R. Sendhil, A. Arulmurugan, G. Jose Moses, R. Kaviarasan, P. Ramadoss
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Yet, the physical prognosis of this cancer cannot diagnose it, and so, automated detection of the images by dissecting the preoperational Computed Tomography (CT) images by conditional random fields accompanying Pro-DAE (Post-processing Denoising Autoencoders) and the labeling in the images is rid by denoising strainers; later, the ensued images and the segmented images experience the Graph Convolutional Networks (GCN), and the outcome feature graph information experience the enhanced categorizer (Greywold and Cuckoo Search Naïve Bayes categorizer) procedure that is employed for initial diagnosis of cancer. Diagnosis of cancer at the initial phase certainly lessens the matured phases of cancer. 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引用次数: 0
摘要
隐蔽性腹膜转移常出现在成熟胃癌患者中,但用目前可行的仪器检测并不熟练。由于腹膜转移的存在,阻碍了关键手术治愈的可能性,因此对隐匿性腹膜转移患者的准确识别依赖于不满意的初始诊断要求。本章提供的范例确定了胃癌隐匿性腹膜转移的初始阶段。初始阶段伴随着代谢组学来检查生物标志物。如果病人在胃癌中出现隐匿性腹膜转移的最初迹象,则进行早期检测。然而,这种癌症的物理预后无法诊断,因此,通过附带Pro-DAE(后处理去噪自动编码器)的条件随机场对术前计算机断层扫描(CT)图像进行自动检测,并通过去噪过滤器去除图像中的标记;随后,对后续图像和分割后的图像进行GCN (Graph Convolutional Networks)处理,对结果特征图信息进行增强分类器(Greywold and Cuckoo Search Naïve Bayes categorizer)处理,用于癌症的初步诊断。在早期阶段诊断癌症肯定会减少癌症的成熟阶段。因此,收集这些医疗信息并对其进行治疗以诊断疾病。
Earlier detection of occult peritoneal metastasis by Pro_Segment in gastric cancer employing augmented deep learning techniques in big data with medical IoT (MIoT)
Occult peritoneal metastasis often emerges in sick persons having matured gastric cancer (GC) and is inexpertly detected with presently feasible instruments. Due to the existence of peritoneal metastasis that prevents the probability of healing crucial operation, there relies upon a discontented requirement for an initial diagnosis to accurately recognize sick persons having occult peritoneal metastasis. The proffered paradigm of this chapter identifies the initial phases of occult peritoneal metastasis in GC. The initial phase accompanies metabolomics for inspecting biomarkers. If the sick person undergoes the initial signs of occult peritoneal metastasis in GC, early detection is conducted. Yet, the physical prognosis of this cancer cannot diagnose it, and so, automated detection of the images by dissecting the preoperational Computed Tomography (CT) images by conditional random fields accompanying Pro-DAE (Post-processing Denoising Autoencoders) and the labeling in the images is rid by denoising strainers; later, the ensued images and the segmented images experience the Graph Convolutional Networks (GCN), and the outcome feature graph information experience the enhanced categorizer (Greywold and Cuckoo Search Naïve Bayes categorizer) procedure that is employed for initial diagnosis of cancer. Diagnosis of cancer at the initial phase certainly lessens the matured phases of cancer. Hence, this medical information is gathered and treated for diagnosing the sickness.
期刊介绍:
The purpose of the Journal of Intelligent & Fuzzy Systems: Applications in Engineering and Technology is to foster advancements of knowledge and help disseminate results concerning recent applications and case studies in the areas of fuzzy logic, intelligent systems, and web-based applications among working professionals and professionals in education and research, covering a broad cross-section of technical disciplines.