Le2i, Université Bourgogne Franche-Comte, Dijon, France.
VITAL, Université de Sherbrooke, Sherbrooke, Canada.
PLoS One. 2019 Feb 22;14(2):e0211944. doi: 10.1371/journal.pone.0211944. eCollection 2019.
Tissue segmentation and classification in MRI is a challenging task due to a lack of signal intensity standardization. MRI signal is dependent on the acquisition protocol, the coil profile, the scanner type, etc. While we can compute quantitative physical tissue properties independent of the hardware and the sequence parameters, it is still difficult to leverage these physical properties to segment and classify pelvic tissues. The proposed method integrates quantitative MRI values (T1 and T2 relaxation times and pure synthetic weighted images) and machine learning (Support Vector Machine (SVM)) to segment and classify tissues in the pelvic region, i.e.: fat, muscle, prostate, bone marrow, bladder, and air. Twenty-two men with a mean age of 30±14 years were included in this prospective study. The images were acquired with a 3 Tesla MRI scanner. An inversion recovery-prepared turbo spin echo sequence was used to obtain T1-weighted images at different inversion times with a TR of 14000 ms. A 32-echo spin echo sequence was used to obtain the T2-weighted images at different echo times with a TR of 5000 ms. T1 and T2 relaxation times, synthetic T1- and T2-weighted images and anatomical probabilistic maps were calculated and used as input features of a SVM for segmenting and classifying tissues within the pelvic region. The mean SVM classification accuracy across subjects was calculated for the different tissues: prostate (94.2%), fat (96.9%), muscle (95.8%), bone marrow (91%) and bladder (82.1%) indicating an excellent classification performance. However, the segmentation and classification for air (within the rectum) may not always be successful (mean SVM accuracy 47.5%) due to the lack of air data in the training and testing sets. Our findings suggest that SVM can reliably segment and classify tissues in the pelvic region.
MRI 中的组织分割和分类是一项具有挑战性的任务,因为缺乏信号强度标准化。MRI 信号取决于采集协议、线圈轮廓、扫描仪类型等。虽然我们可以独立于硬件和序列参数计算定量的物理组织特性,但仍然难以利用这些物理特性来分割和分类骨盆组织。该方法集成了定量 MRI 值(T1 和 T2 弛豫时间和纯合成加权图像)和机器学习(支持向量机(SVM))来分割和分类骨盆区域的组织,即:脂肪、肌肉、前列腺、骨髓、膀胱和空气。这项前瞻性研究纳入了 22 名平均年龄为 30±14 岁的男性。图像是在 3T MRI 扫描仪上采集的。使用反转恢复准备的涡轮自旋回波序列在不同反转时间下获得 T1 加权图像,TR 为 14000ms。使用 32 回波自旋回波序列在不同回波时间下获得 T2 加权图像,TR 为 5000ms。计算 T1 和 T2 弛豫时间、合成 T1 和 T2 加权图像和解剖概率图,并将其用作 SVM 的输入特征,用于分割和分类骨盆区域内的组织。计算了不同组织的 SVM 分类准确率的平均值:前列腺(94.2%)、脂肪(96.9%)、肌肉(95.8%)、骨髓(91%)和膀胱(82.1%),表明分类性能优异。然而,由于训练和测试集中缺乏空气数据,空气(直肠内)的分割和分类可能并不总是成功(SVM 准确率平均值为 47.5%)。我们的研究结果表明,SVM 可以可靠地分割和分类骨盆区域的组织。