智能医疗系统的人工智能和物联网疾病诊断模型

Sandhiyogha Lakshmi V, Nisha Evangelin L
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引用次数: 4

摘要

物联网(IoT)、云计算和人工智能(AI)的最新进展将传统医疗保健系统转变为智能医疗保健。通过结合物联网、人工智能等关键技术,可以改善医疗服务。物联网和人工智能的融合为医疗保健行业提供了不同的机会。该模型包括数据采集、预处理、分类和参数调优等阶段。心脏病是全球发病率和死亡率的一个主要原因,早期发现对于有效管理至关重要。已经开发了机器学习模型来帮助预测心脏病,LightGBM就是这样一个模型。本研究旨在分析LightGBM在预测心脏病方面的表现。使用Python实现LightGBM,使用训练集对模型进行训练。使用几个指标来评估模型的性能,包括准确性、精密度、召回率、F1评分和受试者工作特征(ROC)曲线下的面积。可以进行进一步的研究来评估模型在更大数据集上的性能,并将其性能与其他机器学习模式进行比较。疾病可能会对人们的身体和情感产生影响,因为患病和患病会改变一个人的人生观。一种影响机体多个部位的疾病,但不是由外部瞬间损伤引起的。疾病通常被定义为具有明显症状和指标的医学失调。人类最致命的疾病是冠状动脉疾病、脑血管疾病和下呼吸道感染。心脏病是最不可预测和不可预测的。通过机器学习,我们可以预测心脏病。为了获得高效率的输出,我们采用了CNN方法。
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 and Internet of Things Enabled Disease Diagnosis Model for Smart Healthcare Systems
The recent advancements in Internet of Things (IoT), cloud computing and Artificial Intelligence (AI) transformed the conventional healthcare system into smart healthcare. By incorporating key technologies such as IoT and AI, medical services can be improved. The convergence of IoT and AI offers different opportunities in healthcare sector. The presented model encompasses different stages namely, data acquisition, pre-processing, classification, and parameter tuning. Heart disease is a major cause of morbidity and mortality globally and early detection is crucial for effective management. Machine learning models have been developed to aid in the prediction of heart disease with LightGBM being one such model. This study aims to analyse the performance of LightGBM in predicting heart disease. LightGBM was implemented using Python, and the model was trained using the training set. The performance of the model was evaluated using several metrics, including accuracy, precision, recall, F1 score, and area under the receiver operating characteristic (ROC) curve. Further studies could be conducted to evaluate the model’s performance on larger datasets and to compare its performance with other machine learning mode. Diseases may have an impact on people both physically and emotionally, since getting and living with an illness can change a person’s outlook on life. An illness that affects several areas of an organism yet is not caused by an instant exterior damage. Diseases are frequently defined as medical disorders characterised by distinct symptoms and indicators. The most lethal illnesses in humans are arteria coronary disease, cerebrovascular disease and lower respiratory infections. Heart disease is the most unexpected and unpredictability. With machine learning, we can anticipate cardiac disease. To get high efficiency output, we employ CNN approaches.
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