2022
DOI: 10.1101/2022.10.03.22280539
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Development and Validation of ‘Patient Optimizer’ (POP) Algorithms for Predicting Surgical Risk with Machine Learning

Abstract: Background Pre-operative risk assessment can help clinicians prepare patients for surgery, reducing the risk of perioperative complications, length of hospital stay, readmission and mortality. Further, it can facilitate collaborative decision-making and operational planning. Objective To develop effective pre-operative risk assessment algorithms (referred to as Patient Optimizer or POP) using Machine Learning (ML) that predicts the development of post-operative complications and provides pilot data to infor… Show more

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“…Utilizing objective clinical data that is readily accessible before or upon admission, ML algorithms can provide valuable insights to better characterize preoperative risk. [17][18][19][20][21] For instance, our analysis consistently identified preoperative hematocrit as a significant variable, which aligns with previous studies demonstrating the importance of addressing low hematocrit levels in patients undergoing reverse TSA and HA following a proximal humerus fracture to mitigate the risk of 30-day mortality. 15 This approach utilizes both subjective variables that are present in current preoperative risk classifications and objective variables such as comorbidities, functional status, and overall health, enhancing the accuracy and comprehensiveness of risk assessment.…”
Section: Auc Accuracy Sensitivity Specificity Negative Likelihood Rat...supporting
confidence: 88%
“…Utilizing objective clinical data that is readily accessible before or upon admission, ML algorithms can provide valuable insights to better characterize preoperative risk. [17][18][19][20][21] For instance, our analysis consistently identified preoperative hematocrit as a significant variable, which aligns with previous studies demonstrating the importance of addressing low hematocrit levels in patients undergoing reverse TSA and HA following a proximal humerus fracture to mitigate the risk of 30-day mortality. 15 This approach utilizes both subjective variables that are present in current preoperative risk classifications and objective variables such as comorbidities, functional status, and overall health, enhancing the accuracy and comprehensiveness of risk assessment.…”
Section: Auc Accuracy Sensitivity Specificity Negative Likelihood Rat...supporting
confidence: 88%