Modified ResNet152v2: Binary Classification and Hybrid Segmentation of Brain Stroke Using Transfer Learning-Based Approach

Nallamotu Parimala, G. Muneeswari
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Abstract

Introduction: The brain is harmed by a medical condition known as a stroke when the blood vessels in the brain burst. Symptoms may appear when the brain’s flow of blood and other nutrients is disrupted. The World Health Organization (WHO) claims that stroke is the leading cause of disability and death worldwide. A stroke can be made less severe by detecting its different warning symptoms early. A brain stroke can be quickly diagnosed using computed tomography (CT) images. Time is passing quickly, although experts are studying every brain CT scan. This situation can cause therapy to be delayed and mistakes to be made. As a result, we focused on using an effective transfer learning approach for stroke detection. Material and methods: To improve the detection accuracy, the stroke-affected region of the brain is segmented using the Red Fox optimization algorithm (RFOA). The processed area is then further processed using the Advanced Dragonfly Algorithm. The segmented image extracts include morphological, wavelet features, and grey-level co-occurrence matrix (GLCM). Modified ResNet152V2 is then used to classify the images of Normal and Stroke. We use the Brain Stroke CT Image Dataset to conduct tests using Python for implementation. Results: Per the performance analysis, the proposed approach outperformed the other deep learning algorithms, achieving the best accuracy of 99.25%, sensitivity of 99.65%, F1-score of 99.06%, precision of 99.63%, and specificity of 99.56%. Conclusions: The proposed deep learning-based classification system returns the best possible solution among all input predictive models considering performance criteria and improves the system’s efficacy; hence, it can assist doctors and radiologists in a better way to diagnose Brain Stroke patients.
修改后的 ResNet152v2:使用基于迁移学习的方法对脑卒中进行二元分类和混合分割
简介当脑血管破裂时,大脑就会受到中风这种疾病的伤害。当大脑的血液和其他营养物质的流动受到干扰时,就会出现症状。世界卫生组织(WHO)称,中风是全球致残和致死的主要原因。如果能及早发现中风的各种预警症状,就能减轻中风的严重程度。使用计算机断层扫描(CT)图像可以快速诊断脑卒中。虽然专家们正在研究每一次脑部 CT 扫描,但时间过得很快。这种情况可能导致治疗延误和失误。因此,我们专注于使用有效的迁移学习方法来检测脑卒中。 材料和方法为了提高检测准确性,我们使用红狐优化算法(RFOA)分割大脑中受中风影响的区域。然后使用高级蜻蜓算法对处理过的区域进行进一步处理。分割后的图像提取物包括形态学特征、小波特征和灰度级共现矩阵(GLCM)。然后使用修改后的 ResNet152V2 对图像进行正常和中风分类。我们使用脑卒中 CT 图像数据集进行测试,并使用 Python 进行实现。 测试结果根据性能分析,所提出的方法优于其他深度学习算法,准确率达到 99.25%,灵敏度达到 99.65%,F1 分数达到 99.06%,精确度达到 99.63%,特异性达到 99.56%。 结论所提出的基于深度学习的分类系统在考虑性能标准的所有输入预测模型中返回了可能的最佳解决方案,并提高了系统的功效;因此,它可以帮助医生和放射科医生更好地诊断脑中风患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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