工作流程
医学影像学
深度学习
医学
图像质量
医学物理学
光子计数
人工智能
分解
质量保证
光子
计算机科学
放射科
图像(数学)
光学
病理
生态学
物理
外部质量评估
数据库
生物
作者
İsmail Meşe,Ceylan Altıntaş Taşlıçay,Ali Kemal Sivrioğlu
标识
DOI:10.1177/02841851231217995
摘要
This review article highlights the potential of integrating photon-counting computed tomography (CT) and deep learning algorithms in medical imaging to enhance diagnostic accuracy, improve image quality, and reduce radiation exposure. The use of photon-counting CT provides superior image quality, reduced radiation dose, and material decomposition capabilities, while deep learning algorithms excel in automating image analysis and improving diagnostic accuracy. The integration of these technologies can lead to enhanced material decomposition and classification, spectral image analysis, predictive modeling for individualized medicine, workflow optimization, and radiation dose management. However, data requirements, computational resources, and regulatory and ethical concerns remain challenges that need to be addressed to fully realize the potential of this technology. The fusion of photon-counting CT and deep learning algorithms is poised to revolutionize medical imaging and transform patient care.
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