Department of Computer Science and Engineering, Amity University Gurugram, Gurugram 122412, Haryana, India.
Department of Computer Science and Engineering, Chandigarh University, Mohali 140413, Punjab, India.
Sensors (Basel). 2023 Sep 12;23(18):7816. doi: 10.3390/s23187816.
Brain tumors in Magnetic resonance image segmentation is challenging research. With the advent of a new era and research into machine learning, tumor detection and segmentation generated significant interest in the research world. This research presents an efficient tumor detection and segmentation technique using an adaptive moving self-organizing map and Fuzzyk-mean clustering (AMSOM-FKM). The proposed method mainly focused on tumor segmentation using extraction of the tumor region. AMSOM is an artificial neural technique whose training is unsupervised. This research utilized the online Kaggle Brats-18 brain tumor dataset. This dataset consisted of 1691 images. The dataset was partitioned into 70% training, 20% testing, and 10% validation. The proposed model was based on various phases: (a) removal of noise, (b) selection of feature attributes, (c) image classification, and (d) tumor segmentation. At first, the MR images were normalized using the Wiener filtering method, and the Gray level co-occurrences matrix (GLCM) was used to extract the relevant feature attributes. The tumor images were separated from non-tumor images using the AMSOM classification approach. At last, the FKM was used to distinguish the tumor region from the surrounding tissue. The proposed AMSOM-FKM technique and existing methods, i.e., Fuzzy-C-means and K-mean (FMFCM), hybrid self-organization mapping-FKM, were implemented over MATLAB and compared based on comparison parameters, i.e., sensitivity, precision, accuracy, and similarity index values. The proposed technique achieved more than 10% better results than existing methods.
磁共振图像分割中的脑肿瘤是一项具有挑战性的研究。随着新时代的到来和机器学习研究的兴起,肿瘤检测和分割在研究界引起了极大的兴趣。本研究提出了一种使用自适应移动自组织映射和模糊 k-均值聚类(AMSOM-FKM)的高效肿瘤检测和分割技术。该方法主要侧重于使用肿瘤区域提取进行肿瘤分割。AMSOM 是一种人工神经网络技术,其训练是无监督的。本研究利用在线 Kaggle Brats-18 脑肿瘤数据集。该数据集包含 1691 张图像。数据集分为 70%的训练集、20%的测试集和 10%的验证集。所提出的模型基于以下几个阶段:(a)去除噪声,(b)选择特征属性,(c)图像分类,(d)肿瘤分割。首先,使用 Wiener 滤波方法对 MR 图像进行归一化,然后使用灰度共生矩阵(GLCM)提取相关特征属性。使用 AMSOM 分类方法将肿瘤图像与非肿瘤图像分离。最后,使用 FKM 将肿瘤区域与周围组织区分开来。在 MATLAB 上实现了所提出的 AMSOM-FKM 技术和现有的方法,即模糊 C-均值和 K-均值(FMFCM)、混合自组织映射-FKM,并基于比较参数,即灵敏度、精度、准确性和相似性指数值进行了比较。所提出的技术比现有方法的结果要好 10%以上。