Title of article :
Optimization of anemia treatment in hemodialysis patients via reinforcement learning
Author/Authors :
Escandell-Montero، نويسنده , , Pablo and Chermisi، نويسنده , , Milena and Martيnez-Martيnez، نويسنده , , José M. and Gَmez-Sanchis، نويسنده , , Juan and Barbieri، نويسنده , , Carlo and Soria-Olivas، نويسنده , , Emilio and Mari، نويسنده , , Flavio and Vila-Francés، نويسنده , , Joan and Stopper، نويسنده , , Andrea and Gatti، نويسنده , , Emanuele and Martيn-Guerrero، نويسنده , , José D.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
14
From page :
47
To page :
60
Abstract :
AbstractObjective is a frequent comorbidity in hemodialysis patients that can be successfully treated by administering erythropoiesis-stimulating agents (ESAs). ESAs dosing is currently based on clinical protocols that often do not account for the high inter- and intra-individual variability in the patientʹs response. As a result, the hemoglobin level of some patients oscillates around the target range, which is associated with multiple risks and side-effects. This work proposes a methodology based on reinforcement learning (RL) to optimize ESA therapy. s a data-driven approach for solving sequential decision-making problems that are formulated as Markov decision processes (MDPs). Computing optimal drug administration strategies for chronic diseases is a sequential decision-making problem in which the goal is to find the best sequence of drug doses. MDPs are particularly suitable for modeling these problems due to their ability to capture the uncertainty associated with the outcome of the treatment and the stochastic nature of the underlying process. The RL algorithm employed in the proposed methodology is fitted Q iteration, which stands out for its ability to make an efficient use of data. s periments reported here are based on a computational model that describes the effect of ESAs on the hemoglobin level. The performance of the proposed method is evaluated and compared with the well-known Q-learning algorithm and with a standard protocol. Simulation results show that the performance of Q-learning is substantially lower than FQI and the protocol. When comparing FQI and the protocol, FQI achieves an increment of 27.6% in the proportion of patients that are within the targeted range of hemoglobin during the period of treatment. In addition, the quantity of drug needed is reduced by 5.13%, which indicates a more efficient use of ESAs. sion gh prospective validation is required, promising results demonstrate the potential of RL to become an alternative to current protocols.
Keywords :
Darbepoietin alfa , reinforcement learning , Markov decision processes , Fitted Q iteration , Chronic kidney disease , Renal anemia
Journal title :
Artificial Intelligence In Medicine
Serial Year :
2014
Journal title :
Artificial Intelligence In Medicine
Record number :
1841776
Link To Document :
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