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A Heterogeneous Multi-Task Learning for Predicting RBC Transfusion and Perioperative Outcomes

机译:用于预测RBC输血和围手术期结果的异质多任务学习

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It would be desirable before a surgical procedure to have a prediction rule that could accurately estimate the probability of a patient bleeding, need for blood transfusion, and other important outcomes. Such a prediction rule would allow optimal planning, more efficient use of blood bank resources, and identification of high-risk patient cohort for specific perioperative interventions. The goal of this study is to develop an efficient and accurate algorithm that could estimate the risk of multiple outcomes simultaneously. Specifically, a heterogeneous multi-task learning method is proposed for learning outcomes such as perioperative bleeding, intraoperative RBC transfusion, ICU care, and ICU length of stay. Additional outcomes not normally predicted are incorporated in the model for transfer learning and help improve the performance of relevant outcomes. Results for predicting perioperative bleeding and need for blood transfusion for patients undergoing non-cardiac operations from an institutional transfusion datamart show that the proposed method significantly increases AUC and G-Mean by more than 6% and 5% respectively over standard single-task learning methods.
机译:在手术过程之前希望具有预测规则,该预测规则可以准确估计患者出血的可能性,需要输血和其他重要结果。这种预测规则将允许最佳规划,更有效地利用血库资源,以及针对特定围手术期干预的高危患者队列的鉴定。本研究的目标是开发一种高效且准确的算法,可以同时估计多种结果的风险。具体地,提出了一种非均相的多任务学习方法,用于学习围手术期出血,术中RBC输血,ICU护理和ICU的持续时间段。通常预测的其他结果纳入转移学习模型中,有助于提高相关结果的表现。预测围手术期出血的结果,对由制度输血数据排序进行非心动操作的患者的输血表明,在标准的单任务学习方法中,该方法显着增加了AUC和G平均值超过6%和5% 。

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