Desafios e avanços na personalização diagnóstica e terapêutica na era da inteligência artificial na saúde
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Keywords

Inteligência Artificial
Aprendizado de Máquina
Diagnóstico Clínico
Machine Learning
Deep Learning

How to Cite

Lobato Coelho, R., Esteves, J. P., Aquino Ragognete, I., AMARAL COSTA, A., de Miranda Ferreira, Y., Rossi Camargo, B., Minhoto Pozzobon, A., Santos Malaquias Pereira, M., Pimentel Sampaio, B., Rodrigues Vasques, A., Damas Meireles, A. J., Boscarioli Ramenzoni, F. B., Benedetti Barbosa, B., Ferreira Ros, L., & Zampronio , I. (2024). Desafios e avanços na personalização diagnóstica e terapêutica na era da inteligência artificial na saúde. Brazilian Journal of Implantology and Health Sciences, 6(1), 1282–1290. https://doi.org/10.36557/2674-8169.2024v6n1p1282-1290

Abstract

The integration of artificial intelligence (AI) and machine learning (ML) in medicine represents a rapidly growing field, promising significant advances in diagnostic and treatment processes. Given this scenario, this integrative review seeks to consolidate and critically analyze the available scientific evidence on the application of these innovative technologies in medical practice. The methodology adopted for this integrative review involved a comprehensive search of the main databases, such as PubMed, Scielo and ScienceDirect, using the relevant descriptors, such as "Artificial Intelligence", "Machine Learning", "Clinical Diagnosis", "Machine Learning" and "Deep Learning". The careful selection of references included relevant studies that address the application of AI and ML in various domains of medicine, with a special focus on the references indicated in Vancouver in this abstract. The results of this review reveal a wide range of successful applications of AI and AM in medical diagnosis and treatment. Studies such as Wang et al. (2019) highlight the progress and challenges of using deep learning in medicine, while work by Erickson et al. (2017) highlights the effectiveness of ML in medical imaging, contributing to advances in clinical practice. Ethical approaches and future impacts on the actions of healthcare professionals, as discussed by Ahuja (2019) and Farhud and Zokaei (2021), emerge as crucial points in the integration of these technologies. The conclusion of this integrative review reinforces the significant transformation provided by the integration of AI and AM in medicine, offering faster and more accurate diagnoses, as well as outlining intrinsic ethical challenges. Patient privacy and ethical considerations become critical factors in this scenario. This comprehensive analysis highlights the continued need for responsible research and development, promoting advances that optimize clinical efficacy and ensure the trust of healthcare professionals and patients in the face of these transformative innovations.

https://doi.org/10.36557/2674-8169.2024v6n1p1282-1290
PDF (Português (Brasil))

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This work is licensed under a Creative Commons Attribution 4.0 International License.

Copyright (c) 2024 Rebecca Lobato Coelho, Júlia Peres Esteves, Isadora Aquino Ragognete, AYGHOR AMARAL COSTA, Yago de Miranda Ferreira, Bruno Rossi Camargo, Amanda Minhoto Pozzobon, Marri Santos Malaquias Pereira, Breno Pimentel Sampaio, Amanda Rodrigues Vasques, Adriano Junio Damas Meireles, Francesca Bruna Boscarioli Ramenzoni, Beatriz Benedetti Barbosa, Lucas Ferreira Ros, Isabella Zampronio