The majority of statistical research on detecting disease outbreaks from prediagnostic data has focused on tools for modeling
background behavior of such data, and for monitoring the data for anomaly detection. Because pre-diagnostic data tends to
include explainable patterns such as day-of-week, seasonality, and holiday effects, the monitoring process often calls for
a two-step algorithm: first, a preprocessing technique is used for deriving a residual series, and then the residuals are
monitored using a classic control chart. Most studies tend to apply a single combination of a pre-processing technique with
a particular control chart to a particular type of data. Although the choice of preprocessing technique should be driven by
the nature of the non-outbreak data and the choice of the control chart by the nature of the outbreak to be detected, often
the nature of both is non-stationary and unclear, and varies considerable across different data series. We therefore take
an approach that combines algorithms rather than choosing a single one. In particular, we propose a method for combining multiple
preprocessing algorithms and a method for combining multiple control charts, both based on linear-programming. We show preliminary
results for combining pre-processing techniques, applied to both simulated and authentic syndromic data.