Artificial intelligence in medical imaging

iRadiology Pub Date : 2024-12-15 DOI:10.1002/ird3.111
Bin Huang, Bo Gao
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At present, AI is widely used in medical imaging, including risk modeling and stratification, personalized screening, diagnosis (including classification of molecular pathologic subtypes), treatment response prediction, prognosis prediction, image segmentation, and image quality control. AI can help doctors identify and analyze lesions in various medical images, especially in diseases such as lung, breast, and prostate cancer. The research mainly focuses on the identification of benign and malignant, the measurement of risk factors, prognosis judgment and treatment guidance, and it is increasingly being used in the field of psychoradiology [<span>3</span>]. In addition, AI is also focused on reducing image acquisition time and improving data quality. 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[<span>5</span>] proposed a diffusion magnetic diffusion magnetic (dMRI) index reconstruction model based on deep learning methods-qIRR-Net and a training framework based on data enhancement and consistency loss, The reconstruction of dMRI index is realized without the influence of signal inhomogeneity, and the model validity is verified on simulated inhomogeneity data and real ultra-high field data, thus promoting the application of ultra-high field dMRI technology in medicine and clinic. Artificial intelligence-assisted compressed sensing is a deep learning technology based on convolutional neural networks which can reconstruct images with ultra-high resolution and reduce noise. On the premise of ensuring the quality of the image, the collection time of the sequence is greatly shortened. In this special issue, The application of assisted compressed sensing technology in 5T MRI by Zhou et al. 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引用次数: 0

Abstract

With the rapid development of science and technology, the application of artificial intelligence (AI) in various fields is constantly expanding, especially in the field of medical imaging [1]. AI technology is suitable to be applied to standardized digital medical image big data based on digital imaging and communications in medicine protocol and picture archiving and communication system. With the integration of AI technology, this field is undergoing profound transformation, not only improving the accuracy and efficiency of diagnosis, but also significantly reducing the workload of doctors [2]. At present, AI is widely used in medical imaging, including risk modeling and stratification, personalized screening, diagnosis (including classification of molecular pathologic subtypes), treatment response prediction, prognosis prediction, image segmentation, and image quality control. AI can help doctors identify and analyze lesions in various medical images, especially in diseases such as lung, breast, and prostate cancer. The research mainly focuses on the identification of benign and malignant, the measurement of risk factors, prognosis judgment and treatment guidance, and it is increasingly being used in the field of psychoradiology [3]. In addition, AI is also focused on reducing image acquisition time and improving data quality. Through deep learning algorithms, AI can optimize imaging parameters, improve imaging quality, and reduce noise and artifacts.

This special issue of AI includes seven latest studies, which covers artificial intelligence of disease diagnosis and prediction, imaging technology model construction, image segmentation and quality control. Wang et al. [4] used systematic review to summarize the technical methods, clinical applications and existing problems of artificial intelligence in cerebrovascular diseases, they found that the availability of algorithms, reliability of validation, and consistency of evaluation metrics may facilitate better clinical applicability and acceptance. Zhu et al. [5] proposed a diffusion magnetic diffusion magnetic (dMRI) index reconstruction model based on deep learning methods-qIRR-Net and a training framework based on data enhancement and consistency loss, The reconstruction of dMRI index is realized without the influence of signal inhomogeneity, and the model validity is verified on simulated inhomogeneity data and real ultra-high field data, thus promoting the application of ultra-high field dMRI technology in medicine and clinic. Artificial intelligence-assisted compressed sensing is a deep learning technology based on convolutional neural networks which can reconstruct images with ultra-high resolution and reduce noise. On the premise of ensuring the quality of the image, the collection time of the sequence is greatly shortened. In this special issue, The application of assisted compressed sensing technology in 5T MRI by Zhou et al. [6] significantly reduced MRI scanning time, and ensured image quality and diagnostic accuracy. This innovative study can effectively improve clinical work efficiency.

AI technology can play an important role in radiomics, through deep learning models, automatic extraction of a large number of quantitative image features, and combined with patient clinical data, gene expression information, to build high-precision diagnosis and prediction models [7]. Pawan et al. [8]reviewed the research on bone metastasis in prostate cancer from the fields of radiomics, machine learning, and deep learning. They present multiple strategies, including classification/prediction, detection, segmentation, and radiomic methods for evaluating prostate bone metastasis; it provides researchers with systematic learning opportunities for relevant research.

The application of artificial intelligence in the field of medical imaging has shown great potential and advantages. From the optimization of intelligent imaging systems to the processing and analysis of complex images, AI technology is pushing medical imaging to new heights. In the future, AI technology will further promote the development of personalized medicine, remote diagnosis, and interdisciplinary integration.

Bin Huang: Writing—original draft (equal). Bo Gao: Writing—review and editing (lead).

artificial intelligence, deep learning, medical imaging

Professor Bo Gao is a member of the iRADIOLOGY Editorial Board. To minimize bias, he was excluded from all editorial decision-making related to the acceptance of this article for publication. The remaining author declares no conflict of interest.

National Natural Science Foundation of China, Grant/Award Numbers: 81871333, 82260340; Guizhou Province 7th Thousand Innovational and Enterprising Talents, Grant/Award Number: GZQ202007086; 2020 Innovation Group Project of Guizhou Province Educational Commission, Grant/Award Number: KY[2021]017; Guizhou Provincial Science & Technology Projects, Grant/Award Number: ZK[2024] General 194; Guizhou Province Science & Technology Project, Grant/Award Numbers: [2020]4Y159, [2021]430.

Not applicable.

Not applicable.

医学成像中的人工智能
随着科学技术的飞速发展,人工智能(AI)在各个领域的应用不断扩大,尤其是在医学影像领域。AI技术适合应用于医学协议和图像存档通信系统中基于数字成像和通信的标准化数字医学图像大数据。随着人工智能技术的融合,这一领域正在发生深刻的变革,不仅提高了诊断的准确性和效率,而且大大减少了医生的工作量。目前,AI广泛应用于医学影像学,包括风险建模与分层、个性化筛查、诊断(包括分子病理亚型分类)、治疗反应预测、预后预测、图像分割、图像质量控制等。人工智能可以帮助医生识别和分析各种医学图像中的病变,特别是在肺癌、乳腺癌和前列腺癌等疾病中。研究主要集中在良恶性的鉴别、危险因素的测量、预后判断和治疗指导等方面,在精神放射学领域的应用越来越广泛。此外,人工智能还专注于减少图像采集时间和提高数据质量。通过深度学习算法,人工智能可以优化成像参数,提高成像质量,减少噪声和伪影。本期《人工智能》特刊收录了七项最新研究成果,涵盖了疾病诊断与预测、成像技术模型构建、图像分割与质量控制等方面的人工智能。Wang等人[4]采用系统综述的方法对人工智能在脑血管疾病中的技术方法、临床应用及存在的问题进行了总结,发现算法的可用性、验证的可靠性、评价指标的一致性可能有利于更好的临床适用性和可接受性。Zhu等人[5]提出了一种基于深度学习方法- qir - net的弥散磁(diffusion magnetic diffusion magnetic, dMRI)指标重建模型和一种基于数据增强和一致性损失的训练框架,在不受信号非均匀性影响的情况下实现了dMRI指标的重建,并在模拟非均匀性数据和真实超高场数据上验证了模型的有效性,从而促进了超高场dMRI技术在医学和临床中的应用。人工智能辅助压缩感知是一种基于卷积神经网络的深度学习技术,可以实现超高分辨率图像重构和降噪。在保证图像质量的前提下,大大缩短了序列的采集时间。在本期特刊中,Zhou等人[6]将辅助压缩感知技术应用于5T MRI,显著缩短了MRI扫描时间,保证了图像质量和诊断准确性。本创新研究可有效提高临床工作效率。AI技术可以在放射组学中发挥重要作用,通过深度学习模型,自动提取大量定量图像特征,并结合患者临床数据、基因表达信息,构建高精度的诊断和预测模型[7]。Pawan等[bbb]从放射组学、机器学习和深度学习等方面综述了前列腺癌骨转移的研究。他们提出了多种策略,包括分类/预测、检测、分割和评估前列腺骨转移的放射学方法;为相关研究提供了系统的学习机会。人工智能在医学影像领域的应用显示出巨大的潜力和优势。从智能成像系统的优化到复杂图像的处理和分析,人工智能技术正在将医学成像推向新的高度。未来,人工智能技术将进一步推动个性化医疗、远程诊断、跨学科融合的发展。黄斌:撰稿-原稿(等)高波:写作——审稿和编辑(主笔)。高波教授是《放射学》编委会成员。为了尽量减少偏倚,他被排除在所有与接受这篇文章发表相关的编辑决策之外。其余的作者声明没有利益冲突。 国家自然科学基金项目,资助/奖励号:81871333,82260340;​贵州省教委2020年创新群体项目,资助/奖励号:KY[2021]017;贵州省科学与工程学院;科技项目批准/奖励号:ZK[2024]通则194;贵州省科学与工程学院;科技项目,批准/奖励号:[2020]4Y159,[2021]430。不适用。不适用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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