Visualizing medical histories of patients with complex chronic diseases (e.g., discordant chronic comorbidities (DCCs)) is a challenge for patients, their healthcare providers, and their support network. DCCs are health conditions in which patients have multiple, often unrelated, chronic illnesses that may need to be addressed concurrently but may also be associated with conflicting treatment instructions. Future work targeting to reduce treatment conflicts and improve patient quality of life and care should carefully examine and visualize DCCs medical reports, symptoms, and treatment recommendations. In this study, we explore various visualization models and paradigms. We analyze how these models and paradigms are applied to visualize multifaceted medical data. We then propose a model for transforming the unstructured data into temporal slices and depict them in a single graphic model. We report how we carefully moved multifaceted DCC records into; structured data tables, visualization graphs, and various hardware devices.
翻译:对患有复杂慢性病的病人(例如,不协调的慢性并发症(DCCs)的医疗史进行可视化是病人、其保健提供者及其支助网络的一项挑战。DCCs是病人患有多重、往往无关的慢性病的健康状况,可能需要同时处理,但也可能与治疗指示冲突有关。今后旨在减少治疗冲突和改善病人生活和护理质量的工作应仔细审查和直观化DCCs的医疗报告、症状和治疗建议。我们在本研究中探讨各种可视化模型和范例。我们分析了这些模型和范例如何应用到多面医学数据的可视化。我们然后提出了一个模型,将非结构的数据转换成时间切片,并用单一的图形模型描述它们。我们报告我们如何谨慎地将多方面的DCC记录转换成;结构化数据表、可视化图和各种硬件装置。