PhenoFlow:用于探索大型复杂卒中数据集的人工-LLM驱动可视分析系统。

Jaeyoung Kim, Sihyeon Lee, Hyeon Jeon, Keon-Joo Lee, Hee-Joon Bae, Bohyoung Kim, Jinwook Seo
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引用次数: 0

摘要

急性中风需要及时诊断和治疗,以实现最佳的患者预后。然而,与急性中风相关的临床数据,尤其是血压(BP)测量数据错综复杂且不规则,给有效的可视化分析和决策带来了巨大障碍。通过与经验丰富的神经科医生长达一年的合作,我们开发出了 PhenoFlow,这是一种可视化分析系统,利用人类与大型语言模型(LLMs)之间的协作来分析急性缺血性中风患者的大量复杂数据。PhenoFlow 首创了一种创新的工作流程,即 LLM 充当数据处理员,而神经学家则利用可视化和自然语言交互来探索和监督输出结果。这种方法能让神经科医生更专注于决策,减少认知负荷。为了保护敏感的患者信息,PhenoFlow 只利用元数据进行推断和合成可执行代码,而不访问原始患者数据。这确保了结果的可重复性和可解释性,同时维护了患者隐私。该系统采用了切片和缠绕设计,利用时间折叠来创建叠加的圆形可视化效果。这种设计与线性条形图相结合,有助于在不规则的血压测量数据中探索有意义的模式。通过案例研究,PhenoFlow 已证明其有能力支持对大量临床数据集进行迭代分析,减少认知负荷,使神经科医生能够做出明智的决策。在与领域专家长期合作的基础上,我们的研究证明了利用 LLMs 应对当前急性缺血性中风患者数据驱动临床决策挑战的潜力。
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PhenoFlow: A Human-LLM Driven Visual Analytics System for Exploring Large and Complex Stroke Datasets.

Acute stroke demands prompt diagnosis and treatment to achieve optimal patient outcomes. However, the intricate and irregular nature of clinical data associated with acute stroke, particularly blood pressure (BP) measurements, presents substantial obstacles to effective visual analytics and decision-making. Through a year-long collaboration with experienced neurologists, we developed PhenoFlow, a visual analytics system that leverages the collaboration between human and Large Language Models (LLMs) to analyze the extensive and complex data of acute ischemic stroke patients. PhenoFlow pioneers an innovative workflow, where the LLM serves as a data wrangler while neurologists explore and supervise the output using visualizations and natural language interactions. This approach enables neurologists to focus more on decision-making with reduced cognitive load. To protect sensitive patient information, PhenoFlow only utilizes metadata to make inferences and synthesize executable codes, without accessing raw patient data. This ensures that the results are both reproducible and interpretable while maintaining patient privacy. The system incorporates a slice-and-wrap design that employs temporal folding to create an overlaid circular visualization. Combined with a linear bar graph, this design aids in exploring meaningful patterns within irregularly measured BP data. Through case studies, PhenoFlow has demonstrated its capability to support iterative analysis of extensive clinical datasets, reducing cognitive load and enabling neurologists to make well-informed decisions. Grounded in long-term collaboration with domain experts, our research demonstrates the potential of utilizing LLMs to tackle current challenges in data-driven clinical decision-making for acute ischemic stroke patients.

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