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Comparison of a Neural Network Approach with Five Traditional Methods for Predicting Creatinine Clearance in Patients with Human Immunodeficiency Virus Infection
Author(s) -
Herman Ronald A.,
Noormohamed Saleem,
Hirankarn Sarapee,
Shelton Mark J.,
Huang Eric,
Morse Gene D.,
Hewitt Ross G.,
Stapleton Jack T.
Publication year - 1999
Publication title -
pharmacotherapy: the journal of human pharmacology and drug therapy
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.227
H-Index - 109
eISSN - 1875-9114
pISSN - 0277-0008
DOI - 10.1592/phco.19.9.734.31545
Subject(s) - creatinine , human immunodeficiency virus (hiv) , artificial neural network , medicine , virology , computer science , artificial intelligence
Study Objective. To compare the results of an artificial neural network approach with those of five published creatinine clearance (Cl cr ) prediction equations and with the measured (true) Cl cr in patients infected with the human immunodeficiency virus (HIV). Design. Six‐month prospective study. Settings. Two university medical centers. Patients. Sixty‐five HIV‐infected patients: 18 relatively healthy outpatients and 47 inpatients. Interventions. All subjects had urine collected for 24 hours to determine Cl cr . Measurements and Main Results. The 16 input variables were age, ideal body weight, actual body weight, body surface area, height, and the following blood chemistries: sodium, potassium, aspartate aminotransferase, alanine aminotransferase, red blood cell count, platelet count, white blood cell count, glucose, serum creatinine, blood urea nitrogen, and albumin. The only output variable was Cl cr . A training set of 55 subjects was used to develop the relationship between input variables and the output variable. The trained neural network was then used to predict Cl cr of a validation set of 10 subjects. Mean differences between predicted Cl cr and actual Cl cr (bias) were 4.1, 28.7, 29.4, 26.0, 31.8, and 55.8 ml/min/1.73 m 2 for the artificial neural network, Cockcroft and Gault, Jelliffe 1, Jelliffe 2, Mawer et al, and Hull et al methods, respectively. Conclusion. The accuracy of predicting Cl cr in subjects with HIV infection by the artificial neural network is superior to that of the five equations that are currently used in clinical settings.