Academic Journal

Accountability, Secrecy, and Innovation in AI-Enabled Clinical Decision Software

Bibliographic Details
Title: Accountability, Secrecy, and Innovation in AI-Enabled Clinical Decision Software
Authors: Rai, Arti K., Sharma, Isha, Silcox, Christina
Source: Faculty Scholarship
Publisher Information: Duke University School of Law
Publication Year: 2020
Collection: Duke Law School Scholarship Repository
Subject Terms: Artificial intelligence--Medical applications--Government policy, Intellectual property, Medical innovations, Clinical medicine--Decision making--Data processing, Supervised learning (Machine learning), Torts, Food and Drug Law, Health Law and Policy, Intellectual Property Law, Science and Technology Law
Description: This article employs analytical and empirical tools to dissect the complex relationship between secrecy, accountability, and innovation incentives in clinical decision software enabled by machine learning (ML-CD). Although secrecy can provide incentives for innovation, it can also diminish the ability of third parties to adjudicate risk and benefit responsibly. Our first aim is descriptive. We address how the interrelated regimes of intellectual property law, Food and Drug Administration (FDA) regulation, and tort liability are currently shaping information flow and innovation incentives. We find that developers regard secrecy over training data and details of the trained model as central to competitive advantage. Meanwhile, neither FDA nor adopters are currently asking for these types of details. In addition, in some cases, it is not clear whether developers are being asked to provide rigorous evidence of performance. FDA, Congress, developers, and adopters could all do more to promote information flow, particularly as ML-CD models move into areas of higher risk. We provide specific suggestions for how FDA regulation, patent law, and tort liability could be tweaked to improve information flow without sacrificing innovation incentives.
Document Type: text
File Description: application/pdf
Language: unknown
Relation: https://scholarship.law.duke.edu/faculty_scholarship/4511; https://scholarship.law.duke.edu/context/faculty_scholarship/article/7213/viewcontent/Rai_Accountability_secrecy_2020.pdf
DOI: 10.1093/jlb/lsaa077
Availability: https://scholarship.law.duke.edu/faculty_scholarship/4511
https://doi.org/10.1093/jlb/lsaa077
https://scholarship.law.duke.edu/context/faculty_scholarship/article/7213/viewcontent/Rai_Accountability_secrecy_2020.pdf
Rights: http://creativecommons.org/licenses/by-nc-nd/4.0/
Accession Number: edsbas.8BB4A1A6
Database: BASE
Description
DOI:10.1093/jlb/lsaa077