Ghosh Shameek, Li Jinyan
Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:8157-60. doi: 10.1109/EMBC.2015.7320287.
Pattern mining algorithms have previously been utilized to extract informative rules in various clinical contexts. However, the number of generated patterns are numerous. In most cases, the extracted rules are directly investigated by clinicians for understanding disease diagnoses. The elicitation of important patterns for clinical investigation places a significant demand for precision and interpretability. Hence, it is essential to obtain a set of informative interpretable patterns for building advanced learning models about a patient's physiological condition, specially in critical care units. In this study, a two stage sequential contrast patterns based classification framework is presented, which is used to detect critical patient events like hypotension. In the first stage, we obtain a set of sequential patterns by using a contrast mining algorithm. These sequential patterns undergo post-processing, for conversion to binary valued and frequency based features for developing a classification model, in the second stage. Our results on eight critical care datasets demonstrate better predictive capabilities, when sequential patterns are used as features.
模式挖掘算法此前已被用于在各种临床环境中提取信息规则。然而,生成的模式数量众多。在大多数情况下,临床医生会直接研究提取的规则以理解疾病诊断。为临床研究引出重要模式对精度和可解释性有很高要求。因此,对于构建关于患者生理状况的先进学习模型而言,获取一组信息丰富且可解释的模式至关重要,特别是在重症监护病房。在本研究中,提出了一种基于两阶段顺序对比模式的分类框架,用于检测诸如低血压等危急患者事件。在第一阶段,我们使用对比挖掘算法获得一组顺序模式。在第二阶段,这些顺序模式经过后处理,转换为二进制值和基于频率的特征以开发分类模型。我们在八个重症监护数据集上的结果表明,当将顺序模式用作特征时,具有更好的预测能力。