal Practice: Opportunities, Challenges, and Ethical Implications. JournalofElectricalSystems, 20, 3040-3050. https://doi.org/10.52783/jes.3320
[134]
Wartman, S.A. and Combs, D.C. (2019) Reimagining Medical Education in the Age of AI. AMAJournalofEthics, 21, E146-152. https://doi.org/10.1001/amajethics.2019.146
[135]
Malerbi, F.K., Nakayama, L.F., Gayle Dychiao, R., Zago Ribeiro, L., Villanueva, C., Celi, L.A., etal. (2023) Digital Education for the Deployment of Artificial Intelligence in Health Care. JournalofMedicalInternetResearch, 25, e43333. https://doi.org/10.2196/43333
[136]
Walter, Y. (2024) Embracing the Future of Artificial Intelligence in the Classroom: The Relevance of AI Literacy, Prompt Engineering, and Critical Thinking in Modern Education. InternationalJournalofEducationalTechnologyinHigherEducation, 21, Article No. 15. https://doi.org/10.1186/s41239-024-00448-3
[137]
McLennan, S., Fiske, A., Tigard, D., Müller, R., Haddadin, S. and Buyx, A. (2022) Embedded Ethics: A Proposal for Integrating Ethics into the Development of Medical AI. BMCMedicalEthics, 23, Article No. 6. https://doi.org/10.1186/s12910-022-00746-3
[138]
Chatila, R. and Havens, J.C. (2019) The IEEE Global Initiative on Ethics of Autonomous and Intelligent Systems. In: Aldinhas Ferreira, M., Silva Sequeira, J., Singh Virk, G., Tokhi, M. and Kadar, E., Eds., Robotics and Well-Being, Springer, 11-16. https://doi.org/10.1007/978-3-030-12524-0_2
[139]
Tahri Sqalli, M., Aslonov, B., Gafurov, M. and Nurmatov, S. (2023) Humanizing AI in Medical Training: Ethical Framework for Responsible Design. FrontiersinArtificialIntelligence, 6, Article 1189914. https://doi.org/10.3389/frai.2023.1189914
[140]
Drabiak, K., Kyzer, S., Nemov, V. and El Naqa, I. (2023) AI and Machine Learning Ethics, Law, Diversity, and Global Impact. TheBritishJournalofRadiology, 96, Article ID: 20220934. https://doi.org/10.1259/bjr.20220934
[141]
Kumar, D.A. and Dadhich, D.H. (2024) Regulatory Frameworks for Artificial Intelligence in Law: Ensuring Accountability and Fairness. NUJSJournalofRegulatoryStudies, 9, 13-25. https://doi.org/10.69953/njrs.v9i2.7
[142]
Marques, A.B., Silva Menezes, A.I., Calonego Coutinho, B., Hernandes Leão, B., Kim, E., Parente Araújo, G.M., etal. (2024) Relatório de Pesquisa—Regulação da Inteligência Artificial ao Redor do Mundo (Research Report—Regulation of Artificial Intelligence Around the World). SSRNElectronicJournal, 2, 3-26. https://doi.org/10.2139/ssrn.4803041
[143]
Chhatre, R. and Singh, S. (2024) Policy and Regulatory Frameworks for Artificial Intelligence. Social Science Research Network. https://doi.org/10.2139/ssrn.4848705
[144]
Khan, A. (2024) The Intersection of Artificial Intelligence and International Trade Laws: Challenges and Opportunities. IIUMLawJournal, 32, 103-152. https://doi.org/10.31436/iiumlj.v32i1.912
[145]
Weismann, M.F. (2024) Artificial Intelligence Regulatory Models: Advances in the European Union and Recommendations for the United States and Evolving Global Markets. AIBInsights, 24. https://doi.org/10.46697/001c.120396
[146]
Benneh Mensah, G. and Dutta, P.K. (2024) Evaluating If Ghana’s Health Institutions and Facilities Act 2011 (Act 829) Sufficiently Addresses Medical Negligence Risks from Integration of Artificial Intelligence Systems. MesopotamianJournalofArtificialIntelligenceinHealthcare, 2024, 35-41. https://doi.org/10.58496/mjaih/2024/006