基于人工智能的全科医学预测系统

Ghalib Nadeem, Yawar Rehman, Abdul Khaliq, Huma Khalid, Muhammad Irfan Anis
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摘要

COVID-19具有高度传染性,在全球范围内广泛传播,包括巴基斯坦在内,全球确诊病例约为6.51亿例。在大流行的时代,病人连常规检查都找不到医生,在这种情况下,即使是正常的疾病检查也被许多家庭忽视,这些疾病可能会导致危险的疾病。人类疾病描述的情景甚至会干扰或永久切断身体部位的基本功能。因此,目标是将原始健康数据潜力转化为可操作的见解,以应用身体传感器网络(BSN)和最先进的人工智能(AI)技术的有前途的结果,以根据患者的特定健康状态分配适当的药物。本文介绍了深度学习和机器学习的不同技术,根据BSN数据预测患者特定健康状态的实际用药。在大型数据集上进行了实验,将患者的16种健康状态分配给人工智能模型,根据患者的健康状态预测药物。实验结果表明,在分类事件中,随机森林训练模型的准确率为87.46%,k近邻训练准确率为92.74%,朴素贝叶斯训练准确率为74.57%,极端梯度增强训练准确率为94.41%,多层感知器训练准确率为84.88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence based prediction system for General Medicine
COVID-19 is highly infectious and has been extensively spread worldwide, with approximately 651 million definite cases crosswise the globe including Pakistan. At that era of pandemic where patients are not able to approach a doctor for even the routine checkups, in such curial situation even normal disease checkups are ignored by many families due to pandemic situations, those diseases may lead to be a perilous disease are results of it. Human disorders portray scenarios that even disturb or permanently cutoff the essential functions of a body parts. Consequently, the aim is to transform raw health data potential into actionable insights to applying the promising outcomes of Body Sensor Network (BSN) and State-of-Art Artificial Intelligence (AI) techniques to get proper medicine allocation to the particular health state of patient. In this paper the different techniques of Deep Learning and Machine Learning introduced to predict the actual medicine for the specific health state of patient according to data from the BSN. Experiments have been conducted on large dataset which shepherd it into 16 states of patient's health which will allotted to AI model to predict the medicine accordingly to the health state of patient. Experimental results show the 87.46% by Random Forest, 92.74% by K-Nearest Neighbors, 74.57% by Naive Bayes, 94.41% by Extreme Gradient Boost, 84.88% by Multi-Layer Perceptron in terms of precision of model training in event of classification.
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