基于深度学习方法的肝癌分类的高效生物医学请求

N. Vasundhara, Archana S Nandan, S. Hemanth, Sivudu Macherla, Madhura G K
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引用次数: 2

摘要

肝脏是一个重要的生理器官,位于横膈膜下方的左右上腹腔。它会产生人体正常运作所需的几种不同的化学物质。研究人员可以从将图像转换为数据中获益,从而更容易交换和生成精确的结果。由于转换过程依赖于技术和算法,它消除了人为错误的可能性。肝癌的死亡率是所有癌症中最高的,因为它的症状直到疾病进展的晚期才出现,这使得早期发现变得困难。略读、筛选、分割、特征抽象和通过人工神经网络呈现是辩论第一阶段的主要主题。实时数据集使用前馈神经网络(FFNN)来识别肝癌并对其严重程度进行分类。滤波有两个主要的应用:噪声抑制和边缘舍入。然后,采用分段来隔离相关区域,从而允许更紧凑的数据存储。灰度共生矩阵(GLCM)用于提取特征,得到的矩阵可以有多种不同的形式。这一标准有助于将肿瘤区分为良性或恶性。诸如准确度、灵敏度、正预测值和负预测值以及精度等指标用于评估比率。实验方法利用CT肝脏图像识别肝脏肿瘤,对恶性图像的平均准确率达到99.45%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Biomedical Solicitation in Liver Cancer Classification by Deep Learning Approach
The liver, a significant physical organ, is located in the upper right and left abdominal cavities just below the diaphragm. It produces several different chemicals that the body needs to function properly. Researchers can benefit from converting images into data to more easily exchange and generate precise results. Since the process of conversion relies on technology and an algorithm, it eliminates the possibility of human error. Liver cancer has the highest fatality rate of any cancer since its symptoms don't present until late in the disease's progression, making early detection difficult. Skimming, sifting, segmenting, feature abstraction, and presentation via ANN (Artificial Neural Network) are the primary topics of the first stage of the debate. Real-time data sets use Feed-Forward Neural Network (FFNN) for identifying liver cancer and classifying its severity. Filtering has two primary applications: noise suppression and edge rounding. Then, segmentation is employed to isolate the relevant area, allowing for more compact data storage. The Gray Level and Co-occurrence Matrix (GLCM) is used to extract features, and the resulting matrix can have many different forms. This criterion helps classify tumors as benign or malignant. Metrics such as accuracy, sensitivity, positive and negative predictive values, and precision are used to assess the rate. The experimental method for identifying liver tumors uses CT liver pictures to achieve an average accuracy of 99.45% for malignant images.
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