基于人工神经网络的媒介传播和传染病预测与分类

Shivam Karn, Shubham Sangole, Abhishek Gawde, Jyoti Joshi
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引用次数: 4

摘要

传染病和病媒传播疾病很容易感染,这些疾病的症状非常相似,大多数是在几天后发生的。现在的技术可以帮助正确诊断这些疾病。早期诊断是必要的,以确保给予适当的治疗和药物,这就需要一个自动化系统来预测可能的感染。这需要一个系统,使患者能够区分这些情况,并根据症状诊断可能的疾病。在诊断出疾病后,目标是根据预期的疾病类型提供适当的治疗。该医疗诊断系统采用反向传播算法训练的人工神经网络来实现。随着人工神经网络在医学诊断中的应用,系统的准确率相对于基于规则的模型有所提高,反向传播算法与梯度优化技术的结合使结果更加精确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction and Classification Of Vector-Borne and Communicable Diseases through Artificial Neural Networks
It is easy enough to be infected with communicable and vector-borne diseases, which have very similar symptoms, most of which occur after days. Nowadays technology can help in the correct diagnosis of these diseases. Early diagnosis is necessary to ensure that appropriate treatments and medications are administered, which requires the need for an automated system to predict possible infections. This requires a system that allows the patient to distinguish between these conditions and diagnose the possible disease based on symptoms. After having diagnosed the disease, the goal is to provide appropriate treatment based on the type of disease expected. The implementation of this medical diagnosis system is carried out with the help of Artificial Neural Networks that use backpropagation algorithm for training. With the implementation of Artificial Neural Networks in medical diagnosis, the accuracy of the system improves with respect to the rule-based model and with the use of the backpropagation algorithm together with the gradient optimization technique, the results are more precise.
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