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[Expert consensus on ethical requirements for artificial intelligence (AI) processing medical data].
1
Zitationen
42
Autoren
2024
Jahr
Abstract
As artificial intelligence technology rapidly advances, its deployment within the medical sector presents substantial ethical challenges. Consequently, it becomes crucial to create a standardized, transparent, and secure framework for processing medical data. This includes setting the ethical boundaries for medical artificial intelligence and safeguarding both patient rights and data integrity. This consensus governs every facet of medical data handling through artificial intelligence, encompassing data gathering, processing, storage, transmission, utilization, and sharing. Its purpose is to ensure the management of medical data adheres to ethical standards and legal requirements, while safeguarding patient privacy and data security. Concurrently, the principles of compliance with the law, patient privacy respect, patient interest protection, and safety and reliability are underscored. Key issues such as informed consent, data usage, intellectual property protection, conflict of interest, and benefit sharing are examined in depth. The enactment of this expert consensus is intended to foster the profound integration and sustainable advancement of artificial intelligence within the medical domain, while simultaneously ensuring that artificial intelligence adheres strictly to the relevant ethical norms and legal frameworks during the processing of medical data.
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Autoren
- Cong Li
- Xiaoyan Zhang
- Yunhong Wu
- Xiao-Lei Yang
- YU Hua-rong
- Hong-Bo Jin
- Yingbo Li
- Zhaohui Zhu
- Rui Liu
- Na Liu
- Yaqin Xie
- Liangjian Lyu
- Xinhong Zhu
- Hong Tang
- Hongfang Li
- Hongli Li
- Xiangjun Zeng
- Zai-Xing Chen
- Xiaofang Fan
- Yan Wang
- Zhi‐Juan Wu
- Zhenhai Wu
- Yuejun Guan
- Mingming Xue
- Bin Luo
- Aimei Wang
- Xinwang Yang
- Ying Ying
- Xiuhong Yang
- Xinzhong Huang
- Ming‐Fei Lang
- Shimin Chen
- Huan-Huan Zhang
- Zhong Zhang
- Huang Wu
- Ganxi Xu
- Jiaqi Liu
- Tao Song
- Jing Xiao
- Yun-Long Xia
- Youfei Guan
- Liang Zhu
Institutionen
- Dalian Medical University(CN)
- East China Normal University(CN)
- Chongqing Medical University(CN)
- Beihang University(CN)
- Dalian University of Technology(CN)
- Lanzhou University(CN)
- Capital Medical University(CN)
- China Medical University(CN)
- Shanxi Medical University(CN)
- Xinjiang Medical University(CN)
- Inner Mongolia Medical University(CN)
- Jinzhou Medical University(CN)
- Kunming Medical University(CN)
- North China University of Science and Technology(CN)
- Hainan Medical University(CN)
- Wannan Medical College(CN)
- Shenyang Medical College(CN)
- Huawei Technologies (China)(CN)