非传染性疾病检测系统

H. Thudawehewa, U.C.B. Pathmakulasooriya, W.P.S. Jayawardhana, C. G. Wellehewa, Chamari Silva, Pasangi Rathnayake
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引用次数: 0

摘要

本文提出了一种非传染性疾病检测系统,它是一种面向公众使用的集中式医疗系统。该系统旨在为非传染性疾病患者提供帮助。在这种大流行的情况下,人们发现很难接触到医疗设施和工作人员,这个系统更有利。该系统涵盖了与医疗报告分析、BMI值预测以及与非传染性疾病相关的乳腺癌分析相关的领域。目前,每一种疾病都有健康报告。BMI是每个人健康生活的重要因素。大多数女性都患有乳腺癌。根据报告的结果,报告分析预测了有关人员可能发生的疾病。在BMI预测中,主要是预测下个月可能出现的BMI值和体重值。在乳房x光检查中,它给出了乳房的当前状态。报告分析模型的准确率为90.6%,BMI预测模型的准确率为99.7%。乳房x光检测模型证明其准确率为96.5%。通过对相关数据的系统分析,完成了上述所有步骤。该系统采用了机器学习、深度学习和图像处理技术。这一制度的主要目的是使人们了解自己目前的健康状况,防止他们患上非传染性疾病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-Communicable Diseases Detection System
This research paper presents a Non-communicable Diseases Detection System which is a centralized medical system designed for general public usage. The system aims to provide help for people with non-communicable diseases. In a pandemic situation like this where people find it difficult to reach medical facilities and staff, the system is more advantageous. The system covers areas related to the medical report analysis, BMI value prediction, and breast cancer analysis related to non-communicable diseases. Presently health reports are taken for every disease. BMI is a factor essential to everyone to lead a healthy life. The majority of women suffer from breast cancer. As per the findings of the report, the report analysis predicts possible diseases that can occur in the person concerned. In BMI prediction, particularly the possible BMI value and weight value for the next month is predicted. In Mammogram detection, it gives the current status of the breast. The report analysis model has 90.6% accuracy while the BMI prediction model has 99.7% accuracy. The mammogram detection model proved that it has 96.5% accuracy. All the aforesaid procedures were carried out by analyzing related data systematically. Machine learning, Deep learning, and Image processing techniques were used to develop this system. The main purpose of this system is to make the persons aware of their current health status and to prevent them from having non-communicable diseases.
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