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Systemic Lupus Erythematosus: How Machine Learning Can Help Distinguish between Infections and Flares.
Usategui, Iciar; Arroyo, Yoel; Torres, Ana María; Barbado, Julia; Mateo, Jorge.
Affiliation
  • Usategui I; Department of Internal Medicine, Hospital Clínico Universitario, 47005 Valladolid, Spain.
  • Arroyo Y; Department of Technologies and Information Systems, Faculty of Social Sciences and Information Technologies, Universidad de Castilla-La Mancha (UCLM), 45600 Talavera de la Reina, Spain.
  • Torres AM; Medical Analysis Expert Group, Institute of Technology, Universidad de Castilla-La Mancha (UCLM), 16071 Cuenca, Spain.
  • Barbado J; Medical Analysis Expert Group, Instituto de Investigación Sanitaria de Castilla-La Mancha (IDISCAM), 45071 Toledo, Spain.
  • Mateo J; Department of Internal Medicine, Hospital Universitario Río Hortega, 47012 Valladolid, Spain.
Bioengineering (Basel) ; 11(1)2024 Jan 17.
Article in En | MEDLINE | ID: mdl-38247967
ABSTRACT
Systemic Lupus Erythematosus (SLE) is a multifaceted autoimmune ailment that impacts multiple bodily systems and manifests with varied clinical manifestations. Early detection is considered the most effective way to save patients' lives, but detecting severe SLE activity in its early stages is proving to be a formidable challenge. Consequently, this work advocates the use of Machine Learning (ML) algorithms for the diagnosis of SLE flares in the context of infections. In the pursuit of this research, the Random Forest (RF) method has been employed due to its performance attributes. With RF, our objective is to uncover patterns within the patient data. Multiple ML techniques have been scrutinized within this investigation. The proposed system exhibited around a 7.49% enhancement in accuracy when compared to k-Nearest Neighbors (KNN) algorithm. In contrast, the Support Vector Machine (SVM), Binary Linear Discriminant Analysis (BLDA), Decision Trees (DT) and Linear Regression (LR) methods demonstrated inferior performance, with respective values around 81%, 78%, 84% and 69%. It is noteworthy that the proposed method displayed a superior area under the curve (AUC) and balanced accuracy (both around 94%) in comparison to other ML approaches. These outcomes underscore the feasibility of crafting an automated diagnostic support method for SLE patients grounded in ML systems.
Key words

Full text: 1 Database: MEDLINE Type of study: Prognostic_studies / Screening_studies Language: En Journal: Bioengineering (Basel) Year: 2024 Type: Article Affiliation country: Spain

Full text: 1 Database: MEDLINE Type of study: Prognostic_studies / Screening_studies Language: En Journal: Bioengineering (Basel) Year: 2024 Type: Article Affiliation country: Spain