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Combining machine learning and clinical rules to build an algorithm for predicting ICU mortality risk

机译:结合机器学习和临床规则来构建一种预测ICU死亡率风险的算法

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In this study we aim to develop a decision support application for predicting ICU mortality risk that starts with a clinical analysis of the problem that also leverages machine learning to help create an algorithm with good performance characteristics. By starting from a clear basis in clinical practice we hope to improve algorithm development and the transparency of the resulting system. We start with a general model structure for a fuzzy rule based system (FIS). The model can be specified by clinicians who identify the inputs and the rules. An optimizer based on a genetic algorithm generates the coefficients for the final solution. Using the 2012 PhysioNet/CinC Challenge data set we constructed a Phase 1 system using minimal clinical guidance. Our initial FIS's achieved scores of 0.39 for Event 1 and 94 for Event 2. In Phase 2 we updated the FIS based on clinician interviews. At the end of Phase 2 we achieved 0.40 for Event 1 and 60 for Event 2. We hope to show that machine learning techniques that are modeled on the clinical understanding of a problem can be competitive with more abstract machine learning approaches but may be preferable because of their explainability and transparency.
机译:在这项研究中,我们的目标是制定决策支持,以预测ICU死亡率风险,该申请开始于对解决机器学习的问题的临床分析,帮助创建具有良好性能特征的算法。通过从临床实践中的明确开始,我们希望改善算法的开发和所得系统的透明度。我们从基于模糊规则的系统(FIS)开始的一般模型结构。该模型可以由确定输入和规则的临床医生指定。基于遗传算法的优化器产生最终解决方案的系数。使用2012 Physionet / Cinc挑战数据集,我们使用最小的临床指导构建了一个第1阶段系统。对于事件1和94,我们的初始FIS实现了0.39的成绩2.在第2阶段,我们根据临床医生访谈更新了FIS。在第2阶段结束时,我们达到了0.40的事件1和60的事件2.我们希望表明在临床理解上建模的机器学习技术可以竞争更加抽象的机器学习方法,但可能是优选的,因为他们的解释性和透明度。

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