Abstract

Background The rising incidence of hypertension and diabetes calls for a global response. Hypertension and diabetes will rise in Ghana as the population ages, urbanization increases, and people lead unhealthy lives. Our goal was to create a time series algorithm that effectively predicts future increases to help preventative medicine and health care intervention strategies by preparing health care practitioners to control health problems. Methods Data on hypertension and diabetes from January 2016 to December 2020 were obtained from three health facilities. To detect patterns and predict data from a particular time series, three forecasting algorithms (SARIMAX (seasonal autoregressive integrated moving average with exogenous components), ARIMA (autoregressive integrated moving average), and LSTM (long short-term memory networks)) were implemented. We assessed the model's ability to perform by calculating the root mean square error (RMSE), mean absolute error (MAE), mean square error (MSE), and mean absolute percentage error (MAPE). Results The RMSE, MSE, MAE, and MAPE for ARIMA (5, 2, 4), SARIMAX (1, 1, 1) × (1, 1, 1, 7), and LSTM was 28, 769.02, 22, and 7%, 67, 4473, 56, and 14%, and 36, 1307, 27, and 8.6%, respectively. We chose ARIMA (5, 2, 4) as a more suitable model due to its lower error metrics when compared to the others. Conclusion All models had promising predictability and predicted a rise in the number of cases in the future, and this was essential for administrative and management planning. For appropriate and efficient strategic planning and control, the prognosis was useful enough than would have been possible without it.

Highlights

  • More often than not, hypertension (HT) and diabetes mellitus (DM) coexist and have become major worldwide health issues with a significant impact on cardiovascular morbidity and mortality [1]

  • Yt = St + Tt + Et was the decomposition of the time series (see Figure 5(b)), where Yt, St, Tt, and Et represent the actual data plot, seasonality, trend, and residual component, respectively

  • True Forecast (c) since our goal is to find a forecast that minimizes the errors, the autoregressive integrated moving average (ARIMA) model with a lag value of 5 = AR was chosen as the best forecasting model due to its low errors

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Summary

Introduction

Hypertension (HT) and diabetes mellitus (DM) coexist and have become major worldwide health issues with a significant impact on cardiovascular morbidity and mortality [1]. Finding models that accurately predict future increases in HT and DM is critical for tailoring prevention treatments and streamlining intervention programs. The rising incidence of hypertension and diabetes calls for a global response. Hypertension and diabetes will rise in Ghana as the population ages, urbanization increases, and people lead unhealthy lives. Our goal was to create a time series algorithm that effectively predicts future increases to help preventative medicine and health care intervention strategies by preparing health care practitioners to control health problems. The RMSE, MSE, MAE, and MAPE for ARIMA (5, 2, 4), SARIMAX ð1, 1, 1Þ × ð1, 1, 1, 7Þ, and LSTM was 28, 769.02, 22, and 7%, 67, 4473, 56, and 14%, and 36, 1307, 27, and 8.6%, respectively. For appropriate and efficient strategic planning and control, the prognosis was useful enough than would have been possible without it

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