ECE Department, KLEF Green fields, Vaddeswaram 522502, Guntur, Andhra Pradesh, India.
Curr Med Imaging. 2024;20:e15734056321223. doi: 10.2174/0115734056321223240809091842.
Classifying brain tumors with extraordinary precision using images is critical for prognosis and treatment planning. The aberrant proliferation of brain cells characterizes brain tumors. Variations in neuronal development may occur among individuals. The classification of tumors as benign or malignant is contingent upon their rate of growth. A benign tumor remains localized at its site of origin; one that has spread to distant sites is malignant. Brain tumor identification may be difficult due to the unique characteristics of brain tumor cells
This study presents a method that methodically improves the identification of brain tumor cells and the analysis of functional structures through the utilization of sample training that incorporates features extracted from Magnetic Resonance Imaging (MRI) images. In the image enhancement phase, the color information of the MRI image is converted to greyscale, and its margins are sharpened to facilitate the detection of finer details. For specialists or general practitioners to accurately diagnose life-threatening conditions, such as brain tumors, medical images are required. Picture denoising has been identified in recent research as a potentially fruitful area of study. It is critical to perform image cleanup while preserving the sharpness of the boundaries.
In this research, a Prompt Multi Level Segmentation Denoising model with a Fragile Correlated Feature Subset (PMLSD-FCFS) model is proposed for accurate denoising of MRI images and to extract the most relevant features set by applying a feature dimensionality reduction model for better brain tumor predictions.
The proposed model achieves 98.2% accuracy in Multi-Level Image Segmentation and 98.4% accuracy in Fragile Correlated Feature Subset Generation.
The experimental findings indicated that the model proposed exhibits superior performance compared to the traditional algorithms. Furthermore, it successfully eliminates the noise from the MRI images, and most relevant features are only considered for brain tumor detection, thereby enhancing the accuracy of classification.
使用图像对脑瘤进行非凡精确的分类对于预后和治疗计划至关重要。脑细胞的异常增殖是脑瘤的特征。个体之间可能存在神经元发育的差异。肿瘤是良性还是恶性取决于其生长速度。良性肿瘤仍然局限于其起源部位;已经扩散到远处的肿瘤是恶性的。由于脑瘤细胞的独特特征,脑瘤的识别可能很困难。
本研究提出了一种方法,通过利用包含从磁共振成像 (MRI) 图像中提取的特征的样本训练,系统地提高脑瘤细胞的识别和功能结构的分析。在图像增强阶段,将 MRI 图像的颜色信息转换为灰度,锐化其边缘以方便检测更细微的细节。为了让专家或普通医生准确诊断危及生命的疾病,如脑瘤,需要使用医学图像。最近的研究表明,图像去噪是一个有前途的研究领域。在保持边界清晰度的同时进行图像清理至关重要。
在这项研究中,提出了一种带有脆弱相关特征子集 (PMLSD-FCFS) 的 Prompt 多级分割去噪模型 (Prompt Multi Level Segmentation Denoising model with a Fragile Correlated Feature Subset),用于准确地对 MRI 图像进行去噪,并通过应用特征降维模型提取最相关的特征集,以更好地进行脑瘤预测。
该模型在多级图像分割中达到 98.2%的准确率,在脆弱相关特征子集生成中达到 98.4%的准确率。
实验结果表明,与传统算法相比,所提出的模型表现出优越的性能。此外,它成功地从 MRI 图像中消除了噪声,并且仅考虑最相关的特征用于脑瘤检测,从而提高了分类的准确性。