Bellazzi Riccardo, Abu-Hanna Ameen
Dipartimento di Informatica e Sistemistica, Università di Pavia, Pavia, Italy.
J Diabetes Sci Technol. 2009 May 1;3(3):603-12. doi: 10.1177/193229680900300326.
Data mining is the process of selecting, exploring, and modeling large amounts of data to discover unknown patterns or relationships useful to the data analyst. This article describes applications of data mining for the analysis of blood glucose and diabetes mellitus data. The diabetes management context is particularly well suited to a data mining approach. The availability of electronic health records and monitoring facilities, including telemedicine programs, is leading to accumulating huge data sets that are accessible to physicians, practitioners, and health care decision makers. Moreover, because diabetes is a lifelong disease, even data available for an individual patient may be massive and difficult to interpret. Finally, the capability of interpreting blood glucose readings is important not only in diabetes monitoring but also when monitoring patients in intensive care units. This article describes and illustrates work that has been carried out in our institutions in two areas in which data mining has a significant potential utility to researchers and clinical practitioners: analysis of (i) blood glucose home monitoring data of diabetes mellitus patients and (ii) blood glucose monitoring data from hospitalized intensive care unit patients.
数据挖掘是指从大量数据中进行选择、探索和建模,以发现对数据分析人员有用的未知模式或关系的过程。本文描述了数据挖掘在血糖和糖尿病数据的分析中的应用。糖尿病管理背景特别适合采用数据挖掘方法。电子健康记录和监测设施(包括远程医疗程序)的可用性,正导致积累大量数据集,医生、从业者和医疗保健决策者都可以访问这些数据集。此外,由于糖尿病是一种终身疾病,即使是单个患者可用的数据也可能数量庞大且难以解释。最后,解读血糖读数的能力不仅在糖尿病监测中很重要,在重症监护病房监测患者时也很重要。本文描述并说明了我们机构在两个领域开展的工作,在这两个领域中,数据挖掘对研究人员和临床从业者具有显著的潜在效用:(i)糖尿病患者的血糖家庭监测数据分析;(ii)住院重症监护病房患者的血糖监测数据分析。