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- W4318220671 abstract "Abstract Deep learning (DL) has a growing popularity and is a well-established method of artificial intelligence for data processing, especially for images and videos. Its applications in nuclear medicine are broad and include, among others, disease classification, image reconstruction, and image de-noising. Positron emission tomography (PET) and single-photon emission computerized tomography (SPECT) are major image acquisition technologies in nuclear medicine. Though several studies have been conducted to apply DL in many nuclear medicine domains, such as cancer detection and classification, few studies have employed such methods for cardiovascular disease applications. The present paper reviews recent DL approaches focused on cardiac SPECT imaging. Extensive research identified fifty-five related studies, which are discussed. The review distinguishes between major application domains, including cardiovascular disease diagnosis, SPECT attenuation correction, image denoising, full-count image estimation, and image reconstruction. In addition, major findings and dominant techniques employed for the mentioned task are revealed. Current limitations of DL approaches and future research directions are discussed." @default.
- W4318220671 created "2023-01-27" @default.
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- W4318220671 date "2023-01-27" @default.
- W4318220671 modified "2023-10-16" @default.
- W4318220671 title "Deep learning-enhanced nuclear medicine SPECT imaging applied to cardiac studies" @default.
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- W4318220671 doi "https://doi.org/10.1186/s40658-022-00522-7" @default.
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