Молимо вас користите овај идентификатор за цитирање или овај линк до ове ставке: https://open.uns.ac.rs/handle/123456789/14159
Назив: Methods for algorithmic diagnosis of metabolic syndrome
Аутори: Dunja Vrbaški 
Milan Vrbaški
Aleksandar Kupusinac 
Darko Ivanović
Edita Stokić 
Dragan Ivetić 
Ksenija Doroslovački 
Кључне речи: Linear regression;Artificial neural network;Decision tree;Random forest;Metabolic syndrome
Датум издавања: 1-нов-2019
Часопис: Artificial Intelligence in Medicine
Сажетак: © 2019 Elsevier B.V. Metabolic Syndrome (MetS) is associated with the risk of developing chronic disease (atherosclerotic cardiovascular disease, type 2 diabetes, cancers and chronic kidney disease) and has an important role in early prevention. Previous research showed that an artificial neural network (ANN) is a suitable tool for algorithmic MetS diagnostics, that includes solely non-invasive, low-cost and easily-obtainabled (NI&LC&EO) diagnostic methods. This paper considers using four well-known machine learning methods (linear regression, artificial neural network, decision tree and random forest) for MetS predictions and provides their comparison, in order to induce and facilitate development of appropriate medical software by using these methods. Training, validation and testing are conducted on the large dataset that includes 3000 persons. Input vectors are very simple and contain the following parameters: gender, age, body mass index, waist-to-height ratio, systolic and diastolic blood pressures, while the output is MetS diagnosis in true/false form, made in accordance with International Diabetes Federation (IDF). Comparison leads to the conclusion that random forest achieves the highest specificity (SPC=0.9436), sensitivity (SNS=0.9154), positive (PPV=0.9379) and negative (NPV=0.9150) predictive values. Algorithmic diagnosis of MetS could be beneficial in everyday clinical practice since it can easily identify high risk patients.
URI: https://open.uns.ac.rs/handle/123456789/14159
ISSN: 9333657
DOI: 10.1016/j.artmed.2019.101708
Налази се у колекцијама:FTN Publikacije/Publications

Приказати целокупан запис ставки

SCOPUSTM   
Навођења

11
проверено 10.05.2024.

Преглед/и станица

43
Протекла недеља
15
Протекли месец
0
проверено 10.05.2024.

Google ScholarTM

Проверите

Алт метрика


Ставке на DSpace-у су заштићене ауторским правима, са свим правима задржаним, осим ако није другачије назначено.