Reevaluating feature importances in machine learning models for schizophrenia and bipolar disorder: The need for true associations

IF 8.8 2区 医学 Q1 IMMUNOLOGY
Yoshiyasu Takefuji
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引用次数: 0

Abstract

Skorobogatov et al. developed supervised machine learning models to predict diagnoses and illness states in schizophrenia and bipolar disorder. However, their reliance on bootstrap forests and generalized regressions introduces significant biases in feature importance assessments. This paper highlights the critical distinction between feature importances generated by machine learning and actual associations, which are often model-specific and context-dependent. We underscore the limitations of biased feature importances and advocate for the use of robust statistical methods, such as Chi-squared tests and Spearman’s correlation, to reveal true associations. Reassessing findings with these methods will enable more accurate interpretations and reinforce the importance of understanding the limitations inherent in machine learning methodologies.
在精神分裂症和双相情感障碍的机器学习模型中重新评估特征的重要性:需要真正的关联。
Skorobogatov等人开发了监督机器学习模型来预测精神分裂症和双相情感障碍的诊断和疾病状态。然而,它们对自举森林和广义回归的依赖在特征重要性评估中引入了显著的偏差。本文强调了机器学习生成的特征重要性与实际关联之间的关键区别,实际关联通常是特定于模型和上下文相关的。我们强调有偏特征重要性的局限性,并提倡使用稳健的统计方法,如卡方检验和斯皮尔曼相关,以揭示真正的关联。用这些方法重新评估发现将使更准确的解释成为可能,并加强理解机器学习方法固有局限性的重要性。
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来源期刊
CiteScore
29.60
自引率
2.00%
发文量
290
审稿时长
28 days
期刊介绍: Established in 1987, Brain, Behavior, and Immunity proudly serves as the official journal of the Psychoneuroimmunology Research Society (PNIRS). This pioneering journal is dedicated to publishing peer-reviewed basic, experimental, and clinical studies that explore the intricate interactions among behavioral, neural, endocrine, and immune systems in both humans and animals. As an international and interdisciplinary platform, Brain, Behavior, and Immunity focuses on original research spanning neuroscience, immunology, integrative physiology, behavioral biology, psychiatry, psychology, and clinical medicine. The journal is inclusive of research conducted at various levels, including molecular, cellular, social, and whole organism perspectives. With a commitment to efficiency, the journal facilitates online submission and review, ensuring timely publication of experimental results. Manuscripts typically undergo peer review and are returned to authors within 30 days of submission. It's worth noting that Brain, Behavior, and Immunity, published eight times a year, does not impose submission fees or page charges, fostering an open and accessible platform for scientific discourse.
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