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Post Induction Hypotension prediction during general anesthesia using Machine Learning Techniques

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AbstractBackgroundIntraoperative hypotension burden not equally distributed during various periods of a general anesthetic. Post-induction hypotension usually has an iatrogenic cause and is related to the combination of drug doses used for induction of anesthesia. Predicting post-induction blood pressures, prior to induction, may inform anesthesiologists on the most judicious selection of anesthetic drugs and dosages. Our objective was to explore patterns of post-induction hypotension, apply machine learning (ML) to predict the mean blood pressure (MBP) immediately after induction, and develop a prototype of a clinical tool that can implement the ML model.Materials and MethodsWe extracted data from preoperative and intraoperative anesthetic episodes over an 8-year period at the University of Pittsburgh Medical Center. The dataset consisted of 93,037 anesthetic episodes, which was partitioned into training, validation, and test sets. Preoperative and pre-induction predictor variables included demographics, comorbidities, laboratory test values, pre-induction MBP, and administrations of induction drugs. The target consisted of 15 minutes of MBP values immediately after induction.ResultsThe best-performing model was extreme-gradient boosted trees (XGB), with an R-squared value of 0.31 and a mean absolute error of 11.96, which is a moderately good performance. The performance of the model decreased over each minute post-induction.ConclusionML modeling to predict post-induction MBP is feasible, and a clinical tool that incorporates ML can potentially aid in preventing hypotension in the operating room.
Title: Post Induction Hypotension prediction during general anesthesia using Machine Learning Techniques
Description:
AbstractBackgroundIntraoperative hypotension burden not equally distributed during various periods of a general anesthetic.
Post-induction hypotension usually has an iatrogenic cause and is related to the combination of drug doses used for induction of anesthesia.
Predicting post-induction blood pressures, prior to induction, may inform anesthesiologists on the most judicious selection of anesthetic drugs and dosages.
Our objective was to explore patterns of post-induction hypotension, apply machine learning (ML) to predict the mean blood pressure (MBP) immediately after induction, and develop a prototype of a clinical tool that can implement the ML model.
Materials and MethodsWe extracted data from preoperative and intraoperative anesthetic episodes over an 8-year period at the University of Pittsburgh Medical Center.
The dataset consisted of 93,037 anesthetic episodes, which was partitioned into training, validation, and test sets.
Preoperative and pre-induction predictor variables included demographics, comorbidities, laboratory test values, pre-induction MBP, and administrations of induction drugs.
The target consisted of 15 minutes of MBP values immediately after induction.
ResultsThe best-performing model was extreme-gradient boosted trees (XGB), with an R-squared value of 0.
31 and a mean absolute error of 11.
96, which is a moderately good performance.
The performance of the model decreased over each minute post-induction.
ConclusionML modeling to predict post-induction MBP is feasible, and a clinical tool that incorporates ML can potentially aid in preventing hypotension in the operating room.

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