Bhimavarapu Usharani, Chintalapudi Nalini, Battineni Gopi
Department of Computer Science and Engineering, Koneru Lakshmaiah Education Foundation, Vaddeswaram 522302, India.
Clinical Research Centre, School of Medicinal and Health Products Sciences, University of Camerino, 62032 Camerino, Italy.
Bioengineering (Basel). 2024 Mar 8;11(3):266. doi: 10.3390/bioengineering11030266.
There is no doubt that brain tumors are one of the leading causes of death in the world. A biopsy is considered the most important procedure in cancer diagnosis, but it comes with drawbacks, including low sensitivity, risks during biopsy treatment, and a lengthy wait for results. Early identification provides patients with a better prognosis and reduces treatment costs. The conventional methods of identifying brain tumors are based on medical professional skills, so there is a possibility of human error. The labor-intensive nature of traditional approaches makes healthcare resources expensive. A variety of imaging methods are available to detect brain tumors, including magnetic resonance imaging (MRI) and computed tomography (CT). Medical imaging research is being advanced by computer-aided diagnostic processes that enable visualization. Using clustering, automatic tumor segmentation leads to accurate tumor detection that reduces risk and helps with effective treatment. This study proposed a better Fuzzy C-Means segmentation algorithm for MRI images. To reduce complexity, the most relevant shape, texture, and color features are selected. The improved Extreme Learning machine classifies the tumors with 98.56% accuracy, 99.14% precision, and 99.25% recall. The proposed classifier consistently demonstrates higher accuracy across all tumor classes compared to existing models. Specifically, the proposed model exhibits accuracy improvements ranging from 1.21% to 6.23% when compared to other models. This consistent enhancement in accuracy emphasizes the robust performance of the proposed classifier, suggesting its potential for more accurate and reliable brain tumor classification. The improved algorithm achieved accuracy, precision, and recall rates of 98.47%, 98.59%, and 98.74% on the Fig share dataset and 99.42%, 99.75%, and 99.28% on the Kaggle dataset, respectively, which surpasses competing algorithms, particularly in detecting glioma grades. The proposed algorithm shows an improvement in accuracy, of approximately 5.39%, in the Fig share dataset and of 6.22% in the Kaggle dataset when compared to existing models. Despite challenges, including artifacts and computational complexity, the study's commitment to refining the technique and addressing limitations positions the improved FCM model as a noteworthy advancement in the realm of precise and efficient brain tumor identification.
毫无疑问,脑肿瘤是全球主要死因之一。活检被认为是癌症诊断中最重要的程序,但它也有缺点,包括灵敏度低、活检治疗过程中的风险以及等待结果的时间长。早期识别可为患者提供更好的预后并降低治疗成本。传统的脑肿瘤识别方法基于医学专业技能,因此存在人为误差的可能性。传统方法的劳动密集型性质使得医疗资源成本高昂。有多种成像方法可用于检测脑肿瘤,包括磁共振成像(MRI)和计算机断层扫描(CT)。医学成像研究正通过能够实现可视化的计算机辅助诊断过程不断推进。使用聚类,自动肿瘤分割可实现准确的肿瘤检测,降低风险并有助于有效治疗。本研究提出了一种针对MRI图像的更好的模糊C均值分割算法。为了降低复杂性,选择了最相关的形状、纹理和颜色特征。改进的极限学习机对肿瘤进行分类,准确率为98.56%,精确率为99.14%,召回率为99.25%。与现有模型相比,所提出的分类器在所有肿瘤类别中始终表现出更高的准确率。具体而言,与其他模型相比,所提出的模型准确率提高了1.21%至6.23%。这种准确率的持续提高强调了所提出分类器的强大性能,表明其在更准确可靠的脑肿瘤分类方面的潜力。改进后的算法在Fig share数据集上的准确率、精确率和召回率分别为98.47%、98.59%和98.74%,在Kaggle数据集上分别为99.42%、99.75%和99.28%,超过了竞争算法,特别是在检测神经胶质瘤等级方面。与现有模型相比,所提出的算法在Fig share数据集上的准确率提高了约5.39%,在Kaggle数据集上提高了6.22%。尽管存在包括伪影和计算复杂性在内的挑战,但该研究致力于改进技术并解决局限性,这使得改进后的FCM模型成为精确高效脑肿瘤识别领域的一项值得注意的进展。