Aringhieri Giacomo, Astrea Guja, Marfisi Daniela, Fanni Salvatore Claudio, Marinella Gemma, Pasquariello Rosa, Ricci Giulia, Sansone Francesco, Sperti Martina, Tonacci Alessandro, Torri Francesca, Matà Sabrina, Siciliano Gabriele, Neri Emanuele, Santorelli Filippo Maria, Conte Raffaele
Department of Translational Research and New Technology in Medicine and Surgery, Academic Radiology, University of Pisa, 56126 Pisa, Italy.
Department of Developmental Neuroscience, IRCCS Fondazione Stella Maris, 56128 Pisa, Italy.
J Funct Morphol Kinesiol. 2024 Jul 12;9(3):123. doi: 10.3390/jfmk9030123.
We aim to develop a deep learning-based algorithm for automated segmentation of thigh muscles and subcutaneous adipose tissue (SAT) from T1-weighted muscle MRIs from patients affected by muscular dystrophies (MDs). From March 2019 to February 2022, adult and pediatric patients affected by MDs were enrolled from Azienda Ospedaliera Universitaria Pisana, Pisa, Italy (Institution 1) and the IRCCS Stella Maris Foundation, Calambrone-Pisa, Italy (Institution 2), respectively. All patients underwent a bilateral thighs MRI including an axial T1 weighted in- and out-of-phase (dual-echo). Both muscles and SAT were manually and separately segmented on out-of-phase image sets by a radiologist with 6 years of experience in musculoskeletal imaging. A U-Net1 and U-Net3 were built to automatically segment the SAT, all the thigh muscles together and the three muscular compartments separately. The dataset was randomly split into the on train, validation, and test set. The segmentation performance was assessed through the Dice similarity coefficient (DSC). The final cohort included 23 patients. The estimated DSC for U-Net1 was 96.8%, 95.3%, and 95.6% on train, validation, and test set, respectively, while the estimated accuracy for U-Net3 was 94.1%, 92.9%, and 93.9%. Both of the U-Nets achieved a median DSC of 0.95 for SAT segmentation. The U-Net1 and the U-Net3 achieved an optimal agreement with manual segmentation for the automatic segmentation. The so-developed neural networks have the potential to automatically segment thigh muscles and SAT in patients affected by MDs.
我们旨在开发一种基于深度学习的算法,用于从肌肉营养不良症(MD)患者的T1加权肌肉磁共振成像(MRI)中自动分割大腿肌肉和皮下脂肪组织(SAT)。2019年3月至2022年2月,分别从意大利比萨大学医院(机构1)和意大利比萨卡拉姆布罗内的IRCCS斯特拉·马里思基金会(机构2)招募了受MD影响的成年和儿科患者。所有患者均接受了双侧大腿MRI检查,包括轴向T1加权同相和反相(双回波)成像。一位在肌肉骨骼成像方面有6年经验的放射科医生在反相图像集上对肌肉和SAT进行了手动且分别的分割。构建了U-Net1和U-Net3来自动分割SAT、所有大腿肌肉以及分别分割三个肌肉腔室。数据集被随机分为训练集、验证集和测试集。通过骰子相似系数(DSC)评估分割性能。最终队列包括23名患者。U-Net1在训练集、验证集和测试集上的估计DSC分别为96.8%、95.3%和95.6%,而U-Net3的估计准确率分别为94.1%、92.9%和93.9%。两个U-Net在SAT分割方面的DSC中位数均达到0.95。U-Net1和U-Net3在自动分割方面与手动分割达到了最佳一致性。如此开发的神经网络有潜力在受MD影响的患者中自动分割大腿肌肉和SAT。