The application of predictive value of diabetes autoantibody profile combined with clinical data and routine laboratory indexes in the classification of diabetes mellitus
Jiawen Xian, Rongrong Du, Hui Yuan, Jingyuan Li, Qin Pei, Yongjie Hao, Xi Zeng, Jingying Wang, Ting Ye

TL;DR
This study combines clinical data, lab results, and autoantibody profiles to create a model that helps distinguish between type 1 and type 2 diabetes.
Contribution
A new non-invasive model for differentiating type 1 diabetes using clinical, lab, and autoantibody data is developed and validated.
Findings
The model achieved high accuracy with AUCs of 0.966 and 0.961 in training and validation sets.
Calibration curves and decision curve analysis confirmed the model's clinical utility.
The model uses age, PA, HDL-C, ICA, IA-2A, GADA, and C-peptide as key predictors.
Abstract
Currently, distinct use of clinical data, routine laboratory indicators or the detection of diabetic autoantibodies in the diagnosis and management of diabetes mellitus is limited. Hence, this study was aimed to screen the indicators, and to establish and validate a multifactorial logistic regression model nomogram for the non-invasive differential prediction of type 1 diabetes mellitus. Clinical data, routine laboratory indicators, and diabetes autoantibody profiles of diabetic patients admitted between September 2018 and December 2022 were retrospectively analyzed. Logistic regression was used to select the independent influencing factors, and a prediction nomogram based on the multiple logistic regression model was constructed using these independent factors. Moreover, the predictive accuracy and clinical application value of the nomogram were evaluated using Receiver Operating…
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Taxonomy
TopicsDiabetes and associated disorders · Diabetes Management and Research · Pancreatic function and diabetes
