FUTURE OF THE LANGUAGE MODELS IN HEALTHCARE: THE ROLE OF CHATGPT

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21
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article
Data de publicação
2023
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COLEGIO BRASILEIRO CIRURGIA DIGESTIVA-CBCD
Autores
ANDREOLLO, Nelson Adami
AGUILAR-NASCIMENTO, Jose Eduardo de
Citação
ABCD-ARQUIVOS BRASILEIROS DE CIRURGIA DIGESTIVA-BRAZILIAN ARCHIVES OF DIGESTIVE SURGERY, v.36, n.1, article ID e1727, 5p, 2023
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Resumo
The field of medicine has always been at the forefront of technological innovation, Fabricio Ferreira COELHO3 , Paulo HERMAN3 constantly seeking new strategies to diagnose, treat, and prevent diseases. Guidelines for clinical practice to orientate medical teams regarding diagnosis, treatment, and prevention measures have increased over the years. The purpose is to gather the most medical knowledge to construct an orientation for practice. Evidence-based guidelines follow several main characteristics of a systematic RESUMO -Racmonal: O tratamento de escolha para pacientes com ipertensao portal review, including systematic and unbiased search, selection, and extraction of the source of evidence. esquistossomotica com sangramento de varizes e a desconexao azigo-portal mais In recent years, the rapid advancement of artificial intelligence has provided clinicians and patients esplenetomia (DAPE) associad a terapa endoscoica. Porem, estuds mostram aumento with access to personalized, data-driven insights, suport and new opportunities for healthcare do calibre das varizes em alguns pacientes durante o seguimento em longo prazo. Objetmvo: professionals to improve patient outcomes, increase efficiency, and reduce costs. One of the most Avaliar o impacto da DAPE e tratamento endoscopico pos-operatorio no comportamento exciting developments in Artificial Intelligence has been the emergence of chatbots. A chatbot is a computer program used to simulate conversations with human users. Recently, OpenAI, a research das varizes esofagicas e recidiva hemorragica, de pacientes esquistossomoticos. Metodos: organization focused on machine learning, developed ChatGPT, a large language model that Foram estudados 36 pacientes com eguimento superior a cinco anos, distribuidos em generates human-like text. ChatGPT uses a type of AI known as a deep learning model. ChatGPT dois grupos: qued a prssao portal abaixo de 30% e acima de 30% compaados com o can quickly search a nd select pieces of evidence through numerous databases to provide answers calibre das varizes esofagicas no pos-operatorio precoce e tardio alem do indice de recidiva to complex questions, reducing the time and effort required to research a particular topic manually. hemorragica. Resultados Consequently, language models can accelerate the creation of clinical practice guidelines. While there is no doubt that ChatGPT has the potential to revolutionize the way healthcare is delivered, esofagicas que, durante o seguimento aumentaram de calibre e foram controladas com it is essential to note that it should not be used as a substitute for human healthcare professionals. Instead, ChatGPT should be considered a tool that can be used to augment and support the work of o comportamento do calibre das varizes no pos-opeatorio precoce nem tardio nem os healthcare professionals, helping them to provide better care to their patients.
Palavras-chave
Guidelines as topic, Artificial intelligence, Diagnosis, Costs and cost analysis, Delivery of health care
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