Predictive modelling of metabolic syndrome in Ghanaian diabetic patients: an ensemble machine learning approach

被引:1
作者
Acheampong, Emmanuel [1 ,2 ]
Adua, Eric [3 ,4 ]
Obirikorang, Christian [5 ]
Anto, Enoch Odame [4 ,6 ]
Peprah-Yamoah, Emmanuel [7 ]
Obirikorang, Yaa [8 ]
Asamoah, Evans Adu [3 ]
Opoku-Yamoah, Victor [9 ]
Nyantakyi, Michael [6 ]
Taylor, John [4 ]
Buckman, Tonnies Abeku [5 ,10 ]
Yakubu, Maryam [11 ]
Afrifa-Yamoah, Ebenezer [12 ]
机构
[1] Univ Leicester, Leicester Canc Res Ctr, Dept Genet & Genome Biol, Leicester, England
[2] Univ Leicester, Inst Precis Hlth, Leicester, England
[3] Univ New South Wales, Rural Clin Sch Med & Hlth, Sydney, NSW, Australia
[4] Edith Cowan Univ, Sch Med & Hlth Sci, 270 Joondalup Dr, Joondalup, WA 6027, Australia
[5] Kwame Nkrumah Univ Sci & Technol, Sch Med & Dent, Dept Mol Med, Kumasi, Ghana
[6] Kwame Nkrumah Univ Sci & Technol, Dept Med Diagnost, Kumasi, Ghana
[7] Teva Pharmaceut, Salt Lake City, UT USA
[8] Garden City Univ Coll GCUC, Fac Hlth Sci, Dept Nursing, Kenyasi, Kumasi, Ghana
[9] Univ Waterloo, Sch Optometry & Vis Sci, Waterloo, ON, Canada
[10] KAAF Univ Coll, Dept Med Lab Sci, Buduburam, Ghana
[11] Effia Nkwanta Reg Hosp, Lab Dept, Takoradi, Western Region, Ghana
[12] Edith Cowan Univ, Sch Sci, Math Applicat & Data Analyt Grp, Perth, Australia
关键词
Machine learning; Predictive modelling; Risk factors; Metabolic syndrome; Type 2 diabetes mellitus; VISCERAL ADIPOSITY; MANAGEMENT; INDEX; FAT; MORTALITY;
D O I
10.1007/s40200-024-01491-7
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
ObjectivesThe burgeoning prevalence of cardiometabolic disorders, including type 2 diabetes mellitus (T2DM) and metabolic syndrome (MetS) within Africa is concerning. Machine learning (ML) techniques offer a unique opportunity to leverage data-driven insights and construct predictive models for MetS risk, thereby enhancing the implementation of personalised prevention strategies. In this work, we employed ML techniques to develop predictive models for pre-MetS and MetS among diabetic patients.MethodsThis multi-centre cross-sectional study comprised of 919 T2DM patients. Age, gender, novel anthropometric indices along with biochemical measures were analysed using BORUTA feature selection and an ensemble majority voting classification model, which included logistic regression, k-nearest neighbour, Gaussian Naive Bayes, Gradient boosting classification, and support vector machine.ResultsDistinct metabolic profiles and phenotype clusters were associated with MetS progression. The BORUTA algorithm identified 10 and 16 significant features for pre-MetS and MetS prediction, respectively. For pre-MetS, the top-ranked features were lipid accumulation product (LAP), triglyceride-glucose index adjusted for waist-to-height ratio (TyG-WHtR), coronary risk (CR), visceral adiposity index (VAI) and abdominal volume index (AVI). For MetS prediction, the most influential features were VAI, LAP, waist triglyceride index (WTI), Very low-density cholesterol (VLDLC) and TyG-WHtR. Majority voting ensemble classifier demonstrated superior performance in predicting pre-MetS (AUC = 0.79) and MetS (AUC = 0.87).ConclusionIdentifying these risk factors reveals the complex interplay between visceral adiposity and metabolic dysregulation in African populations, enabling early detection and treatment. Ethical integration of ML algorithms in clinical decision-making can streamline identification of high-risk individuals, optimize resource allocation, and enable precise, tailored interventions.
引用
收藏
页码:2233 / 2249
页数:17
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