Major of Biomedical Engineering, Department of Electrical, Electronic and Computer Engineering, University of Ulsan, Nam-gu, Ulsan, 44610, Republic of Korea.
Department of Electronic Engineering, Hanbat National University, Yuseong-gu, Daejeon, 34158, Republic of Korea.
Sci Rep. 2022 Sep 13;12(1):15371. doi: 10.1038/s41598-022-19204-6.
In lymphedema, proinflammatory cytokine-mediated progressive cascades always occur, leading to macroscopic fibrosis. However, no methods are practically available for measuring lymphedema-induced fibrosis before its deterioration. Technically, CT can visualize fibrosis in superficial and deep locations. For standardized measurement, verification of deep learning (DL)-based recognition was performed. A cross-sectional, observational cohort trial was conducted. After narrowing window width of the absorptive values in CT images, SegNet-based semantic segmentation model of every pixel into 5 classes (air, skin, muscle/water, fat, and fibrosis) was trained (65%), validated (15%), and tested (20%). Then, 4 indices were formulated and compared with the standardized circumference difference ratio (SCDR) and bioelectrical impedance (BEI) results. In total, 2138 CT images of 27 chronic unilateral lymphedema patients were analyzed. Regarding fibrosis segmentation, the mean boundary F1 score and accuracy were 0.868 and 0.776, respectively. Among 19 subindices of the 4 indices, 73.7% were correlated with the BEI (partial correlation coefficient: 0.420-0.875), and 13.2% were correlated with the SCDR (0.406-0.460). The mean subindex of Index 2 [Formula: see text] presented the highest correlation. DL has potential applications in CT image-based lymphedema-induced fibrosis recognition. The subtraction-type formula might be the most promising estimation method.
在淋巴水肿中,促炎细胞因子介导的进行性级联反应总是会发生,导致宏观纤维化。然而,在其恶化之前,没有实际可行的方法来测量淋巴水肿引起的纤维化。从技术上讲,CT 可以可视化浅表和深部位置的纤维化。为了进行标准化测量,对基于深度学习(DL)的识别进行了验证。进行了一项横断面、观察性队列试验。在缩小 CT 图像吸收值的窗宽后,训练了基于 SegNet 的语义分割模型,将每个像素分为 5 类(空气、皮肤、肌肉/水、脂肪和纤维化)(65%),验证(15%)和测试(20%)。然后,制定了 4 个指标,并与标准化周长差比(SCDR)和生物电阻抗(BEI)结果进行比较。共分析了 27 例慢性单侧淋巴水肿患者的 2138 张 CT 图像。关于纤维化分割,平均边界 F1 评分和准确性分别为 0.868 和 0.776。在 4 个指标的 19 个子指标中,有 73.7%与 BEI 相关(偏相关系数:0.420-0.875),有 13.2%与 SCDR 相关(0.406-0.460)。指数 2 的平均子指标 [公式:见文本] 呈现出最高的相关性。DL 有可能应用于基于 CT 图像的淋巴水肿引起的纤维化识别。减法型公式可能是最有前途的估计方法。