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Development of a Reinforcement Learning Algorithm to Optimize Corticosteroid Therapy in Critically Ill Patients with Sepsis. | LitMetric

AI Article Synopsis

  • A study used reinforcement learning to find the best way to use corticosteroids in septic patients, based on data from over 3000 ICU admissions.
  • The results showed that the AI's recommended policy was more restrictive than the actual treatment given by clinicians, suggesting corticosteroids should be withheld in more patient scenarios.
  • The findings support a tailored approach to corticosteroid use in sepsis, as it might improve patient survival, but further validation is needed before widespread application.

Article Abstract

Background: The optimal indication, dose, and timing of corticosteroids in sepsis is controversial. Here, we used reinforcement learning to derive the optimal steroid policy in septic patients based on data on 3051 ICU admissions from the AmsterdamUMCdb intensive care database.

Methods: We identified septic patients according to the 2016 consensus definition. An actor-critic RL algorithm using ICU mortality as a reward signal was developed to determine the optimal treatment policy from time-series data on 277 clinical parameters. We performed off-policy evaluation and testing in independent subsets to assess the algorithm's performance.

Results: Agreement between the RL agent's policy and the actual documented treatment reached 59%. Our RL agent's treatment policy was more restrictive compared to the actual clinician behavior: our algorithm suggested withholding corticosteroids in 62% of the patient states, versus 52% according to the physicians' policy. The 95% lower bound of the expected reward was higher for the RL agent than clinicians' historical decisions. ICU mortality after concordant action in the testing dataset was lower both when corticosteroids had been withheld and when corticosteroids had been prescribed by the virtual agent. The most relevant variables were vital parameters and laboratory values, such as blood pressure, heart rate, leucocyte count, and glycemia.

Conclusions: Individualized use of corticosteroids in sepsis may result in a mortality benefit, but optimal treatment policy may be more restrictive than the routine clinical practice. Whilst external validation is needed, our study motivates a 'precision-medicine' approach to future prospective controlled trials and practice.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9961939PMC
http://dx.doi.org/10.3390/jcm12041513DOI Listing

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