利用深度学习在 X 光图像上自动检测骨癌。

IF 1.2 4区 医学 Q3 SURGERY
Sasanka Sekhar Dalai, Bharat Jyoti Ranjan Sahu, Jyotirmayee Rautaray, M Ijaz Khan, Bander A Jabr, Yasser A Ali
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引用次数: 0

摘要

近年来,骨癌是一种危及生命的健康问题,可能导致死亡。然而,医生使用ct扫描、x射线或核磁共振成像图像来识别骨癌,但仍然需要提高精度和减少人力劳动的技术。这些方法面临着成本高、耗时长以及由于骨肿瘤表现的复杂性而存在误诊风险等挑战。因此,有必要建立一个自动化系统来检测健康骨骼和癌变骨骼。在这方面,人工智能,特别是深度学习,在医学图像分析过程中受到越来越多的关注。本研究提出了一种新的黄金搜索优化以及基于x射线图像的深度学习计算机辅助诊断骨癌分类(GSODL-CADBCC)。GSODL-CADBCC方法的目的是准确区分输入的x射线图像为健康和癌。本研究提出了利用双边滤波技术去除噪声的GSODL-CADBCC技术。该方法利用SqueezeNet模型生成特征向量,利用GSO算法高效地选取超参数。最后,利用长短期记忆模型改进布谷鸟搜索对提取的特征进行分类。实验结果表明,GSODL- CADBCC方法在训练集数据上的平均准确率为95.52%,在测试集数据上的平均准确率为94.79%,达到了最高的性能。这种自动化方法不仅减少了人工解释的需要,而且最大限度地降低了诊断错误的风险,并为精确的基于医学成像的骨癌筛查提供了可行的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Bone Cancer Detection Using Deep Learning on X-Ray Images.

In recent days, bone cancer is a life-threatening health issue that can lead to death. However, physicians use CT-scan, X-rays, or MRI images to recognize bone cancer, but still require techniques to increase precision and reduce human labor. These methods face challenges such as high costs, time consumption, and the risk of misdiagnosis due to the complexity of bone tumor appearances. Therefore, it is essential to establish an automated system to detect healthy bones from cancerous ones. In this regard, Artificial intelligence, particularly deep learning, shows increased attention in the medical image analysis process. This research presents a new Golden Search Optimization along with Deep Learning Enabled Computer Aided Diagnosis for Bone Cancer Classification (GSODL-CADBCC) on X-ray images. The aim of the GSODL-CADBCC approach is to accurately distinguish the input X-ray images into healthy and cancerous. This research presents the GSODL-CADBCC technique that leverages the bilateral filtering technique to remove the noise. This method uses the SqueezeNet model to generate feature vectors, and the GSO algorithm efficiently selects the hyperparameters. Finally, the extracted features can be classified by improved cuckoo search with a long short-term memory model. The experimental results demonstrate that the GSODL- CADBCC approach attains highest performance with an average accuracy of 95.52% on the training set data and 94.79% on the testing set data. This automated approach not only reduces the need for manual interpretation but also minimizes the risk of diagnostic errors and provides a viable option for precise medical imaging-based bone cancer screening.

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来源期刊
Surgical Innovation
Surgical Innovation 医学-外科
CiteScore
2.90
自引率
0.00%
发文量
72
审稿时长
6-12 weeks
期刊介绍: Surgical Innovation (SRI) is a peer-reviewed bi-monthly journal focusing on minimally invasive surgical techniques, new instruments such as laparoscopes and endoscopes, and new technologies. SRI prepares surgeons to think and work in "the operating room of the future" through learning new techniques, understanding and adapting to new technologies, maintaining surgical competencies, and applying surgical outcomes data to their practices. This journal is a member of the Committee on Publication Ethics (COPE).
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