OpenAlex · Aktualisierung stündlich · Letzte Aktualisierung: 18.03.2026, 13:55

AC Camargo Hospital

6.828 Arbeiten357.422 Zitationen
Land: BRTyp: healthcare

Relevante Arbeiten

Meistzitierte Publikationen im Bereich Gesundheit & MedTech

Multinational Attitudes Toward AI in Health Care and Diagnostics Among Hospital Patients

Felix Busch, Lena Hoffmann, Lina Xu et al.

2025 · 31 Zit.

Conformity of ChatGPT recommendations with the AUA/SUFU guideline on postprostatectomy urinary incontinence

Vicktor Bruno Pereira Pinto, Matheus F. de Azevedo, Marcelo Langer Wroclawski et al.

2024 · 14 Zit.

The Limitations of Artificial Intelligence in Head and Neck Oncology

Karthik Rao, Verónica Fernández‐Álvarez, Orlando Guntinas‐Lichius et al.

2025 · 13 Zit.

Telesurgery applications, current status, and future perspectives in technologies and ethics

Thiago Camelo Mourão, Shady Saikali, Evan Patel et al.

2024 · 8 Zit.

Radiologists’ Experience With Patient Interactions in the Era of Open Access of Patients to Radiology Reports

Jieming Fang, Johannes Boos, Marcela Pécora Cohen et al.

2018 · 5 Zit.

The role of large language models in advancing head and neck cancer research and care: a narrative review

Lucas Lacerda de Souza, Ivan José Correia‐Neto, Felipe Paiva Fonseca et al.

2024 · 1 Zit.

Radiomic-Based Machine Learning Classifiers for HPV Status Prediction in Oropharyngeal Cancer: A Systematic Review and Meta-Analysis

Anna Luíza Damaceno Araújo, Luiz Paulo Kowalski, Alan Roger Santos-Silva et al.

2025 · 1 Zit.

Pixel Tampering: Does Face Redaction Harm Medical AI Performance?

Eduardo Moreno Júdice de Mattos Farina, F. Matsuoka, Gustavo Cesar Antônio Corradi et al.

2025 · 0 Zit.

Generative artificial intelligence as an aid in interpreting thyroid FNA cytopathological images: Are we there yet?

Mauro Saieg, Paula Lago, Marc Pusztaszeri

2025 · 0 Zit.

The nursing role in ethics, safety, privacy, and legal aspects of robotic surgery

Rita de Cássia Burgos de Oliveira, Cecília da Silva Ângelo, Yasmin Russo de Toledo

2024 · 0 Zit.

Abstract PS3-04-11: Explainable machine learning reveals hidden hereditary risk of breast cancer beyond TP53: insights from Brazilian families with high prevalence of the p.R337H mutation

J. Casali da Rocha, A. C. Ricciardi, G. B. Pinheiro1 et al.

2026 · 0 Zit.