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A nonparametric Bayesian method of translating machine learning scores to probabilities in clinical decision support

机译:一种非参数贝叶斯方法将机器学习分数转换为临床决策支持中的概率

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摘要

BackgroundProbabilistic assessments of clinical care are essential for quality care. Yet, machine learning, which supports this care process has been limited to categorical results. To maximize its usefulness, it is important to find novel approaches that calibrate the ML output with a likelihood scale. Current state-of-the-art calibration methods are generally accurate and applicable to many ML models, but improved granularity and accuracy of such methods would increase the information available for clinical decision making.This novel non-parametric Bayesian approach is demonstrated on a variety of data sets, including simulated classifier outputs, biomedical data sets from the University of California, Irvine (UCI) Machine Learning Repository, and a clinical data set built to determine suicide risk from the language of emergency department patients.
机译:背景技术临床护理的概率评估对于质量护理至关重要。但是,支持这种护理过程的机器学习仅限于分类结果。为了最大程度地发挥其作用,重要的是找到一种新颖的方法来用可能性标度校准ML输出。当前最先进的校准方法通常是准确的,并且适用于许多ML模型,但是改进的粒度和准确性将增加可用于临床决策的信息。这种新颖的非参数贝叶斯方法已在多种方法上得到了证明数据集,包括模拟分类器输出,加利福尼亚大学尔湾分校(UCI)机器学习存储库中的生物医学数据集,以及用于根据急诊科患者的语言确定自杀风险的临床数据集。

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