Prediction of primary Hypertension in Primary Health Care Settings in Coastal Karnataka Using Artificial Neural Network.

IF 1.5 Q3 PERIPHERAL VASCULAR DISEASE
Achal Shetty, Ruban S, Mohammed Jabeer, Deeksha Deepak, Shalya N E, Sudhir Prabhu
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引用次数: 0

Abstract

Background: Hypertension, characterized by chronically elevated blood pressure, poses a significant global health burden. Its prevalence, a critical public health concern, necessitates ac-curate prediction models for timely intervention and management.

Aim: The proposed approach leverages the capability of an Artificial Neural Network to capture complex patterns and non-linear relationships within the time series data, allowing for the devel-opment of a robust forecasting model to predict Hypertension. The study population consisted of known hypertensives. In this study, historical time series data related to Hypertension, including patient demographics, lifestyle factors, and medical records, were collected from a Rural primary health center associated with the medical college in coastal Karnataka, India, which is employed to train and validate the model.

Methods: The performance of the Artificial Neural Network (ANN) is evaluated using metrics such as MAE (Mean Absolute Error) and RMSE (Root Mean Squared Error) on a separate test dataset. This research explores the potential of ANN in time series forecasting of Hypertension.

Result: ANN performs well for this data and has been chosen as the best algorithm for this data set, as it has the lowest MAP (0.20) and MAE (0.45) and the highest R-Square (0.89), making it the most accurate and reliable model for the given data. If these algorithms prove beneficial, they can be used in the primary prevention of Hypertension. Individuals, institutions, and even govern-ment bodies can use it to save treatment costs and lives.

Conclusion: The ANN model demonstrated reasonably accurate predictions despite the lower overall fit. It has shown the potential to be used as a primary healthcare tool by helping physicians predict and warn about the dangers of elevated blood pressure to patients. These algorithms, de-ployed using a web application, will enable people to evaluate themselves in the comfort of their homes. This would make us inch closer to the WHO's broader goal of making health a universal right, irrespective of a person's place of residence.

用人工神经网络预测卡纳塔克邦沿海初级卫生保健机构的原发性高血压
背景:高血压是一种以长期血压升高为特征的疾病,是一种严重的全球健康负担。它的流行是一个重要的公共卫生问题,需要准确的预测模型,以便及时干预和管理。目的:提出的方法利用人工神经网络的能力来捕获时间序列数据中的复杂模式和非线性关系,从而允许开发一个强大的预测模型来预测高血压。研究人群包括已知的高血压患者。在本研究中,从印度卡纳塔克邦沿海地区与医学院相关的农村初级卫生中心收集了与高血压相关的历史时间序列数据,包括患者人口统计学、生活方式因素和医疗记录,并利用该数据对模型进行了训练和验证。方法:在单独的测试数据集上使用MAE(平均绝对误差)和RMSE(均方根误差)等指标评估人工神经网络(ANN)的性能。本研究探讨了人工神经网络在高血压时间序列预测中的潜力。结果:ANN对该数据表现良好,并被选为该数据集的最佳算法,因为它具有最低的MAP(0.20)和MAE(0.45),以及最高的r平方(0.89),使其成为给定数据最准确和最可靠的模型。如果这些算法被证明是有益的,它们可以用于高血压的一级预防。个人、机构甚至政府机构都可以使用它来节省治疗费用和生命。结论:尽管整体拟合较低,但人工神经网络模型显示出合理的准确预测。通过帮助医生预测和警告患者血压升高的危险,它已经显示出作为初级保健工具的潜力。这些算法通过网络应用程序部署,将使人们能够在舒适的家中评估自己。这将使我们更接近世卫组织的更广泛目标,即使健康成为一项普遍权利,无论一个人的居住地如何。
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来源期刊
Current Hypertension Reviews
Current Hypertension Reviews PERIPHERAL VASCULAR DISEASE-
CiteScore
4.80
自引率
0.00%
发文量
26
期刊介绍: Current Hypertension Reviews publishes frontier reviews/ mini-reviews, original research articles and guest edited thematic issues on all the latest advances on hypertension and its related areas e.g. nephrology, clinical care, and therapy. The journal’s aim is to publish the highest quality review articles dedicated to clinical research in the field. The journal is essential reading for all clinicians and researchers in the field of hypertension.
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