利用生成式人工智能:医学成像及其他领域的变革性应用

Future Health Pub Date : 2024-03-03 DOI:10.25259/fh_12_2024
Swati Goyal, L. Kaushal
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引用次数: 0

摘要

生成式人工智能(Generative AI)是一个不断扩展的领域,它采用机器学习模型来生成与现有数据非常相似的新数据。ChatGPT 和 DALL-E 可针对特定应用进行定制,有望改变医疗保健、教育和通信领域。生成式对抗网络(GAN)可以生成与实际病人数据非常相似的合成医学图像,从而大大增强机器学习模型的训练数据集。它们还能将医学图像从一种模式转换为另一种模式,提高医学成像分辨率,减少辐射暴露,并提高图像质量和细节。尽管存在挑战,生成对抗网络在医学成像领域仍有巨大潜力。主要障碍是需要图形处理器(GPU)和计算资源来训练 GANs,以及缺乏生成合成图像的既定标准。用于训练其他机器学习模型的标注不正确的数据会降低性能,使医疗人工智能的地面实况数据标注变得更加困难。要确保生成的图像在医疗应用中的可靠性和安全性,就需要解决伦理问题并验证数据。
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Harnessing generative AI: Transformative applications in medical imaging and beyond
Generative AI is an expanding domain that employs machine learning models to generate novel data that closely mimic pre existing data. ChatGPT and DALL-E can be customized for specific applications and are expected to transform healthcare, education, and communication. Generative Adversarial Networks (GANs) that can generate synthetic medical images closely mimicking actual patient data may substantially enhance machine learning model training datasets. They also translate medical images from one modality to another, improve medical imaging resolution, reduce radiation exposure, and boost image quality and detail. Despite their challenges, GANs have great potential in the field of medical imaging. The key obstacles are the need for Graphic Processing Units (GPUs) and computing resources to train GANs and the lack of established standards for generating synthetic images. Incorrectly labeled data for training other machine learning models can reduce performance, making ground-truth data labeling for healthcare AI more difficult. Generative AI is revolutionizing healthcare imaging, simplifying diagnosis, and propelling healthcare research and practice to new frontiers. Ensuring the reliability and safety of generated images in medical applications requires addressing ethical considerations and validating data.
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