Individualized Machine-learning-based Clinical Assessment Recommendation System

Devin R Setiawan, Yumiko Wiranto, Jeffrey M Girard, Amber Watts, Arian Ashourvan
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Abstract

Background: Traditional clinical assessments often lack individualization, relying on standardized procedures that may not accommodate the diverse needs of patients, especially in early stages where personalized diagnosis could offer significant benefits. We aim to provide a machine-learning framework that addresses the individualized feature addition problem and enhances diagnostic accuracy for clinical assessments. Methods: Individualized Clinical Assessment Recommendation System (iCARE) employs locally weighted logistic regression and Shapley Additive Explanations (SHAP) value analysis to tailor feature selection to individual patient characteristics. Evaluations were conducted on synthetic and real-world datasets, including early-stage diabetes risk prediction and heart failure clinical records from the UCI Machine Learning Repository. We compared the performance of iCARE with a Global approach using statistical analysis on accuracy and area under the ROC curve (AUC) to select the best additional features. Findings: The iCARE framework enhances predictive accuracy and AUC metrics when additional features exhibit distinct predictive capabilities, as evidenced by synthetic datasets 1-3 and the early diabetes dataset. Specifically, in synthetic dataset 1, iCARE achieved an accuracy of 0.999 and an AUC of 1.000, outperforming the Global approach with an accuracy of 0.689 and an AUC of 0.639. In the early diabetes dataset, iCARE shows improvements of 1.5-3.5% in accuracy and AUC across different numbers of initial features. Conversely, in synthetic datasets 4-5 and the heart failure dataset, where features lack discernible predictive distinctions, iCARE shows no significant advantage over global approaches on accuracy and AUC metrics. Interpretation: iCARE provides personalized feature recommendations that enhance diagnostic accuracy in scenarios where individualized approaches are critical, improving the precision and effectiveness of medical diagnoses. Funding: This work was supported by startup funding from the Department of Psychology at the University of Kansas provided to A.A., and the R01MH125740 award from NIH partially supported J.M.G.'s work.
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基于机器学习的个性化临床评估推荐系统
背景:传统的临床评估往往缺乏个性化,依赖于标准化的程序,可能无法满足患者的不同需求,尤其是在早期阶段,个性化诊断可能会带来显著的益处。我们的目标是提供一个机器学习框架,解决个性化特征添加问题,提高临床评估的诊断准确性:方法:个体化临床评估推荐系统(iCARE)采用局部加权逻辑回归和夏普利相加解释(SHAP)值分析,根据患者个体特征进行特征选择。我们在合成数据集和真实数据集上进行了评估,包括早期糖尿病风险预测和来自 UCI 机器学习资料库的心力衰竭临床记录。我们使用准确率和 ROC 曲线下面积(AUC)统计分析比较了 iCARE 和全球方法的性能,以选择最佳附加特征:正如合成数据集 1-3 和早期糖尿病数据集所示,当附加特征表现出独特的预测能力时,iCARE 框架可提高预测准确率和 AUC 指标。具体来说,在合成数据集 1 中,iCARE 的准确率为 0.999,AUC 为 1.000,优于准确率为 0.689、AUC 为 0.639 的全局方法。在早期糖尿病数据集中,iCARE 在不同初始特征数量下的准确率和 AUC 提高了 1.5-3.5%。相反,在合成数据集 4-5 和心力衰竭数据集中,由于特征缺乏明显的预测区别,iCARE 在准确率和 AUC 指标上与全局方法相比没有明显优势。解释:iCARE 提供个性化特征推荐,在个性化方法至关重要的情况下提高了诊断准确率,改善了医疗诊断的精确性和有效性:这项工作得到了堪萨斯大学心理学系为A.A.提供的启动资金的支持,美国国立卫生研究院的R01MH125740奖励为J.M.G.的工作提供了部分支持。
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