Guo XiaoRui, Xiao Liang, Liu Xinyu, Chen Jianxia, Tong Zefang, Liu Ziji
School of Computer Science, Hubei University of Technology, Wuhan, China.
J Med Internet Res. 2025 Mar 4;27:e55341. doi: 10.2196/55341.
Effective shared decision-making between patients and physicians is crucial for enhancing health care quality and reducing medical errors. The literature shows that the absence of effective methods to facilitate shared decision-making can result in poor patient engagement and unfavorable decision outcomes.
In this paper, we propose a Collaborative Decision Description Language (CoDeL) to model shared decision-making between patients and physicians, offering a theoretical foundation for studying various shared decision scenarios.
CoDeL is based on an extension of the interaction protocol language of Lightweight Social Calculus. The language utilizes speech acts to represent the attitudes of shared decision-makers toward decision propositions, as well as their semantic relationships within dialogues. It supports interactive argumentation among decision makers by embedding clinical evidence into each segment of decision protocols. Furthermore, CoDeL enables personalized decision-making, allowing for the demonstration of characteristics such as persistence, critical thinking, and openness.
The feasibility of the approach is demonstrated through a case study of shared decision-making in the disease domain of atrial fibrillation. Our experimental results show that integrating the proposed language with GPT can further enhance its capabilities in interactive decision-making, improving interpretability.
The proposed novel CoDeL can enhance doctor-patient shared decision-making in a rational, personalized, and interpretable manner.
患者与医生之间有效的共同决策对于提高医疗质量和减少医疗差错至关重要。文献表明,缺乏促进共同决策的有效方法会导致患者参与度低和决策结果不理想。
在本文中,我们提出一种协作决策描述语言(CoDeL)来对患者与医生之间的共同决策进行建模,为研究各种共同决策场景提供理论基础。
CoDeL基于轻量级社会演算的交互协议语言的扩展。该语言利用言语行为来表示共同决策者对决策命题的态度,以及它们在对话中的语义关系。它通过将临床证据嵌入决策协议的每个部分来支持决策者之间的交互式论证。此外,CoDeL支持个性化决策,能够展示诸如坚持性、批判性思维和开放性等特征。
通过心房颤动疾病领域共同决策的案例研究证明了该方法的可行性。我们的实验结果表明,将所提出的语言与GPT集成可以进一步增强其在交互式决策中的能力,提高可解释性。
所提出的新型CoDeL能够以合理、个性化和可解释的方式增强医患共同决策。