Prediction of LDL in hypertriglyceridemic subjects using an innovative ensemble machine learning technique

Author:

Demirci Ferhat12ORCID,Emec Murat3ORCID,Gursoy Doruk Ozlem24ORCID,Ormen Murat4ORCID,Akan Pınar24ORCID,Hilal Ozcanhan Mehmet5ORCID

Affiliation:

1. Clinical Biochemistry Laboratory , Dr. Suat Seren Chest Disease and Thoracic Surgery Training and Research Hospital , Izmir , Türkiye

2. Department of Neurosciences, The Institute of Health Sciences , Dokuz Eylul University , Izmir , Türkiye

3. Department of Computer Engineering, Faculty of Computer and Informatics , Istanbul University , Istanbul , Türkiye

4. Department of Biochemistry, Faculty of Medicine , Dokuz Eylul University , Izmir , Türkiye

5. Department of Computer Engineering, Faculty of Engineering , Dokuz Eylul University , Izmir , Türkiye

Abstract

Abstract Objectives Determining low-density lipoprotein (LDL) is a costly and time-consuming operation, but triglyceride value above 400 (TG>400) always requires LDL measurement. Obtaining a fast LDL forecast by accurate prediction can be valuable to experts. However, if a high error margin exists, LDL prediction can be critical and unusable. Our objective is LDL value and level prediction with an error less than low total acceptable error rate (% TEa). Methods Our present work used 6392 lab records to predict the patient LDL value using state-of-the-art Artificial Intelligence methods. The designed model, p-LDL-M, predicts LDL value and class with an overall average test score of 98.70 %, using custom, hyper-parameter-tuned Ensemble Machine Learning algorithm. Results The results show that using our innovative p-LDL-M is advisable for subjects with critical TG>400. Analysis proved that our model is positively affected by the Hopkins and Friedewald equations normally used for (TG≤400). The conclusion follows that the test score performance of p-LDL-M using only (TG>400) is 7.72 % inferior to the same p-LDL-M, using Hopkins and Friedewald supported data. In addition, the test score performance of the NIH-Equ-2 for (TG>400) is much inferior to p-LDL-M prediction results. Conclusions In conclusion, obtaining an accurate and fast LDL value and level forecast for people with (TG>400) using our innovative p-LDL-M is highly recommendable.

Publisher

Walter de Gruyter GmbH

Subject

Biochemistry (medical),Clinical Biochemistry,Molecular Biology,Biochemistry

Reference34 articles.

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