Inter-DRG resource dynamics in a prospective payment system: a stochastic kernel approach |
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Authors: | Anurag Sharma |
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Affiliation: | (1) Centre for Health Economics, Monash University, Clayton, 3800, Victoria, Australia |
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Abstract: | This paper empirically investigates the resource distribution dynamics across Diagnosis Related Groups (DRGs) of elective surgery patients, in a continuing Prospective Payment System (PPS). Existing econometric literature has mainly focussed on the impact of PPS on average Length of Stay (LOS) concluding that the average LOS has declined post PPS. There is little literature on the distribution of this decline across DRGs, in a PPS. The present paper helps fill this gap. It models the evolution over time of the empirical distribution of LOS across DRGs. The empirical distributions are estimated using a non parametric “stochastic kernel approach” based on Markov Chain theory. The results for inlier episodes suggest that resource redistribution will increase capacity and expected number of admissions for DRGs having increasing waiting times. In addition, adjustments in relative cost weights are perceived as price signals by hospitals leading to a change in their casemix. The results for high outlier patients reveal that improved quality of care is one of the factors causing reduction in high outlier episodes. |
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Keywords: | Stochastic kernel Hospital resource allocation Prospective payment system Length of stay Waiting time Quality of care |
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