The AI Doctor's "Super Eyes": Machines Help People Read Medical Images

Authors

  • Xihao Cai Author

DOI:

https://doi.org/10.61173/kz5v9e76

Keywords:

AI-Doctor, Medical-imaging, Auxiliary-interpretation

Abstract

Currently, a great advancement in the sphere of artificial intelligence (AI), and particularly in the field of medical image analysis have happened. With the deep learning algorithms rapidly developing, AI systems have now been trained to interpret complex medical imaging data, including X-rays, computed tomography (CT) scans, magnetic resonance imaging (MRI) and histopathology slides. Such technologies can significantly enhance diagnostic accuracy, make the working process more efficient, and reduce the workload of healthcare specialists. However, comprehensive assessment of the implementation of such AI systems into the mainstream clinical setting, generalizability across multiple populations, as well as the effects on long-term patient outcomes need further study. To solve this, this paper engages in a systematic review of current developments in AI-based medical image analysis and assess potential and actual clinical uses of this technology. It discusses the success of AI models in achieving various levels of performance of human specialists in diagnostic problems, and reflects on the problem of data quality, interpretability, and ethical considerations. This paper also identifies how AI will facilitate the reduction in the turnaround time of diagnostic tests and enhance human knowledge without replacing it. The results of this paper highlight the potential of AI in medical imaging to transform medical practice and recommends that researchers and developers should prioritize establishing powerful, transparent, and equitable AI systems, which can be integrated fully into clinical workflows in the future.

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Published

2025-10-23

Issue

Section

Articles