一种使用深度学习的宫颈癌和乳腺癌分类方法:综合调查

G. S. P. Ghantasala, Bui Thanh Hung, P. Chakrabarti
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引用次数: 0

摘要

世界范围内女性最常见的恶性肿瘤是乳腺癌和宫颈癌,但很少有研究人员研究了性别期望如何影响性暗示和身体接触的诊断依从性。考虑这些感知对于提高诊断准确性和服务至关重要,因为它们可能是决策的主要因素。由于宫颈癌和乳腺癌的治疗要有效,准确的早期检测至关重要。机器学习和深度学习正在被越来越多的人群和企业用于分析大量数据并提供有用的见解。在临床实践中,使用基于ml的技术来预测癌症、肾衰竭和心血管疾病等重大疾病的初始阶段已经变得相当频繁。妇女中最常见的几种疾病包括宫颈癌,及早发现有助于降低死亡率和发病率。本文对目前该领域广泛应用的技术和研究问题进行了综合分析。癌症的病因和死亡率统计数据也包括在本报告中。本文的目标是提出一个以深度学习为中心的系统,用于更早、更准确地预测乳腺癌和宫颈癌。卷积神经网络(CNN)被用于深度学习模型的开发。本研究用一个已经训练好的模型(VGG16)分析了采用迁移学习的CNN模型的有效性。考虑到这些结果,深度学习算法有能力在最早的阶段预测疾病,从而降低死亡率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Approach For Cervical and Breast Cancer Classification Using Deep Learning: A Comprehensive Survey
The most common malignancies in women worldwide are breast & cervical, but very few researchers have examined how gender expectations affect diagnostic adherence provided sexual implications and physical contact. Considering these perceptions is essential to enhancing diagnostic accuracy and services since they may be a major factor in decision-making. As cervical and breast treatments for cancer to be effective, accurate early detection is essential. Machine learning and deep learning are being used by an expanding population and businesses to analyze vast volumes of data and provide useful insights. It has become quite frequent in clinical practices to use ML-based techniques to predict the initial stages of major illnesses like cancer, renal failure, and cardiovascular diseases. Several of the most prevalent diseases in women include cervical cancer, and early detection could help reduce mortality and morbidity. The paper provides a comprehensive analysis of the techniques and research issues widely employed now in the area. The causes, as well as mortality statistics of cancer, are also covered in this. The goal of the paper is to present a deep learning-centric system for earlier and more accurate breast and cervical cancer prediction. The Convolutional neural networks (CNN) were utilized in the progress of deep learning models. This research analyzes the effectiveness of the CNN model employing transfer learning with a model that has already been trained (VGG16). Considering the results, deep learning algorithms have the capacity to anticipate disease somewhere at the earliest stage at which fatality rates can be reduced.
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