Creating a deep learning model using a Swin Transformer and tree growth optimisation to classify brain tumour

K Sankar, V Gokula Krishnan, S Sendil Kumar, P Pushpa, B Prathusha Laxmi
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引用次数: 0

Abstract

The brain, which has billions of cells, is the largest and most complex organ in the human body. A brain tumor is the primary malignant intracranial tumor of the central nervous system that develops most frequently. They are frequently found too late for effective therapy. The use of minimally invasive procedures is necessary to make a diagnosis and monitor a tumor of the central nervous system's response to therapy. There exist three distinct classifications of tumors, namely benign, premalignant, and malignant. This study concentrated on using deep learning to identify brain tumors (BT) using normal or abnormal brain pictures. Numerous methodologies have been employed to augment the quality of images, encompassing image smoothing and noise restoration procedures. The present study employs the proposed Adaptive Weighted Frost filter as it has been identified as the optimal approach for noise reduction in BT photographs. The Swin Transformer technology is employed for the purpose of classifying the BT. The efficiency of the Tree Growth Optimization (TGA) model for Swin transformer hyper parameter tweaking has been evaluated in this work. Before using our unique BT dataset for extensive experimental comparisons, medical specialists carefully examined it down to the pixel level. The predicted model achieved the greatest F1 score of 99.82% and the maximum accuracy, recall, and 100%, respectively.
使用Swin Transformer和树生长优化创建深度学习模型,对脑肿瘤进行分类
大脑拥有数十亿个细胞,是人体中最大、最复杂的器官。脑肿瘤是发生最频繁的中枢神经系统的原发性颅内恶性肿瘤。它们经常被发现得太晚而无法有效治疗。使用微创手术是必要的,以作出诊断和监测肿瘤的中枢神经系统对治疗的反应。肿瘤有三种不同的分类,即良性、癌前和恶性。本研究的重点是利用深度学习技术通过正常或异常的大脑图像来识别脑肿瘤(BT)。许多方法已经被用来提高图像的质量,包括图像平滑和噪声恢复程序。本研究采用所提出的自适应加权霜冻滤波器,因为它已被确定为BT照片降噪的最佳方法。采用Swin变压器技术对BT进行分类,并对树生长优化(TGA)模型对Swin变压器超参数调整的有效性进行了评价。在使用我们独特的BT数据集进行广泛的实验比较之前,医学专家仔细检查了它的像素水平。预测模型最高F1得分为99.82%,最高准确率为100%,最高召回率为100%。
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CiteScore
1.90
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