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MCA-Based Rule Mining Enables Interpretable Inference in Clinical Psychiatry

机译:基于MCA的规则挖掘可在临床精神病学中实现可解释的推理

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Development of interpretable machine learning models for clinical healthcare applications has the potential of changing the way we understand, treat, and ultimately cure, diseases and disorders in many areas of medicine. These models can serve not only as sources of predictions and estimates, but also as discovery tools for clinicians and researchers to reveal new knowledge from the data. High dimensionality of patient information (e.g., phenotype, genotype, and medical history), lack of objective measurements, and the heterogeneity in patient populations often create significant challenges in developing interpretable machine learning models for clinical psychiatry in practice. In this paper we take a step towards the development of such interpretable models. First, by developing a novel categorical rule mining method based on Multivariate Correspondence Analysis (MCA) capable of handling datasets with large numbers of features, and second, by applying this method to build transdiagnostic Bayesian Rule List models to screen for psychiatric disorders using the Consortium for Neuropsychiatric Phenomics dataset. We show that our method is not only at least 100 times faster than state-of-the-art rule mining techniques for datasets with 50 features, but also provides interpretability and comparable prediction accuracy across several benchmark datasets.
机译:为临床医疗应用开发可解释的机器学习模型具有改变我们在许多医学领域中了解,治疗并最终治愈疾病和病症的方式的潜力。这些模型不仅可以用作预测和估计的来源,而且还可以作为临床医生和研究人员从数据中揭示新知识的发现工具。患者信息的高维度(例如表型,基因型和病史),缺乏客观的测量以及患者人群的异质性在实践中为临床精神病学开发可解释的机器学习模型时经常提出重大挑战。在本文中,我们朝着这种可解释模型的发展迈出了一步。首先,通过开发一种基于多元对应分析(MCA)的新颖分类规则挖掘方法,该方法能够处理具有大量特征的数据集,其次,通过应用此方法构建可诊断贝叶斯规则列表的模型,以使用财团来筛查精神疾病用于神经精神病学经济学数据集。我们表明,对于具有50个特征的数据集,我们的方法不仅比最先进的规则挖掘技术快至少100倍,而且在多个基准数据集之间提供了可解释性和相当的预测准确性。

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