基于移动健康和临床数据的可解释的营养不良风险预测人工智能

Q2 Health Professions
Flavio Di Martino , Franca Delmastro , Cristina Dolciotti
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引用次数: 0

摘要

营养不良在老年人中是一个严重而普遍的健康问题,尤其是在住院或住院的受试者中。准确和早期的风险检测对于营养不良的管理和预防至关重要。人工智能(AI)增强的移动健康服务可能会在更自动化、客观和持续的监测和评估方面带来重要改进。此外,最新的可解释人工智能(XAI)方法可能使人工智能决策对最终用户来说是可解释和值得信赖的。本文提出了一种新的人工智能框架,用于基于异构移动健康数据的早期可解释的营养不良风险检测。我们进行了广泛的模型评估,包括独立于受试者和个性化预测,获得的结果表明随机森林(RF)和梯度增强是性能最好的分类器,尤其是在结合身体成分评估数据时。我们还研究了几种基准XAI方法来提取全局模型解释。模型特定解释的一致性评估表明,每个选定的模型都优先考虑最相关预测因子的相似子集,SHapley加性展开(SHAP)和特征排列方法之间的一致性最高。此外,我们进行了初步临床验证,以验证学习到的特征输出趋势是否符合当前的循证评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explainable AI for malnutrition risk prediction from m-Health and clinical data

Malnutrition is a serious and prevalent health problem in the older population, and especially in hospitalised or institutionalised subjects. Accurate and early risk detection is essential for malnutrition management and prevention. M-health services empowered with Artificial Intelligence (AI) may lead to important improvements in terms of a more automatic, objective, and continuous monitoring and assessment. Moreover, the latest Explainable AI (XAI) methodologies may make AI decisions interpretable and trustworthy for end users.

This paper presents a novel AI framework for early and explainable malnutrition risk detection based on heterogeneous m-health data. We performed an extensive model evaluation including both subject-independent and personalised predictions, and the obtained results indicate Random Forest (RF) and Gradient Boosting as the best performing classifiers, especially when incorporating body composition assessment data. We also investigated several benchmark XAI methods to extract global model explanations. Model-specific explanation consistency assessment indicates that each selected model privileges similar subsets of the most relevant predictors, with the highest agreement shown between SHapley Additive ExPlanations (SHAP) and feature permutation method. Furthermore, we performed a preliminary clinical validation to verify that the learned feature-output trends are compliant with the current evidence-based assessment.

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来源期刊
Smart Health
Smart Health Computer Science-Computer Science Applications
CiteScore
6.50
自引率
0.00%
发文量
81
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