Optimized Swarm Enabled Deep Learning Technique for Bone Tumor Detection using Histopathological Image

Dama Anand, Osamah Ibrahim Khalaf, Fahima Hajjej, Wing-Keung Wong, Shin-Hung Pan, Gogineni Rajesh Chandra
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Abstract

Cancer subjugates a community that lacks proper care. It remains apparent that research studies enhance novel benchmarks in developing a computer-assisted tool for prognosis in radiology yet an indication of illness detection should be recognized by the pathologist. In bone cancer (BC), Identification of malignancy out of the BC’s histopathological image (HI) remains difficult because of the intricate structure of the bone tissue (BTe) specimen. This study proffers a new approach to diagnosing BC by feature extraction alongside classification employing deep learning frameworks. In this, the input is processed and segmented by Tsallis Entropy for noise elimination, image rescaling, and smoothening. The features are excerpted employing Efficient Net-based Convolutional Neural Network (CNN) Feature Extraction. ROI extraction will be employed to enhance the precise detection of atypical portions surrounding the affected area. Next, for classifying the accurate spotting and for grading the BTe as typical and a typical employing augmented XGBoost alongside Whale optimization (WOA). HIs gathering out of prevailing scales patients is acquired alongside texture characteristics of such images remaining employed for training and testing the Neural Network (NN). These classification outcomes exhibit that NN possesses a hit ratio of 99.48 percent while this occurs in BT classification.
基于组织病理图像的骨肿瘤检测的优化群深度学习技术
癌症征服了缺乏适当治疗的社区。很明显,研究提高了计算机辅助放射学预后工具的新基准,但病理学家应该认识到疾病检测的指征。在骨癌(BC)中,由于骨组织(BTe)标本的复杂结构,从BC的组织病理学图像(HI)中识别恶性肿瘤仍然很困难。本研究提供了一种通过特征提取和采用深度学习框架的分类来诊断BC的新方法。在这种情况下,输入被处理和分割的Tsallis熵用于消除噪声,图像重新缩放和平滑。采用基于高效网络的卷积神经网络(CNN)特征提取方法提取特征。ROI提取将用于提高对受影响区域周围非典型部分的精确检测。接下来,使用增强XGBoost和鲸鱼优化(WOA)对准确定位进行分类,并将BTe分级为典型和典型。从流行尺度患者中获得他的集合,以及这些图像的纹理特征,用于训练和测试神经网络(NN)。这些分类结果表明,NN具有99.48%的命中率,而这发生在BT分类中。
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32
审稿时长
5 weeks
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