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SynthRAD2023 Grand Challenge

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DataCite Commons2025-03-20 更新2025-04-16 收录
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Medical imaging has become increasingly important in the diagnosis and treatment of oncological patients, particularly in radiotherapy. Traditionally, X-ray-based imaging is widely adopted in RT for patient positioning and monitoring before, during, or after the dose delivery.Computed tomography (CT) is considered the primary imaging modality in RT, providing accurate and high-resolution patient geometry and enabling direct electron density conversion needed for dose calculations [Chernak et al., 1975]. Also, cone-beam computed tomography (CBCT) plays a vital role in image-guided adaptive radiation therapy (IGART) for photon and proton therapy. However, due to the severe scatter noise and truncated projections, CBCT is affected by artifacts, e.g. as shading, streaking, and cupping that makes it unsuitable for accurate dose calculations [Ramella et al., 2017]. Image synthesis has been proposed to improve the quality of CBCT to the CT level, producing the so-called “synthetic CT” (sCT) [Kida et al., 2018]. The conversion of CBCT-to-CT would allow accurate dose computation, enabling adaptive CBCT-based RT and improving the quality of IGART provided to the patients.In the last decades, magnetic resonance imaging (MRI) has also proved its added value for tumors and organs-at-risk delineation thanks to its superb soft-tissue contrast . MRI can be acquired to simulate the treatment planning or to match patient positioning to the planned one and monitor changes before, during, or after the dose delivery [Lagendijk et al., 2004].To benefit from the complementary advantages offered by different imaging modalities, MRI is generally registered to CT. Such a workflow requires obtaining a CT, increasing workload, and introducing additional radiation to the patient. Recently, MRI-only based RT has been proposed to simplify and speed up the workflow, decreasing patients' exposure to ionizing radiation, which is particularly relevant for repeated simulations or fragile populations like children. MRI-only RT may reduce overall treatment costs and workload, and eliminate residual registration errors when using both imaging modalities. Additionally, the development of MRI-only techniques can be beneficial for MRI-guided RT [Edmund and Nyholm, 2017].The main obstacle in introducing MRI-only RT is the lack of tissue attenuation information required for accurate dose calculations. Many methods have been proposed to convert MR to CT-equivalent images, obtaining synthetic CT (sCT) for treatment planning and dose calculation. In recent years, the derivation of sCT from MRI or CBCT has increased interest based on artificial intelligence algorithms such as machine learning or deep learning. However, no public data or challenges have been designed to provide ground truth for this task.A recent review of deep learning-based sCT generation advocated for public challenges to provide data and evaluation metrics to compare different approaches openly. 
提供机构:
IEEE DataPort
创建时间:
2025-03-20
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