Title of article :
An incremental EM-based learning approach for on-line prediction of hospital resource utilization
Author/Authors :
Ng، نويسنده , , Shu-Kay and McLachlan، نويسنده , , Geoffrey J. and Lee، نويسنده , , Andy H.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
SummaryObjective
ent length of stay (LOS) is an important measure of hospital activity, health care resource consumption, and patient acuity. This research work aims at developing an incremental expectation maximization (EM) based learning approach on mixture of experts (ME) system for on-line prediction of LOS. The use of a batch-mode learning process in most existing artificial neural networks to predict LOS is unrealistic, as the data become available over time and their pattern change dynamically. In contrast, an on-line process is capable of providing an output whenever a new datum becomes available. This on-the-spot information is therefore more useful and practical for making decisions, especially when one deals with a tremendous amount of data.
s and material
oposed approach is illustrated using a real example of gastroenteritis LOS data. The data set was extracted from a retrospective cohort study on all infants born in 1995–1997 and their subsequent admissions for gastroenteritis. The total number of admissions in this data set was n = 692 . Linked hospitalization records of the cohort were retrieved retrospectively to derive the outcome measure, patient demographics, and associated co-morbidities information. A comparative study of the incremental learning and the batch-mode learning algorithms is considered. The performances of the learning algorithms are compared based on the mean absolute difference (MAD) between the predictions and the actual LOS, and the proportion of predictions with MAD ≤ 1 day (Prop( MAD ≤ 1 )). The significance of the comparison is assessed through a regression analysis.
s
cremental learning algorithm provides better on-line prediction of LOS when the system has gained sufficient training from more examples ( MAD = 1.77 days and Prop(MAD ≤ 1) = 54.3 % ), compared to that using the batch-mode learning. The regression analysis indicates a significant decrease of MAD (p- value = 0.063 ) and a significant (p- value = 0.044 ) increase of Prop( MAD ≤ 1) with the incremental learning algorithm.
sions
cremental learning feature and the self-adaptive model-selection ability of the ME network enhance its effective adaptation to non-stationary LOS data. It is demonstrated that the incremental learning algorithm outperforms the batch-mode algorithm in the on-line prediction of LOS.
Keywords :
mixture of experts , Incremental update , On-line prediction , Machine learning algorithm , length of stay , EM algorithm
Journal title :
Artificial Intelligence In Medicine
Journal title :
Artificial Intelligence In Medicine