Guyet Thomas, Garbay Catherine, Dojat Michel
CNRS-TIMC/LIG-Grenoble, France.
J Biomed Inform. 2007 Dec;40(6):672-87. doi: 10.1016/j.jbi.2007.09.006. Epub 2007 Oct 9.
This paper deals with the exploration of biomedical multivariate time series to construct typical parameter evolution or scenarios. This task is known to be difficult: the temporal and multivariate nature of the data at hand and the context-sensitive aspect of data interpretation hamper the formulation of a priori knowledge about the kind of patterns that can be detected as well as their interrelations. This paper proposes a new way to tackle this problem based on a human-computer collaborative approach involving specific annotations. Three grounding principles, namely autonomy, adaptability and emergence, support the co-construction of successive abstraction levels for data interpretation. An agent-based design is proposed to support these principles. Preliminary results in a clinical context are presented to support our proposal. A comparison with two well-known time series exploration tools is furthermore performed.
本文探讨生物医学多元时间序列,以构建典型参数演变或情景。已知这项任务颇具难度:手头数据的时间性和多元性,以及数据解释中上下文敏感的方面,妨碍了关于可检测模式类型及其相互关系的先验知识的形成。本文基于一种涉及特定注释的人机协作方法,提出了一种解决此问题的新途径。自主性、适应性和涌现性这三条基本原理支持为数据解释共同构建连续的抽象层次。提出了一种基于智能体的设计来支持这些原理。给出了临床背景下的初步结果以支持我们的提议。此外,还与两个知名的时间序列探索工具进行了比较。