When AIs Outperform Doctors

When AIs Outperform Doctors

 

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A. Michael Froomkin,  

Ian Kerr &

Joëlle Pineau

We Robot 2018 Conference

 

 

 

Abstract

“Someday, perhaps soon, diagnostics generated by machine learning (ML) will have demonstrably better success rates than those generated by human doctors. What will the dominance of ML diagnostics mean for medical malpractice law, for the future of medical service provision, for the demand for certain kinds of doctors, and—in the longer run—for the quality of medical diagnostics itself?

This article argues that once ML diagnosticians, such as those based on neural networks, are shown to be superior, existing medical malpractice law will require superior ML-generated medical diagnostics as the standard of care in clinical settings. Further, unless implemented carefully, a physician’s duty to use ML systems in medical diagnostics could, paradoxically, undermine the very safety standard that malpractice law set out to achieve. In time, effective machine learning could create overwhelming legal and ethical pressure to delegate the diagnostic process to the machine. Ultimately, a similar dynamic might extend to treatment also. If we reach the point where the bulk of clinical outcomes collected in databases are ML-generated diagnoses, this may result in future decision scenarios that are not easily audited or understood by human doctors. Given the well-documented fact that treatment strategies are often not as effective when deployed in real clinical practice compared to preliminary evaluation, the lack of transparency introduced by the ML algorithms could lead to a decrease in quality of care. The article describes salient technical aspects of this scenario particularly as it relates to diagnosis and canvasses various possible technical and legal solutions that would allow us to avoid these unintended consequences of medical malpractice law. Ultimately, we suggest there is a strong case for altering existing medical liability rules in order to avoid a machine only diagnostic regime. We argue that the appropriate revision to the standard of care requires the maintenance of meaningful participation by physicians in the loop.”

 

You can find the link and original paper below:

https://papers.ssrn.com/sol3/papers.cfm?abstract_id=3114347

2012 yılında Japonca eğitimim sonrasında hukuk fakültesine başladı. Jürging-Örkün-Putzar Rechtsanwalte (Almanya), Güler Hukuk Bürosu ve Ünsal & Gündüz Attorneys at Law' da staj yaptı. Japon dili sertifikası aldı. Ayrıca arabuluculuk- tahkim ve ceza hukuku gibi alanlarda sertifika programlarına katıldı.Bunların akabinde Bilişim ve Teknoloji Hukuku alanında yüksek lisans yapmaya başladı. Köksal & Partners hukuk bürosunda avukat olarak çalışmakta. Büyük bir merakla, robotlar, yapay zeka ve onların hukuksal durumları ve problemler ile ilgili çalışmalar yürütmekte. She studied law following herJapanese education on 2012. She fulfilled her internships in Jurging-Orkun-Putzar Rechtsanwalte(Germany), Guler Law Office and Unsal&Gunduz Attorney at Law . Also she has certificate of Japanese language and she has mediation and arbitration certificates and criminal law certificates from law workshops. Afterwards, she started the master program on information and technology law, at Istanbul Bilgi University. She works as a lawyer at Koksal & Partners law office. Her goal and ambition is the working in the field of Robotics, AI and their legal statutes and problems and exploring the relevant necessities where no women has ever gone before... Yazarın diğer yazıları için ayrıca bakınız: For further works of the author: https://bilgi.academia.edu/Selin%C3%87etin https://siberbulten.com/author/selin-cetin/

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