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5.
Rev. clín. esp. (Ed. impr.) ; 224(3): 178-186, mar. 2024.
Artigo em Espanhol | IBECS | ID: ibc-231459

RESUMO

La relación entre ética e inteligencia artificial en medicina es un tema crucial y complejo y se encuadra en su contexto más amplio. Así, la ética en inteligencia artificial médica implica asegurar que las tecnologías sean seguras, justas y respeten la privacidad de los pacientes. Esto incluye preocuparse de la precisión de los diagnósticos proporcionados por la inteligencia artificial, la equidad en el tratamiento de pacientes y la protección de los datos personales de salud. Los avances en inteligencia artificial pueden mejorar significativamente la atención médica, desde diagnósticos más precisos hasta tratamientos personalizados. Sin embargo, es esencial que los desarrollos en inteligencia artificial médica se realicen con una consideración ética fuerte, involucrando a los pacientes, profesionales de la salud e inteligencia artificial y especialistas en ética para guiar y supervisar su implementación. Por último, es fundamental la transparencia en los algoritmos de inteligencia artificial y la formación continua para los profesionales médicos. (AU)


The relationship between ethics and artificial intelligence in medicine is a crucial and complex topic that falls within its broader context. Ethics in medical artificial intelligence involves ensuring that technologies are safe, fair, and respect patient privacy. This includes concerns about the accuracy of diagnoses provided by artificial intelligence, fairness in patient treatment, and protection of personal health data. Advances in artificial intelligence can significantly improve healthcare, from more accurate diagnoses to personalized treatments. However, it is essential that developments in medical artificial intelligence are carried out with strong ethical consideration, involving healthcare professionals, artificial intelligence experts, patients, and ethics specialists to guide and oversee their implementation. Finally, transparency in artificial intelligence algorithms and ongoing training for medical professionals are fundamental. (AU)


Assuntos
Inteligência Artificial/ética , Inteligência Artificial/tendências , Ética Médica
8.
Trends Plant Sci ; 29(2): 104-107, 2024 02.
Artigo em Inglês | MEDLINE | ID: mdl-38199829

RESUMO

The swiftness of artificial intelligence (AI) progress in plant science begets relevant ethical questions with significant scientific and societal implications. Embracing a principled approach to regulation, ethics review and monitoring, and human-centric interpretable informed AI (HIAI), we can begin to navigate our voyage towards ethical and socially responsible AI.


Assuntos
Inteligência Artificial , Inteligência Artificial/ética , Plantas
10.
Postgrad Med J ; 100(1183): 289-296, 2024 Apr 22.
Artigo em Inglês | MEDLINE | ID: mdl-38159301

RESUMO

In the evolution of modern medicine, artificial intelligence (AI) has been proven to provide an integral aspect of revolutionizing clinical diagnosis, drug discovery, and patient care. With the potential to scrutinize colossal amounts of medical data, radiological and histological images, and genomic data in healthcare institutions, AI-powered systems can recognize, determine, and associate patterns and provide impactful insights that would be strenuous and challenging for clinicians to detect during their daily clinical practice. The outcome of AI-mediated search offers more accurate, personalized patient diagnoses, guides in research for new drug therapies, and provides a more effective multidisciplinary treatment plan that can be implemented for patients with chronic diseases. Among the many promising applications of AI in modern medicine, medical imaging stands out distinctly as an area with tremendous potential. AI-powered algorithms can now accurately and sensitively identify cancer cells and other lesions in medical images with greater accuracy and sensitivity. This allows for earlier diagnosis and treatment, which can significantly impact patient outcomes. This review provides a comprehensive insight into diagnostic, therapeutic, and ethical issues with the advent of AI in modern medicine.


Assuntos
Inteligência Artificial , Humanos , Inteligência Artificial/ética , Algoritmos
12.
Rev. derecho genoma hum ; (59): 129-148, jul.-dic. 2023.
Artigo em Espanhol | IBECS | ID: ibc-232451

RESUMO

La cuestión de los sesgos en la IA constituye un reto importante en los sistemas de IA. Estos sesgos no surgen únicamente de los datos existentes, sino que también los introducen las personas que utilizan sistemas, que son intrínsecamente parciales, como todos los seres humanos. No obstante, esto constituye una realidad preocupante porque los algoritmos tienen la capacidad de influir significativamente en el diagnóstico de un médico. Análisis recientes indican que este fenómeno puede reproducirse incluso en situaciones en las que los médicos ya no reciben orientación del sistema. Esto implica no sólo una incapacidad para percibir el sesgo, sino también una propensión a propagarlo. Las consecuencias potenciales de este fenómeno pueden conducir a un ciclo que se autoperpetúa y que tiene la capacidad de infligir un daño significativo a las personas, especialmente cuando los sistemas de inteligencia artificial (IA) se emplean en contextos que implican asuntos delicados, como el ámbito de la asistencia sanitaria. En respuesta a esta circunstancia, los ordenamientos jurídicos han ideado mecanismos de gobernanza que, a primera vista, parecen suficientes, especialmente en la Unión Europea. Los reglamentos de reciente aparición relativos a los datos y los que ahora se enfocarán a la inteligencia artificial (IA)*** sirven como ilustración por excelencia de cómo lograr potencialmente una supervisión suficiente de los sistemas de IA. En su aplicación práctica, no obstante, es probable que numerosos mecanismos muestren ineficacia a la hora de identificar los sesgos que surgen tras la integración de estos sistemas en el mercado. Es importante considerar que, en esa coyuntura, puede haber múltiples agentes implicados, en los que se ha delegado predominantemente la responsabilidad. ... (AU)


The issue of bias in AI presents a significant challenge in AI systems. These biases not only arise from existing data but are also introduced by the individuals using the systems, who are inherently biased, like all humans. However, this constitutes a concerning reality because algorithms have the ability to significantly influence a doctor’s diagnosis. Recent analyses indicate that this phenomenon can occur even in situations where doctors are no longer receiving guidance from the system. This implies not only an inability to perceive bias but also a propensity to propagate it. The potential consequences of this phenomenon can lead to a self-perpetuating cycle that has the ability to inflict significant harm on individuals, especially when artificial intelligence (AI) systems are employed in sensitive contexts, such as healthcare. In response to this circumstance, legal frameworks have devised governance mechanisms that, at first glance, seem sufficient, especially in the European Union. Recently emerged regulations regarding data and those now focusing on artificial intelligence (AI) serve as prime illustrations of potentially achieving adequate supervision of AI systems. In practical application, however, numerous mechanisms are likely to show inefficacy in identifying biases arising from the integration of these systems into the market. It is important to consider that, at this juncture, there may be multiple agents involved, predominantly delegated responsibility. Hence, it is imperative to insist on the need to persuade AI developers to implement strict measures to regulate biases inherent in their systems. If the detection of these entities is not achieved, it will pose a significant challenge for others to achieve the same, especially until their presence becomes very noticeable. Another possibility is that the long-term repercussions will be experienced collectively. (AU)


Assuntos
Humanos , Inteligência Artificial/ética , Inteligência Artificial/legislação & jurisprudência , Inteligência Artificial/normas , Viés
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