The Promise of Artificial Intelligence in Digestive Healthcare and the Bioethics Challenges It Presents

Author:

Mascarenhas Miguel123ORCID,Afonso João23,Ribeiro Tiago23,Andrade Patrícia123,Cardoso Hélder123,Macedo Guilherme123ORCID

Affiliation:

1. Faculty of Medicine, University of Porto, 4200-437 Porto, Portugal

2. Precision Medicine Unit, Department of Gastroenterology, Hospital São João, 4200-437 Porto, Portugal

3. WGO Training Center, 4200-437 Porto, Portugal

Abstract

With modern society well entrenched in the digital area, the use of Artificial Intelligence (AI) to extract useful information from big data has become more commonplace in our daily lives than we perhaps realize. Medical specialties that rely heavily on imaging techniques have become a strong focus for the incorporation of AI tools to aid disease diagnosis and monitoring, yet AI-based tools that can be employed in the clinic are only now beginning to become a reality. However, the potential introduction of these applications raises a number of ethical issues that must be addressed before they can be implemented, among the most important of which are issues related to privacy, data protection, data bias, explainability and responsibility. In this short review, we aim to highlight some of the most important bioethical issues that will have to be addressed if AI solutions are to be successfully incorporated into healthcare protocols, and ideally, before they are put in place. In particular, we contemplate the use of these aids in the field of gastroenterology, focusing particularly on capsule endoscopy and highlighting efforts aimed at resolving the issues associated with their use when available.

Publisher

MDPI AG

Subject

General Medicine

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