For robust detection performance, traditional control chart monitoring for biosurveillance is based on input data free of trends, day-of-week effects, and other systematic behaviour. Time series forecasting methods may be used to remove this behaviour by subtracting forecasts from observations to form residuals for algorithmic input. We describe three forecast methods and compare their predictive accuracy on each of 16 authentic syndromic data streams. The methods are (1) a non-adaptive regression model using a long historical baseline, (2) an adaptive regression model with a shorter, sliding baseline, and (3) the Holt-Winters method for generalized exponential smoothing. Criteria for comparing the forecasts were the root-mean-square error, the median absolute per cent error (MedAPE), and the median absolute deviation. The median-based criteria showed best overall performance for the Holt-Winters method. The MedAPE measures over the 16 test series averaged 16.5, 11.6, and 9.7 for the non-adaptive regression, adaptive regression, and Holt-Winters methods, respectively. The non-adaptive regression forecasts were degraded by changes in the data behaviour in the fixed baseline period used to compute model coefficients. The mean-based criterion was less conclusive because of the effects of poor forecasts on a small number of calendar holidays. The Holt-Winters method was also most effective at removing serial autocorrelation, with most 1-day-lag autocorrelation coefficients below 0.15. The forecast methods were compared without tuning them to the behaviour of individual series. We achieved improved predictions with such tuning of the Holt-Winters method, but practical use of such improvements for routine surveillance will require reliable data classification methods.

Download full-text PDF

Source
http://dx.doi.org/10.1002/sim.2835DOI Listing

Publication Analysis

Top Keywords

holt-winters method
16
non-adaptive regression
12
time series
8
series forecasting
8
forecast methods
8
methods non-adaptive
8
regression model
8
adaptive regression
8
median absolute
8
methods
6

Similar Publications

Data missing and anomalies in monitoring equipment have become critical barriers to developing intelligent Water Supply Systems (WSS). The valid data preceding and after the missing segments can be utilized to impute missing values. However, traditional imputation methods, such as linear interpolation and prediction-based methods, have limited capacity to use data relationships or can only utilize information before the missing values.

View Article and Find Full Text PDF

Exploring the risk and predictive study of outdoor air pollutants on the incidence and mortality of HIV/AIDS.

Ecotoxicol Environ Saf

November 2024

Department of medical engineering, Air Force Medical Center, PLA, Air Force Medical University, Beijing, 100142, China. Electronic address:

Background: The rising incidence of environmental pollution has heightened concerns regarding the impact of pollutant variations on public health.

Methods: Time series analysis models and BP neural network models were utilized to investigate both univariate and multivariate predictions of HIV/AIDS cases. To evaluate the combined effects of pollutants on HIV/AIDS cases, we employed weighted quantile sum (WQS) regression, a quantile-based g-computation approach (Qgcomp) and Bayesian kernel machine regression (BKMR).

View Article and Find Full Text PDF
Article Synopsis
  • Malnutrition among children in China has improved since 2000, but there are still more issues compared to developed countries and differences between provinces.
  • A study looked at how many young kids were stunted (not growing tall enough), wasted (too thin for their height), and underweight from 2000 to 2019, and predicted what might happen by 2030.
  • By 2019, fewer children were stunted (12%), wasted (3%), and underweight (4%) compared to 2000, but the rate of improvement slowed down after 2010, with predictions suggesting more improvement by 2030.
View Article and Find Full Text PDF

Exploring compost production potential and its economic benefits and greenhouse gas mitigation in Addis Ababa, Ethiopia.

Sci Total Environ

December 2024

Wondo Genet College of Forestry and Natural Resources, Hawassa University, P.O. Box 128, Shashemene, Ethiopia.

Article Synopsis
  • In developing cities like Addis Ababa, there's a big problem with too much organic waste and human waste, which creates challenges for people and the environment.*
  • This study looks at how much of this waste is produced and how it can be turned into compost to help grow food while saving money and reducing pollution from greenhouse gases.*
  • By 2050, they predict that using this compost could help fertilize a lot of farmland, save about 10 million dollars, and cut greenhouse gas emissions by over 13% in the city.*
View Article and Find Full Text PDF

Objective: Tuberculosis (TB) remains an important public health concern in western China. This study aimed to explore and analyze the spatial and temporal distribution characteristics of TB reported incidence in 12 provinces and municipalities in western China and to construct the optimal models for prediction, which would provide a reference for the prevention and control of TB and the optimization of related health policies.

Methods: We collected monthly data on TB reported incidence in 12 provinces and municipalities in western China and used ArcGIS software to analyze the spatial and temporal distribution characteristics of TB reported incidence.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!