Reddy K Rasool, Batchu Raj Kumar, Polinati Srinivasu, Bavirisetti Durga Prasad
Department of Electronics and Communication Engineering, Malla Reddy College of Engineering and Technology (MRCET), Hyderabad, India.
Department of Computer Science and Engineering (Data Science), Prasad V. Potluri Siddhartha Institute of Technology (PVPSIT), Vijayawada, India.
Front Hum Neurosci. 2023 Mar 22;17:1157155. doi: 10.3389/fnhum.2023.1157155. eCollection 2023.
Brain tumors arise due to abnormal growth of cells at any brain location with uneven boundaries and shapes. Usually, they proliferate rapidly, and their size increases by approximately 1.4% a day, resulting in invisible illness and psychological and behavioral changes in the human body. It is one of the leading causes of the increase in the mortality rate of adults worldwide. Therefore, early prediction of brain tumors is crucial in saving a patient's life. In addition, selecting a suitable imaging sequence also plays a significant role in treating brain tumors. Among available techniques, the magnetic resonance (MR) imaging modality is widely used due to its noninvasive nature and ability to represent the inherent details of brain tissue. Several computer-assisted diagnosis (CAD) approaches have recently been developed based on these observations. However, there is scope for improvement due to tumor characteristics and image noise variations. Hence, it is essential to establish a new paradigm.
This paper attempts to develop a new medical decision-support system for detecting and differentiating brain tumors from MR images. In the implemented approach, initially, we improve the contrast and brightness using the tuned single-scale retinex (TSSR) approach. Then, we extract the infected tumor region(s) using maximum entropy-based thresholding and morphological operations. Furthermore, we obtain the relevant texture features based on the non-local binary pattern (NLBP) feature descriptor. Finally, the extracted features are subjected to a support vector machine (SVM), K-nearest neighbors (KNN), random forest (RF), and GentleBoost (GB).
The presented CAD model achieved 99.75% classification accuracy with 5-fold cross-validation and a 91.88% dice similarity score, which is higher than the existing models.
By analyzing the experimental outcomes, we conclude that our method can be used as a supportive clinical tool for physicians during the diagnosis of brain tumors.
脑肿瘤是由于大脑任何部位的细胞异常生长而产生的,其边界和形状参差不齐。通常,它们生长迅速,大小每天增加约1.4%,导致人体出现隐性疾病以及心理和行为变化。它是全球成年人死亡率上升的主要原因之一。因此,早期预测脑肿瘤对于挽救患者生命至关重要。此外,选择合适的成像序列在脑肿瘤治疗中也起着重要作用。在现有技术中,磁共振(MR)成像模态因其非侵入性以及能够呈现脑组织固有细节的能力而被广泛使用。基于这些观察结果,最近已经开发了几种计算机辅助诊断(CAD)方法。然而,由于肿瘤特征和图像噪声变化,仍有改进的空间。因此,建立一种新的范式至关重要。
本文试图开发一种新的医学决策支持系统,用于从MR图像中检测和区分脑肿瘤。在所实施的方法中,首先,我们使用调谐单尺度视网膜算法(TSSR)来改善对比度和亮度。然后,我们使用基于最大熵的阈值处理和形态学操作来提取受感染的肿瘤区域。此外,我们基于非局部二值模式(NLBP)特征描述符获得相关的纹理特征。最后,将提取的特征应用于支持向量机(SVM)、K近邻(KNN)、随机森林(RF)和GentleBoost(GB)。
所提出的CAD模型在5折交叉验证中实现了99.75%的分类准确率和91.88%的骰子相似性分数,高于现有模型。
通过分析实验结果,我们得出结论,我们的方法可以作为医生在诊断脑肿瘤时的辅助临床工具。