Jayaraman Thirumagal, Reddy M Sravan, Mahadevappa Manjunatha, Sadhu Anup, Dutta Pranab Kumar
School of Medical Science and Technology, IIT Kharagpur, Kharagpur, 721302, India.
Department of Electronics and Communications, JNTUA-College of Engineering, Pulivendula, 516390, India.
Vis Comput Ind Biomed Art. 2020 Dec 7;3(1):29. doi: 10.1186/s42492-020-00064-8.
Neurodegenerative disorders are commonly characterized by atrophy of the brain which is caused by neuronal loss. Ventricles are one of the prominent structures in the brain; their shape changes, due to their content, the cerebrospinal fluid. Analyzing the morphological changes of ventricles, aids in the diagnosis of atrophy, for which the region of interest needs to be separated from the background. This study presents a modified distance regularized level set evolution segmentation method, incorporating regional intensity information. The proposed method is implemented for segmenting ventricles from brain images for normal and atrophy subjects of magnetic resonance imaging and computed tomography images. Results of the proposed method were compared with ground truth images and produced sensitivity in the range of 65%-90%, specificity in the range of 98%-99%, and accuracy in the range of 95%-98%. Peak signal to noise ratio and structural similarity index were also used as performance measures for determining segmentation accuracy: 95% and 0.95, respectively. The parameters of level set formulation vary for different datasets. An optimization procedure was followed to fine tune parameters. The proposed method was found to be efficient and robust against noisy images. The proposed method is adaptive and multimodal.
神经退行性疾病通常的特征是由神经元丢失导致的脑萎缩。脑室是大脑中突出的结构之一;由于其内容物脑脊液的原因,它们的形状会发生变化。分析脑室的形态变化有助于萎缩的诊断,为此需要将感兴趣区域与背景分离。本研究提出了一种改进的距离正则化水平集演化分割方法,该方法纳入了区域强度信息。所提出的方法用于从磁共振成像和计算机断层扫描图像的正常和萎缩受试者的脑图像中分割脑室。将所提出方法的结果与真实图像进行比较,得到的灵敏度在65% - 90%范围内,特异性在98% - 99%范围内,准确率在95% - 98%范围内。峰值信噪比和结构相似性指数也被用作确定分割准确性的性能指标,分别为95%和0.95。水平集公式的参数因不同数据集而异。采用了一种优化程序来微调参数。结果表明,所提出的方法对噪声图像有效且鲁棒。所提出的方法具有自适应性和多模态性。