Hevelius报告:可视化基于网络的移动测试数据,用于临床决策和学习支持。

Hongjin Lin, Tessa Han, Krzysztof Z Gajos, Anoopum S Gupta
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引用次数: 0

摘要

Hevelius是一项基于网络的计算机鼠标测试,测量手臂运动,并被证明可以准确评估帕金森病和共济失调患者的严重程度。Hevelius会话产生32个数字特征,这可能很难解释,特别是在时间有限的临床环境中。这项工作旨在支持临床医生(和其他利益相关者)在解释和连接Hevelius功能的临床概念。通过迭代设计过程,我们开发了一个可视化工具(Hevelius Report),该工具(1)从32个特征中抽象出6个临床相关概念,(2)将患者检测结果可视化,并将其与健康对照和其他患者的结果进行比较,(3)是一个交互式应用程序,以满足不同使用场景的特定需求。然后,我们通过与三位未参与该项目的临床医生的在线访谈进行了初步的用户研究。他们表达了对使用Hevelius Report的兴趣,特别是在识别现有临床试验难以捕捉的患者活动能力的细微变化方面。未来的工作将把可视化工具整合到神经病学团队当前的临床工作流程中,并对该工具的有用性、可用性和有效性进行系统的评估。Hevelius报告代表了分析精细运动测试结果和监测患者状况和进展的有希望的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hevelius Report: Visualizing Web-Based Mobility Test Data For Clinical Decision and Learning Support.

Hevelius, a web-based computer mouse test, measures arm movement and has been shown to accurately evaluate severity for patients with Parkinson's disease and ataxias. A Hevelius session produces 32 numeric features, which may be hard to interpret, especially in time-constrained clinical settings. This work aims to support clinicians (and other stakeholders) in interpreting and connecting Hevelius features to clinical concepts. Through an iterative design process, we developed a visualization tool (Hevelius Report) that (1) abstracts six clinically relevant concepts from 32 features, (2) visualizes patient test results, and compares them to results from healthy controls and other patients, and (3) is an interactive app to meet the specific needs in different usage scenarios. Then, we conducted a preliminary user study through an online interview with three clinicians who were not involved in the project. They expressed interest in using Hevelius Report, especially for identifying subtle changes in their patients' mobility that are hard to capture with existing clinical tests. Future work will integrate the visualization tool into the current clinical workflow of a neurology team and conduct systematic evaluations of the tool's usefulness, usability, and effectiveness. Hevelius Report represents a promising solution for analyzing fine-motor test results and monitoring patients' conditions and progressions.

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