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Abstract #4377

Quantitative MRI T2mapping in the knee joint using deep learning-based reconstruction for Compressed sensing

jiahui fu1, chinting wong1, lin mu1, dong dong1, ying qiu1, yi Zhu2, Ke Jiang2, and huimao zhang1
1The First Hospital of Jilin University, Changchun, China, chang chun, China, 2Philips Healthcare, Beijing, China, Beijing, China, China

Synopsis

Keywords: Osteoarthritis, Machine Learning/Artificial IntelligenceMRI T2 mapping has been recommended as a noninvasive biomarker of knee cartilage lesions. However, due to the long acquisition time, it hasn’t been widely used in the clinical setting. Recently, deep learning-based acceleration of compressed sensing (CS) has shown promising results without losing image quality. The purpose of this study was to explore the feasibility of quantitative knee T2-mapping accelerated by deep learning-based compressed sensing (CS-AI), and compare the image quality and diagnostic performance with conventional CS. The results demonstrates that quantitative knee T2 mapping with reconstruction by CS-AI was feasible, suggesting better diagnostic performance without extra time consuming.

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Keywords