疾病流行率估算

Lokesh Singhvi, Satyam Pathak, Harvi Patel, Bhoumik Rajput, Prof. Revati Raspayle
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引用次数: 0

摘要

如今,对疾病流行率的估计是一个重要的问题,而心脏病是最常见的疾病之一。不幸的是,治疗这类疾病的费用可能很高,普通人往往无力承担。然而,我们可以利用机器学习和数据挖掘等技术,在疾病流行率达到危险程度之前对其进行准确估算,从而在一定程度上缓解这一问题。在医疗保健生物医学领域,有大量的健康数据可供使用,从文本到图像,不一而足。然而,这些数据中有很多仍未被开发和挖掘。引入疾病流行率估算系统可以弥补这一不足。机器学习和数据挖掘技术可用于构建疾病流行率估算系统。通过分析患者档案,包括血压、年龄、性别、胆固醇和血糖水平等因素,该系统可以预测个人患上各种健康问题的可能性。此外,该系统还能识别复杂问题并做出智能医疗决策,从而改善整体医疗效果。总之,疾病流行率估算系统具有提供高性能和更高准确度的潜力,从而大大有助于各种疾病的早期检测和管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disease Prevalence Estimation
Nowadays, disease prevalence estimation is a significant concern, with heart disease being one of the most common ailments. Unfortunately, the treatment of such diseases can be costly, often beyond the means of the average individual. However, we can mitigate this issue to some extent by accurately estimating disease prevalence before it reaches dangerous levels, using techniques such as Machine Learning and Data Mining. In the healthcare biomedical field, there's a vast amount of health data available, ranging from text to images. However, much of this data remains unexplored and unmined. Introducing a Disease Prevalence Estimation System could address this gap. Such a system would not only help in reducing costs but also enhance the quality of treatment for patients. Machine Learning and Data Mining techniques can be employed to construct this Disease Prevalence Estimation System. By analyzing patient profiles including factors like blood pressure, age, sex, cholesterol, and blood sugar levels, the system can predict the likelihood of individuals developing various health issues. Furthermore, the system can identify complex problems and make intelligent medical decisions, thereby improving overall healthcare outcomes. Performance evaluation can be done using metrics such as the confusion matrix, allowing for the calculation of accuracy, precision, and recall. In conclusion, a Disease Prevalence Estimation System has the potential to offer high performance and better accuracy, thus significantly contributing to the early detection and management of various diseases
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