{"title":"使用深度学习的胰腺癌分类","authors":"Naga Vardhani, Gottam Gayathri, Kolusu Leela, Tummala Bhavya, Yalamandala Divya Sravani","doi":"10.1109/ICCMC56507.2023.10083716","DOIUrl":null,"url":null,"abstract":"The great majority of the computer systems that are now being utilized for research on medical health systems are based on the most recent technical breakthroughs. Because of the prevalence of pancreatic cancer, a significant number of novel approaches and techniques have emerged in the field of medicine. There are several various classifications that may be applied to the pancreatic cancer that can be found. Utilization of the deep learning technology is going to be the means by which the classification of pancreatic cancer is going to be completed. The classification of pancreatic cancer may be tackled from a variety of angles, each of which can be accomplished via using either technology for machine learning or technology for deep learning. In the past, a diagnosis of pancreatic cancer could be made by using methods such as the Support Vector Machine (SVM), Artificial Neural Networks, Convolution Neural Networks (CNN), and Twin Support Vector Machines. However, these methods are no longer effective (TWSVM). However, these strategies do not deliver an accurate performance. As a result, this study has implemented an Advanced Convolution Neural Networks (ACNN), which are examples of the type of technology known as deep learning. In the vast majority of the existing research works, the classification has been determined by analyzing the images of the patient, which are not always accurately classified; in contrast, the classification in this one is determined by looking at the genetic data of the patient. An accurate number can be obtained by using the blood and urine samples collected from patients since these samples were utilized to construct the genetic data. With the help of constant values and ACNN strategies, the performance rate was enhanced in contrast to the approaches that were currently being used.","PeriodicalId":197059,"journal":{"name":"2023 7th International Conference on Computing Methodologies and Communication (ICCMC)","volume":"13 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-02-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Pancreatic Cancer Classification using Deep Learning\",\"authors\":\"Naga Vardhani, Gottam Gayathri, Kolusu Leela, Tummala Bhavya, Yalamandala Divya Sravani\",\"doi\":\"10.1109/ICCMC56507.2023.10083716\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"The great majority of the computer systems that are now being utilized for research on medical health systems are based on the most recent technical breakthroughs. Because of the prevalence of pancreatic cancer, a significant number of novel approaches and techniques have emerged in the field of medicine. There are several various classifications that may be applied to the pancreatic cancer that can be found. Utilization of the deep learning technology is going to be the means by which the classification of pancreatic cancer is going to be completed. The classification of pancreatic cancer may be tackled from a variety of angles, each of which can be accomplished via using either technology for machine learning or technology for deep learning. In the past, a diagnosis of pancreatic cancer could be made by using methods such as the Support Vector Machine (SVM), Artificial Neural Networks, Convolution Neural Networks (CNN), and Twin Support Vector Machines. However, these methods are no longer effective (TWSVM). However, these strategies do not deliver an accurate performance. As a result, this study has implemented an Advanced Convolution Neural Networks (ACNN), which are examples of the type of technology known as deep learning. In the vast majority of the existing research works, the classification has been determined by analyzing the images of the patient, which are not always accurately classified; in contrast, the classification in this one is determined by looking at the genetic data of the patient. An accurate number can be obtained by using the blood and urine samples collected from patients since these samples were utilized to construct the genetic data. 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引用次数: 0
摘要
目前用于医疗卫生系统研究的绝大多数计算机系统都是基于最新的技术突破。由于胰腺癌的流行,医学领域出现了大量的新方法和新技术。有几种不同的分类可以应用于可以发现的胰腺癌。利用深度学习技术将成为完成胰腺癌分类的手段。胰腺癌的分类可以从不同的角度来解决,每个角度都可以通过使用机器学习技术或深度学习技术来完成。过去,胰腺癌的诊断可以通过支持向量机(SVM)、人工神经网络、卷积神经网络(CNN)和双支持向量机(Twin Support Vector Machines)等方法进行。然而,这些方法已不再有效(TWSVM)。然而,这些策略并不能提供准确的性能。因此,本研究实现了高级卷积神经网络(ACNN),这是深度学习技术的一个例子。在现有的绝大多数研究工作中,分类都是通过分析患者的图像来确定的,这并不总是准确的分类;相比之下,这个分类是通过观察病人的遗传数据来确定的。由于这些样本用于构建遗传数据,因此可以通过从患者收集的血液和尿液样本获得准确的数字。在恒值和ACNN策略的帮助下,与目前使用的方法相比,性能得到了提高。
Pancreatic Cancer Classification using Deep Learning
The great majority of the computer systems that are now being utilized for research on medical health systems are based on the most recent technical breakthroughs. Because of the prevalence of pancreatic cancer, a significant number of novel approaches and techniques have emerged in the field of medicine. There are several various classifications that may be applied to the pancreatic cancer that can be found. Utilization of the deep learning technology is going to be the means by which the classification of pancreatic cancer is going to be completed. The classification of pancreatic cancer may be tackled from a variety of angles, each of which can be accomplished via using either technology for machine learning or technology for deep learning. In the past, a diagnosis of pancreatic cancer could be made by using methods such as the Support Vector Machine (SVM), Artificial Neural Networks, Convolution Neural Networks (CNN), and Twin Support Vector Machines. However, these methods are no longer effective (TWSVM). However, these strategies do not deliver an accurate performance. As a result, this study has implemented an Advanced Convolution Neural Networks (ACNN), which are examples of the type of technology known as deep learning. In the vast majority of the existing research works, the classification has been determined by analyzing the images of the patient, which are not always accurately classified; in contrast, the classification in this one is determined by looking at the genetic data of the patient. An accurate number can be obtained by using the blood and urine samples collected from patients since these samples were utilized to construct the genetic data. With the help of constant values and ACNN strategies, the performance rate was enhanced in contrast to the approaches that were currently being used.