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.

Data Mining Technologies for Blood Glucose and Diabetes Management

BELLAZZI, RICCARDO;
2009-01-01

Abstract

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.
2009
Computer Science & Engineering includes resources on computer hardware and architecture, computer software, software engineering and design, computer graphics, programming languages, theoretical computing, computing methodologies, broad computing topics, and interdisciplinary computer applications.
Endocrinology, Nutrition & Metabolism is a cross-disciplinary category combining molecular, cellular and clinical science studies of the endocrine glands, and the regulation of cell, organ, and system function by the action of secreted hormones. Chemical/biological properties of hormones, and the pathogenesis and treatment of disorders associated with either source or target organs are also covered. Nutrition coverage includes biochemical characteristics of nutrients, physiology of absorption, biological trace elements, clinical nutrition and malnutrition, and the biomedicine of obesity. Specific areas of interest include reproductive endocrinology, pancreatic hormones and diabetes, regulation of bone formation and loss, and control of growth. Resources focusing on neuroendocrinology are excluded and are placed in the Neuroscience & Behavior category.
no
Sì, ma tipo non specificato
Inglese
Internazionale
ELETTRONICO
3
3
603
612
10
Data mining; Diabetes Mellitus; Biomedical Informatics
2
info:eu-repo/semantics/article
262
Bellazzi, Riccardo; Abu Hanna, A.
1 Contributo su Rivista::1.1 Articolo in rivista
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11571/152215
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