Chaudhary Suneeta, Lane Elizabeth G, Levy Allison, McGrath Anika, Mema Eralda, Reichmann Melissa, Dodelzon Katerina, Simon Katherine, Chang Eileen, Nickel Marcel Dominik, Moy Linda, Drotman Michele, Kim Sungheon Gene
Department of Radiology, Weill Cornell Medical College, New York, New York, USA.
MR Application Predevelopment, Siemens Healthineers AG, Forchheim, Germany.
Magn Reson Med. 2025 May;93(5):2163-2175. doi: 10.1002/mrm.30401. Epub 2024 Dec 6.
To develop a deep learning-based method for robust and rapid estimation of the fatty acid composition (FAC) in mammary adipose tissue.
A physics-based unsupervised deep learning network for estimation of fatty acid composition-network (FAC-Net) is proposed to estimate the number of double bonds and number of methylene-interrupted double bonds from multi-echo bipolar gradient-echo data, which are subsequently converted to saturated, mono-unsaturated, and poly-unsaturated fatty acids. The loss function was based on a 10 fat peak signal model. The proposed network was tested with a phantom containing eight oils with different FAC and on post-menopausal women scanned using a whole-body 3T MRI system between February 2022 and January 2024. The post-menopausal women included a control group (n = 8) with average risk for breast cancer and a cancer group (n = 7) with biopsy-proven breast cancer.
The FAC values of eight oils in the phantom showed strong correlations between the measured and reference values (R > 0.9 except chain length). The FAC values measured from scan and rescan data of the control group showed no significant difference between the two scans. The FAC measurements of the cancer group conducted before contrast and after contrast showed a significant difference in saturated fatty acid and mono-unsaturated fatty acid. The cancer group has higher saturated fatty acid than the control group, although not statistically significant.
The results in this study suggest that the proposed FAC-Net can be used to measure the FAC of mammary adipose tissue from gradient-echo MRI data of the breast.
开发一种基于深度学习的方法,用于稳健且快速地估计乳腺脂肪组织中的脂肪酸组成(FAC)。
提出一种基于物理的无监督深度学习网络——脂肪酸组成估计网络(FAC-Net),用于从多回波双极梯度回波数据中估计双键数量和亚甲基间断双键数量,随后将其转换为饱和脂肪酸、单不饱和脂肪酸和多不饱和脂肪酸。损失函数基于一个10脂肪峰信号模型。使用包含八种具有不同FAC的油的体模,以及在2022年2月至2024年1月期间使用全身3T MRI系统扫描的绝经后女性对所提出的网络进行测试。绝经后女性包括乳腺癌平均风险的对照组(n = 8)和经活检证实患有乳腺癌的癌症组(n = 7)。
体模中八种油的FAC值在测量值和参考值之间显示出强相关性(除链长外R > 0.9)。对照组扫描和重新扫描数据测量的FAC值在两次扫描之间无显著差异。癌症组在造影前和造影后进行的FAC测量在饱和脂肪酸和单不饱和脂肪酸方面显示出显著差异。癌症组的饱和脂肪酸高于对照组,尽管无统计学意义。
本研究结果表明,所提出的FAC-Net可用于从乳腺的梯度回波MRI数据测量乳腺脂肪组织的FAC。