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Evaluation of Machine Learning-based Patient Outcome Prediction Using Patient-specific Difficulty and Discrimination Indices

机译:使用特定于患者的难度和判别指标评估基于机器学习的患者结果预测

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Given the extensive use of machine learning in patient outcome prediction, and the understanding that the challenging nature of predictions in this field may considerably modify the performance of predictive models, research in this area requires some forms of context-sensitive performance metrics. The area under the receiver operating characteristic curve (AUC), precision, recall, specificity, and F1 are widely used measures of performance for patient outcome prediction. These metrics have several merits: they are easy to interpret and do not need any subjective input from the user. However, they weight all samples equally and do not adequately reflect the ability of predictive models in classifying difficult samples. In this paper, we propose the Difficulty Weight Adjustment (DWA) algorithm, a simple method that incorporates the difficulty level of samples when evaluating predictive models. Using a large dataset of 139,367 unique ICU admissions within the eICU Collaborative Research Database (eICU-CRD), we show that the classification difficulty and the discrimination ability of samples are critical aspects that need to be considered when comparing machine learning models that predict patient outcomes.
机译:鉴于机器学习在患者预后预测中的广泛使用,以及对这一领域中预测的挑战性性质可能会大大改变预测模型的性能的理解,该领域的研究需要某种形式的上下文相关性能指标。接收器工作特征曲线(AUC),精度,召回率,特异性和F1下的面积是用于预测患者预后的性能指标。这些度量标准有几个优点:它们易于解释,不需要用户的任何主观输入。但是,它们对所有样本均重加权,不能充分反映预测模型对困难样本进行分类的能力。在本文中,我们提出了难度权重调整(DWA)算法,这是一种在评估预测模型时结合样本难度级别的简单方法。通过使用eICU协作研究数据库(eICU-CRD)中139,367个唯一ICU入院的大型数据集,我们显示,在比较预测患者预后的机器学习模型时,分类的难度和样本的辨别能力是至关重要的方面。

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