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Open AccessJournal ArticleDOI

Machine Learning and Data Mining Methods in Diabetes Research.

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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.

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Citations
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Proceedings ArticleDOI

A Framework for the prediction of Diabtetes Mellitus using Hyper-Parameter tuned XGBoost Classifier

TL;DR: In this article , the authors proposed a framework for prediction of diabetes Mellitus using Optimized Gradient Descent Boosting Classifier and the performance metrices such as Accuracy, Sensitivity, Specificity and F1 scores are chosen.
Proceedings ArticleDOI

Predictive Analysis of Diabetes Mellitus Using Decision Tree Approach

TL;DR: The Decision Tree algorithm, namely ID3 (Iterative Dichotomize 3) is used for a predictive analysis of the PIMA Indian Diabetes dataset and can help various health industries to predict the diabetes disease in a better way.
Book ChapterDOI

Artificial intelligence applied to healthcare and biotechnology

TL;DR: In this paper , the authors introduce the reader to the field of AI, where the main methods and techniques utilize algorithms and some of the important steps required during the application of these techniques in context to healthcare and biotechnology.
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Mural digital image restoration technology and stitching evaluation model based on machine learning

TL;DR: Zhang et al. as mentioned in this paper conducted a study to select a more suitable specific calculation method by studying machine learning (ML) methods and conduct in-depth research on mural digital image restoration and stitching evaluation, so that it can better serve the restoration and splicing of the current mural digital images.
Journal ArticleDOI

A Clinical Decision Support System Based on Machine Learning For The Prediction of Diabetes Mellitus.

B. Evren, +1 more
TL;DR: It was seen that the ML model applied with the results obtained can predict diabetes and necessary precautions can be taken for the disease at early levels.
References
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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.
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