Artificial intelligence for medicine: Progress, challenges, and perspectives

Tao Huang, Huiyu Xu, Haitao Wang, Haofan Huang, Yongjun Xu, Baohua Li, Shenda Hong, Guoshuang Feng, Shuyi Kui, Guangjian Liu, Dehua Jiang, Zhi-Cheng Li, Ye Li, Congcong Ma, Chunyan Su, Wei Wang, Rong Li, Puxiang Lai, Jie Qiao
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引用次数: 4

Abstract

Artificial Intelligence (AI) has transformed how we live and how we think, and it will change how we practice medicine. With multimodal big data, we can develop large medical models that enables what used to unimaginable, such as early cancer detection several years in advance and effective control of virus outbreaks without imposing social burdens. The future is promising, and we are witnessing the advancement. That said, there are challenges that cannot be overlooked. For example, data generated is often isolated and difficult to integrate from both perspectives of data ownership and fusion algorithms. Additionally, existing AI models are often treated as black boxes, resulting in vague interpretation of the results. Patients also exhibit a lack of trust to AI applications, and there are insufficient regulations to protect patients�� privacy and rights. However, with the advancement of AI technologies, such as more sophisticated multimodal algorithms and federated learning, we may overcome the barriers posed by data silos. Deeper understanding of human brain and network structures can also help to unravel the mysteries of neural networks and construct more transparent yet more powerful AI models. It has become something of a trend that an increasing number of clinicians and patients will implement AI in their life and medical practice, which in turn can generate more data and improve the performance of models and networks. Last but not the least, it is crucial to monitor the practice of AI in medicine and ensure its equity, security, and responsibility.

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医学上的人工智能:进展、挑战和前景
人工智能(AI)已经改变了我们的生活方式和思维方式,也将改变我们的医疗实践方式。有了多模式大数据,我们可以开发大型医学模型,使以前难以想象的事情成为可能,比如提前几年发现癌症,有效控制病毒爆发,而不增加社会负担。未来充满希望,我们正在见证进步。尽管如此,仍有一些挑战不容忽视。例如,从数据所有权和融合算法的角度来看,生成的数据往往是孤立的,难以集成。此外,现有的人工智能模型通常被视为黑盒,导致对结果的解释模糊。患者也对人工智能应用缺乏信任,保护患者隐私和权利的法规也不足。然而,随着人工智能技术的进步,比如更复杂的多模态算法和联邦学习,我们可能会克服数据孤岛带来的障碍。对人类大脑和网络结构的深入了解也有助于揭开神经网络的奥秘,构建更透明、更强大的人工智能模型。越来越多的临床医生和患者将在他们的生活和医疗实践中应用人工智能,这反过来可以产生更多的数据,提高模型和网络的性能,这已经成为一种趋势。最后但并非最不重要的是,监督人工智能在医学中的应用,确保其公平性、安全性和负责任性至关重要。
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