人畜共患疾病的紧急情况,驱动因素,以及人工智能在跟踪流行病和大流行中的作用

Akmal Zubair, Rawaha Mukhtar, Hanbal Ahmed, Muhammad Ali
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引用次数: 0

摘要

人畜共患疾病是指可以通过各种渠道从动物传染给人类的疾病。超过60%能够影响人类的致病生物被归类为人畜共患病。这一类包括许多寄生虫,包括细菌、藻类、真菌、原生动物等。人畜共患疾病的出现受到多种因素的影响。其中包括气候变化、森林砍伐、非法商品贸易、使用不可持续的农业方法、根除生态系统、城市化和中和。人工智能现在是一个热门的争论话题。这种流行可能归因于人工智能的准确性及其预测人畜共患疾病的能力。在调查人畜共患疾病的过程中,人工智能的使用已显示出相当大的帮助。本研究的目的是阐明导致人畜共患疾病出现和重现的因素,以及人工智能,特别是一些最重要的机器学习技术,如支持向量机(SVM)、逻辑回归(LR)、贝叶斯网络、人工神经网络、模糊聚类、泊松点过程和深度去噪自编码器在对抗各种传染病中的作用。此外,本文还将讨论导致人畜共患疾病出现和复发的因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Emergencies of zoonotic diseases, drivers, and the role of artificial intelligence in tracking the epidemic and pandemics

Emergencies of zoonotic diseases, drivers, and the role of artificial intelligence in tracking the epidemic and pandemics
Zoonotic illnesses are defined as diseases that can be transmitted from animals to humans through various channels. More than sixty percent of disease-causing organisms capable of affecting humans are classified as zoonoses. This category encompasses many parasites, including bacteria, algae, fungi, protozoa, and others. The emergence of zoonotic diseases is influenced by a variety of various elements that come into play. These include changes in the climate, the clearing out of forests, the illicit trade of goods, the use of agricultural methods that are not sustainable, the eradication of ecosystems, urbanization, and neutralization. Artificial intelligence is now a trendy subject of debate. This popularity may be attributed to artificial intelligence's accuracy and its capacity to predict zoonotic illnesses. In the course of the inquiry into zoonotic illnesses, the use of artificial intelligence has shown to be of considerable assistance. The goal of this study is to shed light on the elements that contribute to the appearance and reappearance of zoonotic diseases, as well as the role that artificial intelligence particularly some of the most significant machine learning techniques, such as support vector machine (SVM), logistic regression (LR), Bayesian network, Artificial Neural Networks, Fuzzy Clustering, Poisson Point Process and Deep Denoising Autoencoder to the fight against the various infectious diseases. In addition, this review will discuss the factors that contribute to the appearance and reappearance of zoonotic illnesses.
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