Assessing and Addressing Model Trustworthiness Trade-offs in Trauma Triage

IF 1 4区 计算机科学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Douglas Talbert, Katherine L. Phillips, Katherine E. Brown, Steve Talbert
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引用次数: 0

Abstract

Trauma triage occurs in suboptimal environments for making consequential decisions. Published triage studies demonstrate the extremes of the complexity/accuracy trade-off, either studying simple models with poor accuracy or very complex models with accuracies nearing published goals. Using a Level I Trauma Center’s registry cases (n = 50 644), this study describes, uses, and derives observations from a methodology to more thoroughly examine this trade-off. This or similar methods can provide the insight needed for practitioners to balance understandability with accuracy. Additionally, this study incorporates an evaluation of group-based fairness into this trade-off analysis to provide an additional dimension of insight into model selection. Lastly, this paper proposes and analyzes a multi-model approach to mitigating trust-related trade-offs. The experiments allow us to draw several conclusions regarding the machine learning models in the domain of trauma triage and demonstrate the value of our trade-off analysis to provide insight into choices regarding model complexity, model accuracy, and model fairness.
评估和解决创伤分流中模型可信度的权衡问题
创伤分流是在不理想的环境下进行的,无法做出相应的决定。已发表的分诊研究显示了复杂性/准确性权衡的两个极端,要么研究准确性较差的简单模型,要么研究准确性接近已发表目标的非常复杂的模型。本研究利用一个一级创伤中心的登记病例(n = 50 644),描述、使用并从一种方法中得出观察结果,以更彻底地研究这种权衡。这种方法或类似方法可以为从业人员提供平衡可理解性和准确性所需的洞察力。此外,本研究还在权衡分析中加入了对基于群体的公平性的评估,为模型选择提供了额外的洞察力。最后,本文提出并分析了一种缓解信任相关权衡的多模型方法。通过实验,我们得出了有关创伤分流领域机器学习模型的若干结论,并证明了我们的权衡分析在洞察模型复杂性、模型准确性和模型公平性选择方面的价值。
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来源期刊
International Journal on Artificial Intelligence Tools
International Journal on Artificial Intelligence Tools 工程技术-计算机:跨学科应用
CiteScore
2.10
自引率
9.10%
发文量
66
审稿时长
8.5 months
期刊介绍: The International Journal on Artificial Intelligence Tools (IJAIT) provides an interdisciplinary forum in which AI scientists and professionals can share their research results and report new advances on AI tools or tools that use AI. Tools refer to architectures, languages or algorithms, which constitute the means connecting theory with applications. So, IJAIT is a medium for promoting general and/or special purpose tools, which are very important for the evolution of science and manipulation of knowledge. IJAIT can also be used as a test ground for new AI tools. Topics covered by IJAIT include but are not limited to: AI in Bioinformatics, AI for Service Engineering, AI for Software Engineering, AI for Ubiquitous Computing, AI for Web Intelligence Applications, AI Parallel Processing Tools (hardware/software), AI Programming Languages, AI Tools for CAD and VLSI Analysis/Design/Testing, AI Tools for Computer Vision and Speech Understanding, AI Tools for Multimedia, Cognitive Informatics, Data Mining and Machine Learning Tools, Heuristic and AI Planning Strategies and Tools, Image Understanding, Integrated/Hybrid AI Approaches, Intelligent System Architectures, Knowledge-Based/Expert Systems, Knowledge Management and Processing Tools, Knowledge Representation Languages, Natural Language Understanding, Neural Networks for AI, Object-Oriented Programming for AI, Reasoning and Evolution of Knowledge Bases, Self-Healing and Autonomous Systems, and Software Engineering for AI.
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