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Nagasaki University

49.875 Arbeiten3.061.207 Zitationen
Land: JPTyp: education

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Meistzitierte Publikationen im Bereich Gesundheit & MedTech

Exploring the Capabilities of a Lightweight CNN Model in Accurately Identifying Renal Abnormalities: Cysts, Stones, and Tumors, Using LIME and SHAP

Mohan Bhandari, Pratheepan Yogarajah, Muthu Subash Kavitha et al.

2023 · 62 Zit.

Generative Artificial Intelligence in Anatomic Pathology

Victor Brodsky, Ehsan Ullah, Andrey Bychkov et al.

2025 · 21 Zit.

DPA–ESDIP–JSDP Task Force for Worldwide Adoption of Digital Pathology

Catarina Eloy, Andrey Bychkov, Liron Pantanowitz et al.

2021 · 9 Zit.

Characteristics of retracted research papers before and during the COVID-19 pandemic

Yuki Furuse

2024 · 9 Zit.

Evaluating cognitive performance: Traditional methods vs. ChatGPT

Xiao Fei, Ying Tang, Jianan Zhang et al.

2024 · 7 Zit.

Learning new surgical techniques in low and middle income countries, approval processes, and the impact of artificial intelligence

Long Tran, Helal Metwalli, Dat T. Le et al.

2025 · 4 Zit.

THE PROGRESS OF DIGITAL PATHOLOGY DURING THE COVID-19 PANDEMIC IN JAPAN

Junya Fukuoka, A. Yu. Bychkov

2022 · 2 Zit.

Commercially Available Artificial Intelligence Solutions for Gynaecologic Cytology Screening and Their Integration Into Clinical Workflow

Yosep Chong, Andrey Bychkov

2025 · 1 Zit.

Is it time to use machine learning survival algorithms for survival and risk factors prediction instead of Cox proportional hazard regression? A comparative population-based study

Sara Morsy, Truong Hong Hieu, Abdelrahman M Makram et al.

2021 · 1 Zit.

Update Concerning Digital Pathology and Artificial Intelligence Application

Wataru Uegami, Taro Sakamoto, Kishio Kuroda et al.

2020 · 1 Zit.

Does medical specialization of VLMs enhance discriminative power?: A comprehensive investigation through feature distribution analysis

Keita Takeda, Tomoya Sakai

2026 · 0 Zit.

A Locally Executable AI System for Improving Preoperative Patient Communication: A Multi-Domain Clinical Evaluation

Motoki Sato, Yuki Matsushita, Hidekazu Takahashi et al.

2025 · 0 Zit.