scispace - formally typeset
Open AccessJournal ArticleDOI

Machine Learning and Data Mining Methods in Diabetes Research.

Reads0
Chats0
TLDR
A systematic review of the applications of machine learning, data mining techniques and tools in the field of diabetes research with respect to a) Prediction and Diagnosis, b) Diabetic Complications, c) Genetic Background and Environment, and e) Health Care and Management with the first category appearing to be the most popular.
Abstract
The remarkable advances in biotechnology and health sciences have led to a significant production of data, such as high throughput genetic data and clinical information, generated from large Electronic Health Records (EHRs). To this end, application of machine learning and data mining methods in biosciences is presently, more than ever before, vital and indispensable in efforts to transform intelligently all available information into valuable knowledge. Diabetes mellitus (DM) is defined as a group of metabolic disorders exerting significant pressure on human health worldwide. Extensive research in all aspects of diabetes (diagnosis, etiopathophysiology, therapy, etc.) has led to the generation of huge amounts of data. The aim of the present study is to conduct a systematic review of the applications of machine learning, data mining techniques and tools in the field of diabetes research with respect to a) Prediction and Diagnosis, b) Diabetic Complications, c) Genetic Background and Environment, and e) Health Care and Management with the first category appearing to be the most popular. A wide range of machine learning algorithms were employed. In general, 85% of those used were characterized by supervised learning approaches and 15% by unsupervised ones, and more specifically, association rules. Support vector machines (SVM) arise as the most successful and widely used algorithm. Concerning the type of data, clinical datasets were mainly used. The title applications in the selected articles project the usefulness of extracting valuable knowledge leading to new hypotheses targeting deeper understanding and further investigation in DM.

read more

Citations
More filters
Journal ArticleDOI

A Hybrid Meta-Classifier of Fuzzy Clustering and Logistic Regression for Diabetes Prediction

TL;DR: In this article , a hybrid meta-learner that combines fuzzy clustering and logistic regression is employed to appropriately integrate predictions from the base-learners and provide an accurate prediction of diabetes.
Journal ArticleDOI

Research on Data Mining Technology Based on Machine Learning Algorithm

TL;DR: With the help of mobile terminal data, the outdoor terminal of GSM network is positioned effectively, and a three-stage positioning algorithm is proposed, which greatly improves the positioning speed and accuracy.
Book ChapterDOI

Entropy-Based Variational Inference for Semi-Bounded Data Clustering in Medical Applications

TL;DR: In this paper, the authors apply machine learning approaches to extract implicit patterns, acquire information and retrieve latent meaningful knowledge. But, they do not consider the implicit patterns of the data.
Proceedings ArticleDOI

Machine Learning Algorithms for Diabetes Prediction: A Review Paper

TL;DR: This study shows that the Support Vector Machine (SVM) algorithm is the most used machine learning algorithms and it provide more accurate and powerful results.
Book ChapterDOI

Early Stage Diabetes Risk Prediction via Machine Learning

TL;DR: In this paper , the authors proposed an inclusive machine learning based predictive model for diagnosing the risk of having diabetes using a recent dataset of signs and symptoms, known as Diabetes Risk Prediction (DRP2020), employed more than twenty ML techniques on DRP2020 and evaluated all ML based models using different performance evaluation metrics including accuracy, precision, recall, harmonic mean, prediction speed and alarm errors.
References
More filters
Journal ArticleDOI

Random Forests

TL;DR: Internal estimates monitor error, strength, and correlation and these are used to show the response to increasing the number of features used in the forest, and are also applicable to regression.
Book

Data Mining: Concepts and Techniques

TL;DR: This book presents dozens of algorithms and implementation examples, all in pseudo-code and suitable for use in real-world, large-scale data mining projects, and provides a comprehensive, practical look at the concepts and techniques you need to get the most out of real business data.
Book

Data Mining: Practical Machine Learning Tools and Techniques

TL;DR: This highly anticipated third edition of the most acclaimed work on data mining and machine learning will teach you everything you need to know about preparing inputs, interpreting outputs, evaluating results, and the algorithmic methods at the heart of successful data mining.
Book

Artificial Intelligence: A Modern Approach

TL;DR: In this article, the authors present a comprehensive introduction to the theory and practice of artificial intelligence for modern applications, including game playing, planning and acting, and reinforcement learning with neural networks.
Proceedings ArticleDOI

Mining association rules between sets of items in large databases

TL;DR: An efficient algorithm is presented that generates all significant association rules between items in the database of customer transactions and incorporates buffer management and novel estimation and pruning techniques.
Related Papers (5)