从多学科团队的视角审视:肺癌护理决策支持系统的设计与临床评估
Looking through the eyes of the multidisciplinary team: the design and clinical evaluation of a decision support system for lung cancer care.
作者信息
Pluyter Jon R, Jacobs Igor, Langereis Sander, Cobben David, Williams Sharon, Curfs Jeannine, van den Borne Ben
机构信息
Philips Experience Design, High Tech Campus 33, Eindhoven, The Netherlands.
Department of Oncology Solutions, Philips Research Europe, High Tech Campus 34, Eindhoven, The Netherlands.
出版信息
Transl Lung Cancer Res. 2020 Aug;9(4):1422-1432. doi: 10.21037/tlcr-19-441.
BACKGROUND
Decision-making in lung cancer is complex due to a rapidly increasing amount of diagnostic data and treatment options. The need for timely and accurate diagnosis and delivery of care demands high-quality multidisciplinary team (MDT) collaboration and coordination. Clinical decision support systems (CDSSs) can potentially support MDTs in constructing a shared mental model of a patient case. This enables the team to assess the strength and completeness of collected diagnostic data, stratification for the right personalized therapy driven by clinical stage and other treatment-influencing factors, and adapt care management strategies when needed. Current CDSSs often have a suboptimal fit into the decision-making workflow, which hampers their impact in clinical practice.
METHODS
A CDSS for multidisciplinary decision-making in lung cancer was designed to support the abovementioned goals through presentation of relevant clinical data in line with existing mental model structures of the MDT members. The CDSS was tested in a simulated multidisciplinary tumor board meeting for primary diagnosis and treatment selection, based on de-identified primary lung cancer cases (n=8). Decision course analysis, eye-tracking data and questionnaires were used to assess the impact of the CDSS on constructing shared mental models to improve the decision-making process and outcome.
RESULTS
The CDSS supported the team in their self-correcting capacity for accurate diagnosis and TNM classification. It enabled cross-validation of diagnostic findings, surfaced discordance between diagnostic tests and facilitated cancer staging according the diagnostic evidence, as well as spotting contra-indications for personalized treatment selection.
CONCLUSIONS
This study shows the potential of CDSS on clinical decision making, when these systems are properly designed in line with clinical thinking. The presented setup enables assessment of the impact of CDSS design on clinical decision making and optimization of CDSSs to maximize their effect on decision quality and confidence.
背景
由于诊断数据和治疗选择的迅速增加,肺癌的决策变得复杂。及时准确的诊断和护理需求要求高质量的多学科团队(MDT)协作与协调。临床决策支持系统(CDSS)有可能支持多学科团队构建患者病例的共享心理模型。这使团队能够评估所收集诊断数据的强度和完整性,根据临床分期和其他治疗影响因素进行分层以选择正确的个性化治疗,并在需要时调整护理管理策略。目前的CDSS通常与决策工作流程的契合度欠佳,这阻碍了它们在临床实践中的作用。
方法
设计了一种用于肺癌多学科决策的CDSS,通过按照MDT成员现有的心理模型结构呈现相关临床数据来支持上述目标。基于去识别化的原发性肺癌病例(n = 8),在模拟的多学科肿瘤病例讨论会上对该CDSS进行了原发性诊断和治疗选择测试。使用决策过程分析、眼动追踪数据和问卷调查来评估CDSS对构建共享心理模型以改善决策过程和结果的影响。
结果
CDSS支持团队在准确诊断和TNM分类方面的自我纠正能力。它能够对诊断结果进行交叉验证,揭示诊断测试之间的不一致,并根据诊断证据促进癌症分期,以及发现个性化治疗选择的禁忌症。
结论
本研究表明,当这些系统根据临床思维进行合理设计时,CDSS在临床决策中具有潜力。所展示的设置能够评估CDSS设计对临床决策的影响,并对CDSS进行优化,以最大限度地提高其对决策质量和信心的影响。