Cai Jinzheng, Xing Fuyong, Batra Abhinandan, Liu Fujun, Walter Glenn A, Vandenborne Krista, Yang Lin
J. Crayton Pruitt Family Department of Biomedical Engineering, University of Florida.
Department of Biostatistics and Informatics, University of Colorado Denver.
Pattern Recognit. 2019 Feb;86:368-375. doi: 10.1016/j.patcog.2018.08.012. Epub 2018 Sep 18.
The muscular dystrophies are made up of a diverse group of rare genetic diseases characterized by progressive loss of muscle strength and muscle damage. Since there is no cure for muscular dystrophy and clinical outcome measures are limited, it is critical to assess the progression of MD objectively. Imaging muscle replacement by fibrofatty tissue has been shown to be a robust biomarker to monitor disease progression in DMD. In magnetic resonance imaging (MRI) data, specific texture patterns are found to correlate to certain MD subtypes and thus present a potential way for automatic assessment. In this paper, we first apply state-of-the-art convolutional neural networks (CNNs) to perform accurate MD image classification and then propose an effective visualization method to highlight the important image textures. With a dystrophic MRI dataset, we found that the best CNN model delivers an 91.7% classification accuracy, which significantly outperforms non-deep learning methods, .., 40% improvement has been found over the traditional mean fat fraction (MFF) criterion for DMD and CMD classification. After investigating every single neuron at the top layer of CNN model, we found the superior classification ability of CNN can be explained by its 91 and 118 neurons were performing better than the MFF criterion under the measurements of Euclidean and Chi-square distance, respectively. In order to further interpret CNNs predictions, we tested an improved class activation mapping (ICAM) method to visualize the important regions in the MRI images. With this ICAM, CNNs are able to locate the most discriminative texture patterns of DMD in soleus, lateral gastrocnemius, and medial gastrocnemius; for CMD, the critical texture patterns are highlighted in soleus, tibialis posterior, and peroneus.
肌肉萎缩症是由一组罕见的遗传性疾病组成,其特征是肌肉力量逐渐丧失和肌肉损伤。由于目前尚无治愈肌肉萎缩症的方法,且临床结果测量方法有限,因此客观评估肌肉萎缩症的进展至关重要。影像学显示,纤维脂肪组织替代肌肉是监测杜氏肌营养不良症(DMD)疾病进展的可靠生物标志物。在磁共振成像(MRI)数据中,发现特定的纹理模式与某些肌肉萎缩症亚型相关,从而为自动评估提供了一种潜在方法。在本文中,我们首先应用先进的卷积神经网络(CNN)进行准确的肌肉萎缩症图像分类,然后提出一种有效的可视化方法来突出重要的图像纹理。通过一个营养不良性MRI数据集,我们发现最佳的CNN模型分类准确率达到91.7%,显著优于非深度学习方法,在DMD和先天性肌营养不良症(CMD)分类方面,相较于传统的平均脂肪分数(MFF)标准有40%的提升。在研究了CNN模型顶层的每一个神经元后,我们发现CNN卓越的分类能力可以通过其91个和118个神经元来解释,在欧几里得距离和卡方距离测量下,它们分别比MFF标准表现更好。为了进一步解释CNN的预测结果,我们测试了一种改进的类激活映射(ICAM)方法来可视化MRI图像中的重要区域。通过这种ICAM,CNN能够定位比目鱼肌、外侧腓肠肌和内侧腓肠肌中DMD最具判别力的纹理模式;对于CMD,关键的纹理模式在比目鱼肌、胫后肌和腓骨肌中被突出显示。