Accuracy and Predictive Value of Classification Schemes for Ketosis-Prone Diabetes
Author(s) -
Ashok Balasubramanyam,
Gilberto Garza,
Lucille Rodriguez,
Christiane S. Hampe,
Lakshmi K. Gaur,
Åke Lernmark,
Mario R. Maldonado
Publication year - 2006
Publication title -
diabetes care
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 6.636
H-Index - 363
eISSN - 1935-5548
pISSN - 0149-5992
DOI - 10.2337/dc06-0749
Subject(s) - medicine , diabetes mellitus , receiver operating characteristic , diabetic ketoacidosis , insulin , predictive value , ketosis , classification scheme , gastroenterology , endocrinology , machine learning , computer science
OBJECTIVE—Ketosis-prone diabetes (KPD) is an emerging, heterogeneous syndrome. A sound classification scheme for KPD is essential to guide clinical practice and pathophysiologic studies. Four schemes have been used and are based on immunologic criteria, immunologic criteria and insulin requirement, BMI, and immunologic criteria and β-cell function (Aβ classification). The aim of the present study is to compare the four schemes for accuracy and predictive value in determining whether KPD patients have absent or preserved β-cell function, which is a strong determinant of long-term insulin dependence and clinical phenotype. RESEARCH DESIGN AND METHODS—Consecutive patients (n = 294) presenting with diabetic ketoacidosis and followed for 12–60 months were classified according to all four schemes. They were evaluated longitudinally for β-cell autoimmunity, clinical and biochemical features, β-cell function, and insulin dependence. β-Cell function was defined by peak plasma C-peptide response to glucagon ≥1.5 ng/ml. The accuracy of each scheme to predict absent or preserved β-cell function after 12 months of follow-up was tested using multiple statistical analyses. RESULTS—The “Aβ” classification scheme was the most accurate overall, with a sensitivity and specificity of 99.4 and 95.9%, respectively, positive and negative likelihood ratios of 24.55 and 0.01, respectively, and an area under the receiver operator characteristic curve of 0.972. CONCLUSIONS—The Aβ scheme has the highest accuracy and predictive value in classifying KPD patients with regard to clinical outcomes and pathophysiologic subtypes.
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